Diagnosing autism severity associated with physical fitness and gray matter volume in children with autism spectrum disorder: Explainable machine learning method
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Abstract
Purpose
This study aimed to investigate the relationship between physical fitness, gray matter volume (GMV), and autism severity in children with autism spectrum disorder (ASD). Besides, we sought to diagnose autism severity associated with physical fitness and GMV using machine learning methods.
Methods
Ninety children diagnosed with ASD underwent physical fitness tests, magnetic resonance imaging scans, and autism severity assessments. Diagnosis models were established using extreme gradient boosting (XGB), random forest (RF), support vector machine (SVM), and decision tree (DT) algorithms. Hyperparameters were optimized through the grid search cross-validation method. The shapley additive explanation (SHAP) method was employed to explain the diagnosis results.
Results
Our study revealed associations between muscular strength in physical fitness and GMV in specific brain regions (left paracentral lobule, bilateral thalamus, left inferior temporal gyrus, and cerebellar vermis I-II) with autism severity in children with ASD. The accuracy (95 % confidence interval) of the XGB, RF, SVM, and DT models were 77.9 % (77.3, 78.6 %), 72.4 % (71.7, 73.2 %), 71.9 % (71.1, 72.6 %), and 66.9 % (66.2, 67.7 %), respectively. SHAP analysis revealed that muscular strength and thalamic GMV significantly influenced the decision-making process of the XGB model.
Conclusion
Machine learning methods can effectively diagnose autism severity associated with physical fitness and GMV in children with ASD. In this respect, the XGB model demonstrated excellent performance across various indicators, suggesting its potential for diagnosing autism severity.
期刊介绍:
Complementary Therapies in Clinical Practice is an internationally refereed journal published to meet the broad ranging needs of the healthcare profession in the effective and professional integration of complementary therapies within clinical practice.
Complementary Therapies in Clinical Practice aims to provide rigorous peer reviewed papers addressing research, implementation of complementary therapies (CTs) in the clinical setting, legal and ethical concerns, evaluative accounts of therapy in practice, philosophical analysis of emergent social trends in CTs, excellence in clinical judgement, best practice, problem management, therapy information, policy development and management of change in order to promote safe and efficacious clinical practice.
Complementary Therapies in Clinical Practice welcomes and considers accounts of reflective practice.