Machine learning for Parkinson’s disease: a comprehensive review of datasets, algorithms, and challenges

Machine Learning


  • Arora, P., Mishra, A. & Malhi, A. Machine learning Ensemble for the Parkinson’s disease using protein sequences. Multimed. Tools Appl. 81, 32215–32242 (2022).

    Article 

    Google Scholar 

  • Dhanalakshmi, S., Das, S. & Senthil, R. Speech features-based Parkinson’s disease classification using combined SMOTE-ENN and binary machine learning. Health Technol. 14, 393–406 (2024).

    Article 

    Google Scholar 

  • Frasca, M. & Tortora, G. Visualizing correlations among Parkinson biomedical data through information retrieval and machine learning techniques. Multimed. Tools Appl. 81, 14685–14703 (2022).

    Article 

    Google Scholar 

  • Nilashi, M. et al. Early diagnosis of Parkinson’s disease: a combined method using deep learning and neuro-fuzzy techniques. Comput. Biol. Chem. 102, 107788 (2023).

    Article 
    CAS 

    Google Scholar 

  • Ghadimloozadeh, S., Sohrabi, M. R. & Fard, H. K. Development of rapid and simple spectrophotometric method for the simultaneous determination of anti-Parkinson drugs in combined dosage form using continuous wavelet transform and radial basis function neural network. Optik 242, 167088 (2021).

    Article 
    CAS 

    Google Scholar 

  • Xie, S., Peng, P., Dong, X., Yuan, J. & Liang, J. Novel gene signatures predicting and immune infiltration analysis in Parkinson’s disease: based on combining random forest with artificial neural network. Neurol. Sci. 45, 2681–2696 (2024).

    Article 

    Google Scholar 

  • Abkenar, S. B. & Haghi Kashani, M. Chapter 30—Challenges of sensor network in smart hospitals. in Sensor Networks for Smart Hospitals (ed. Nguyen, T. A.) 617-636 (Elsevier, 2025).

  • Vidya, B. Gait based Parkinson’s disease diagnosis and severity rating using multi-class support vector machine. Appl. Soft Comput. 113, 107939 (2021).

    Article 

    Google Scholar 

  • Nikravan, M. & Haghi Kashani,M. Chapter 7—Smart medical sensor network. in Blockchain and Digital Twin for Smart Healthcare (ed. Nguyen, T. A.) 1-22 (Elsevier, 2025).

  • Nikravan, M. & Haghi Kashani, M. 6—Smart medical sensor network. in Blockchain and Digital Twin for Smart Healthcare (ed. Nguyen, T. A.) 99–120 (Elsevier, 2025).

  • Ajorloo, S., Jamarani, A., Kashfi, M., Kashani, M. H. & Najafizadeh, A. A systematic review of machine learning methods in software testing. Appl. Soft Comput. 162, 111805 (2024).

    Article 

    Google Scholar 

  • Bazzaz Abkenar, S., Haghi Kashani, M. & Nikravan, M. Chapter 3—Telemedicine and remote patient monitoring. in Smart Technologies for Sustainable Development Goals: Good Health and Well-being (eds Anand, A. J. & Krishnan, S.) 1–21 (CRC Press, 2025).

  • Bazzaz Abkenar, S., Haghi Kashani, M. & Nikravan, M. Chapter 3—Feature engineering for threat detection. in Handbook of AI-Driven Threat Detection and Prevention: A Holistic Approach to Security (eds Bhambri, P. & Anand, A. J.) (CRC Press, 2025).

  • Kashani,M. H., Jamei,M., Akbari,M. & Tayebi,R. M. Utilizing bee colony to solve task scheduling problem in distributed systems. In 2011 Third International Conference on Computational Intelligence, Communication Systems and Networks, pp. 298–303 (IEEE, 2011).

  • Pahuja, G. & Prasad, B. Deep learning architectures for Parkinson’s disease detection by using multi-modal features. Comput. Biol. Med. 146, 105610 (2022).

    Article 

    Google Scholar 

  • Nikravan, M., Haghi Kashani, M. & Bazzaz Abkenar, S. Chapter 10—Blockchain for secure health data management. in Smart Technologies for Sustainable Development Goals: Good Health and Well-being (Anand, A. J. & Krishnan, S.) 1–23 (CRC Press, 2025).

  • Nikravan, M., Haghi Kashani, M. & Bazzaz Abkenar, S. Chapter 4—Anomaly detection with artificial intelligence. in Handbook of AI-Driven Threat Detection and Prevention: A Holistic Approach to Security (eds Bhambri, P. & Anand, A. J.) 1–19 (CRC Press, 2025).

  • Kitchenham, B. Procedures for Performing Systematic Reviews, Vol. 33, 1–26 (Keele University, 2004).

  • Etemadi, M. et al. A systematic review of healthcare recommender systems: open issues, challenges, and techniques. Expert Syst. Appl. 213, 118823 (2023).

    Article 

    Google Scholar 

  • Khachnaoui, H., Mabrouk, R. & Khlifa, N. Machine learning and deep learning for clinical data and PET/SPECT imaging in Parkinson’s disease: a review. IET Image Process 14, 4013–4026 (2020).

    Article 

    Google Scholar 

  • Salari, N. et al. The performance of various machine learning methods for Parkinson’s disease recognition: a systematic review. Curr. Psychol. 42, 16637–16660 (2022).

    Article 

    Google Scholar 

  • Tanveer, M., Rashid, A. H., Kumar, R. & Balasubramanian, R. Parkinson’s disease diagnosis using neural networks: survey and comprehensive evaluation. Inf. Process. Manag. 59, 102909 (2022).

    Article 

    Google Scholar 

  • Sigcha, L. et al. Deep learning and wearable sensors for the diagnosis and monitoring of Parkinson’s disease: a systematic review. Expert Syst. Appl. 229, 120541 (2023).

    Article 

    Google Scholar 

  • Skaramagkas, V., Pentari, A., Kefalopoulou, Z. & Tsiknakis, M. Multi-modal deep learning diagnosis of Parkinson’s disease—a systematic review. IEEE Trans. Neural Syst. Rehabil. Eng. 31, 2399–2423 (2023).

    Article 

    Google Scholar 

  • Amato, F., Saggio, G., Cesarini, V., Olmo, G. & Costantini, G. Machine learning- and statistical-based voice analysis of Parkinson’s disease patients: a survey. Expert Syst. Appl. 219, 119651 (2023).

    Article 

    Google Scholar 

  • Khanna, K., Gambhir, S. & Gambhir, M. Comparative analysis of machine learning techniques for Parkinson’s detection: a review. Multimed. Tools Appl 82, 45205–45231 (2023).

    Article 

    Google Scholar 

  • Keserwani, P. K., Das, S. & Sarkar, N. A comparative study: prediction of Parkinson’s disease using machine learning, deep learning and nature inspired algorithm. Multimed. Tools Appl 83, 69393–69441 (2024).

    Article 

    Google Scholar 

  • Islam, M. A., Hasan Majumder, M. Z., Hussein, M. A., Hossain, K. M. & Miah, M. S. A review of machine learning and deep learning algorithms for Parkinson’s disease detection using handwriting and voice datasets. Heliyon 10, e25469 (2024).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Sabherwal, G. & Kaur, A. Machine learning and deep learning approach to Parkinson’s disease detection: present state-of-the-art and a bibliometric review. Multimed. Tools Appl 83, 72997–73030 (2024).

    Article 

    Google Scholar 

  • Giannakopoulou, K.-M., Roussaki, I. & Demestichas, K. Internet of things technologies and machine learning methods for Parkinson’s disease diagnosis, monitoring and management: a systematic review. Sensors 22, 1799 (2022).

    Article 
    PubMed Central 

    Google Scholar 

  • Rana, A. et al. Imperative role of machine learning algorithm for detection of Parkinson’s disease: review, challenges and recommendations. Diagnostics 12, 2003 (2022).

    Article 
    PubMed Central 

    Google Scholar 

  • Zhang, J. Mining imaging and clinical data with machine learning approaches for the diagnosis and early detection of Parkinson’s disease. npj Parkinsons Dis. 8, 13 (2022).

    Article 
    PubMed Central 

    Google Scholar 

  • Chandrabhatla, A. S., Pomeraniec, I. J. & Ksendzovsky, A. Co-evolution of machine learning and digital technologies to improve monitoring of Parkinson’s disease motor symptoms. NPJ Digital Med 5, 32 (2022).

    Article 

    Google Scholar 

  • Brereton, P., Kitchenham, B. A., Budgen, D., Turner, M. & Khalil, M. Lessons from applying the systematic literature review process within the software engineering domain. J. Syst. Softw. 80, 571–583 (2007).

    Article 

    Google Scholar 

  • Haghi Kashani, M., Madanipour, M., Nikravan, M., Asghari, P. & Mahdipour, E. A systematic review of IoT in healthcare: applications, techniques, and trends. J. Netw. Comput. Appl. 192, 103164 (2021).

    Article 

    Google Scholar 

  • Kitchenham, B. et al. Systematic literature reviews in software engineering—a systematic literature review. Inf. Softw. Technol. 51, 7–15 (2009).

    Article 

    Google Scholar 

  • Calero, C., Bertoa, M. F. & Moraga, M. Á. A systematic literature review for software sustainability measures. in 2013 2nd International Workshop on Green and Sustainable Software (GREENS), 46–53 (IEEE, 2013).

  • Bazzaz Abkenar, S., Haghi Kashani, M., Akbari, M. & Mahdipour, E. Learning textual features for Twitter spam detection: a systematic literature review. Expert Syst. Appl. 228, 120366 (2023).

    Article 

    Google Scholar 

  • Ahmadi, Z., Haghi Kashani, M., Nikravan, M. & Mahdipour, E. Fog-based healthcare systems: a systematic review. Multimed. Tools Appl. 80, 36361–36400 (2021).

    Article 
    PubMed Central 

    Google Scholar 

  • Khoshniat, N., Jamarani, A., Ahmadzadeh, A., Haghi Kashani, M. & Mahdipour, E. Nature-inspired metaheuristic methods in software testing. Soft Comput 28, 1503–1544 (2024).

    Article 

    Google Scholar 

  • Jamarani, A. et al. Big data and predictive analytics: a systematic review of applications. Artif. Intell. Rev. 57, 176 (2024).

    Article 

    Google Scholar 

  • Songhorabadi, M., Rahimi, M., MoghadamFarid, A. & Haghi Kashani, M. Fog computing approaches in IoT-enabled smart cities. J. Netw. Comput. Appl. 211, 103557 (2023).

    Article 

    Google Scholar 

  • Nemati, S., Haghi Kashani, M. & Faghih Mirzaee, R. Comprehensive survey of ternary full adders: statistics, corrections, and assessments. IET Circuits Devices Syst. 17, 111–134 (2023).

    Article 

    Google Scholar 

  • Haghi Kashani, M. & Mahdipour, E. Load balancing algorithms in fog computing. IEEE Trans. Serv. Comput. 16, 1505–1521 (2023).

    Article 

    Google Scholar 

  • Sheikh Sofla, M., Haghi Kashani, M., Mahdipour, E. & Faghih Mirzaee, R. Towards effective offloading mechanisms in fog computing. Multimed. Tools Appl. 81, 1997–2042 (2022).

    Article 

    Google Scholar 

  • Nikravan, M. & Haghi Kashani, M. A review on trust management in fog/edge computing: techniques, trends, and challenges. J. Netw. Comput. Appl. 204, 103402 (2022).

    Article 

    Google Scholar 

  • Karimi, Y., Haghi Kashani, M., Akbari, M. & Mahdipour, E. Leveraging big data in smart cities: a systematic review. Concurr. Comput. Pract. Exp. 33, e6379 (2021).

    Article 

    Google Scholar 

  • Fathi, M., Haghi Kashani, M., Jameii, S. M. & Mahdipour, E. Big data analytics in weather forecasting: a systematic review. Arch. Comput. Methods Eng. 29, 1247–1275 (2021).

    Article 

    Google Scholar 

  • Rahimi, M., Songhorabadi, M. & Haghi Kashani, M. Fog-based smart homes: a systematic review. J. Netw. Comput. Appl. 153, 102531 (2020).

    Article 

    Google Scholar 

  • Haghi Kashani, M., Rahmani, A. M. & Jafari Navimipour, N. Quality of service-aware approaches in fog computing. Int. J. Commun. Syst. 33, e4340 (2020).

    Article 

    Google Scholar 

  • Bazzaz Abkenar, S., Haghi Kashani, M., Mahdipour, E. & Jameii, S. M. Big data analytics meets social media: a systematic review of techniques, open issues, and future directions. Telemat. Inform. 57, 101517–110555 (2020).

    Article 
    PubMed Central 

    Google Scholar 

  • Iyer, A. et al. A machine learning method to process voice samples for identification of Parkinson’s disease. Sci. Rep. 13, 20615 (2023).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Pah, N. D., Indrawati, V. & Kumar, D. K. Voice-based SVM model reliability for identifying Parkinson’s disease. IEEE Access 11, 144296–144305 (2023).

    Article 

    Google Scholar 

  • Dhar, J. An adaptive intelligent diagnostic system to predict early stage of Parkinson’s disease using two-stage dimension reduction with genetically optimized lightgbm algorithm. Neural Comput. Appl. 34, 4567–4593 (2022).

    Article 

    Google Scholar 

  • Yao, D., Chi, W. & Khishe, M. Parkinson’s disease and cleft lip and palate of pathological speech diagnosis using deep convolutional neural networks evolved by IPWOA. Appl. Acoust. 199, 109003 (2022).

    Article 

    Google Scholar 

  • Khaskhoussy, R. & Ayed, Y. B. Improving Parkinson’s disease recognition through voice analysis using deep learning. Pattern Recognit. Lett. 168, 64–70 (2023).

    Article 

    Google Scholar 

  • Celik, G. & Başaran, E. Proposing a new approach based on convolutional neural networks and random forest for the diagnosis of Parkinson’s disease from speech signals. Appl. Acoust. 211, 109476 (2023).

    Article 

    Google Scholar 

  • Ali, L. et al. A novel sample and feature dependent ensemble approach for Parkinson’s disease detection. Neural Comput. Appl 35, 15997–16010 (2022).

    Article 

    Google Scholar 

  • Masud, M. et al. CROWD: crow search and deep learning based feature extractor for classification of Parkinson’s disease. ACM Trans. Internet Technol. 21, 77 (2021).

    Article 

    Google Scholar 

  • Yücelbaş, C. A new approach: information gain algorithm-based k-nearest neighbors hybrid diagnostic system for Parkinson’s disease. Phys. Eng. Sci. Med. 44, 511–524 (2021).

    Article 

    Google Scholar 

  • Wang, X. et al. A Parkinson’s auxiliary diagnosis algorithm based on a hyperparameter optimization method of deep learning. IEEE/ACM Trans. Comput. Biol. Bioinform 21, 912–923 (2023).

    Article 

    Google Scholar 

  • Li, Y., Zhang, X., Wang, P., Zhang, X. & Liu, Y. Insight into an unsupervised two-step sparse transfer learning algorithm for speech diagnosis of Parkinson’s disease. Neural Comput. Appl. 33, 9733–9750 (2021).

    Article 
    PubMed Central 

    Google Scholar 

  • Vital, T. P. R., Nayak, J., Naik, B. & Jayaram, D. Probabilistic neural network-based model for identification of Parkinson’s disease by using voice profile and personal data. Arab. J. Sci. Eng. 46, 3383–3407 (2021).

    Article 

    Google Scholar 

  • Jyotiyana, M., Kesswani, N. & Kumar, M. A deep learning approach for classification and diagnosis of Parkinson’s disease. Soft Comput 26, 9155–9165 (2022).

    Article 

    Google Scholar 

  • Masood, S., Maqsood, K. W., Pal, O. & Kumar, C. An ensemble-based feature selection framework for early detection of Parkinson’s disease based on feature correlation analysis. Math. Methods Appl. Sci. https://doi.org/10.1002/mma.7835 (2021).

    Article 

    Google Scholar 

  • García, A. M. et al. Cognitive determinants of dysarthria in Parkinson’s disease: an automated machine learning approach. Mov. Disord. 36, 2862–2873 (2021).

    Article 

    Google Scholar 

  • Hireš, M. et al. Convolutional neural network ensemble for Parkinson’s disease detection from voice recordings. Comput. Biol. Med. 141, 105021 (2022).

    Article 

    Google Scholar 

  • Ma, J. et al. Deep dual-side learning ensemble model for Parkinson speech recognition. Biomed. Signal Process. Control 69, 102849 (2021).

    Article 

    Google Scholar 

  • Quan, C., Ren, K., Luo, Z., Chen, Z. & Ling, Y. End-to-end deep learning approach for Parkinson’s disease detection from speech signals. Biocybern. Biomed. Eng. 42, 556–574 (2022).

    Article 

    Google Scholar 

  • Chen, F., Yang, C. & Khishe, M. Diagnose Parkinson’s disease and cleft lip and palate using deep convolutional neural networks evolved by IP-based chimp optimization algorithm. Biomed. Signal Process. Control 77, 103688 (2022).

    Article 

    Google Scholar 

  • Khaskhoussy, R. & Ayed, Y. B. Speech processing for early Parkinson’s disease diagnosis: machine learning and deep learning-based approach. Soc. Netw. Anal. Min. 12, 73 (2022).

    Article 

    Google Scholar 

  • Biswas, S. K. et al. Early detection of Parkinson disease using stacking ensemble method. Comput. Methods Biomech. Biomed. Eng. 26, 527–539 (2023).

    Article 

    Google Scholar 

  • Liu, W. et al. Prediction of Parkinson’s disease based on artificial neural networks using speech datasets. J. Ambient Intell. Humaniz. Comput 14, 13571–13584 (2022).

    Article 

    Google Scholar 

  • Yuan, L., Liu, Y. & Feng, H.-M. Parkinson disease prediction using machine learning-based features from speech signal. Serv. Oriented Comput. Appl 18, 101–107 (2023).

    Article 

    Google Scholar 

  • Kamalakannan, K., Anandharaj, G. & Gunavathie, M. A. Performance analysis of attributes selection and discretization of Parkinson’s disease dataset using machine learning techniques: a comprehensive approach. Int. J. Syst. Assur. Eng. Manag. 14, 1523–1529 (2023).

    Article 

    Google Scholar 

  • Saleh, S., Cherradi, B., El Gannour, O., Hamida, S. & Bouattane, O. Predicting patients with Parkinson’s disease using Machine Learning and ensemble voting technique. Multimed. Tools Appl 83, 33207–33234 (2023).

    Article 

    Google Scholar 

  • Devarajan, J. P., Sreedharan, V. R. & Narayanamurthy, G. Decision making in health care diagnosis: evidence from Parkinson’s disease via hybrid machine learning. IEEE Trans. Eng. Manag 70, 2719–2731 (2021).

    Article 

    Google Scholar 

  • Guatelli, R., Aubin, V., Mora, M., Naranjo-Torres, J. & Mora-Olivari, A. Detection of Parkinson’s disease based on spectrograms of voice recordings and Extreme Learning Machine random weight neural networks. Eng. Appl. Artif. Intell. 125, 106700 (2023).

    Article 

    Google Scholar 

  • Hireš, M., Drotár, P., Pah, N. D., Ngo, Q. C. & Kumar, D. K. On the inter-dataset generalization of machine learning approaches to Parkinson’s disease detection from voice. Int. J. Med. Inform. 179, 105237 (2023).

    Article 

    Google Scholar 

  • Eguchi, K. et al. Differentiation of speech in Parkinson’s disease and spinocerebellar degeneration using deep neural networks. J. Neurol. 271, 1004–1012 (2023).

    Article 

    Google Scholar 

  • Ali, L. et al. Parkinson’s disease detection based on features refinement through L1 regularized SVM and deep neural network. Sci. Rep. 14, 1333 (2024).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Johnson, K. A., Fox, N. C., Sperling, R. A. & Klunk, W. E. Brain imaging in Alzheimer disease. Cold Spring Harb. Perspect. Med. 2, a006213 (2012).

    Article 
    PubMed Central 

    Google Scholar 

  • Ding, C. W. et al. Prediction of Parkinson’s disease by transcranial sonography-based deep learning. Neurol. Sci. 45, 2641–2650 (2023).

    Article 

    Google Scholar 

  • Nakajima, K. et al. Diagnosis of Parkinson syndrome and Lewy-body disease using 123I-ioflupane images and a model with image features based on machine learning. Ann. Nucl. Med. 36, 765–776 (2022).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Zhao, H. et al. Deep learning based diagnosis of Parkinson’s Disease using diffusion magnetic resonance imaging. Brain Imaging Behav. 16, 1749–1760 (2022).

    Article 

    Google Scholar 

  • Shibata, H. et al. Machine learning trained with quantitative susceptibility mapping to detect mild cognitive impairment in Parkinson’s disease. Parkinsonism Relat. Disord. 94, 104–110 (2022).

    Article 
    CAS 

    Google Scholar 

  • Gaurav, R. et al. NigraNet: an automatic framework to assess nigral neuromelanin content in early Parkinson’s disease using convolutional neural network. NeuroImage Clin. 36, 103250 (2022).

    Article 
    PubMed Central 

    Google Scholar 

  • Nakano, T. et al. Neural networks associated with quality of life in patients with Parkinson’s disease. Parkinsonism Relat. Disord. 89, 6–12 (2021).

    Article 

    Google Scholar 

  • Dünnwald, M. et al. Fully automated deep learning-based localization and segmentation of the locus coeruleus in aging and Parkinson’s disease using neuromelanin-sensitive MRI. Int. J. Comput. Assist. Radiol. Surg. 16, 2129–2135 (2021).

    Article 
    PubMed Central 

    Google Scholar 

  • Adams, M. P., Rahmim, A. & Tang, J. Improved motor outcome prediction in Parkinson’s disease applying deep learning to DaTscan SPECT images. Comput. Biol. Med. 132, 104312 (2021).

    Article 

    Google Scholar 

  • Shin, D. H. et al. Automated assessment of the substantia nigra on susceptibility map-weighted imaging using deep convolutional neural networks for diagnosis of Idiopathic Parkinson’s disease. Parkinsonism Relat. Disord. 85, 84–90 (2021).

    Article 
    CAS 

    Google Scholar 

  • Xu, N., Zhou, Y., Patel, A., Zhang, N. & Liu, Y. Parkinson’s disease diagnosis beyond clinical features: a bio-marker using topological machine learning of resting-state functional magnetic resonance imaging. Neuroscience 509, 43–50 (2023).

    Article 
    CAS 

    Google Scholar 

  • Noella, R. S. N. & Priyadarshini, J. Diagnosis of Alzheimer’s, Parkinson’s disease and frontotemporal dementia using a generative adversarial deep convolutional neural network. Neural Comput. Appl. 35, 2845–2854 (2023).

    Article 

    Google Scholar 

  • Camacho, M. et al. Explainable classification of Parkinson’s disease using deep learning trained on a large multi-center database of T1-weighted MRI datasets. NeuroImage Clin. 38, 103405 (2023).

    Article 
    PubMed Central 

    Google Scholar 

  • Vyas, T. et al. Deep learning-based scheme to diagnose Parkinson’s disease. Expert Syst. 39, e12739 (2022).

    Article 

    Google Scholar 

  • Yasaka, K. et al. Parkinson’s disease: deep learning with a parameter-weighted structural connectome matrix for diagnosis and neural circuit disorder investigation. Neuroradiology 63, 1451–1462 (2021).

    Article 
    PubMed Central 

    Google Scholar 

  • Dotinga, M. et al. Clinical value of machine learning-based interpretation of I-123 FP-CIT scans to detect Parkinson’s disease: a two-center study. Ann. Nucl. Med. 35, 378–385 (2021).

    Article 
    CAS 

    Google Scholar 

  • Piccardo, A. et al. The role of the deep convolutional neural network as an aid to interpreting brain [18F]DOPA PET/CT in the diagnosis of Parkinson’s disease. Eur. Radiol. 31, 7003–7011 (2021).

    Article 

    Google Scholar 

  • Sun, X. et al. Use of deep learning-based radiomics to differentiate Parkinson’s disease patients from normal controls: a study based on [18F]FDG PET imaging. Eur. Radiol. 32, 8008–8018 (2022).

    Article 
    CAS 

    Google Scholar 

  • Huang, W. et al. Auto diagnosis of Parkinson’s disease via a deep learning model based on mixed emotional facial expressions. IEEE J. Biomed. Health Inform. 28, 2547–2557 (2023).

    Article 

    Google Scholar 

  • Abdullah, S. M. et al. Deep transfer learning based Parkinson’s disease detection using optimized feature selection. IEEE Access 11, 3511–3524 (2023).

    Article 

    Google Scholar 

  • Pang, H. et al. Use of machine learning method on automatic classification of motor subtype of Parkinson’s disease based on multilevel indices of rs-fMRI. Parkinsonism Relat. Disord. 90, 65–72 (2021).

    Article 

    Google Scholar 

  • Balnarsaiah, B., Nayak, B. A., Sujeetha, G. S., Babu, B. S. & Vallabhaneni, R. B. Parkinson’s disease detection using modified ResNeXt deep learning model from brain MRI images. Soft Comput 27, 11905–11914 (2023).

    Article 

    Google Scholar 

  • Cui, X. et al. An adaptive weighted attention-enhanced deep convolutional neural network for classification of MRI images of Parkinson’s disease. J. Neurosci. Methods 394, 109884 (2023).

    Article 

    Google Scholar 

  • Wang, Y. et al. An automatic interpretable deep learning pipeline for accurate Parkinson’s disease diagnosis using quantitative susceptibility mapping and T1-weighted images. Hum. Brain Mapp. 44, 4426–4438 (2023).

    Article 
    PubMed Central 

    Google Scholar 

  • Keles, A., Keles, A., Keles, M. B. & Okatan, A. PARNet: deep neural network for the diagnosis of parkinson’s disease. Multimed. Tools. Appl. 83, 35781–35793 (2023).

    Article 

    Google Scholar 

  • Khachnaoui, H., Chikhaoui, B., Khlifa, N. & Mabrouk, R. Enhanced Parkinson’s disease diagnosis through convolutional neural network models applied to SPECT DaTSCAN images. IEEE Access 11, 91157–91172 (2023).

    Article 

    Google Scholar 

  • Zhang, X. et al. Multi-level graph neural network with sparsity pooling for recognizing Parkinson’s disease. IEEE Trans. Neural Syst. Rehabil. Eng. 31, 4459–4469 (2023).

    Article 

    Google Scholar 

  • Veetil, I. K., Chowdary, D. E., Chowdary, P. N., Sowmya, V. & Gopalakrishnan, E. A. An analysis of data leakage and generalizability in MRI based classification of Parkinson’s Disease using explainable 2D Convolutional Neural Networks. Digital Signal Process 147, 104407 (2024).

    Article 

    Google Scholar 

  • Tran, C. et al. Deep learning predicts prevalent and incident Parkinson’s disease from UK Biobank fundus imaging. Sci. Rep. 14, 3637 (2024).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Archila, J., Manzanera, A. & Martínez, F. A multimodal Parkinson quantification by fusing eye and gait motion patterns, using covariance descriptors, from non-invasive computer vision. Comput. Methods Prog. Biomed. 215, 106607 (2022).

    Article 

    Google Scholar 

  • Sotirakis, C. et al. Identification of motor progression in Parkinson’s disease using wearable sensors and machine learning. npj Parkinsons Dis. 9, 142 (2023).

    Article 
    PubMed Central 

    Google Scholar 

  • Kovalenko, E. et al. Distinguishing between Parkinson’s disease and essential tremor through video analytics using machine learning: a pilot study. IEEE Sens. J. 21, 11916–11925 (2021).

    Article 

    Google Scholar 

  • Sun, H., Ye, Q. & Xia, Y. Predicting freezing of gait in patients with Parkinson’s disease by combination of manually-selected and deep learning features. Biomed. Signal Process. Control 88, 105639 (2024).

    Article 

    Google Scholar 

  • Ullrich, M. et al. Detection of unsupervised standardized gait tests from real-world inertial sensor data in Parkinson’s disease. IEEE Trans. Neural Syst. Rehabil. Eng. 29, 2103–2111 (2021).

    Article 

    Google Scholar 

  • Rezaee, K., Savarkar, S., Yu, X. & Zhang, J. A hybrid deep transfer learning-based approach for Parkinson’s disease classification in surface electromyography signals. Biomed. Signal Process. Control 71, 103161 (2022).

    Article 

    Google Scholar 

  • Zhao, H. et al. Severity level diagnosis of Parkinson’s disease by ensemble K-nearest neighbor under imbalanced data. Expert Syst. Appl. 189, 116113 (2022).

    Article 

    Google Scholar 

  • Borzì, L., Sigcha, L., Rodríguez-Martín, D. & Olmo, G. Real-time detection of freezing of gait in Parkinson’s disease using multi-head convolutional neural networks and a single inertial sensor. Artif. Intell. Med. 135, 102459 (2023).

    Article 

    Google Scholar 

  • Shcherbak, A., Kovalenko, E. & Somov, A. Detection and classification of early stages of Parkinson’s disease through wearable sensors and machine learning. IEEE Trans. Instrum. Meas. 72, 1–9 (2023).

    Article 

    Google Scholar 

  • Pedrero-Sánchez, J. F., Belda-Lois, J.-M., Serra-Añó, P., Inglés, M. & López-Pascual, J. Classification of healthy, Alzheimer and Parkinson populations with a multi-branch neural network. Biomed. Signal Process. Control 75, 103617 (2022).

    Article 

    Google Scholar 

  • Gazda, M., Hireš, M. & Drotár, P. Multiple-fine-tuned convolutional neural networks for Parkinson’s disease diagnosis from offline handwriting. IEEE Trans. Syst. Man Cybern. Syst. 52, 78–89 (2022).

    Article 

    Google Scholar 

  • Ibrahim, A., Zhou, Y., Jenkins, M. E., Trejos, A. L. & Naish, M. D. Real-time voluntary motion prediction and Parkinson’s tremor reduction using deep neural networks. IEEE Trans. Neural Syst. Rehabil. Eng. 29, 1413–1423 (2021).

    Article 

    Google Scholar 

  • Kaur, R., Motl, R. W., Sowers, R. & Hernandez, M. E. A vision-based framework for predicting multiple sclerosis and Parkinson’s disease gait dysfunctions—a deep learning approach. IEEE J. Biomed. Health Inform. 27, 190–201 (2023).

    Article 

    Google Scholar 

  • Lin, C. H. et al. Early detection of Parkinson’s disease by neural network models. IEEE Access 10, 19033–19044 (2022).

    Article 

    Google Scholar 

  • Exley, T., Moudy, S., Patterson, R. M., Kim, J. & Albert, M. V. Predicting UPDRS motor symptoms in individuals with Parkinson’s disease from force plates using machine learning. IEEE J. Biomed. Health Inform. 26, 3486–3494 (2022).

    Article 

    Google Scholar 

  • Li, H., He, Q. & Wu, L. Detection of brain abnormalities in Parkinson’s rats by combining deep learning and motion tracking. IEEE Trans. Neural Syst. Rehabil. Eng. 31, 1001–1007 (2023).

    Article 

    Google Scholar 

  • Cesarelli, G. et al. Using features extracted from upper limb reaching tasks to detect Parkinson’s disease by means of machine learning models. IEEE Trans. Neural Syst. Rehabil. Eng. 31, 1056–1063 (2023).

    Article 

    Google Scholar 

  • Alissa, M. et al. Parkinson’s disease diagnosis using convolutional neural networks and figure-copying tasks. Neural Comput. Appl. 34, 1433–1453 (2022).

    Article 

    Google Scholar 

  • Wang, Q., Zeng, W. & Dai, X. Gait classification for early detection and severity rating of Parkinson’s disease based on hybrid signal processing and machine learning methods. Cogn. Neurodyn 18, 109–132 (2022).

    Article 
    PubMed Central 

    Google Scholar 

  • Ma, Y.-W., Chen, J.-L., Chen, Y.-J. & Lai, Y.-H. Explainable deep learning architecture for early diagnosis of Parkinson’s disease. Soft Comput 27, 2729–2738 (2023).

    Article 

    Google Scholar 

  • Ferreira, M. I. A. S. N., Barbieri, F. A., Moreno, V. C., Penedo, T. & Tavares, J. M. R. S. Machine learning models for Parkinson’s disease detection and stage classification based on spatial-temporal gait parameters. Gait Posture 98, 49–55 (2022).

    Article 

    Google Scholar 

  • Valla, E., Nõmm, S., Medijainen, K., Taba, P. & Toomela, A. Tremor-related feature engineering for machine learning based Parkinson’s disease diagnostics. Biomed. Signal Process. Control 75, 103551 (2022).

    Article 

    Google Scholar 

  • da Rosa Tavares, J. E. et al. uTUG: an unsupervised timed up and go test for Parkinson’s disease. Biomed. Signal Process. Control 81, 104394 (2023).

    Article 

    Google Scholar 

  • Roy, S., Roy, U., Sinha, D. & Pal, R. K. Imbalanced ensemble learning in determining Parkinson’s disease using Keystroke dynamics. Expert Syst. Appl. 217, 119522 (2023).

    Article 

    Google Scholar 

  • Zhao, H. et al. Accurate identification of Parkinson’s disease by distinctive features and ensemble decision trees. Biomed. Signal Process. Control 69, 102860 (2021).

    Article 

    Google Scholar 

  • Mirelman, A. et al. Detecting sensitive mobility features for Parkinson’s disease stages via machine learning. Mov. Disord. 36, 2144–2155 (2021).

    Article 

    Google Scholar 

  • Kumar, K. & Ghosh, R. Parkinson’s disease diagnosis using recurrent neural network based deep learning model by analyzing online handwriting. Multimed. Tools Appl. 83, 11687–11715 (2023).

    Article 

    Google Scholar 

  • Zhao, A. & Li, J. A significantly enhanced neural network for handwriting assessment in Parkinson’s disease detection. Multimed. Tools Appl. 82, 38297–38317 (2023).

    Article 

    Google Scholar 

  • Talitckii, A. et al. Defining optimal exercises for efficient detection of Parkinson’s disease using machine learning and wearable sensors. IEEE Trans. Instrum. Meas. 70, 1–10 (2021).

    Article 

    Google Scholar 

  • Chen, M., Sun, Z., Xin, T., Chen, Y. & Su, F. An interpretable deep learning optimized wearable daily detection system for Parkinson’s disease. IEEE Trans. Neural Syst. Rehabil. Eng. 31, 3937–3946 (2023).

    Article 

    Google Scholar 

  • Varghese, J. et al. Machine learning in the Parkinson’s disease smartwatch (PADS) dataset. npj Parkinsons Dis. 10, 9 (2024).

    Article 
    PubMed Central 

    Google Scholar 

  • Yang, Y. et al. MELPD-detector: multi-level ensemble learning method based on adaptive data augmentation for Parkinson disease detection via free-KD. CCF Trans. Pervasive Comput. Interact. 6, 182–198 (2024).

    Article 

    Google Scholar 

  • Cuk, A. et al. Tuning attention based long-short term memory neural networks for Parkinson’s disease detection using modified metaheuristics. Sci. Rep. 14, 4309 (2024).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Bhandari, N., Walambe, R., Kotecha, K. & Kaliya, M. Integrative gene expression analysis for the diagnosis of Parkinson’s disease using machine learning and explainable AI. Comput. Biol. Med. 163, 107140 (2023).

    Article 
    CAS 

    Google Scholar 

  • Göker, H. Automatic detection of Parkinson’s disease from power spectral density of electroencephalography (EEG) signals using deep learning model. Phys. Eng. Sci. Med. 46, 1163–1174 (2023).

    Article 

    Google Scholar 

  • Lal, U., Chikkankod, A. V. & Longo, L. Fractal dimensions and machine learning for detection of Parkinson’s disease in resting-state electroencephalography. Neural Comput. Appl. 36, 8257–8280 (2024).

    Article 

    Google Scholar 

  • Lee, S., Hussein, R., Ward, R., Jane Wang, Z. & McKeown, M. J. A convolutional-recurrent neural network approach to resting-state EEG classification in Parkinson’s disease. J. Neurosci. Methods 361, 109282 (2021).

    Article 
    PubMed Central 

    Google Scholar 

  • Chang, H., Liu, B., Zong, Y., Lu, C. & Wang, X. EEG-based Parkinson’s disease recognition via attention-based sparse graph convolutional neural network. IEEE J. Biomed. Health Inform. 27, 5216–5224 (2023).

    Article 

    Google Scholar 

  • Wang, X. et al. Urine biomarkers discovery by metabolomics and machine learning for Parkinson’s disease diagnoses. Chin. Chem. Lett. 34, 108230 (2023).

    Article 
    CAS 

    Google Scholar 

  • Yang, C.-Y. & Huang, Y.-Z. Parkinson’s disease classification using machine learning approaches and resting-state EEG. J. Med. Biol. Eng. 42, 263–270 (2022).

    Article 
    CAS 

    Google Scholar 

  • Shabanpour, M., Kaboodvand, N. & Iravani, B. Parkinson’s disease is characterized by sub-second resting-state spatio-oscillatory patterns: a contribution from deep convolutional neural network. NeuroImage Clin. 36, 103266 (2022).

    Article 
    PubMed Central 

    Google Scholar 

  • Coelho, B. F. O. et al. Parkinson’s disease effective biomarkers based on Hjorth features improved by machine learning. Expert Syst. Appl. 212, 118772 (2023).

    Article 

    Google Scholar 

  • Hosny, M., Zhu, M., Gao, W. & Fu, Y. A novel deep learning model for STN localization from LFPs in Parkinson’s disease. Biomed. Signal Process. Control 77, 103830 (2022).

    Article 

    Google Scholar 

  • Martinez-Eguiluz, M. et al. Diagnostic classification of Parkinson’s disease based on non-motor manifestations and machine learning strategies. Neural Comput. Appl. 35, 5603–5617 (2023).

    Article 

    Google Scholar 

  • Xu, W. et al. Diagnosis of Parkinson’s disease via the metabolic fingerprint in saliva by deep learning. Small Methods 7, 2300285 (2023).

    Article 
    CAS 

    Google Scholar 

  • Zhang, R., Jia, J. & Zhang, R. EEG analysis of Parkinson’s disease using time–frequency analysis and deep learning. Biomed. Signal Process. Control 78, 103883 (2022).

    Article 

    Google Scholar 

  • Dar, M. N., Akram, M. U., Yuvaraj, R. & Khawaja, S. G. ul & Murugappan, M. EEG-based emotion charting for Parkinson’s disease patients using convolutional recurrent neural networks and cross dataset learning. Comput. Biol. Med. 144, 105327 (2022).

    Article 

    Google Scholar 

  • Nour, M., Senturk, U. & Polat, K. Diagnosis and classification of Parkinson’s disease using ensemble learning and 1D-PDCovNN. Comput Biol. Med. 161, 107031 (2023).

    Article 

    Google Scholar 

  • Chu, C. et al. An enhanced EEG microstate recognition framework based on deep neural networks: an application to Parkinson’s disease. IEEE J. Biomed. Health Inform. 27, 1307–1318 (2023).

    Article 

    Google Scholar 

  • Lin, W. C. et al. Electroencephalogram-driven machine-learning scenario for assessing impulse control disorder comorbidity in Parkinson’s disease using a low-cost, custom lego-like headset. IEEE Trans. Neural Syst. Rehabil. Eng. 31, 4106–4114 (2023).

    Article 

    Google Scholar 

  • Wu, J., Wu, W., Jiang, P., Xu, Y. & Yu, M. Identification of SV2C and DENR as key biomarkers for Parkinson’s disease based on bioinformatics, machine learning, and experimental verification. J. Mol. Neurosci. 74, 6 (2024).

    Article 
    CAS 

    Google Scholar 

  • Uehara, Y. et al. Non-invasive diagnostic tool for Parkinson’s disease by sebum RNA profile with machine learning. Sci. Rep. 11, 18550 (2021).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Aljalal, M., Aldosari, S. A., Molinas, M., AlSharabi, K. & Alturki, F. A. Detection of Parkinson’s disease from EEG signals using discrete wavelet transform, different entropy measures, and machine learning techniques. Sci. Rep. 12, 22547 (2022).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Dadu, A. et al. Identification and prediction of Parkinson’s disease subtypes and progression using machine learning in two cohorts. npj Parkinson. Dis. 8, 172 (2022).

    Article 

    Google Scholar 

  • Park, Y. H. et al. Machine learning based risk prediction for Parkinson’s disease with nationwide health screening data. Sci. Rep. 12, 19499 (2022).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Harvey, J. et al. Machine learning-based prediction of cognitive outcomes in de novo Parkinson’s disease. npj Parkinsons Dis. 8, 150 (2022).

    Article 
    PubMed Central 

    Google Scholar 

  • Karabayir, I. et al. Externally validated deep learning model to identify prodromal Parkinson’s disease from electrocardiogram. Sci. Rep. 13, 12290 (2023).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Leal, D. A. B., Dias, C. M. V., Ramos, R. P. & Brys, I. Prediction of dyskinesia in Parkinson’s disease patients using machine learning algorithms. Sci. Rep. 13, 22426 (2023).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Junaid, M., Ali, S., Eid, F., El-Sappagh, S. & Abuhmed, T. Explainable machine learning models based on multimodal time-series data for the early detection of Parkinson’s disease. Comput. Methods Prog. Biomed. 234, 107495 (2023).

    Article 

    Google Scholar 

  • Salmanpour, M. R., Shamsaei, M. & Rahmim, A. Feature selection and machine learning methods for optimal identification and prediction of subtypes in Parkinson’s disease. Comput. Methods Prog. Biomed. 206, 106131 (2021).

    Article 

    Google Scholar 

  • Severson, K. A. et al. Discovery of Parkinson’s disease states and disease progression modelling: a longitudinal data study using machine learning. Lancet Digital Health 3, e555–e564 (2021).

    Article 
    CAS 

    Google Scholar 

  • Khera, P. & Kumar, N. Novel machine learning-based hybrid strategy for severity assessment of Parkinson’s disorders. Med. Biol. Eng. Comput. 60, 811–828 (2022).

    Article 

    Google Scholar 

  • Indu, R., Dimri, S. C. & Malik, P. A modified kNN algorithm to detect Parkinson’s disease. Netw. Model. Anal. Health Inform. Bioinforma. 12, 24 (2023).

    Article 

    Google Scholar 

  • Sarica, A., Quattrone, A. & Quattrone, A. Explainable machine learning with pairwise interactions for the classification of Parkinson’s disease and SWEDD from clinical and imaging features. Brain Imaging Behav. 16, 2188–2198 (2022).

    Article 
    PubMed Central 

    Google Scholar 

  • Parisi, L., Neagu, D., Ma, R. & Campean, F. Quantum ReLU activation for convolutional neural networks to improve diagnosis of Parkinson’s disease and COVID-19. Expert Syst. Appl. 187, 115892 (2022).

    Article 

    Google Scholar 

  • Hajianfar, G. et al. Prediction of Parkinson’s disease pathogenic variants using hybrid Machine learning systems and radiomic features. Phys. Med. Eur. J. Med. Phys. 113, 102647 (2023).

    Google Scholar 

  • Kanagaraj, S., Hema, M. S. & Guptha, M. N. Optimized supervised learning approach to predict Parkinson’s disease with minimal attributes using PPMI Datasets. Multimed. Tools Appl. 83, 48499–48520 (2023).

    Article 

    Google Scholar 

  • Aggarwal, N., Saini, B. S. & Gupta, S. A deep 1-D CNN learning approach with data augmentation for classification of Parkinson’s disease and scans without evidence of dopamine deficit (SWEDD). Biomed. Signal Process. Control 91, 106008 (2024).

    Article 

    Google Scholar 

  • Templeton, J. M., Poellabauer, C. & Schneider, S. Classification of Parkinson’s disease and its stages using machine learning. Sci. Rep. 12, 14036 (2022).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Makarious, M. B. et al. Multi-modality machine learning predicting Parkinson’s disease, npj. Parkinsons Dis. 8, 35 (2022).

    Article 
    CAS 

    Google Scholar 

  • Haghi Kashani, M. & Bazza Abkenar, S. Chapter 23—Applications of fog computing for smart sensor network. in Sensor Networks for Smart Hospitals (ed. Nguyen, T. A.) 505–523 (Elsevier, 2025).

  • Nikravan, M. & Haghi Kashani, M. Chapter 4—Smart sensor networks based on edge technologies. in Blockchain and Digital Twin for Smart Healthcare (ed. Nguyen, T. A.) 1–23 (Elsevier, 2025).

  • Nikravan, M., Jameii, S. M. & Kashani, M. H. An intelligent energy efficient QoS-routing scheme for WSN. Int. J. Adv. Eng. Sci. Technol. 8, 121–124 (2011).

    Google Scholar 

  • Rahimi, M., Al Masry, Z., Templeton, J. M., Schneider, S. & Poellabauer, C. A comprehensive multifunctional approach for measuring Parkinson’s disease severity. Appl. Clin. Inf. 16, 11–23 (2025).

    Article 

    Google Scholar 

  • Rahimi,M., Masry,Z. A., Templeton,J. M., Schneider,S. & Poellabauer,C. Beyond motor symptoms: toward a comprehensive grading of Parkinson’s disease severity. in Presented at the Proceedings of the 14th ACM International Conference on Bioinformatics, Computational Biology, and Health Informatics, Houston, TX, USA (Association for Computing Machinery, 2023).

  • Templeton, J. et al. Modernizing the staging of Parkinson’s disease using digital health technology. J. Med. Internet Res. 27, e63105 (2025).

    Article 
    PubMed Central 

    Google Scholar 

  • Heim, B., Krismer, F., De Marzi, R. & Seppi, K. Magnetic resonance imaging for the diagnosis of Parkinson’s disease. J. Neural Transm. 124, 915–964 (2017).

    Article 

    Google Scholar 

  • Zhang, H. & Babar, M. A. Systematic reviews in software engineering: an empirical investigation. Inf. Softw. Technol. 55, 1341–1354 (2013).

    Article 

    Google Scholar 

  • Hernández-Mena, C. D. & Herrera-Camacho, J. Ciempiess: a new open-sourced mexican spanish radio corpus. in Proceedings of the Ninth International Conference on Language Resources and Evaluation (LREC’14), 371–375 (European Language Resources Association (ELRA), 2014).

  • Orozco-Arroyave, J. R., Vargas-Bonilla, J. F., Vásquez-Correa, J. C., Castellanos-Domínguez, C. G. & Nöth, E. Automatic detection of hypernasal speech of children with cleft lip and palate from spanish vowels and words using classical measures and nonlinear analysis. Rev. Facultad de. Ing. Univ. de. Antioquia 80, 109–123 (2016).

    Google Scholar 

  • Orozco-Arroyave, J. R., Arias-Londoño, J. D., Vargas-Bonilla, J. F., Gonzalez-Rátiva, M. C. & Nöth, E. New Spanish speech corpus database for the analysis of people suffering from Parkinson’s disease. in LREC, 342–347 (European Language Resources Association (ELRA), 2014).

  • Sakar, B. E. et al. Collection and analysis of a Parkinson speech dataset with multiple types of sound recordings. IEEE J. Biomed. Health Inform. 17, 828–834 (2013).

    Article 

    Google Scholar 

  • Little, M., Mcsharry, P., Roberts, S., Costello, D. & Moroz, I. Exploiting nonlinear recurrence and fractal scaling properties for voice disorder detection. Nat. Preced 6, 1–19 (2007).

    Google Scholar 

  • Sakar, C. O. et al. A comparative analysis of speech signal processing algorithms for Parkinson’s disease classification and the use of the tunable Q-factor wavelet transform. Appl. Soft Comput. 74, 255–263 (2019).

    Article 

    Google Scholar 

  • Rahman, A. et al. Parkinson’s disease diagnosis in cepstral domain using MFCC and dimensionality reduction with svm classifier. Mob. Inf. Syst. 2021, 1–10 (2021).

    Google Scholar 

  • Jaeger, H., Trivedi, D. & Stadtschnitzer, M. Mobile device voice recordings at King’s College London (MDVR-KCL) from both early and advanced Parkinson’s disease patients and healthy controls. Zenodo (2019).

  • Naranjo, L., Perez, C. J., Campos-Roca, Y. & Martin, J. Addressing voice recording replications for Parkinson’s disease detection. Expert Syst. Appl. 46, 286–292 (2016).

    Article 

    Google Scholar 

  • Li, Y. Z., Wang, X., Zhang, P. & X. Liu. Customized Subset of TIMIT with NOISEX-92 Augmentation (2021).

  • Kaggle. Parkinson’s Telemonitoring Dataset. https://www.kaggle.com/datasets/mountainguest/parkinsons-telemonitoring (2019)

  • Little, M., McSharry, P., Hunter, E., Spielman, J. & Ramig, L. Suitability of dysphonia measurements for telemonitoring of Parkinson’s disease. Nat. Preced 56, 1015–1022 (2008).

    Google Scholar 

  • UCI Machine Learning Repository. Parkinson’s Disease Data Set. https://archive.ics.uci.edu/dataset/174/parkinsons (2008).

  • Benba, A., Jilbab, A. & Hammouch, A. Discriminating between patients with Parkinson’s and neurological diseases using cepstral analysis. IEEE Trans. Neural Syst. Rehabil. Eng. 24, 1100–1108 (2016).

    Article 

    Google Scholar 

  • S. U. Institute of Phonetics, Saarbrücker Stimmdatenbank (Saarbrücken Voice Database).

  • Venegas, D. A. R. Dataset of vowels. https://www.kaggle.com/datasets/darubiano57/dataset-of-vowels (2018).

  • Tsanas, A. & Tsanas, A. eds. UCI Machine Learning Repository. https://archive.ics.uci.edu, (2014).

  • Khaskhoussy,R. & Ayed,Y. B. Detecting Parkinson’s disease according to gender using speech signals. in 14th International Conference on Knowledge Science, Engineering and Management (KSEM2021), 414–425 (Springer International Publishing, 2021).

  • Xiao F. Parkinson’s Disease Diagnosis Dataset. https://www.datafountain.cn/datasets/146 (DataFountain, 2020).

  • Giuliano, M. et al. Construction of a parkinson’s voice database. in International Conference on Industrial Engineering and Operations Management, 940 (IEOM Society International Sao Paulo, 2021).

  • Rusz, J. et al. Imprecise vowel articulation as a potential early marker of Parkinson’s disease: effect of speaking task. J. Acoust. Soc. Am. 134, 2171–2181 (2013).

    Article 

    Google Scholar 

  • Dimauro, G., Di Nicola, V., Bevilacqua, V., Caivano, D. & Girardi, F. Assessment of speech intelligibility in Parkinson’s disease using a speech-to-text system. IEEE Access 5, 22199–22208 (2017).

    Article 

    Google Scholar 

  • Viswanathan, R. et al. Efficiency of voice features based on consonant for detection of Parkinson’s disease. in 2018 IEEE Life Sciences Conference (LSC), 49–52 (IEEE, 2018).

  • Martínez, D., Lleida, E., Ortega, A., Miguel, A. & Villalba, J. Voice pathology detection on the Saarbrücken voice database with calibration and fusion of scores using multifocal toolkit. in Advances in Speech and Language Technologies for Iberian Languages: IberSPEECH 2012 Conference, Madrid, Spain, November 21-23, 2012. Proceedings 99–109 (Springer, 2012).

  • Pützer, M. & Koreman, J. A German database of patterns of pathological vocal fold vibration. Phonus 3, 143–153 (1997).

    Google Scholar 

  • Khoshnevis, S. A. & Sankar, R. Diagnosis of Parkinson’s disease using higher order statistical analysis of alpha and beta rhythms. Biomed. Signal Process. Control 77, 103743 (2022).

    Article 

    Google Scholar 

  • Prior,F. et al. Voice samples for patients with Parkinson’s disease and healthy controls. figshare, https://figshare.com/articles/dataset/Voice_Samples_for_Patients_with_Parkinson_s_Disease_and_Healthy_Controls/23849127 (2023).

  • Hughes, A. J., Daniel, S. E., Kilford, L. & Lees, A. J. Accuracy of clinical diagnosis of idiopathic Parkinson’s disease: a clinico-pathological study of 100 cases. J. Neurol. Neurosurg. Psychiatry 55, 181 (1992).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Hughes, A. J., Ben-Shlomo, Y., Daniel, S. E. & Lees, A. J. What features improve the accuracy of clinical diagnosis in Parkinson’s disease: a clinicopathologic study. Neurology 42, 1142–1142 (1992).

    Article 
    CAS 

    Google Scholar 

  • Betts, M. J., Cardenas-Blanco, A., Kanowski, M., Jessen, F. & Düzel, E. In vivo MRI assessment of the human locus coeruleus along its rostrocaudal extent in young and older adults. Neuroimage 163, 150–159 (2017).

    Article 

    Google Scholar 

  • Dünnwald, M., Betts, M. J., Düzel, E. & Oeltze-Jafra, S. Localization of the locus coeruleus in MRI via coordinate regression. in Bildverarbeitung für die Medizin 2021: Proceedings, German Workshop on Medical Image Computing, Regensburg, March 7-9, 2021 10–15 (Springer, 2021).

  • P. s. P. M. Initiative. Parkinson’s Progression Markers Initiative (PPMI). (2011).

  • Marek, K. et al. The Parkinson progression marker initiative (PPMI). Prog. Neurobiol. 95, 629–635 (2011).

    Article 
    PubMed Central 

    Google Scholar 

  • Gorgolewski, K., Esteban, O., Schaefer, G., Wandell, B. & Poldrack, R. OpenNeuro—A Free Online Platform for Sharing and Analysis of Neuroimaging Data (Organization for Human Brain Mapping, 2017).

  • Laboratory of Neuro Imaging (LONI). Image and Data Archive (IDA). https://ida.loni.usc.edu/login.jsp (2025).

  • Duchesne, S. et al. The Canadian Dementia Imaging Protocol: Harmonizing National Cohorts. J. Magn. Reson. Imaging 49, 456–465 (2019).

    Article 

    Google Scholar 

  • Acharya, H. J., Bouchard, T. P., Emery, D. J. & Camicioli, R. M. Axial signs and magnetic resonance imaging correlates in Parkinson’s disease. Can. J. Neurol. Sci. 34, 56–61 (2007).

    Article 

    Google Scholar 

  • Lang, S. et al. Network basis of the dysexecutive and posterior cortical cognitive profiles in Parkinson’s disease. Mov. Disord. 34, 893–902 (2019).

    Article 

    Google Scholar 

  • Hanganu, A. et al. Mild cognitive impairment is linked with faster rate of cortical thinning in patients with Parkinson’s disease longitudinally. Brain 137, 1120–1129 (2014).

    Article 

    Google Scholar 

  • T. N. M. N. Institute-Hospital. C-BIG Repository. https://www.mcgill.ca/neuro/research/c-big-repository.

  • Badea, L., Onu, M., Wu, T., Roceanu, A. & Bajenaru, O. Exploring the reproducibility of functional connectivity alterations in Parkinson’s disease. PLoS ONE 12, 1–21 (2017).

    Article 

    Google Scholar 

  • Yoneyama, N. et al. Severe hyposmia and aberrant functional connectivity in cognitively normal Parkinson’s disease. PLoS ONE 13, e0190072 (2018).

    Article 
    PubMed Central 

    Google Scholar 

  • Markiewicz, C. J. et al. ds000245: UCLA Consortium for Neuropsychiatric Phenomics LA5c Study. https://openneuro.org/datasets/ds000245/versions/00001 (2016).

  • Boelmans, K. et al. Brain iron deposition fingerprints in Parkinson’s disease and progressive supranuclear palsy. Mov. Disord. 27, 421–427 (2012).

    Article 

    Google Scholar 

  • LaMontagne, P. J. et al. IC-P-164: OASIS-3: longitudinal neuroimaging, clinical, and cognitive dataset for normal aging and Alzheimer’s disease. Alzheimers Dement 14, P138–P138 (2018).

    Google Scholar 

  • Wei, D. et al. Structural and functional MRI from a cross-sectional Southwest University Adult lifespan Dataset (SALD). bioRxiv https://doi.org/10.1101/177279 (2017).

    Article 

    Google Scholar 

  • Pereira, C. R., Weber, S. A., Hook, C., Rosa, G. H. & Papa, J. P. Deep learning-aided Parkinson’s disease diagnosis from handwritten dynamics. in 2016 29th SIBGRAPI Conference on Graphics, Patterns and Images (SIBGRAPI), 340–346 (IEEE, 2016).

  • ul Haq, A. et al. A survey of deep learning techniques based Parkinson’s disease recognition methods employing clinical data. Expert Syst. Appl. 208, 118045 (2022).

    Article 

    Google Scholar 

  • Sheriff, I. Parkinson’s Brain MRI Dataset. https://www.kaggle.com/datasets/irfansheriff/parkinsons-brain-mri-dataset (2022).

  • Sudlow, C. et al. UK Biobank: an open access resource for identifying the causes of a wide range of complex diseases of middle and old age. PLoS Med 12, e1001779 (2015).

    Article 
    PubMed Central 

    Google Scholar 

  • Frenkel-Toledo, S. et al. Treadmill walking as an external pacemaker to improve gait rhythm and stability in Parkinson’s disease. Mov. Disord. 20, 1109–1114 (2005).

    Article 

    Google Scholar 

  • Drotár, P. et al. Decision support framework for Parkinson’s disease based on novel handwriting markers. IEEE Trans. Neural Syst. Rehabil. Eng. 23, 508–516 (2014).

    Article 

    Google Scholar 

  • Hausdorff, J. M. et al. Rhythmic auditory stimulation modulates gait variability in Parkinson’s disease. Eur. J. Neurosci. 26, 2369–2375 (2007).

    Article 

    Google Scholar 

  • Yogev, G. et al. Dual tasking, gait rhythmicity, and Parkinson’s disease: which aspects of gait are attention demanding? Eur. J. Neurosci. 22, 1248–1256 (2005).

    Article 

    Google Scholar 

  • Tsanas, A., Little, M., McSharry, P. & Ramig, L. Accurate telemonitoring of Parkinson’s disease progression by non-invasive speech tests. IEEE Trans. Biomed. Eng. 57, 884–893 (2010).

    Article 

    Google Scholar 

  • Bachlin, M. et al. Wearable assistant for Parkinson’s disease patients with the freezing of gait symptom. IEEE Trans. Inf. Technol. Biomed. 14, 436–446 (2009).

    Article 

    Google Scholar 

  • Alexander Koelewijn, D. H. & van den Bogert, A. J. Metabolic cost calculations of gait using musculoskeletal energy models: a comparison study. https://www.mad.tf.fau.de/research/datasets/#collapse_11 (2019).

  • Rodríguez-Martín, D. et al. Home detection of freezing of gait using support vector machines through a single waist-worn triaxial accelerometer. PLoS ONE 12, e0171764 (2017).

    Article 
    PubMed Central 

    Google Scholar 

  • Borzì, L. et al. Prediction of freezing of gait in Parkinson’s disease using wearables and machine learning. Sensors 21, 614 (2021).

    Article 
    PubMed Central 

    Google Scholar 

  • Borzì, L. et al. Home monitoring of motor fluctuations in Parkinson’s disease patients. J. Reliab. Intell. Environ. 5, 145–162 (2019).

    Article 

    Google Scholar 

  • Borzì, L. et al. A new index to assess turning quality and postural stability in patients with Parkinson’s disease. Biomed. Signal Process. Control 62, 102059 (2020).

    Article 

    Google Scholar 

  • Goldberger, A. L. et al. PhysioBank, PhysioToolkit, and PhysioNet: components of a new research resource for complex physiologic signals. Circulation 101, e215–e220 (2000).

    Article 
    CAS 

    Google Scholar 

  • Goldberger, A. L. et al. Gait in Parkinson’s Disease Database (version 1.0.0). https://physionet.org/content/gaitpdb/1.0.0/ (2000).

  • Drotár, P. et al. Evaluation of handwriting kinematics and pressure for differential diagnosis of Parkinson’s disease. Artif. Intell. Med. 67, 39–46 (2016).

    Article 

    Google Scholar 

  • F. Machine Learning and Data Analytics Lab (MAD Lab). Research Datasets—Machine Learning and Data Analytics Lab. https://www.mad.tf.fau.de/research/datasets/.

  • Giancardo, L. et al. Computer keyboard interaction as an indicator of early Parkinson’s disease. Sci. Rep. 6, 34468 (2016).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Dhir, N., Edman, M., Sanchez Ferro, A., Stafford, T. & Bannard, C. Identifying robust markers of Parkinson’s disease in typing behaviour using a CNN-LSTM network. (2020).

  • Mirelman, A. et al. Addition of a non-immersive virtual reality component to treadmill training to reduce fall risk in older adults (V-TIME): a randomised controlled trial. Lancet 388, 1170–1182 (2016).

    Article 

    Google Scholar 

  • Mirelman, A. et al. Tossing and turning in bed: nocturnal movements in Parkinson’s disease. Mov. Disord. 35, 959–968 (2020).

    Article 

    Google Scholar 

  • Drotár, P. et al. Analysis of in-air movement in handwriting: a novel marker for Parkinson’s disease. Comput. Methods Prog. Biomed. 117, 405–411 (2014).

    Article 

    Google Scholar 

  • Zeid, S. S., ElKamar, R. A. & Hassan, S. I. Fixed-text vs. free-text keystroke dynamics for user authentication. Eng. Res. J. Fac. Eng. 51, 95–104 (2022).

    Google Scholar 

  • Iapa, A.-C. & Cretu, V.-I. Shared data set for free-text keystroke dynamics authentication algorithms. (2021).

  • Sun, Y., Ceker, H. & Upadhyaya, S. Shared keystroke dataset for continuous authentication. in 2016 IEEE International Workshop on Information Forensics and Security (WIFS), 1–6 (IEEE, 2016).

  • Lu, X., Zhang, S., Hui, P. & Lio, P. Continuous authentication by free-text keystroke based on CNN and RNN. Comput. Secur. 96, 101861 (2020).

    Article 

    Google Scholar 

  • Hausdorff, J. M. Gait in Parkinson’s Disease Database (PhysioNet, 2008).

  • National Center for Biotechnology Information (NCBI). GEO: Gene Expression Omnibus. https://www.ncbi.nlm.nih.gov/geo/.

  • Apweiler, R. et al. UniProt: the universal protein knowledgebase. Nucleic Acids Res. 32, D115–D119 (2017).

    Article 

    Google Scholar 

  • Anjum, M. F. et al. Linear predictive coding distinguishes spectral EEG features of Parkinson’s disease. Parkinsonism Relat. Disord. 79, 79–85 (2020).

    Article 
    PubMed Central 

    Google Scholar 

  • Rockhill, A. P., Jackson, N., George, J., Aron, A. & Swann, N. C. UC San Diego resting state EEG data from patients with Parkinson’s disease. (2020).

  • Pernet, C. R. et al. EEG-BIDS, an extension to the brain imaging data structure for electroencephalography. Sci. Data 6, 103 (2019).

    Article 
    PubMed Central 

    Google Scholar 

  • Cavanagh, J. F., Kumar, P., Mueller, A. A., Richardson, S. P. & Mueen, A. Diminished EEG habituation to novel events effectively classifies Parkinson’s patients. Clin. Neurophysiol. 129, 409–418 (2018).

    Article 

    Google Scholar 

  • U. o. N. M. P. M. Lab, Predict Dataset Repository, U. o. N. M. P. M. Lab, Ed., ed.

  • Scherzer, C. R. et al. Molecular markers of early Parkinson’s disease based on gene expression in blood. Med. Sci. 104, 955–960 (2007).

    CAS 

    Google Scholar 

  • Scherzer, C. R. et al. GATA transcription factors directly regulate the Parkinson’s disease-linked gene α-synuclein. Proc. Natl Acad. Sci. USA 105, 10907–10912 (2008).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Calligaris, R. et al. Blood transcriptomics of drug-naïve sporadic Parkinson’s disease patients. BMC Genomics 16, 876 (2015).

    Article 
    PubMed Central 

    Google Scholar 

  • Shamir, R. et al. Analysis of blood-based gene expression in idiopathic Parkinson disease. Neurology 89, 1676–1683 (2017).

    Article 
    CAS 
    PubMed Central 

    Google Scholar 

  • Locascio, J. J. et al. Association between α-synuclein blood transcripts and early, neuroimaging-supported Parkinson’s disease. Brain 138, 2659–2671 (2015).

    Article 
    PubMed Central 

    Google Scholar 

  • Shehadeh, L. A. et al. SRRM2, a potential blood biomarker revealing high alternative splicing in Parkinson’s disease. PLoS ONE 5, e9104 (2010).

    Article 
    PubMed Central 

    Google Scholar 

  • J. F. C. jcavanagh@unm.edu. EEG: 3-Stim Auditory Oddball and Rest in Parkinson’s (OpenNeuro, 2021).

  • Railo, H., Nokelainen, N., Savolainen, S. & Kaasinen, V. Deficits in monitoring self-produced speech in Parkinson’s disease. Clin. Neurophysiol. 131, 2140–2147 (2020).

    Article 

    Google Scholar 

  • Open Science Framework. OSF Project Page (or actual project title if available). https://osf.io/pehj9/.

  • Cavanagh, J. F., Napolitano, A., Wu, C. & Mueen, A. The patient repository for EEG data+ computational tools (PRED+ CT). Front. Neuroinform 11, 1–9 (2017).

    Article 

    Google Scholar 

  • Zheng, W. L., Liu, W., Lu, Y., Lu, B. L. & Cichocki, A. EmotionMeter: a multimodal framework for recognizing human emotions. IEEE Trans. Cybern. 49, 1110–1122 (2019).

    Article 

    Google Scholar 

  • Miranda-Correa, J. A., Abadi, M. K., Sebe, N. & Patras, I. AMIGOS: a dataset for affect, personality and mood research on individuals and groups. IEEE Trans. Affect. Comput. 12, 479–493 (2021).

    Article 

    Google Scholar 

  • Yuvaraj, R. et al. On the analysis of EEG power, frequency and asymmetry in Parkinson’s disease during emotion processing. Behav. Brain Funct. 10, 1–19 (2014).

    Article 

    Google Scholar 

  • Jackson, N., Cole, S. R., Voytek, B. & Swann, N. C. Characteristics of waveform shape in Parkinson’s disease detected with scalp electroencephalography. eNeuro 6, 1–11 (2019).

    Article 

    Google Scholar 

  • Lin, Y.-P. et al. Objective assessment of impulse control disorder in patients with Parkinson’s disease using a low-cost LEGO-like EEG headset: a feasibility study. J. Neuroeng. Rehabil. 18, 109 (2021).

    Article 
    PubMed Central 

    Google Scholar 

  • Swann, N. C. et al. Elevated synchrony in P arkinson disease detected with electroencephalography. Ann. Neurol. 78, 742–750 (2015).

    Article 
    PubMed Central 

    Google Scholar 

  • OpenNeuro. Dataset ds002778 (Version 1.0.2). https://openneuro.org/datasets/ds002778/versions/1.0.2.

  • Rosenthal, L. S. et al. Parkinson’s Disease Biomarkers Program. Mov. Disord. 31, 915–923 (2016).

    Article 
    CAS 

    Google Scholar 

  • Seong, S. C. et al. Cohort profile: the National Health Insurance Service-National Health Screening Cohort (NHIS-HEALS) in Korea. BMJ Open 7, 1–12 (2017).

    Article 
    CAS 

    Google Scholar 

  • Goldberger, A. L. et al. PhysioBank, PhysioToolkit, and PhysioNet. Circulation 101, e215–e220 (2000).

    Article 
    CAS 

    Google Scholar 

  • Pereira, C. R. et al. A new computer vision-based approach to aid the diagnosis of Parkinson’s disease. Comput. Methods Prog. Biomed. 136, 79–88 (2016).

    Article 

    Google Scholar 

  • Zham, P., Kumar, D. K., Dabnichki, P., Poosapadi Arjunan, S. & Raghav, S. Distinguishing different stages of Parkinson’s disease using composite index of speed and pen-pressure of sketching a spiral. Front. Neurol. 8, 1–7 (2017).

    Article 

    Google Scholar 

  • Born, J. et al. POCOVID-Net: automatic detection of COVID-19 from a new lung ultrasound imaging dataset (POCUS). Preprint at arXiv https://doi.org/10.48550/arXiv.2004.12084 (2020).

  • Born, J. et al. Automatic DETECTIon of COVID-19 from ultrasound data. GitHub repository (2020).

  • Benamer, H. T. et al. Accurate differentiation of Parkinsonism and essential tremor using visual assessment of [123I]-FP-CIT SPECT imaging: the [123I]-FP-CIT study group. Mov. Disord. 15, 503–510 (2000).

    Article 
    CAS 

    Google Scholar 

  • Siderowf, A. et al. PET imaging of amyloid with Florbetapir F 18 and PET imaging of dopamine degeneration with 18F-AV-133 (florbenazine) in patients with Alzheimer’s disease and Lewy body disorders. BMC Neurol. 14, 1–9 (2014).

    Article 

    Google Scholar 



  • Source link

    Leave a Reply

    Your email address will not be published. Required fields are marked *