iSubGen generates integrative disease subtypes by pairwise similarity assessment.

IF 4.3 Q1 BIOCHEMICAL RESEARCH METHODS Cell Reports Methods Pub Date : 2024-10-18 DOI:10.1016/j.crmeth.2024.100884
Natalie S Fox, Mao Tian, Alexander L Markowitz, Syed Haider, Constance H Li, Paul C Boutros
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Abstract

There are myriad types of biomedical data-molecular, clinical images, and others. When a group of patients with the same underlying disease exhibits similarities across multiple types of data, this is called a subtype. Existing subtyping approaches struggle to handle diverse data types with missing information. To improve subtype discovery, we exploited changes in the correlation-structure between different data types to create iSubGen, an algorithm for integrative subtype generation. iSubGen can accommodate any feature that can be compared with a similarity metric to create subtypes versatilely. It can combine arbitrary data types for subtype discovery, such as merging genetic, transcriptomic, proteomic, and pathway data. iSubGen recapitulates known subtypes across multiple cancers even with substantial missing data and identifies subtypes with distinct clinical behaviors. It performs equally with or superior to other subtyping methods, offering greater stability and robustness to missing data and flexibility to new data types. It is available at https://cran.r-project.org/web/packages/iSubGen.

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iSubGen 通过成对相似性评估生成综合疾病亚型。
生物医学数据种类繁多,有分子数据、临床图像数据等。当一组患有相同潜在疾病的患者在多种类型的数据中表现出相似性时,这就是所谓的亚型。现有的亚型分析方法难以处理信息缺失的多种数据类型。为了改进亚型发现,我们利用不同数据类型之间相关性结构的变化创建了 iSubGen,这是一种用于综合亚型生成的算法。iSubGen 即使在数据大量缺失的情况下也能重现多种癌症的已知亚型,并识别出具有不同临床表现的亚型。它的性能与其他亚型鉴定方法相当,甚至更胜一筹,对缺失数据具有更高的稳定性和鲁棒性,对新数据类型具有更大的灵活性。它可在 https://cran.r-project.org/web/packages/iSubGen 网站上查阅。
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来源期刊
Cell Reports Methods
Cell Reports Methods Chemistry (General), Biochemistry, Genetics and Molecular Biology (General), Immunology and Microbiology (General)
CiteScore
3.80
自引率
0.00%
发文量
0
审稿时长
111 days
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