Prediction of treatment outcome for autism from structure of the brain based on sure independence screening
Juntang Zhuang, Nicha C. Dvornek, Qingyu Zhao, Xiaoxiao Li, Pamela, Ventola, James S. Duncan

TL;DR
This study uses the sure independence screening method to predict autism treatment outcomes from brain structure features, identifying potential biomarkers and improving prediction accuracy over other models.
Contribution
The paper introduces the application of SIS for feature selection in high-dimensional brain imaging data to predict ASD treatment outcomes, demonstrating superior accuracy.
Findings
SIS outperforms other linear models in prediction accuracy.
Structural brain features can predict treatment outcomes with high correlation.
Regions identified by SIS serve as potential ASD biomarkers.
Abstract
Autism spectrum disorder (ASD) is a complex neurodevelopmental disorder, and behavioral treatment interventions have shown promise for young children with ASD. However, there is limited progress in understanding the effect of each type of treatment. In this project, we aim to detect structural changes in the brain after treatment and select structural features associated with treatment outcomes. The difficulty in building large databases of patients who have received specific treatments and the high dimensionality of medical image analysis problems are the challenges in this work. To select predictive features and build accurate models, we use the sure independence screening (SIS) method. SIS is a theoretically and empirically validated method for ultra-high dimensional general linear models, and it achieves both predictive accuracy and correct feature selection by iterative feature…
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Taxonomy
TopicsAutism Spectrum Disorder Research · Gene expression and cancer classification · Functional Brain Connectivity Studies
