亚型
组学
推论
计算机科学
可解释性
模式
机器学习
计算生物学
人工智能
生物信息学
生物
社会科学
社会学
程序设计语言
作者
Ziwei Yang,Kewei Chen,Yasuko Matsubara,Yasushi Sakurai
出处
期刊:Cornell University - arXiv
日期:2023-08-17
标识
DOI:10.1145/3583780.3614970
摘要
Precision medicine fundamentally aims to establish causality between dysregulated biochemical mechanisms and cancer subtypes. Omics-based cancer subtyping has emerged as a revolutionary approach, as different level of omics records the biochemical products of multistep processes in cancers. This paper focuses on fully exploiting the potential of multi-omics data to improve cancer subtyping outcomes, and hence developed MoCLIM, a representation learning framework. MoCLIM independently extracts the informative features from distinct omics modalities. Using a unified representation informed by contrastive learning of different omics modalities, we can well-cluster the subtypes, given cancer, into a lower latent space. This contrast can be interpreted as a projection of inter-omics inference observed in biological networks. Experimental results on six cancer datasets demonstrate that our approach significantly improves data fit and subtyping performance in fewer high-dimensional cancer instances. Moreover, our framework incorporates various medical evaluations as the final component, providing high interpretability in medical analysis.
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