Supervised Heterogeneous Multiview Learning for Joint Association Study and Disease Diagnosis
Shandian Zhe, Zenglin Xu, and Yuan Qi

TL;DR
This paper introduces a novel sparse Bayesian model that jointly performs disease diagnosis and genetic-phenotypic association analysis, improving accuracy and biological insight in biomedical research.
Contribution
It unifies disease diagnosis and association study tasks using a sparse Bayesian framework with a variational EM algorithm, revealing meaningful biomarker interactions.
Findings
Higher accuracy in disease stage prediction compared to existing methods
Effective identification of biologically relevant genetic and phenotypic associations
Successful application to Alzheimer's Disease dataset
Abstract
Given genetic variations and various phenotypical traits, such as Magnetic Resonance Imaging (MRI) features, we consider two important and related tasks in biomedical research: i)to select genetic and phenotypical markers for disease diagnosis and ii) to identify associations between genetic and phenotypical data. These two tasks are tightly coupled because underlying associations between genetic variations and phenotypical features contain the biological basis for a disease. While a variety of sparse models have been applied for disease diagnosis and canonical correlation analysis and its extensions have bee widely used in association studies (e.g., eQTL analysis), these two tasks have been treated separately. To unify these two tasks, we present a new sparse Bayesian approach for joint association study and disease diagnosis. In this approach, common latent features are extracted from…
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Taxonomy
TopicsStatistical Methods and Inference · Gene expression and cancer classification · Bioinformatics and Genomic Networks
MethodsGaussian Process
