Integration of multiomics data with graph convolutional networks to identify new cancer genes and their associated molecular mechanisms

Volume: 3, Issue: 6, Pages: 513 - 526
Published: Apr 12, 2021
Abstract
The increase in available high-throughput molecular data creates computational challenges for the identification of cancer genes. Genetic as well as non-genetic causes contribute to tumorigenesis, and this necessitates the development of predictive models to effectively integrate different data modalities while being interpretable. We introduce EMOGI, an explainable machine learning method based on graph convolutional networks to predict cancer...
Paper Details
Title
Integration of multiomics data with graph convolutional networks to identify new cancer genes and their associated molecular mechanisms
Published Date
Apr 12, 2021
Volume
3
Issue
6
Pages
513 - 526
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