Diagnosis of autism spectrum disorder based on functional brain networks and machine learning

Machine Learning


  • Lord, C. et al. Autism spectrum disorder. Nat. Rev. Dis. Primers 6, 1 (2020).

    Article 

    Google Scholar 

  • Al-Beltagi, M. Autism medical comorbidities. World J. Clin. Pediatrics 10, 15 (2021).

    Article 

    Google Scholar 

  • A. P. Association et al., American psychiatric association: Diagnosti c and statistical manual of mental disorders. Arlington (2013)

  • Hosozawa, M., Sacker, A. & Cable, N. Timing of diagnosis, depression and self-harm in adolescents with autism spectrum disorder. Autism 25, 70 (2021).

    Article 
    PubMed 

    Google Scholar 

  • Beaudet, A. L. Autism: Highly heritable but not inherited. Nat. Med. 13, 534 (2007).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Belmonte, M. K. et al. Autism and abnormal development of brain connectivity. J. Neurosci. 24, 9228 (2004).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Belmonte, M. K. & Yurgelun-Todd, D. A. Functional anatomy of impaired selective attention and compensatory processing in autism. Cogn. Brain Res. 17, 651 (2003).

    Article 

    Google Scholar 

  • DeRamus, T. P., Black, B. S., Pennick, M. R. & Kana, R. K. Enhanced parietal cortex activation during location detection in children with autism. J. Neurodev. Disord. 6, 1 (2014).

    Article 

    Google Scholar 

  • Euston, D. R., Gruber, A. J. & McNaughton, B. L. The role of medial prefrontal cortex in memory and decision making. Neuron 76, 1057 (2012).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Kennedy, D. P., Redcay, E. & Courchesne, E. Failing to deactivate: Resting functional abnormalities in autism. Proc. Natl. Acad. Sci. 103, 8275 (2006).

    Article 
    ADS 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Keller, T. A., Kana, R. K. & Just, M. A. A developmental study of the structural integrity of white matter in autism. NeuroReport 18, 23 (2007).

    Article 
    PubMed 

    Google Scholar 

  • Aoki, Y., Abe, O., Nippashi, Y. & Yamasue, H. Comparison of white matter integrity between autism spectrum disorder subjects and typically developing individuals: A meta-analysis of diffusion tensor imaging tractography studies. Mol. Autism 4, 1 (2013).

    Article 

    Google Scholar 

  • De Vico Fallani, F. et al. Multiple pathways analysis of brain functional networks from EEG signals: An application to real data. Brain Topogr. 23, 344 (2011).

    Article 
    PubMed 

    Google Scholar 

  • Alves, C. L., Pineda, A. M., Roster, K., Thielemann, C. & Rodrigues, F. A. EEG functional connectivity and deep learning for automatic diagnosis of brain disorders: Alzheimer’s disease and schizophrenia. J. Phys. Complex. 3, 025001 (2022).

    Article 
    ADS 

    Google Scholar 

  • Pineda, A. M. & Rodrigues, F. A. Complex networks to differentiate elderly and young people. In Annual International Conference on Information Management and Big Data 435–444 (Springer, 2020)

  • Menon, V. & Crottaz-Herbette, S. Combined EEG and FMRI studies of human brain function. Int. Rev. Neurobiol. 66, 291 (2005).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Formisano, E. et al. Mirror-symmetric tonotopic maps in human primary auditory cortex. Neuron 40, 859 (2003).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Sturzbecher, M. J. Detecção e caracterização da resposta hemodinâmica pelo desenvolvimento de novos métodos de processamento de imagens funcionais por ressonância magnética, Ph.D. thesis, Universidade de São Paulo (2006)

  • Biswal, B., Zerrin Yetkin, F., Haughton, V. M. & Hyde, J. S. Functional connectivity in the motor cortex of resting human brain using echo-planar mri. Magn. Reson. Med. 34, 537 (1995).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Hyde, K. K. et al. Applications of supervised machine learning in autism spectrum disorder research: A review. Rev. J. Autism Dev. Disord. 6, 128 (2019).

    Article 

    Google Scholar 

  • Al-Hiyali, M. I., Yahya, N., Faye, I., Al-Quraishi, M. S. & Al-Ezzi, A. Principal subspace of dynamic functional connectivity for diagnosis of autism spectrum disorder. Appl. Sci. 12, 9339 (2022).

    Article 
    CAS 

    Google Scholar 

  • Subah, F. Z., Deb, K., Dhar, P. K. & Koshiba, T. A deep learning approach to predict autism spectrum disorder using multisite resting-state FMRI. Appl. Sci. 11, 3636 (2021).

    Article 
    CAS 

    Google Scholar 

  • Chen, C. P. et al. Diagnostic classification of intrinsic functional connectivity highlights somatosensory, default mode, and visual regions in autism. NeuroImage Clin. 8, 238 (2015).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Nunes, A. S. et al. Atypical age-related changes in cortical thickness in autism spectrum disorder. Sci. Rep. 10, 1 (2020).

    Article 

    Google Scholar 

  • Yamagata, B. et al. Machine learning approach to identify a resting-state functional connectivity pattern serving as an endophenotype of autism spectrum disorder. Brain Imaging Behav. 13, 1689 (2019).

    Article 
    PubMed 

    Google Scholar 

  • Devi, B., Kumar, S., Shankar, V. G. et al. Anadata: A novel approach for data analytics using random forest tree and SVM. In Computing, Communication and Signal Processing 511–521 (Springer, 2019)

  • Huang, Z.-A., Zhu, Z., Yau, C. H. & Tan, K. C. Identifying autism spectrum disorder from resting-state FMRI using deep belief network. IEEE Trans. Neural Netw. Learn. Syst. 32, 2847 (2020).

    Article 

    Google Scholar 

  • McBride, J. C. et al. Sugihara causality analysis of scalp EEG for detection of early Alzheimer’s disease. NeuroImage Clin. 7, 258 (2015).

    Article 
    PubMed 

    Google Scholar 

  • Rudin, C. Stop explaining black box machine learning models for high stakes decisions and use interpretable models instead. Nat. Mach. Intell. 1, 206 (2019).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Ekanayake, I., Meddage, D. & Rathnayake, U. A novel approach to explain the black-box nature of machine learning in compressive strength predictions of concrete using shapley additive explanations (shap). Case Stud. Constr. Mater. e01059 (2022).

  • Steyerberg, E. W., Eijkemans, M. J., Harrell, F. E. Jr. & Habbema, J. D. F. Prognostic modelling with logistic regression analysis: A comparison of selection and estimation methods in small data sets. Stat. Med. 19, 1059 (2000).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Ferguson, A. R., Nielson, J. L., Cragin, M. H., Bandrowski, A. E. & Martone, M. E. Big data from small data: Data-sharing in the ‘long tail’ of neuroscience. Nat. Neurosci. 17, 1442 (2014).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Bae, H.-J. et al. A perlin noise-based augmentation strategy for deep learning with small data samples of HRCT images. Sci. Rep. 8, 1 (2018).

    Article 
    ADS 

    Google Scholar 

  • D’souza, R. N., Huang, P.-Y. & Yeh, F.-C. Structural analysis and optimization of convolutional neural networks with a small sample size. Sci. Rep. 10, 1 (2020).

    Article 

    Google Scholar 

  • Lundberg, S. M. & Lee, S.-I. A unified approach to interpreting model predictions. In Proceedings of the 31st International Conference on Neural Information Processing Systems 4768–4777 (2017)

  • Bowen, D. & Ungar, L. Generalized shap: Generating multiple types of explanations in machine learning. arXiv preprint arXiv:2006.07155 (2020)

  • Rodríguez-Pérez, R. & Bajorath, J. Interpretation of compound activity predictions from complex machine learning models using local approximations and shapley values. J. Med. Chem. 63, 8761 (2019).

    Article 
    PubMed 

    Google Scholar 

  • Spadon, G., de Carvalho, A. C., Rodrigues-Jr, J. F. & Alves, L. G. Reconstructing commuters network using machine learning and urban indicators. Sci. Rep. 9, 1 (2019).

    Article 
    ADS 
    CAS 

    Google Scholar 

  • Lashgari, E., Liang, D. & Maoz, U. Data augmentation for deep-learning-based electroencephalography. J. Neurosci. Methods 346, 108885 (2020).

    Article 
    PubMed 

    Google Scholar 

  • Qiang, N. et al. Modeling and augmenting of FMRI data using deep recurrent variational auto-encoder. J. Neural Eng. 18, 0460b6 (2021).

    Article 

    Google Scholar 

  • Luo, Y., Zhu, L.-Z., Wan, Z.-Y. & Lu, B.-L. Data augmentation for enhancing EEG-based emotion recognition with deep generative models. J. Neural Eng. 17, 056021 (2020).

    Article 
    ADS 
    PubMed 

    Google Scholar 

  • Chang, C., Liu, Z., Chen, M. C., Liu, X. & Duyn, J. H. EEG correlates of time-varying bold functional connectivity. Neuroimage 72, 227 (2013).

    Article 
    PubMed 

    Google Scholar 

  • Li, Y., Yang, H., Li, J., Chen, D. & Du, M. EEG-based intention recognition with deep recurrent-convolution neural network: Performance and channel selection by grad-cam. Neurocomputing 415, 225 (2020).

    Article 

    Google Scholar 

  • Chang, C. et al. Association between heart rate variability and fluctuations in resting-state functional connectivity. Neuroimage 68, 93 (2013).

    Article 
    PubMed 

    Google Scholar 

  • Jie, B., Liu, M., Lian, C., Shi, F. & Shen, D. Designing weighted correlation kernels in convolutional neural networks for functional connectivity based brain disease diagnosis. Med. Image Anal. 63, 101709 (2020).

    Article 
    PubMed 

    Google Scholar 

  • Alves, C. L. Diagnóstico de doenças mentais baseado em mineração de dados e redes complexas. Ph.D. thesis, Universidade de São Paulo

  • Nielsen, J. A. et al. Multisite functional connectivity MRI classification of autism: Abide results. Front. Hum. Neurosci. 7, 599 (2013).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Trapp, C., Vakamudi, K. & Posse, S. On the detection of high frequency correlations in resting state FMRI. Neuroimage 164, 202 (2018).

    Article 
    PubMed 

    Google Scholar 

  • Bellec, P., Rosa-Neto, P., Lyttelton, O. C., Benali, H. & Evans, A. C. Multi-level bootstrap analysis of stable clusters in resting-state FMRI. Neuroimage 51, 1126 (2010).

    Article 
    PubMed 

    Google Scholar 

  • Yang, X., Zhang, N. & Schrader, P. A study of brain networks for autism spectrum disorder classification using resting-state functional connectivity. Mach. Learn. Appl. 8, 100290 (2022).

    Google Scholar 

  • Benesty, J., Chen, J., Huang, Y. & Cohen, I. Pearson correlation coefficient. In Noise Reduction in Speech Processing 1–4 (Springer, 2009)

  • Lubinski, D. Introduction to the special section on cognitive abilities: 100 years after spearman’s (1904) general intelligence’,objectively determined and measured. J. Pers. Soc. Psychol. 86, 96 (2004).

    Article 
    PubMed 

    Google Scholar 

  • Granger, C. W. Investigating causal relations by econometric models and cross-spectral methods. Econom. J. Econom. Soc. 37, 424–438 (1969).

    MATH 

    Google Scholar 

  • Wilcox, R. R. Introduction to Robust Estimation and Hypothesis Testing (Academic press, New York, 2011).

    MATH 

    Google Scholar 

  • Hardoon, D. R. & Shawe-Taylor, J. Sparse canonical correlation analysis. Mach. Learn. 83, 331 (2011).

    Article 
    MathSciNet 
    MATH 

    Google Scholar 

  • Sojoudi, S. Equivalence of graphical lasso and thresholding for sparse graphs. J. Mach. Learn. Res. 17, 3943 (2016).

    MathSciNet 
    MATH 

    Google Scholar 

  • Ledoit, O. & Wolf, M. Nonlinear shrinkage estimation of large-dimensional covariance matrices. Ann. Stat. 40, 1024 (2012).

    Article 
    MathSciNet 
    MATH 

    Google Scholar 

  • Kraskov, A., Stögbauer, H. & Grassberger, P. Estimating mutual information. Phys. Rev. E 69, 066138 (2004).

    Article 
    ADS 
    MathSciNet 

    Google Scholar 

  • Schreiber, T. Measuring information transfer. Phys. Rev. Lett. 85, 461 (2000).

    Article 
    ADS 
    CAS 
    PubMed 

    Google Scholar 

  • Bottou, L. & Lin, C.-J. Support vector machine solvers. Large Scale Kernel Mach. 3, 301 (2007).

    Google Scholar 

  • Breiman, L. Random forests. Mach. Learn. 45, 5 (2001).

    Article 
    MATH 

    Google Scholar 

  • Friedman, N., Geiger, D. & Goldszmidt, M. Bayesian network classifiers. Mach. Learn. 29, 131 (1997).

    Article 
    MATH 

    Google Scholar 

  • Tolles, J. & Meurer, W. J. Logistic regression: Relating patient characteristics to outcomes. JAMA 316, 533 (2016).

    Article 
    PubMed 

    Google Scholar 

  • Najafabadi, M. M., Khoshgoftaar, T. M., Villanustre, F. & Holt, J. Large-scale distributed l-BFGS. J. Big Data 4, 1 (2017).

    Article 

    Google Scholar 

  • Hinton, G., Rumelhart, D. & Williams, R. Learning internal representations by error propagation. Parallel Distrib. Process. 1, 318 (1986).

    Google Scholar 

  • Berrar, D. Cross-validation (2019).

  • Bengio, Y. & Grandvalet, Y. No unbiased estimator of the variance of k-fold cross-validation. J. Mach. Learn. Res. 5, 1089 (2004).

    MathSciNet 
    MATH 

    Google Scholar 

  • Shah, A. A. & Khan, Y. D. Identification of 4-carboxyglutamate residue sites based on position based statistical feature and multiple classification. Sci. Rep. 10, 1 (2020).

    Article 
    ADS 

    Google Scholar 

  • Kawamoto, T. & Kabashima, Y. Cross-validation estimate of the number of clusters in a network. Sci. Rep. 7, 1 (2017).

    Article 

    Google Scholar 

  • Chan, J., Rea, T., Gollakota, S. & Sunshine, J. E. Contactless cardiac arrest detection using smart devices. NPJ Digital Med. 2, 1 (2019).

    Article 

    Google Scholar 

  • Sato, M. et al. Machine-learning approach for the development of a novel predictive model for the diagnosis of hepatocellular carcinoma. Sci. Rep. 9, 1 (2019).

    Article 
    ADS 

    Google Scholar 

  • Zhong, Z., Yuan, X., Liu, S., Yang, Y. & Liu, F. Machine learning prediction models for prognosis of critically ill patients after open-heart surgery. Sci. Rep. 11, 1 (2021).

    Article 
    CAS 

    Google Scholar 

  • Arcadu, F. et al. Author correction: Deep learning algorithm predicts diabetic retinopathy progression in individual patients. NPJ Digital Med. 3, 1 (2020).

    Article 

    Google Scholar 

  • Krittanawong, C. et al. Machine learning and deep learning to predict mortality in patients with spontaneous coronary artery dissection. Sci. Rep. 11, 1 (2021).

    Article 

    Google Scholar 

  • Rashidi, H. H. et al. Early recognition of burn-and trauma-related acute kidney injury: A pilot comparison of machine learning techniques. Sci. Rep. 10, 1 (2020).

    Article 
    ADS 

    Google Scholar 

  • Mincholé, A. & Rodriguez, B. Artificial intelligence for the electrocardiogram. Nat. Med. 25, 22 (2019).

    Article 
    PubMed 

    Google Scholar 

  • Tolkach, Y., Dohmgörgen, T., Toma, M. & Kristiansen, G. High-accuracy prostate cancer pathology using deep learning. Nat. Mach. Intell. 2, 411 (2020).

    Article 

    Google Scholar 

  • Dukart, J., Weis, S., Genon, S. & Eickhoff, S. B. Towards increasing the clinical applicability of machine learning biomarkers in psychiatry. Nat. Hum. Behav. 5, 431 (2021).

    Article 
    PubMed 

    Google Scholar 

  • Li, R. C., Asch, S. M. & Shah, N. H. Developing a delivery science for artificial intelligence in healthcare. NPJ Digital Med. 3, 1 (2020).

    Article 

    Google Scholar 

  • Park, Y. & Kellis, M. Deep learning for regulatory genomics. Nat. Biotechnol. 33, 825 (2015).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Ito, Y. et al. A method for utilizing automated machine learning for histopathological classification of testis based on johnsen scores. Sci. Rep. 11, 1 (2021).

    Article 

    Google Scholar 

  • Kim, J., Lee, J., Park, E. & Han, J. A deep learning model for detecting mental illness from user content on social media. Sci. Rep. 10, 1 (2020).

    Google Scholar 

  • Li, Y., Nowak, C. M., Pham, U., Nguyen, K. & Bleris, L. Cell morphology-based machine learning models for human cell state classification. NPJ Syst. Biol. Appl. 7, 1 (2021).

    Article 

    Google Scholar 

  • Yu, X., Pang, W., Xu, Q. & Liang, M. Mammographic image classification with deep fusion learning. Sci. Rep. 10, 1 (2020).

    Google Scholar 

  • Berryman, S., Matthews, K., Lee, J. H., Duffy, S. P. & Ma, H. Image-based phenotyping of disaggregated cells using deep learning. Commun. Biol. 3, 1 (2020).

    Article 

    Google Scholar 

  • Yang, S. et al. Deep learning segmentation of major vessels in X-ray coronary angiography. Sci. Rep. 9, 1 (2019).

    Google Scholar 

  • Hannun, A. Y. et al. Cardiologist-level arrhythmia detection and classification in ambulatory electrocardiograms using a deep neural network. Nat. Med. 25, 65 (2019).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Bracher-Smith, M., Crawford, K. & Escott-Price, V. Machine learning for genetic prediction of psychiatric disorders: A systematic review. Mol. Psychiatry 26, 70 (2021).

    Article 
    PubMed 

    Google Scholar 

  • Patel, D. et al. Machine learning based predictors for Covid-19 disease severity. Sci. Rep. 11, 1 (2021).

    Article 
    CAS 

    Google Scholar 

  • Alves, C. L., Cury, R. G., Roster, K., Pineda, A. M., Rodrigues, F. A., Thielemann, C. & Ciba, M. Application of machine learning and complex network measures to an EEG dataset from ayahuasca experiments. medRxiv (2022)

  • Newman, M. E. The structure and function of complex networks. SIAM Rev. 45, 167 (2003).

    Article 
    ADS 
    MathSciNet 
    MATH 

    Google Scholar 

  • Newman, M. E. Assortative mixing in networks. Phys. Rev. Lett. 89, 208701 (2002).

    Article 
    ADS 
    CAS 
    PubMed 

    Google Scholar 

  • Freeman, L. C. A set of measures of centrality based on betweenness. Sociometry 40, 35 (1977).

    Article 

    Google Scholar 

  • Albert, R. & Barabási, A.-L. Statistical mechanics of complex networks. Rev. Mod. Phys. 74, 47 (2002).

    Article 
    ADS 
    MathSciNet 
    MATH 

    Google Scholar 

  • Freeman, L. C. Centrality in social networks conceptual clarification. Soc. Netw. 1, 215 (1978).

    Article 

    Google Scholar 

  • Albert, R., Jeong, H. & Barabási, A.-L. Diameter of the world-wide web. Nature 401, 130 (1999).

    Article 
    ADS 
    CAS 

    Google Scholar 

  • Kleinberg, J. M. Hubs, authorities, and communities. ACM Comput. Surv. (CSUR) 31, 5 (1999).

    Article 

    Google Scholar 

  • Eppstein, D., Paterson, M. S. & Yao, F. F. On nearest-neighbor graphs. Discrete Comput. Geometry 17, 263 (1997).

    Article 
    MathSciNet 
    MATH 

    Google Scholar 

  • Bonacich, P. Power and centrality: A family of measures. Am. J. Sociol. 92, 1170 (1987).

    Article 

    Google Scholar 

  • Doyle, J. & Graver, J. Mean distance in a graph. Discrete Math. 17, 147 (1977).

    Article 
    MathSciNet 
    MATH 

    Google Scholar 

  • Snijders, T. A. The degree variance: An index of graph heterogeneity. Soc. Netw. 3, 163 (1981).

    Article 
    MathSciNet 

    Google Scholar 

  • Dehmer, M. & Mowshowitz, A. A history of graph entropy measures. Inf. Sci. 181, 57 (2011).

    Article 
    MathSciNet 
    MATH 

    Google Scholar 

  • Watts, D. J. & Strogatz, S. H. Collective dynamics of ‘small-world’ networks. Nature 393, 440 (1998).

    Article 
    ADS 
    CAS 
    PubMed 
    MATH 

    Google Scholar 

  • Newman, M. E., Watts, D. J. & Strogatz, S. H. Random graph models of social networks. Proc. Natl. Acad. Sci. 99, 2566 (2002).

    Article 
    ADS 
    PubMed 
    PubMed Central 
    MATH 

    Google Scholar 

  • Seidman, S. B. Network structure and minimum degree. Soc. Netw. 5, 269 (1983).

    Article 
    MathSciNet 

    Google Scholar 

  • Newman, M. Networks: An Introduction (Oxford University Press, Oxford, 2010).

    Book 
    MATH 

    Google Scholar 

  • Hage, P. & Harary, F. Eccentricity and centrality in networks. Soc. Netw. 17, 57 (1995).

    Article 

    Google Scholar 

  • Anderson, B. S., Butts, C. & Carley, K. The interaction of size and density with graph-level indices. Soc. Netw. 21, 239 (1999).

    Article 

    Google Scholar 

  • Latora, V. & Marchiori, M. Economic small-world behavior in weighted networks. Eur. Phys. J. B Condensed Matter Complex Syst. 32, 249 (2003).

    Article 
    CAS 

    Google Scholar 

  • Newman, M. E. Communities, modules and large-scale structure in networks. Nat. Phys. 8, 25 (2012).

    Article 
    CAS 

    Google Scholar 

  • Kim, J. & Lee, J.-G. Community detection in multi-layer graphs: A survey. ACM SIGMOD Rec. 44, 37 (2015).

    Article 

    Google Scholar 

  • Zhao, X., Liang, J. & Wang, J. A community detection algorithm based on graph compression for large-scale social networks. Inf. Sci. 551, 358 (2021).

    Article 
    MathSciNet 
    MATH 

    Google Scholar 

  • Clauset, A., Newman, M. E. & Moore, C. Finding community structure in very large networks. Phys. Rev. E 70, 066111 (2004).

    Article 
    ADS 

    Google Scholar 

  • Rosvall, M., Axelsson, D. & Bergstrom, C. T. The map equation. Eur. Phys. J. Spec. Topics 178, 13 (2009).

    Article 
    ADS 

    Google Scholar 

  • Newman, M. E. Finding community structure in networks using the eigenvectors of matrices. Phys. Rev. E 74, 036104 (2006).

    Article 
    ADS 
    MathSciNet 
    CAS 

    Google Scholar 

  • Raghavan, U. N., Albert, R. & Kumara, S. Near linear time algorithm to detect community structures in large-scale networks. Phys. Rev. E 76, 036106 (2007).

    Article 
    ADS 

    Google Scholar 

  • Girvan, M. & Newman, M. E. Community structure in social and biological networks. Proc. Natl. Acad. Sci. 99, 7821 (2002).

    Article 
    ADS 
    MathSciNet 
    CAS 
    PubMed 
    PubMed Central 
    MATH 

    Google Scholar 

  • Reichardt, J. & Bornholdt, S. Statistical mechanics of community detection. Phys. Rev. E 74, 016110 (2006).

    Article 
    ADS 
    MathSciNet 

    Google Scholar 

  • Blondel, V. D., Guillaume, J.-L., Lambiotte, R. & Lefebvre, E. Fast unfolding of communities in large networks. J. Stat. Mech. Theory Exp. 2008, P10008 (2008).

    Article 
    MATH 

    Google Scholar 

  • Hajebrahimi, F., Velioglu, H. A., Bayraktaroglu, Z., Helvaci Yilmaz, N. & Hanoglu, L. Clinical evaluation and resting state FMRI analysis of virtual reality based training in Parkinson’s disease through a randomized controlled trial. Sci. Rep. 12, 1 (2022).

    Article 

    Google Scholar 

  • Liu, J. et al. Surgical treatment of diffuse and multi-lobes involved glioma with the assistance of a multimodal technique. Sci. Rep. 12, 1 (2022).

    ADS 

    Google Scholar 

  • Perovnik, M. et al. Identification and validation of Alzheimer’s disease-related metabolic brain pattern in biomarker confirmed Alzheimer’s dementia patients. Sci. Rep. 12, 1 (2022).

    Article 

    Google Scholar 

  • Ashar, Y. K. et al. Effect of pain reprocessing therapy vs placebo and usual care for patients with chronic back pain: A randomized clinical trial. JAMA Psychiat. 79, 13 (2022).

    Article 

    Google Scholar 

  • Hack, L. M., Zhang, X. & Williams, L. M. Striato-cortical neuroimaging markers in the reward network distinguish melancholic depression and response to treatment: An ispot-d report. Biol. Psychiat. 89, S270 (2021).

    Article 

    Google Scholar 

  • Polli, A. et al. Anatomical and functional correlates of persistent pain in Parkinson’s disease. Mov. Disord. 31, 1854 (2016).

    Article 
    PubMed 

    Google Scholar 

  • William, S. The probable error of a mean. Biometrika 6, 1 (1908).

    Article 

    Google Scholar 

  • Mijalkov, M. et al. BRAPH: A graph theory software for the analysis of brain connectivity. PLoS ONE 12, e0178798 (2017).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Wang, Y. et al. Efficient test for nonlinear dependence of two continuous variables. BMC Bioinform. 16, 1 (2015).

    Article 

    Google Scholar 

  • McGrath, J. et al. Abnormal functional connectivity during visuospatial processing is associated with disrupted organisation of white matter in autism. Front. Hum. Neurosci. 7, 434 (2013).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Alaerts, K. et al. Underconnectivity of the superior temporal sulcus predicts emotion recognition deficits in autism. Soc. Cognit. Affect. Neurosci. 9, 1589 (2014).

    Article 

    Google Scholar 

  • Leech, R. & Sharp, D. J. The role of the posterior cingulate cortex in cognition and disease. Brain 137, 12 (2014).

    Article 
    PubMed 

    Google Scholar 

  • Martínez, K. et al. Sensory-to-cognitive systems integration is associated with clinical severity in autism spectrum disorder. J. Am. Acad. Child Adolescent Psychiatry 59, 422 (2020).

    Article 

    Google Scholar 

  • Clery, H. et al. FMRI investigation of visual change detection in adults with autism. NeuroImage Clin. 2, 303 (2013).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Laidi, C. et al. Decreased cortical thickness in the anterior cingulate cortex in adults with autism. J. Autism Dev. Disord. 49, 1402 (2019).

    Article 
    PubMed 

    Google Scholar 

  • Lau, W. K., Leung, M.-K. & Zhang, R. Hypofunctional connectivity between the posterior cingulate cortex and ventromedial prefrontal cortex in autism: Evidence from coordinate-based imaging meta-analysis. Prog. Neuropsychopharmacol. Biol. Psychiatry 103, 109986 (2020).

    Article 
    PubMed 

    Google Scholar 

  • Oldehinkel, M. et al. Altered connectivity between cerebellum, visual, and sensory-motor networks in autism spectrum disorder: Results from the eu-aims longitudinal european autism project. Biol. Psychiatry Cognit. Neurosci. Neuroimaging 4, 260 (2019).

    Article 

    Google Scholar 

  • Amore, G. et al. A focus on the cerebellum: From embryogenesis to an age-related clinical perspective. Front. Syst. Neurosci. 15, 646052 (2021).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Mariën, P. & Borgatti, R. Language and the cerebellum. Handb. Clin. Neurol. 154, 181 (2018).

    Article 
    PubMed 

    Google Scholar 

  • Jeremy, D. & Schmahmann, J. The cerebellum and cognition. Neurosci. Lett. 688, 62 (2019).

    Article 

    Google Scholar 

  • Wang, S.S.-H., Kloth, A. D. & Badura, A. The cerebellum, sensitive periods, and autism. Neuron 83, 518 (2014).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Van Overwalle, F. et al. Consensus paper: Cerebellum and social cognition. Cerebellum 19, 833 (2020).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Delgado-García, J. Estructura y función del cerebelo. Rev. Neurol. 33, 635 (2001).

    PubMed 

    Google Scholar 

  • Stoodley, C. J. The cerebellum and neurodevelopmental disorders. Cerebellum 15, 34 (2016).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Nebel, M. B. et al. Disruption of functional organization within the primary motor cortex in children with autism. Hum. Brain Mapp. 35, 567 (2014).

    Article 
    PubMed 

    Google Scholar 

  • Mostofsky, S. H., Burgess, M. P. & Gidley Larson, J. C. Increased motor cortex white matter volume predicts motor impairment in autism. Brain 130, 2117 (2007).

    Article 
    PubMed 

    Google Scholar 

  • Daianu, M. et al. Breakdown of brain connectivity between normal aging and Alzheimer’s disease: A structural k-core network analysis. Brain connectivity 3, 407 (2013).

  • Hagmann, P. et al. Mapping the structural core of human cerebral cortex. PLoS Biol. 6, e159 (2008).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Bellec, P. Cobre preprocessed with NIAK 0.17-lightweight release. 10, m9 (2016)

  • Baltazar, C. A. et al. Brain connectivity in patients with dystonia during motor tasks. J. Neural Eng. 17, 056039 (2020).

    Article 
    ADS 
    PubMed 

    Google Scholar 

  • Wan, Z., Yang, R., Huang, M., Zeng, N. & Liu, X. A review on transfer learning in EEG signal analysis. Neurocomputing 421, 1 (2021).

    Article 

    Google Scholar 



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