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A Bayesian ensemble approach with a disease gene network predicts damaging effects of missense variants of human cancers

机译:具有疾病基因网络的贝叶斯集成方法可预测人类癌症错义变体的破坏作用

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Large-scale sequencing of cancer genomes has revealed many novel mutations and inter-tumoral heterogeneity. Therefore, prioritizing variants according to their potential deleterious effects has become essential. We constructed a disease gene network and proposed a Bayesian ensemble approach that integrates diverse sources to predict the functional effects of missense variants. We analyzed 23,336 missense disease mutations and 36,232 neutral polymorphisms of 12,039 human proteins. The results showed successful improvement of prediction accuracy in both sensitivity and specificity, and we demonstrated the utility of the method by applying it to somatic mutations obtained from colorectal and breast cancer cell lines. The candidate genes with predicted deleterious mutations as well as known cancer genes were significantly enriched in many KEGG pathways related to carcinogenesis, supporting genetic homogeneity of cancer at the pathway level. The breast cancer-specific network increased the prediction accuracy for breast cancer mutations. This study provides a ranked list of deleterious mutations and candidate cancer genes and suggests that mutations affecting cancer may occur in important pathways and should be interpreted on the phenotype-related network or pathway. A disease gene network may be of value in predicting functional effects of novel disease-specific mutations.
机译:癌症基因组的大规模测序揭示了许多新颖的突变和肿瘤间异质性。因此,根据变体的潜在有害作用对它们进行优先排序已变得至关重要。我们构建了一个疾病基因网络,并提出了一种贝叶斯集成方法,该方法整合了各种来源以预测错义变体的功能效应。我们分析了12,039个人类蛋白质的23,336个错义疾病突变和36,232个中性多态性。结果表明,成功地提高了灵敏度和特异性方面的预测准确性,我们通过将其应用于从结肠直肠癌和乳腺癌细胞系获得的体细胞突变,证明了该方法的实用性。具有预测有害突变的候选基因以及已知的癌症基因在与致癌相关的许多KEGG途径中显着富集,在途径水平上支持癌症的遗传同质性。乳腺癌特异性网络提高了乳腺癌突变的预测准确性。这项研究提供了有害突变和候选癌症基因的排名列表,并建议影响癌症的突变可能发生在重要途径中,并应在与表型相关的网络或途径中进行解释。疾病基因网络可能在预测新型疾病特异性突变的功能效应方面具有价值。

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