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Efficient exploration of pan-cancer networks by generalized covariance selection and interactive web content

机译:通过广义协方差选择和交互式Web内容有效探索泛癌网络

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Statistical network modeling techniques are increasingly important tools to analyze cancer genomics data. However, current tools and resources are not designed to work across multiple diagnoses and technical platforms, thus limiting their applicability to comprehensive pan-cancer datasets such as The Cancer Genome Atlas (TCGA). To address this, we describe a new data driven modeling method, based on generalized Sparse Inverse Covariance Selection (SICS). The method integrates genetic, epigenetic and transcriptional data from multiple cancers, to define links that are present in multiple cancers, a subset of cancers, or a single cancer. It is shown to be statistically robust and effective at detecting direct pathway links in data from TCGA. To facilitate interpretation of the results, we introduce a publicly accessible tool (cancerlandscapes.org), in which the derived networks are explored as interactive web content, linked to several pathway and pharmacological databases. To evaluate the performance of the method, we constructed a model for eight TCGA cancers, using data from 3900 patients. The model rediscovered known mechanisms and contained interesting predictions. Possible applications include prediction of regulatory relationships, comparison of network modules across multiple forms of cancer and identification of drug targets.
机译:统计网络建模技术是分析癌症基因组数据的越来越重要的工具。但是,当前的工具和资源并未设计为可跨多个诊断和技术平台使用,因此将它们的适用范围限制在诸如癌症基因组图谱(TCGA)之类的全面泛癌数据集上。为了解决这个问题,我们基于广义的稀疏逆协方差选择(SICS)描述了一种新的数据驱动的建模方法。该方法整合了来自多种癌症的遗传,表观遗传和转录数据,以定义存在于多种癌症,一部分癌症或单一癌症中的链接。它被证明在检测TCGA数据中的直接途径联系方面具有统计学上的鲁棒性和有效性。为便于解释结果,我们引入了一个公共可访问的工具(cancerlandscapes.org),在其中将派生的网络作为交互式Web内容进行探索,并链接到多个途径和药理数据库。为了评估该方法的性能,我们使用3900名患者的数据构建了8种TCGA癌症的模型。该模型重新发现了已知的机制,并包含了有趣的预测。可能的应用包括预测调节关系,比较多种癌症形式的网络模块以及确定药物靶标。

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