Jumping across biomedical contexts using compressive data fusion
Marinka Zitnik, Blaz Zupan

TL;DR
Medusa is a novel method that leverages diverse biological data semantics through collective matrix factorization and submodular optimization to improve disease module detection and gene-disease association predictions.
Contribution
It introduces Medusa, a flexible approach that explicitly models multiple data semantics for better biological module detection and association accuracy.
Findings
Medusa outperforms methods ignoring data semantics in gene-disease prediction.
Combining multiple semantics enhances disease module detection accuracy.
Medusa provides theoretical guarantees on detection quality.
Abstract
Motivation: The rapid growth of diverse biological data allows us to consider interactions between a variety of objects, such as genes, chemicals, molecular signatures, diseases, pathways and environmental exposures. Often, any pair of objects--such as a gene and a disease--can be related in different ways, for example, directly via gene-disease associations or indirectly via functional annotations, chemicals and pathways. Different ways of relating these objects carry different semantic meanings. However, traditional methods disregard these semantics and thus cannot fully exploit their value in data modeling. Results: We present Medusa, an approach to detect size-k modules of objects that, taken together, appear most significant to another set of objects. Medusa operates on large-scale collections of heterogeneous data sets and explicitly distinguishes between diverse data semantics.…
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Taxonomy
TopicsBioinformatics and Genomic Networks · Gene expression and cancer classification · Machine Learning in Bioinformatics
