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Article type: Research Article
Authors: Xie, Linhuia; d; 1 | Raj, Yashb; 1 | Varathan, Pradeepb; d | He, Bingb; d | Yu, Meichenc; d | Nho, Kwangsikc; d | Salama, Paula | Saykin, Andrew J.c; d | Yan, Jingwenb; d; *
Affiliations: [a] Department of Electrical and Computer Engineering, Indiana University Purdue University Indianapolis, Indianapolis, IN, USA | [b] Department of BioHealth Informatics, Indiana University Purdue University Indianapolis, Indianapolis, IN, USA | [c] Department of Radiology and Imaging Sciences, Indiana University School of Medicine, Indianapolis, IN, USA | [d] Indiana Alzheimer’s Disease Research Center, Indianapolis, IN, USA
Correspondence: [*] Correspondence to: Prof. Jingwen Yan, Department of BioHealth Informatics, Luddy School of Informatics, Computing, and Engineering, Indiana University Purdue University Indianapolis, Indianapolis, IN, USA. Tel.: +1 317 278 7668; E-mail: [email protected].
Note: [1] These authors contributed equally to this work.
Abstract: Background:There are various molecular hypotheses regarding Alzheimer’s disease (AD) like amyloid deposition, tau propagation, neuroinflammation, and synaptic dysfunction. However, detailed molecular mechanism underlying AD remains elusive. In addition, genetic contribution of these molecular hypothesis is not yet established despite the high heritability of AD. Objective:The study aims to enable the discovery of functionally connected multi-omic features through novel integration of multi-omic data and prior functional interactions. Methods:We propose a new deep learning model MoFNet with improved interpretability to investigate the AD molecular mechanism and its upstream genetic contributors. MoFNet integrates multi-omic data with prior functional interactions between SNPs, genes, and proteins, and for the first time models the dynamic information flow from DNA to RNA and proteins. Results:When evaluated using the ROS/MAP cohort, MoFNet outperformed other competing methods in prediction performance. It identified SNPs, genes, and proteins with significantly more prior functional interactions, resulting in three multi-omic subnetworks. SNP-gene pairs identified by MoFNet were mostly eQTLs specific to frontal cortex tissue where gene/protein data was collected. These molecular subnetworks are enriched in innate immune system, clearance of misfolded proteins, and neurotransmitter release respectively. We validated most findings in an independent dataset. One multi-omic subnetwork consists exclusively of core members of SNARE complex, a key mediator of synaptic vesicle fusion and neurotransmitter transportation. Conclusions:Our results suggest that MoFNet is effective in improving classification accuracy and in identifying multi-omic markers for AD with improved interpretability. Multi-omic subnetworks identified by MoFNet provided insights of AD molecular mechanism with improved details.
Keywords: Alzheimer’s disease, deep learning, multi-omics, neural network, systems biology
DOI: 10.3233/JAD-240098
Journal: Journal of Alzheimer's Disease, vol. 99, no. 2, pp. 715-727, 2024
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