4.7 Article

FUNMarker: Fusion Network-Based Method to Identify Prognostic and Heterogeneous Breast Cancer Biomarkers

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TCBB.2020.2973148

Keywords

Biomarkers; Breast cancer; Proteins; Gene expression; Prognostic and heterogeneous biomarker; label propagation; fusion network

Funding

  1. National Natural Science Foundation of China [61832019, 61772552]
  2. 111 Project [B18059]
  3. Hunan Provincial Science and Technology Program [2018WK4001]
  4. Hunan Provincial Innovation Foundation For Postgraduate [CX20190123]

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This study proposed a method to identify prognostic and heterogeneous breast cancer biomarkers by considering patient sample heterogeneity and biological information from multiple sources. By clustering samples, weighting genes, and ranking them via a label propagation model on a fusion network, the identified biomarkers were biologically interpretable and had strong discriminative power in differentiating patients with different prognostic outcomes.
Breast cancer is a heterogeneous disease with many clinically distinguishable molecular subtypes each corresponding to a cluster of patients. Identification of prognostic and heterogeneous biomarkers for breast cancer is to detect cluster-specific gene biomarkers which can be used for accurate survival prediction of breast cancer outcomes. In this study, we proposed a FUsion Network-based method (FUNMarker) to identify prognostic and heterogeneous breast cancer biomarkers by considering the heterogeneity of patient samples and biological information from multiple sources. To reduce the affect of heterogeneity of patients, samples were first clustered using the K-means algorithm based on the principal components of gene expression. For each cluster, to comprehensively evaluate the influence of genes on breast cancer, genes were weighted from three aspects: biological function, prognostic ability and correlation with known disease genes. Then they were ranked via a label propagation model on a fusion network that combined physical protein interactions from seven types of networks and thus could reduce the impact of incompleteness of interactome. We compared FUNMarker with three state-of-the-art methods and the results showed that biomarkers identified by FUNMarker were biological interpretable and had stronger discriminative power than the existing methods in differentiating patients with different prognostic outcomes.

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