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Applying Expression Profile Similarity for Discovery of Patient-Specific Functional Mutations

机译:应用表达谱相似性发现患者特定的功能突变

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摘要

The progress of cancer genome sequencing projects yields unprecedented information of mutations for numerous patients. However, the complexity of mutation profiles of cancer patients hinders the further understanding to mechanisms of oncogenesis. One basic question is how to find mutations with functional impacts. In this work, we introduce a computational method to predict functional somatic mutations of each patient by integrating mutation recurrence with expression profile similarity. With this method, the functional mutations are determined by checking the mutation enrichment among a group of patients with similar expression profiles. We applied this method to three cancer types and identified the functional mutations. Comparison of the predictions for three cancer types suggested that most of the functional mutations were cancer-type-specific with one exception to p53. By checking predicted results, we found that our method effectively filtered non-functional mutations resulting from large protein sizes. In addition, this method can also perform functional annotation to each patient to describe their association with signalling pathways or biological processes. In breast cancer, we predicted “cell adhesion” and other terms to be significantly associated with oncogenesis.
机译:癌症基因组测序项目的进展为许多患者带来了前所未有的突变信息。然而,癌症患者突变谱的复杂性阻碍了对肿瘤发生机理的进一步了解。一个基本问题是如何找到具有功能影响的突变。在这项工作中,我们引入了一种计算方法,通过将突变复发与表达谱相似性相结合来预测每位患者的功能性体细胞突变。通过这种方法,通过检查一组具有相似表达谱的患者之间的突变富集来确定功能性突变。我们将这种方法应用于三种癌症类型,并确定了功能突变。对三种癌症类型的预测结果的比较表明,大多数功能突变是特定于癌症类型的,p53除外。通过检查预测的结果,我们发现我们的方法有效地过滤了由于蛋白质大而导致的非功能性突变。另外,该方法还可以对每个患者进行功能注释,以描述他们与信号传导途径或生物学过程的关联。在乳腺癌中,我们预测“细胞粘附”和其他术语与肿瘤发生显着相关。

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