BGSSN: Breast Cancer-Associated Genes Prediction Based on Weighted Sample-Specific Networks of Cancer Subtypes

Qian Liu, Yuanyuan Zhang, Haoyu Zheng, Shudong Wang
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Abstract

Breast cancer exhibits a notable degree of heterogeneity in its occurrence and progression, encompassing diverse clinical patterns and outcomes among patients even with identical clinical pathological stages. Genetic mutations in different subtypes of breast cancer may lead to different types of disease and have different clinical implications. Therefore, molecular typing based on the characteristics of breast cancer heterogeneity and the screening of associated genes for different subtypes of breast cancer may be able to more accurately determine the pathogenic genes of breast cancer. In this paper, we propose a weighted sample-specific network based on breast cancer subtypes to predict associated genes, named BGSSN. To better reflect the individual characteristics of patients and the importance of patient samples in different subtypes, the weight of samples is added when constructing the sample-specific network. The random walk with restart method is then utilized to predict new breast cancer-associated genes within the constructed network. By leveraging this method, the network structure can be effectively explored to identify potential gene candidates.
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BGSSN:基于癌症亚型加权样本特异性网络的乳腺癌相关基因预测
乳腺癌的发生和发展具有明显的异质性,即使临床病理分期相同,患者的临床模式和预后也各不相同。不同亚型乳腺癌的基因突变可能导致不同类型的疾病,并产生不同的临床影响。因此,根据乳腺癌异质性的特点进行分子分型,筛选不同亚型乳腺癌的相关基因,或许能更准确地确定乳腺癌的致病基因。本文提出了一种基于乳腺癌亚型的加权样本特异性网络来预测相关基因,命名为 BGSSN。为了更好地反映患者的个体特征和患者样本在不同亚型中的重要性,在构建样本特异性网络时增加了样本的权重。然后,利用带重启的随机游走法预测所构建网络中的新乳腺癌相关基因。利用这种方法,可以有效地探索网络结构,找出潜在的候选基因。
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