Prediction of severity and treatment outcome for ASD from fMRI
Juntang Zhuang, Nicha C. Dvornek, Xiaoxiao Li, Pamela Ventola, James, S. Duncan

TL;DR
This paper develops a two-level feature selection and regression approach to predict ASD severity and treatment outcomes from early fMRI scans, addressing high-dimensional data challenges.
Contribution
It introduces a novel two-level regression model combining region-level and voxel-level feature selection for improved prediction accuracy in medical imaging.
Findings
Effective prediction of ASD severity and treatment outcomes.
Validation on task-fMRI and resting state datasets shows robustness.
Results align with existing neuroimaging findings.
Abstract
Autism spectrum disorder (ASD) is a complex neurodevelopmental syndrome. Early diagnosis and precise treatment are essential for ASD patients. Although researchers have built many analytical models, there has been limited progress in accurate predictive models for early diagnosis. In this project, we aim to build an accurate model to predict treatment outcome and ASD severity from early stage functional magnetic resonance imaging (fMRI) scans. The difficulty in building large databases of patients who have received specific treatments and the high dimensionality of medical image analysis problems are challenges in this work. We propose a generic and accurate two-level approach for high-dimensional regression problems in medical image analysis. First, we perform region-level feature selection using a predefined brain parcellation. Based on the assumption that voxels within one region in…
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