4.6 Article

netDx: interpretable patient classification using integrated patient similarity networks

期刊

MOLECULAR SYSTEMS BIOLOGY
卷 15, 期 3, 页码 -

出版社

WILEY
DOI: 10.15252/msb.20188497

关键词

multimodal data integration; multi-omits; patient similarity networks; precision medicine; supervised machine learning

资金

  1. Canadian Institutes of Health Research [499509]
  2. NRNB (U.S. National Institutes of Health) [499382]
  3. U.S. National Institutes of Health [503758]
  4. Canadian Institutes of Health Research Fellowship award [498002]

向作者/读者索取更多资源

Patient classification has widespread biomedical and clinical applications, including diagnosis, prognosis, and treatment response prediction. A clinically useful prediction algorithm should be accurate, generalizable, be able to integrate diverse data types, and handle sparse data. A clinical predictor based on genomic data needs to be interpretable to drive hypothesis-driven research into new treatments. We describe netDx, a novel supervised patient classification framework based on patient similarity networks, which meets these criteria. In a cancer survival benchmark dataset integrating up to six data types in four cancer types, netDx significantly outperforms most other machine-learning approaches across most cancer types. Compared to traditional machine-learning-based patient classifiers, netDx results are more interpretable, visualizing the decision boundary in the context of patient similarity space. When patient similarity is defined by pathway-level gene expression, netDx identifies biological pathways important for outcome prediction, as demonstrated in breast cancer and asthma. netDx can serve as a patient classifier and as a tool for discovery of biological features characteristic of disease. We provide a free software implementation of netDx with automation workflows.

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