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Identification of breast cancer risk modules via an integrated strategy

机译:通过综合策略识别乳腺癌风险模块

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摘要

Breast cancer is one of the most common malignant cancers among females worldwide. This complex disease is not caused by a single gene, but resulted from multi-gene interactions, which could be represented by biological networks. Network modules are composed of genes with significant similarities in terms of expression, function and disease association. Therefore, the identification of disease risk modules could contribute to understanding the molecular mechanisms underlying breast cancer. In this paper, an integrated disease risk module identification strategy was proposed according to a multi-objective programming model for two similarity criteria as well as significance of permutation tests in Markov random field module score, function consistency score and Pearson correlation coefficient difference score. Three breast cancer risk modules were identified from a breast cancer-related interaction network. Genes in these risk modules were confirmed to play critical roles in breast cancer by literature review. These risk modules were enriched in breast cancer-related pathways or functions and could distinguish between breast tumor and normal samples with high accuracy for not only the microarray dataset used for breast cancer risk module identification, but also another two independent datasets. Our integrated strategy could be extended to other complex diseases to identify their risk modules and reveal their pathogenesis.
机译:乳腺癌是全世界女性中最常见的恶性肿瘤之一。这种复杂的疾病不是由单个基因引起的,而是由多基因相互作用引起的,这可以用生物网络来表示。网络模块由在表达,功能和疾病关联方面具有显着相似性的基因组成。因此,确定疾病风险模块可能有助于理解乳腺癌的分子机制。本文基于多目标规划模型,针对两个相似性标准以及排列检验在马尔可夫随机场模块得分,功能一致性得分和Pearson相关系数差异得分中的重要性,提出了一种综合的疾病风险模块识别策略。从与乳腺癌相关的互动网络中确定了三个乳腺癌风险模块。通过文献综述,这些风险模块中的基因被证实在乳腺癌中起关键作用。这些风险模块丰富了与乳腺癌相关的途径或功能,不仅可以用于乳腺癌风险模块识别的微阵列数据集,而且可以在两个独立的数据集之间以高精度区分乳腺肿瘤和正常样品。我们的综合策略可以扩展到其他复杂疾病,以识别其风险模块并揭示其发病机理。

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