Knowledge-driven generative subspaces for modeling multi-view dependencies in medical data
Pillai, Parvathy Sudhir, Leong, Tze-Yun
Early detection of Alzheimer's disease (AD) and identification of potential risk/beneficial factors are important for planning and administering timely interventions or preventive measures. In this paper, we learn a disease model for AD that combines genotypic and phenotypic profiles, and cognitive health metrics of patients. We propose a probabilistic generative subspace that describes the correlative, complementary and domain-specific semantics of the dependencies in multi-view, multi-modality medical data. Guided by domain knowledge and using the latent consensus between abstractions of multi-view data, we model the fusion as a data generating process. We show that our approach can potentially lead to i) explainable clinical predictions and ii) improved AD diagnoses.
Dec-2-2018
- Genre:
- Research Report (1.00)
- Industry:
- Health & Medicine > Therapeutic Area > Neurology > Alzheimer's Disease (0.94)