BiCoN: Network-constrained biclustering of patients and omics data

Olga Lazareva, Stefan Canzar, Kevin Yuan, Jan Baumbach, David B. Blumenthal, Paolo Tieri, Tim Kacprowski, Markus List

Publikation: Beitrag in FachzeitschriftArtikelBegutachtung

16 Zitate (Scopus)

Abstract

Motivation: Unsupervised learning approaches are frequently used to stratify patients into clinically relevant subgroups and to identify biomarkers such as disease-associated genes. However, clustering and biclustering techniques are oblivious to the functional relationship of genes and are thus not ideally suited to pinpoint molecular mechanisms along with patient subgroups. Results: We developed the network-constrained biclustering approach Biclustering Constrained by Networks (BiCoN) which (i) restricts biclusters to functionally related genes connected in molecular interaction networks and (ii) maximizes the difference in gene expression between two subgroups of patients. This allows BiCoN to simultaneously pinpoint molecular mechanisms responsible for the patient grouping. Network-constrained clustering of genes makes BiCoN more robust to noise and batch effects than typical clustering and biclustering methods. BiCoN can faithfully reproduce known disease subtypes as well as novel, clinically relevant patient subgroups, as we could demonstrate using breast and lung cancer datasets. In summary, BiCoN is a novel systems medicine tool that combines several heuristic optimization strategies for robust disease mechanism extraction. BiCoN is well-documented and freely available as a python package or a web interface. Web interface: https://exbio.wzw.tum.de/bicon.

OriginalspracheEnglisch
Seiten (von - bis)2398-2404
Seitenumfang7
FachzeitschriftBioinformatics
Jahrgang37
Ausgabenummer16
DOIs
PublikationsstatusVeröffentlicht - 15 Aug. 2021

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