论文标题
使用“隐藏”基因组改善癌症类型的分类
Using the "Hidden" Genome to Improve Classification of Cancer Types
论文作者
论文摘要
使用鉴定体突变的技术检查癌症标本在临床上越来越普遍。原则上,这些突变曲线可用于诊断起源组织,这对于3-5%的原发性部位的肿瘤中的一项关键任务。主要部位的诊断对于采用循环DNA的筛选测试也至关重要。但是,在任何新肿瘤中观察到的大多数突变很少发生突变,实际上,在任何以前记录的肿瘤中都可能没有观察到这些突变。要创建一个可行的诊断工具,我们需要在此“隐藏的基因组”中利用该变体中没有直接信息的“隐藏基因组”。为此,我们提出了一个多级元功能回归,以从训练数据中的稀有变体中提取关键信息,以使我们还可以从新肿瘤样本中任何以前未观察到的变体中提取诊断信息。通过将高维特征筛选方法与基于多级模型的等效混合效应表示形式相结合,可实现该模型的可扩展实现。我们将该方法应用于癌症基因组全异位体测序数据集,其中包括7个常见癌症部位的3702个肿瘤样品。结果表明,我们的多层次方法可以从隐藏的基因组中利用大量的诊断信息。
It is increasingly common clinically for cancer specimens to be examined using techniques that identify somatic mutations. In principle these mutational profiles can be used to diagnose the tissue of origin, a critical task for the 3-5% of tumors that have an unknown primary site. Diagnosis of primary site is also critical for screening tests that employ circulating DNA. However, most mutations observed in any new tumor are very rarely occurring mutations, and indeed the preponderance of these may never have been observed in any previous recorded tumor. To create a viable diagnostic tool we need to harness the information content in this "hidden genome" of variants for which no direct information is available. To accomplish this we propose a multi-level meta-feature regression to extract the critical information from rare variants in the training data in a way that permits us to also extract diagnostic information from any previously unobserved variants in the new tumor sample. A scalable implementation of the model is obtained by combining a high-dimensional feature screening approach with a group-lasso penalized maximum likelihood approach based on an equivalent mixed-effect representation of the multilevel model. We apply the method to the Cancer Genome Atlas whole-exome sequencing data set including 3702 tumor samples across 7 common cancer sites. Results show that our multi-level approach can harness substantial diagnostic information from the hidden genome.