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Deep Multiview Learning to Identify Population Structure with Multimodal Imaging

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Author(s)
Feng, YixueKim, MansuYao, XiaohuiLiu, KefeiLong, QiShen, Li
Type
Conference Paper
Citation
20th IEEE International Conference on Bioinformatics and Bioengineering, BIBE 2020, pp.308 - 314
Issued Date
2020-10-26
Abstract
We present an effective deep multiview learning framework to identify population structure using multimodal imaging data. Our approach is based on canonical correlation analysis (CCA). We propose to use deep generalized CCA (DGCCA) to learn a shared latent representation of nonlinearly mapped and maximally correlated components from multiple imaging modalities with reduced dimensionality. In our empirical study, this representation is shown to effectively capture more variance in original data than conventional generalized CCA (GCCA) which applies only linear transformation to the multi-view data. Furthermore, subsequent cluster analysis on the new feature set learned from DGCCA is able to identify a promising population structure in an Alzheimer's disease (AD) cohort. Genetic association analyses of the clustering results demonstrate that the shared representation learned from DGCCA yields a population structure with a stronger genetic basis than several competing feature learning methods. © 2020 IEEE.
Publisher
Institute of Electrical and Electronics Engineers Inc.
Conference Place
US
Virtual, Cincinnati
URI
https://scholar.gist.ac.kr/handle/local/34187
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