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一种新的深度学习技术揭示了个体癌症突变的独特功能贡献。

A new deep learning technique reveals the exclusive functional contributions of individual cancer mutations.

机构信息

Department of Electrical Engineering, Indian Institute of Technology - Delhi (IIT-D), Delhi, India.

Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-D), Delhi, India.

出版信息

J Biol Chem. 2022 Aug;298(8):102177. doi: 10.1016/j.jbc.2022.102177. Epub 2022 Jun 24.

Abstract

Cancers are caused by genomic alterations that may be inherited, induced by environmental carcinogens, or caused due to random replication errors. Postinduction of carcinogenicity, mutations further propagate and drastically alter the cancer genomes. Although a subset of driver mutations has been identified and characterized to date, most cancer-related somatic mutations are indistinguishable from germline variants or other noncancerous somatic mutations. Thus, such overlap impedes appreciation of many deleterious but previously uncharacterized somatic mutations. The major bottleneck arises due to patient-to-patient variability in mutational profiles, making it difficult to associate specific mutations with a given disease outcome. Here, we describe a newly developed technique Continuous Representation of Codon Switches (CRCS), a deep learning-based method that allows us to generate numerical vector representations of mutations, thereby enabling numerous machine learning-based tasks. We demonstrate three major applications of CRCS; first, we show how CRCS can help detect cancer-related somatic mutations in the absence of matched normal samples, which has applications in cell-free DNA-based assessment of tumor mutation burden. Second, the proposed approach also enables identification and exploration of driver genes; our analyses implicate DMD, RSK4, OFD1, WDR44, and AFF2 as potential cancer drivers. Finally, we used CRCS to score individual mutations in a tumor sample, which was found to be predictive of patient survival in bladder urothelial carcinoma, hepatocellular carcinoma, and lung adenocarcinoma. Taken together, we propose CRCS as a valuable computational tool for analysis of the functional significance of individual cancer mutations.

摘要

癌症是由基因组改变引起的,这些改变可能是遗传的,也可能是由环境致癌物诱导的,或者是由于随机复制错误引起的。致癌作用诱导后,突变进一步传播,并使癌症基因组发生巨大改变。尽管迄今为止已经确定并描述了一小部分驱动突变,但大多数与癌症相关的体细胞突变与种系变异或其他非癌性体细胞突变无法区分。因此,这种重叠阻碍了对许多有害但以前未被描述的体细胞突变的认识。主要的瓶颈是由于患者之间突变谱的可变性,使得很难将特定的突变与特定的疾病结果联系起来。在这里,我们描述了一种新开发的技术——连续密码子转换表示(CRCS),这是一种基于深度学习的方法,允许我们生成突变的数字向量表示,从而实现许多基于机器学习的任务。我们展示了 CRCS 的三个主要应用;首先,我们展示了如何在没有匹配的正常样本的情况下使用 CRCS 帮助检测与癌症相关的体细胞突变,这在基于无细胞 DNA 的肿瘤突变负荷评估中有应用。其次,所提出的方法还能够识别和探索驱动基因;我们的分析表明 DMD、RSK4、OFD1、WDR44 和 AFF2 可能是潜在的癌症驱动基因。最后,我们使用 CRCS 对肿瘤样本中的单个突变进行评分,结果发现该评分可预测膀胱癌、肝细胞癌和肺腺癌患者的生存情况。总之,我们提出 CRCS 作为一种有价值的计算工具,用于分析单个癌症突变的功能意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f17a/9304782/beb23a04c7c4/gr1.jpg

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