The role of machine learning in autism spectrum disorder assessment and management

Machine Learning


  • Hodges, H., Fealko, C. & Soares, N. Autism spectrum disorder: definition, epidemiology, causes, and clinical evaluation. Transl. Pediatr. 9, S55–s65 (2020).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • American Psychiatric Association Diagnostic and Statistical Manual of Mental Disorders: DSM-5™, 5th Ed (American Psychiatric Publishing, Inc., 2013).

  • Shaw, K. A. et al. Prevalence and early identification of autism spectrum disorder among children aged 4 and 8 years—autism and developmental disabilities monitoring network, 16 sites, United States, 2022. 1–22 (2025).

  • Johnson, C. P. & Myers, S. M. Identification and evaluation of children with autism spectrum disorders. Pediatrics 120, 1183–1215 (2007).

    Article 
    PubMed 

    Google Scholar 

  • Thabtah, F. & Peebles, D. Early autism screening: a comprehensive review. Int J. Environ. Res. Public Health 16 (2019).

  • Mazurek, M. O., Kuhlthau, K., Parker, R. A., Chan, J. & Sohl, K. Autism and general developmental screening practices among primary care providers. J. Dev. Behav. Pediatr. 42, 355–362 (2021).

    Article 
    PubMed 

    Google Scholar 

  • Wankhede, N. et al. Leveraging AI for the diagnosis and treatment of autism spectrum disorder: current trends and future prospects. Asian J. Psychiatr. 101, 104241 (2024).

    Article 
    PubMed 

    Google Scholar 

  • Song, D. Y., Kim, S. Y., Bong, G., Kim, J. M. & Yoo, H. J. The use of artificial intelligence in screening and diagnosis of autism spectrum disorder: a literature review. Soa Chongsonyon Chongsin Uihak 30, 145–152 (2019).

    PubMed 
    PubMed Central 

    Google Scholar 

  • Villamarín, A. et al. in Proceedings of International Conference on Intelligent Vision and Computing (ICIVC 2023). (Saha, A. K., Sharma, H. & Prasad, M. eds.) 21–32 (Springer Nature, 2023).

  • Tang, X. et al. Screening biomarkers for autism spectrum disorder using plasma proteomics combined with machine learning methods. Clin. Chim. Acta 565, 120018 (2025).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Bekbolatova, M., Mayer, J., Ong, C. W. & Toma, M. Transformative potential of AI in healthcare: definitions, applications, and navigating the ethical landscape and public perspectives. Healthcare 12 (2024).

  • Lipkin, P. H. & Macias, M. M. Promoting optimal development: identifying infants and young children with developmental disorders through developmental surveillance and screening. Pediatrics 145 (2020).

  • Sobieski, M., Sobieska, A., Sekułowicz, M. & Bujnowska-Fedak, M. M. Tools for early screening of autism spectrum disorders in primary health care—a scoping review. BMC Prim. Care 23, 46 (2022).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Marlow, M., Servili, C. & Tomlinson, M. A review of screening tools for the identification of autism spectrum disorders and developmental delay in infants and young children: recommendations for use in low- and middle-income countries. Autism Res. 12, 176–199 (2019).

    Article 
    PubMed 

    Google Scholar 

  • Kamp-Becker, I. et al. Diagnostic accuracy of the Ados and Ados-2 in clinical practice. Eur. Child Adolesc. Psychiatry 27, 1193–1207 (2018).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Kim, S. H. & Lord, C. New autism diagnostic interview-revised algorithms for toddlers and young preschoolers from 12 to 47 months of age. J. Autism Dev. Disord. 42, 82–93 (2012).

    Article 
    PubMed 

    Google Scholar 

  • Wall, D. P., Kosmicki, J., Deluca, T. F., Harstad, E. & Fusaro, V. A. Use of machine learning to shorten observation-based screening and diagnosis of autism. Transl. Psychiatry 2, e100 (2012).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Kosmicki, J. A., Sochat, V., Duda, M. & Wall, D. P. Searching for a minimal set of behaviors for autism detection through feature selection-based machine learning. Transl. Psychiatry 5, e514 (2015).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Levy, S., Duda, M., Haber, N. & Wall, D. P. Sparsifying machine learning models identify stable subsets of predictive features for behavioral detection of autism. Mol. Autism 8, 65 (2017).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • van ‘t Hof, M. et al. Age at autism spectrum disorder diagnosis: a systematic review and meta-analysis from 2012 to 2019. Autism 25, 862–873 (2021).

    Article 
    PubMed 

    Google Scholar 

  • Zuckerman, K., Lindly, O. J. & Chavez, A. E. Timeliness of autism spectrum disorder diagnosis and use of services among U.S. elementary school-aged children. Psychiatr. Serv. 68, 33–40 (2017).

    Article 
    PubMed 

    Google Scholar 

  • Dimian, A. F., Symons, F. J. & Wolff, J. J. Delay to early intensive behavioral intervention and educational outcomes for a medicaid-enrolled cohort of children with autism. J. Autism Dev. Disord. 51, 1054–1066 (2021).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Mateos-Pérez, J. M. et al. Structural neuroimaging as clinical predictor: a review of machine learning applications. Neuroimage Clin. 20, 506–522 (2018).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Moridian, P. et al. Automatic Autism spectrum disorder detection using artificial intelligence methods with MRI neuroimaging: a review. Front. Mol. Neurosci. 15, 999605 (2022).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Washington, P. & Wall, D. P. A review of and roadmap for data science and machine learning for the neuropsychiatric phenotype of autism. Annu. Rev. Biomed. Data Sci. 6, 211–228 (2023).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • França, R. P., Borges Monteiro, A. C., Arthur, R. & Iano, Y. in Trends in Deep Learning Methodologies (Piuri, V., Raj, S., Genovese, A. & Srivastava, R. eds.) 63–87 (Academic Press, 2021).

  • Marciano, F. et al. Artificial intelligence: the ‘Trait D’union” in different analysis approaches of autism spectrum disorder studies. Curr. Med. Chem. 28, 6591–6618 (2021).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Cortese, S. et al. Latest clinical frontiers related to autism diagnostic strategies. Cell Rep. Med 6, 101916 (2025).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Varoquaux, G, C. O. Evaluating Machine Learning Models and Their Diagnostic Value, Vol. 20 (Humana, 2023).

  • Bradshaw, T. J., Huemann, Z., Hu, J. & Rahmim, A. A guide to cross-validation for artificial intelligence in medical imaging. Radio. Artif. Intell. 5, e220232 (2023).

    Article 

    Google Scholar 

  • Wilimitis, D. & Walsh, C. G. Practical considerations and applied examples of cross-validation for model development and evaluation in health care: tutorial. JMIR AI 2, e49023 (2023).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Cabitza, F. et al. The importance of being external. methodological insights for the external validation of machine learning models in medicine. Comput. Methods Prog. Biomed. 208, 106288 (2021).

    Article 

    Google Scholar 

  • Collins, G. S. et al. Tripod+AI statement: updated guidance for reporting clinical prediction models that use regression or machine learning methods. BMJ 385, e078378 (2024).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Ho, S. Y., Phua, K., Wong, L. & Bin Goh, W. W. Extensions of the external validation for checking learned model interpretability and generalizability. Patterns 1, 100129 (2020).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Crippa, A. et al. Use of machine learning to identify children with autism and their motor abnormalities. J. Autism Dev. Disord. 45, 2146–2156 (2015).

    Article 
    PubMed 

    Google Scholar 

  • Wan, G. et al. Applying eye tracking to identify autism spectrum disorder in children. J. Autism Dev. Disord. 49, 209–215 (2019).

    Article 
    PubMed 

    Google Scholar 

  • Alcañiz, M. et al. Eye gaze as a biomarker in the recognition of autism spectrum disorder using virtual reality and machine learning: a proof of concept for diagnosis. Autism Res. 15, 131–145 (2022).

    Article 
    PubMed 

    Google Scholar 

  • Dufour, M. M., Lanovaz, M. J. & Cardinal, P. Artificial intelligence for the measurement of vocal stereotypy. J. Exp. Anal. Behav. 114, 368–380 (2020).

    Article 
    PubMed 

    Google Scholar 

  • Voinsky, I., Fridland, O. Y., Aran, A., Frye, R. E. & Gurwitz, D. Machine learning-based blood Rna signature for diagnosis of autism spectrum disorder. Int. J. Mol. Sci. 24 (2023).

  • Koehler, J. C. et al. Classifying autism in a clinical population based on motion synchrony: a proof-of-concept study using real-life diagnostic interviews. Sci. Rep. 14, 5663 (2024).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Préfontaine, I., Lanovaz, M. J. & Rivard, M. Brief Report: Machine learning for estimating prognosis of children with autism receiving early behavioral intervention-a proof of concept. J. Autism Dev. Disord. 54, 1605–1610 (2024).

    Article 
    PubMed 

    Google Scholar 

  • Achenie, L. E. K. et al. A machine learning strategy for autism screening in toddlers. J. Dev. Behav. Pediatr. 40, 369–376 (2019).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Tartarisco, G. et al. Use of Machine Learning to investigate the quantitative checklist for autism in toddlers (Q-Chat) towards early autism screening. Diagnostics 11 (2021).

  • Lu, H. et al. A machine learning model based on Chat-23 for early screening of autism in Chinese children. Front. Pediatr. 12, 1400110 (2024).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Engelhard, M. M. et al. Predictive value of early autism detection models based on electronic health record data collected before age 1 year. JAMA Netw. Open 6, e2254303–e2254303 (2023).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Sohl, K. et al. Feasibility and impact of integrating an artificial intelligence-based diagnosis aid for autism into the extension for community health outcomes autism primary care model: protocol for a prospective observational study. JMIR Res. Protoc. 11, e37576 (2022).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Li, Y. et al. Machine learning prediction of autism spectrum disorder through linking mothers’ and children’s electronic health record data. medRxiv (2024).

  • Maenner, M. J., Yeargin-Allsopp, M., Van Naarden Braun, K., Christensen, D. L. & Schieve, L. A. Development of a machine learning algorithm for the surveillance of autism spectrum disorder. PLoS One 11, e0168224 (2016).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Betts, K. S., Chai, K., Kisely, S. & Alati, R. Development and validation of a machine learning-based tool to predict autism among children. Autism Res. 16, 941–952 (2023).

    Article 
    PubMed 

    Google Scholar 

  • Lingren, T. et al. Electronic health record-based algorithm to identify patients with autism spectrum disorder. PLoS One 11, e0159621 (2016).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Parikh, M. N., Li, H. & He, L. Enhancing diagnosis of autism with optimized machine learning models and personal characteristic data. Front. Comput. Neurosci. 13, 9 (2019).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Ben-Sasson, A. et al. A prediction model of autism spectrum diagnosis from well-baby electronic data using machine learning. Children 11 (2024).

  • Chen, J. et al. Enhancing early autism prediction based on electronic records using clinical narratives. J. Biomed. Inform. 144, 104390 (2023).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Rajagopalan, S. S., Zhang, Y., Yahia, A. & Tammimies, K. machine learning prediction of autism spectrum disorder from a minimal set of medical and background information. JAMA Netw. Open 7, e2429229 (2024).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Anzulewicz, A., Sobota, K. & Delafield-Butt, J. T. Toward the autism motor signature: gesture patterns during smart tablet gameplay identify children with autism. Sci. Rep. 6, 31107 (2016).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Pradhan, A., Chester, V. & Padhiar, K. Classification of autism and control gait in children using multisegment foot kinematic features. Bioengineering 9 (2022).

  • Perochon, S. et al. Early detection of autism using digital behavioral phenotyping. Nat. Med. 29, 2489–2497 (2023).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Thevenot, J., Lopez, M. B. & Hadid, A. A survey on computer vision for assistive medical diagnosis from faces. IEEE J. Biomed. Health Inf. 22, 1497–1511 (2018).

    Article 

    Google Scholar 

  • Elbattah, M., Carette, R., Dequen, G., Guerin, J. L. & Cilia, F. Learning clusters in autism spectrum disorder: image-based clustering of eye-tracking scanpaths with Deep Autoencoder. Annu Int Conf. IEEE Eng. Med Biol. Soc. 2019, 1417–1420 (2019).

    PubMed 

    Google Scholar 

  • Nag, A. et al. Toward continuous social phenotyping: analyzing gaze patterns in an emotion recognition task for children with autism through wearable smart glasses. J. Med Internet Res 22, e13810 (2020).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Cilia, F. et al. Computer-aided screening of autism spectrum disorder: eye-tracking study using data visualization and deep learning. JMIR Hum. Factors 8, e27706 (2021).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Zhao, Z. et al. Classification of children with autism and typical development using eye-tracking data from face-to-face conversations: machine learning model development and performance evaluation. J. Med Internet Res. 23, e29328 (2021).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Ko, C., Lim, J. H., Hong, J., Hong, S. B. & Park, Y. R. Development and validation of a joint attention-based deep learning system for detection and symptom severity assessment of autism spectrum disorder. JAMA Netw. Open 6, e2315174 (2023).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Liu, L. et al. The impact of cues on joint attention in children with autism spectrum disorder: an eye-tracking study in virtual games. Behav. Sci.14 (2024).

  • Mahmood, M. A., Jamel, L., Alturki, N. & Tawfeek, M. A. Leveraging artificial intelligence for diagnosis of children autism through facial expressions. Sci. Rep. 15, 11945 (2025).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Kalantarian, H. et al. The performance of emotion classifiers for children with parent-reported autism: quantitative feasibility study. JMIR Ment. Health 7, e13174 (2020).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Elsabbagh, M. et al. The development of face orienting mechanisms in infants at-risk for autism. Behav. Brain Res. 251, 147–154 (2013).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Klin, A., Shultz, S. & Jones, W. Social visual engagement in infants and toddlers with autism: early developmental transitions and a model of pathogenesis. Neurosci. Biobehav Rev. 50, 189–203 (2015).

    Article 
    PubMed 

    Google Scholar 

  • Jones, W. & Klin, A. Attention to eyes is present but in decline in 2-6-month-old infants later diagnosed with autism. Nature 504, 427–431 (2013).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Boucher, J. & Lewis, V. Unfamiliar face recognition in relatively able autistic children. J. Child Psychol. Psychiatry 33, 843–859 (1992).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Rutherford, M. D., Clements, K. A. & Sekuler, A. B. Differences in discrimination of eye and mouth displacement in autism spectrum disorders. Vis. Res. 47, 2099–2110 (2007).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Lin, Y. et al. Autistic spectrum traits detection and early screening: a machine learning based eye movement study. J. Child Adolesc. Psychiatr. Nurs. 35, 83–92 (2022).

    Article 
    PubMed 

    Google Scholar 

  • So, W. C. et al. Seeing through a robot’s eyes: a cross-sectional exploratory study in developing a robotic screening technology for autism. Autism Res. 17, 366–380 (2024).

    Article 
    PubMed 

    Google Scholar 

  • Colonnese, F., Di Luzio, F., Rosato, A. & Panella, M. Enhancing autism detection through gaze analysis using eye tracking sensors and data attribution with distillation in deep neural networks. Sensors 24 (2024).

  • Kang, J. Y. et al. Automated tracking and quantification of autistic behavioral symptoms using microsoft kinect. Stud. Health Technol. Inf. 220, 167–170 (2016).

    Google Scholar 

  • Yang, Y. et al. Automatically predicting perceived conversation quality in a pediatric sample enriched for autism. Interspeech 2023, 4603–4607 (2023).

    PubMed 
    PubMed Central 

    Google Scholar 

  • Vabalas, A., Gowen, E., Poliakoff, E. & Casson, A. J. Applying machine learning to kinematic and eye movement features of a movement imitation task to predict autism diagnosis. Sci. Rep. 10, 8346 (2020).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Koehler, J. C. et al. Machine learning classification of autism spectrum disorder based on reciprocity in naturalistic social interactions. Transl. Psychiatry 14, 76 (2024).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Zhao, Z. et al. Identifying autism with head movement features by implementing machine learning algorithms. J. Autism Dev. Disord. 52, 3038–3049 (2022).

    Article 
    PubMed 

    Google Scholar 

  • Jequier Gygax, M., Maillard, A. M. & Favre, J. Could gait biomechanics become a marker of atypical neuronal circuitry in human development? The example of autism spectrum disorder. Front. Bioeng. Biotechnol. 9, 624522 (2021).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Kindregan, D., Gallagher, L. & Gormley, J. Gait deviations in children with autism spectrum disorders: a review. Autism Res Treat. 2015, 741480 (2015).

    PubMed 
    PubMed Central 

    Google Scholar 

  • Ganai, U. J., Ratne, A., Bhushan, B. & Venkatesh, K. S. Early detection of autism spectrum disorder: gait deviations and machine learning. Sci. Rep. 15, 873 (2025).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Fusaroli, R., Lambrechts, A., Bang, D., Bowler, D. M. & Gaigg, S. B. Is voice a marker for autism spectrum disorder? a systematic review and meta-analysis. Autism Res. 10, 384–407 (2017).

    Article 
    PubMed 

    Google Scholar 

  • Trayvick, J. et al. Speech and language patterns in autism: towards natural language processing as a research and clinical tool. Psychiatry Res. 340, 116109 (2024).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Glatt, S. J. et al. Blood-based gene expression signatures of infants and toddlers with autism. J. Am. Acad. Child Adolesc. Psychiatry 51, 934–944.e932 (2012).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Cortese, S. et al. Candidate diagnostic biomarkers for neurodevelopmental disorders in children and adolescents: a systematic review. World Psychiatry 22, 129–149 (2023).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Tylee, D. S. et al. Blood transcriptomic comparison of individuals with and without autism spectrum disorder: a combined-samples mega-analysis. Am. J. Med. Genet. B Neuropsychiatr. Genet. 174, 181–201 (2017).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Bahado-Singh, R. O., Vishweswaraiah, S., Aydas, B. & Radhakrishna, U. Artificial intelligence and placental DNA methylation: newborn prediction and molecular mechanisms of autism in preterm children. J. Matern. Fetal Neonatal Med. 35, 8150–8159 (2022).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Bahado-Singh, R. O., Vishweswaraiah, S., Aydas, B. & Radhakrishna, U. Placental DNA methylation changes and the early prediction of autism in full-term newborns. PLoS One 16, e0253340 (2021).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Bahado-Singh, R. O. et al. Artificial intelligence analysis of newborn leucocyte epigenomic markers for the prediction of autism. Brain Res. 1724, 146457 (2019).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Anwar, A. et al. Advanced glycation endproducts, dityrosine and arginine transporter dysfunction in autism—a source of biomarkers for clinical diagnosis. Mol. Autism 9, 3 (2018).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Al-Saei, A. N. J. M. et al. Validation of plasma protein glycation and oxidation biomarkers for the diagnosis of autism. Mol. Psychiatry 29, 653–659 (2024).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Liu, X. et al. Untargeted urine metabolomics and machine learning provide potential metabolic signatures in children with autism spectrum disorder. Front. Psychiatry 15, 1261617 (2024).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Yang, S., Jin, D., Liu, J. & He, Y. Identification of young high-functioning autism individuals based on functional connectome using graph isomorphism network: a pilot study. Brain Sci. 12 (2022).

  • Liu, J. et al. Metabolomic analysis of plasma biomarkers in children with autism spectrum disorders. MedComm 5, e488 (2024).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Kurochkin, I. et al. Metabolome signature of autism in the human prefrontal cortex. Commun. Biol. 2, 234 (2019).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Xie, K. et al. Biomarkers and pathways in autism spectrum disorder: an individual meta-analysis based on proteomic and metabolomic data. Eur. Arch. Psychiatry Clin. Neurosci. (2024).

  • Bašić-Čičak, D., Hasić Telalović, J. & Pašić, L. Utilizing artificial intelligence for microbiome decision-making: autism spectrum disorder in children from Bosnia and Herzegovina. Diagnostics14 (2024).

  • Climent-Pérez, P., Martínez-González, A. E. & Andreo-Martínez, P. Contributions of artificial intelligence to analysis of gut microbiota in autism spectrum disorder: a systematic review. Children 11 (2024).

  • Novielli, P. et al. Personalized identification of autism-related bacteria in the gut microbiome using explainable artificial intelligence. iScience 27, 110709 (2024).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Joudar, S. S., Albahri, A. S. & Hamid, R. A. Triage and priority-based healthcare diagnosis using artificial intelligence for autism spectrum disorder and gene contribution: a systematic review. Comput Biol. Med. 146, 105553 (2022).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Reddy, K., Taksande, A. & Kurian, B. Harnessing the power of mobile phone technology: screening and identifying autism spectrum disorder with smartphone apps. Cureus 16, e55004 (2024).

    PubMed 
    PubMed Central 

    Google Scholar 

  • Grazioli, S. et al. Exploring telediagnostic procedures in child neuropsychiatry: addressing adhd diagnosis and autism symptoms through supervised machine learning. Eur. Child Adolesc. Psychiatry 33, 139–149 (2024).

    Article 
    PubMed 

    Google Scholar 

  • Atkins, D. et al. Grading quality of evidence and strength of recommendations. BMJ 328, 1490 (2004).

    Article 
    PubMed 

    Google Scholar 

  • Washington, P. et al. Data-driven diagnostics and the potential of mobile artificial intelligence for digital therapeutic phenotyping in computational psychiatry. Biol. Psychiatry Cogn. Neurosci. Neuroimaging 5, 759–769 (2020).

    PubMed 

    Google Scholar 

  • Megerian, J. T. et al. Evaluation of an artificial intelligence-based medical device for diagnosis of autism spectrum disorder. NPJ Digit Med. 5, 57 (2022).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Jones, W. et al. Eye-tracking–based measurement of social visual engagement compared with expert clinical diagnosis of autism. JAMA 330, 854–865 (2023).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Boudellioua, I., Kulmanov, M., Schofield, P. N., Gkoutos, G. V. & Hoehndorf, R. Deeppvp: phenotype-based prioritization of causative variants using deep learning. BMC Bioinforma. 20, 65 (2019).

    Article 

    Google Scholar 

  • Quang, D., Chen, Y. & Xie, X. Dann: a deep learning approach for annotating the pathogenicity of genetic variants. Bioinformatics 31, 761–763 (2015).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Oberman, L. M. & Kaufmann, W. E. Autism spectrum disorder versus autism spectrum disorders: terminology, concepts, and clinical practice. Front Psychiatry 11, 484 (2020).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Sztainberg, Y. & Zoghbi, H. Y. Lessons learned from studying syndromic autism spectrum disorders. Nat. Neurosci. 19, 1408–1417 (2016).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Large-Scale Discovery of novel genetic causes of developmental disorders. Nature 519, 223–228 (2015).

  • Nahas, L. D. et al. Genomic insights and advanced machine learning: characterizing autism spectrum disorder biomarkers and genetic interactions. Metab. Brain Dis. 39, 29–42 (2024).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Gilman, S. R. et al. Rare de novo variants associated with autism implicate a large functional network of genes involved in formation and function of synapses. Neuron 70, 898–907 (2011).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Hormozdiari, F., Penn, O., Borenstein, E. & Eichler, E. E. The discovery of integrated gene networks for autism and related disorders. Genome Res. 25, 142–154 (2015).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Liu, X. & Takumi, T. Genomic and genetic aspects of autism spectrum disorder. Biochem. Biophys. Res. Commun. 452, 244–253 (2014).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • O’Roak, B. J. et al. Sporadic autism exomes reveal a highly interconnected protein network of de novo mutations. Nature 485, 246–250 (2012).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Parikshak, N. N. et al. Integrative functional genomic analyses implicate specific molecular pathways and circuits in autism. Cell 155, 1008–1021 (2013).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Lunke, S. et al. Integrated multi-omics for rapid rare disease diagnosis on a national scale. Nat. Med. 29, 1681–1691 (2023).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Fröhlich, H. et al. From Hype to Reality: Data Science Enabling Personalized Medicine. BMC Med. 16, 150 (2018).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Hassan, M. et al. Innovations in genomics and big data analytics for personalized medicine and health care: a review. Int. J. Mol. Sci. 23 (2022).

  • Amjad, E., Asnaashari, S., Sokouti, B. & Dastmalchi, S. Systems biology comprehensive analysis on breast cancer for identification of key gene modules and genes associated with tnm-based clinical stages. Sci. Rep. 10, 10816 (2020).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Cardoso, F. et al. 70-Gene signature as an aid to treatment decisions in early-stage breast cancer. N. Engl. J. Med 375, 717–729 (2016).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Kuwano, Y. et al. Autism-associated gene expression in peripheral leucocytes commonly observed between subjects with autism and healthy women having autistic children. PLoS One 6, e24723 (2011).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Wang, M. et al. Assessment of glymphatic function and white matter integrity in children with autism using multi-parametric MRI and machine learning. Eur. Radio. 35, 1623–1636 (2025).

    Article 

    Google Scholar 

  • Liu, M., Li, B. & Hu, D. Autism spectrum disorder studies using FMRI data and machine learning: a review. Front Neurosci. 15, 697870 (2021).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Khodatars, M. et al. Deep learning for neuroimaging-based diagnosis and rehabilitation of autism spectrum disorder: a review. Comput Biol. Med. 139, 104949 (2021).

    Article 
    PubMed 

    Google Scholar 

  • Garcia, M. & Kelly, C. 3d CNN for neuropsychiatry: predicting autism with interpretable deep learning applied to minimally preprocessed structural MRI data. PLoS One 19, e0276832 (2024).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Valizadeh, A. et al. Automated diagnosis of autism with artificial intelligence: state of the art. Rev. Neurosci. 35, 141–163 (2024).

    Article 
    PubMed 

    Google Scholar 

  • Wang, S., Sun, Z., Martinez-Tejada, L. A. & Yoshimura, N. Comparison of autism spectrum disorder subtypes based on functional and structural factors. Front Neurosci. 18, 1440222 (2024).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Schielen, S. J. C., Pilmeyer, J., Aldenkamp, A. P. & Zinger, S. The diagnosis of asd with MRI: a systematic review and meta-analysis. Transl. Psychiatry 14, 318 (2024).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Xu, M., Calhoun, V., Jiang, R., Yan, W. & Sui, J. Brain imaging-based machine learning in autism spectrum disorder: methods and applications. J. Neurosci. Methods 361, 109271 (2021).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Wang, F. Disentangling the heterogeneity of autism spectrum disorder using normative modeling. Biol. Psychiatry 91, 920–921 (2022).

    Article 
    PubMed 

    Google Scholar 

  • Lombardo, M. V., Lai, M. C. & Baron-Cohen, S. Big data approaches to decomposing heterogeneity across the autism spectrum. Mol. Psychiatry 24, 1435–1450 (2019).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Ranaut, A., Khandnor, P. & Chand, T. Identification of autism spectrum disorder using electroencephalography and machine learning: a review. J. Neural Eng. 21 (2024).

  • Das, S. et al. Machine learning approaches for electroencephalography and magnetoencephalography analyses in autism spectrum disorder: a systematic review. Prog. Neuropsychopharmacol. Biol. Psychiatry 123, 110705 (2023).

    Article 
    PubMed 

    Google Scholar 

  • Alhassan, S., Soudani, A. & Almusallam, M. Energy-efficient EEG-based scheme for autism spectrum disorder detection using wearable sensors. Sensors 23 (2023).

  • Abou-Abbas, L., van Noordt, S., Desjardins, J. A., Cichonski, M. & Elsabbagh, M. Use of empirical mode decomposition in ERP analysis to classify familial risk and diagnostic outcomes for autism spectrum disorder. Brain Sci. 11 (2021).

  • Wang, X. et al. Early qualitative and quantitative amplitude-integrated electroencephalogram and raw electroencephalogram for predicting long-term neurodevelopmental outcomes in extremely preterm infants in the Netherlands: a 10-year cohort study. Lancet Digit Health 5, e895–e904 (2023).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Rogala, J. et al. Enhancing autism spectrum disorder classification in children through the integration of traditional statistics and classical machine learning techniques in EEG analysis. Sci. Rep. 13, 21748 (2023).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Wiggins, L. D. et al. DSM-5 criteria for autism spectrum disorder maximizes diagnostic sensitivity and specificity in preschool children. Soc. Psychiatry Psychiatr. Epidemiol. 54, 693–701 (2019).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Beglinger, L. J. & Smith, T. H. A review of subtyping in autism and proposed dimensional classification model. J. Autism Dev. Disord. 31, 411–422 (2001).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Eaves, L. C., Ho, H. H. & Eaves, D. M. Subtypes of autism by cluster analysis. J. Autism Dev. Disord. 24, 3–22 (1994).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Sevin, J. A. et al. Empirically derived subtypes of pervasive developmental disorders: a cluster analytic study. J. Autism Dev. Disord. 25, 561–578 (1995).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Bitsika, V., Sharpley, C. F. & Orapeleng, S. An exploratory analysis of the use of cognitive, adaptive and behavioural indices for cluster analysis of ASD Subgroups. J. Intellect. Disabil. Res. 52, 973–985 (2008).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Syriopoulou-Delli, C. K. & Papaefstathiou, E. Review of cluster analysis of phenotypic data in autism spectrum disorders: distinct subtypes or a severity gradient model?. Int. J. Dev. Disabil. 66, 13–21 (2019).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Stevens, E. et al. Identification and analysis of behavioral phenotypes in autism spectrum disorder via unsupervised machine learning. Int. J. Med. Inf. 129, 29–36 (2019).

    Article 

    Google Scholar 

  • Prince, N. et al. Phenotypically driven subgroups of ASD display distinct metabolomic profiles. Brain Behav. Immun. 111, 21–29 (2023).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Yuwattana, W. et al. Machine learning of clinical phenotypes facilitates autism screening and identifies novel subgroups with distinct transcriptomic profiles. Sci. Rep. 15, 11712 (2025).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Frye, R. E., Rose, S., Boles, R. G. & Rossignol, D. A. A Personalized approach to evaluating and treating autism spectrum disorder. J. Pers. Med. 12 (2022).

  • McDougal, E., Riby, D. M. & Hanley, M. Teacher insights into the barriers and facilitators of learning in autism. Res. Autism Spectr. Disord. 79, 101674 (2020).

    Article 

    Google Scholar 

  • Ferrari, E. in Artificial Intelligence in Medicine (Lidströmer, N. & Ashrafian, H. eds.) 1579–1593 (Springer International Publishing, 2022).

  • Wang, S. et al. Artificial intelligence in education: a systematic literature review. Expert Syst. Appl. 252, 124167 (2024).

    Article 

    Google Scholar 

  • Schmidt, M., Glaser, N., Palmer, H., Schmidt, C. & Xing, W. Through the lens of artificial intelligence: a novel study of spherical video-based virtual reality usage in autism and neurotypical participants. Comput. Educ. X Real. 3, 100041 (2023).

    Google Scholar 

  • Kyrlitsias, C. & Michael-Grigoriou, D. Social interaction with agents and avatars in immersive virtual environments: a survey. Front. Virtual Reality 2, 2021 (2022).

  • Cheng, Y. & Bololia, L. The effects of augmented reality on social skills in children with an autism diagnosis: a preliminary systematic review. J. Autism Dev. Disord. 54, 1317–1331 (2024).

    Article 
    PubMed 

    Google Scholar 

  • Solomon, M. et al. Feedback-driven trial-by-trial learning in autism spectrum disorders. Am. J. Psychiatry 172, 173–181 (2015).

    Article 
    PubMed 

    Google Scholar 

  • Valencia, K., Rusu, C., Quiñones, D. & Jamet, E. The impact of technology on people with autism spectrum disorder: a systematic literature review. Sensors (Basel) 19 (2019).

  • Ahmed, M., Wadhahi, F., Rehman, H., Kalban, I. & Achuthan, G. 524-534 (2020).

  • Standen, P. J. et al. An evaluation of an adaptive learning system based on multimodal affect recognition for learners with intellectual disabilities. Br. J. Educ. Technol. 51, 1748–1765 (2020).

    Article 

    Google Scholar 

  • Sennott, S. C., Akagi, L., Lee, M. & Rhodes, A. AAC and artificial intelligence (AI). Top. Lang. Disord. 39, 389–403 (2019).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Brignell, A. et al. Communication interventions for autism spectrum disorder in minimally verbal children. Cochrane Database Syst. Rev. 11, Cd012324 (2018).

    PubMed 

    Google Scholar 

  • Uddin, M., Wang, Y. & Woodbury-Smith, M. Artificial intelligence for precision medicine in neurodevelopmental disorders. NPJ Digit Med 2, 112 (2019).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Jacob, S. et al. Neurodevelopmental heterogeneity and computational approaches for understanding autism. Transl. Psychiatry 9, 63 (2019).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Diémé, B. et al. Metabolomics study of urine in autism spectrum disorders using a multiplatform analytical methodology. J. Proteome Res 14, 5273–5282 (2015).

    Article 
    PubMed 

    Google Scholar 

  • West, P. R. et al. Metabolomics as a tool for discovery of biomarkers of autism spectrum disorder in the blood plasma of children. PLOS ONE 9, e112445 (2014).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Liang, Y. et al. Fully automated sample processing and analysis workflow for low-input proteome profiling. Anal. Chem. 93, 1658–1666 (2021).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Wan, L. et al. Multimodal investigation of dynamic brain network alterations in autism spectrum disorder: linking connectivity dynamics to symptoms and developmental trajectories. NeuroImage 302, 120895 (2024).

    Article 
    PubMed 

    Google Scholar 

  • Gao, L. et al. Autism spectrum disorders detection based on multi-task transformer neural network. BMC Neurosci. 25, 27 (2024).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Abbas, H., Garberson, F., Liu-Mayo, S., Glover, E. & Wall, D. P. Multi-modular AI approach to streamline autism diagnosis in young children. Sci. Rep. 10, 5014 (2020).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Rajput, D., Wang, W.-J. & Chen, C.-C. Evaluation of a decided sample size in machine learning applications. BMC Bioinforma. 24, 48 (2023).

    Article 

    Google Scholar 

  • Zunino, A. et al. Video gesture analysis for autism spectrum disorder detection. In Proc. 24th International Conference on Pattern Recognition (ICPR), 3421–3426 (IEEE, 2018).

  • Haque, M. M. et al. Informing developmental milestone achievement for children with autism: machine learning approach. JMIR Med. Inf. 9, e29242 (2021).

    Article 

    Google Scholar 

  • Matheny, M. E., Whicher, D. & Thadaney Israni, S. Artificial intelligence in health care: a report from the national academy of medicine. JAMA 323, 509–510 (2020).

    Article 
    PubMed 

    Google Scholar 

  • Ying, X. An OVERVIEW OF OVERFITTING AND ITS SOlutions. J. Phys. Conf. Ser. 1168, 022022 (2019).

    Article 

    Google Scholar 

  • Erden, Y. J., Hummerstone, H. & Rainey, S. Automating autism assessment: what AI can bring to the diagnostic process. J. Eval. Clin. Pract. 27, 485–490 (2021).

    Article 
    PubMed 

    Google Scholar 

  • Ding, Y., Zhang, H. & Qiu, T. Deep learning approach to predict autism spectrum disorder: a systematic review and meta-analysis. BMC Psychiatry 24, 739 (2024).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Yang, J. et al. Mitigating machine learning bias between high income and low–middle income countries for enhanced model fairness and generalizability. Sci. Rep. 14, 13318 (2024).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Kang, L., Chen, M., Huang, J. & Xu, J. Identifying autism spectrum disorder based on machine learning for multi-site FMRI. J. Neurosci. Methods 416, 110379 (2025).

    Article 
    PubMed 

    Google Scholar 

  • Ciobanu-Caraus, O. et al. A critical moment in machine learning in medicine: on reproducible and interpretable learning. Acta Neurochir. 166, 14 (2024).

    Article 
    PubMed 

    Google Scholar 

  • Beam, A. L., Manrai, A. K. & Ghassemi, M. Challenges to the reproducibility of machine learning models in health care. JAMA 323, 305–306 (2020).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Rudin, C. Stop explaining black box machine learning models for high stakes decisions and use interpretable models instead. Nat. Mach. Intell. 1, 206–215 (2019).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Su, W.-C., Mutersbaugh, J., Huang, W.-L., Bhat, A. & Gandjbakhche, A. Using deep learning to classify developmental differences in reaching and placing movements in children with and without autism spectrum disorder. Sci. Rep. 14, 30283 (2024).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Nelson, K. et al. Evaluating Model Drift in Machine Learning Algorithms (2015).

  • Barberis, A., Aerts, H. J. W. L. & Buffa, F. M. Robustness and reproducibility for AI learning in biomedical sciences: renoir. Sci. Rep. 14, 1933 (2024).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Hoffman J, et al. Overcoming barriers and enabling artificial intelligence adoption in allied health clinical practice: a qualitative study. Digit. Health. 11. https://doi.org/10.1177/20552076241311144 (2025).

  • Ueda, D. et al. Fairness of artificial intelligence in healthcare: review and recommendations. Jpn J. Radiol. 42, 3–15 (2024).

    Article 
    PubMed 

    Google Scholar 

  • Cabral, B. P. et al. Future use of AI in diagnostic medicine: 2-wave cross-sectional survey study. J. Med. Internet Res. 27, e53892 (2025).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Duda, M., Daniels, J. & Wall, D. P. Clinical evaluation of a novel and mobile autism risk assessment. J. Autism Dev. Disord. 46, 1953–61 (2016).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Pan, N. et al. Developing a simplified measure to predict the risk of autism spectrum disorders: Abbreviating the MCHAT-R using a machine learning approach in China. Psychiatry Res. 344, 116353 (2025).

  • Thabtah, F., Kamalov, F. & Rajab, K. A new computational intelligence approach to detect autistic features for autism screening. Int. J. Med. Inf. 117, 112–24 (2018).

    Article 

    Google Scholar 

  • Duda, M., Haber, N., Daniels, J. & Wall, D. P. Crowdsourced validation of a machine-learning classification system for autism and ADHD. Transl. Psychiatry 7, e1133 (2017).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Tariq, Q. et al. Mobile detection of autism through machine learning on home video: a development and prospective validation study. PLoS Med. 15, e1002705 (2018).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Tariq, Q., Daniels, J., Schwartz, J. N., Washington, P., Kalantarian, H., Wall, D. P. Mobile detection of autism through machine learning on home video: A development and prospective validation study. PLoS Med. 15, e1002705 (2018).

  • Li, B., Sharma, A., Meng, J., Purushwalkam, S. & Gowen, E. Applying machine learning to identify autistic adults using imitation: an exploratory study. PLoS One 12, e0182652 (2017).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Liu, W., Li, M. & Yi, L. Identifying children with autism spectrum disorder based on their face processing abnormality: a machine learning framework. Autism Res. 9, 888–898 (2016).

    Article 
    PubMed 

    Google Scholar 

  • Liu, J. et al. Metabolomic analysis of plasma biomarkers in children with autism spectrum disorders. MedComm. 5, e488 (2024).

  • Ravindranath V, Ra S. A machine learning based approach to classify autism with optimum behaviour sets. Int. J. Eng. Technol. 7 (2018).

  • Bone, D. et al. Use of machine learning to improve autism screening and diagnostic instruments: effectiveness, efficiency, and multi-instrument fusion. J. Child Psychol. Psychiatry 57, 927–937 (2016).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Bussu, G., Jones, E. J. H., Charman, T., Johnson, M. H. & Buitelaar, J. K. Prediction of autism at 3 years from behavioural and developmental measures in high-risk infants: a longitudinal cross-domain classifier analysis. J. Autism Dev. Disord. 48, 2418–33 (2018).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Duda, M., Ma, R., Haber, N. & Wall, D. P. Use of machine learning for behavioral distinction of autism and ADHD. Transl. Psychiatry 6, e732 (2016).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 



  • Source link

    Leave a Reply

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