An interpretable generative multimodal neuroimaging-genomics framework for decoding Alzheimer's disease
Giorgio Dolci (1,2,3), Federica Cruciani (2), Md Abdur Rahaman (3), Anees Abrol (3), Jiayu Chen (3), Zening Fu (3), Ilaria Boscolo Galazzo (2), Gloria Menegaz (2), Vince D. Calhoun (3) ((1) Department of Computer Science, University of Verona, Verona, Italy

TL;DR
This paper introduces an interpretable multimodal deep learning framework combining MRI and genomics data, employing generative models to handle missing data, for improved Alzheimer's disease diagnosis and understanding of disease-related brain and genetic changes.
Contribution
It presents a novel generative multimodal deep learning approach with explainability for AD classification and MCI prediction, addressing missing data issues and providing biological insights.
Findings
Achieved 92.6% accuracy in AD detection
Identified brain regions associated with AD
Linked genetic mutations to disease mechanisms
Abstract
\textbf{Objective:} Alzheimer's disease (AD) is the most prevalent form of dementia worldwide, encompassing a prodromal stage known as Mild Cognitive Impairment (MCI), where patients may either progress to AD or remain stable. The objective of the work was to capture structural and functional modulations of brain structure and function relying on multimodal MRI data and Single Nucleotide Polymorphisms, also in case of missing views, with the twofold goal of classifying AD patients versus healthy controls and detecting MCI converters. % in two distinct tasks, dealing with also missing data.\\ \textbf{Approach:} We propose a multimodal DL-based classification framework where a generative module employing Cycle Generative Adversarial Networks was introduced in the latent space for imputing missing data (a common issue of multimodal approaches). Explainable AI method was then used to…
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