Deep multiview learning to identify imaging-driven subtypes in mild cognitive impairment.
Yixue FengMansu KimXiaohui YaoKefei LiuQi LongLi Shennull nullPublished in: BMC bioinformatics (2022)
Overall, DGCCA is able to learn effective low dimensional embeddings from multimodal data by learning non-linear projections. MCI subtypes generated from DGCCA embeddings are different from existing early and late MCI groups and show most similarity with those identified by amyloid PET features. In our validation studies, DGCCA subtypes show distinct patterns in cognitive measures, brain volumes, and are able to identify AD genetic markers. These findings indicate the promise of the imaging-driven subtypes and their power in revealing disease structures beyond early and late stage MCI.
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