2022
DOI: 10.1111/biom.13648
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Bayesian Interaction Selection Model for Multimodal Neuroimaging Data Analysis

Abstract: Multimodality or multiconstruct data arise increasingly in functional neuroimaging studies to characterize brain activity under different cognitive states. Relying on those high‐resolution imaging collections, it is of great interest to identify predictive imaging markers and intermodality interactions with respect to behavior outcomes. Currently, most of the existing variable selection models do not consider predictive effects from interactions, and the desired higher‐order terms can only be included in the p… Show more

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