作者
Sahand Khakabimamaghani, Yogeshwar D Kelkar, Bruno M Grande, Ryan D Morin, Martin Ester, Daniel Ziemek
发表日期
2019/9/15
期刊
Bioinformatics
卷号
35
期号
18
页码范围
3263-3272
出版商
Oxford University Press
简介
Motivation
Patient stratification methods are key to the vision of precision medicine. Here, we consider transcriptional data to segment the patient population into subsets relevant to a given phenotype. Whereas most existing patient stratification methods focus either on predictive performance or interpretable features, we developed a method striking a balance between these two important goals.
Results
We introduce a Bayesian method called SUBSTRA that uses regularized biclustering to identify patient subtypes and interpretable subtype-specific transcript clusters. The method iteratively re-weights feature importance to optimize phenotype prediction performance by producing more phenotype-relevant patient subtypes. We investigate the performance of SUBSTRA in finding relevant features using simulated data and successfully benchmark it against state-of-the-art …
引用总数
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