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Machine Learning-Assisted Network Inference Approach to Identify a New Class of Genes that Coordinate the Functionality of Cancer Networks

机译:机器学习辅助网络推理方法来识别与癌症网络功能协调的新型基因

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摘要

Emerging evidence indicates the existence of a new class of cancer genes that act as “signal linkers” coordinating oncogenic signals between mutated and differentially expressed genes. While frequently mutated oncogenes and differentially expressed genes, which we term Class I cancer genes, are readily detected by most analytical tools, the new class of cancer-related genes, i.e., Class II, escape detection because they are neither mutated nor differentially expressed. Given this hypothesis, we developed a Machine Learning-Assisted Network Inference (MALANI) algorithm, which assesses all genes regardless of expression or mutational status in the context of cancer etiology. We used 8807 expression arrays, corresponding to 9 cancer types, to build more than 2 × 108 Support Vector Machine (SVM) models for reconstructing a cancer network. We found that ~3% of ~19,000 not differentially expressed genes are Class II cancer gene candidates. Some Class II genes that we found, such as SLC19A1 and ATAD3B, have been recently reported to associate with cancer outcomes. To our knowledge, this is the first study that utilizes both machine learning and network biology approaches to uncover Class II cancer genes in coordinating functionality in cancer networks and will illuminate our understanding of how genes are modulated in a tissue-specific network contribute to tumorigenesis and therapy development.
机译:新兴证据表明,存在一类新的癌症基因,它们充当“信号接头”,可协调突变和差异表达基因之间的致癌信号。尽管大多数分析工具很容易检测到经常突变的癌基因和差异表达的基因(我们称为I类癌症基因),但与癌症相关的新型一类(即II类)逃避了检测,因为它们既没有突变也没有差异表达。在此假设的基础上,我们开发了一种机器学习辅助网络推理(MALANI)算法,该算法可评估所有基因,而不论其在癌症病因学中的表达或突变状态如何。我们使用了对应于9种癌症类型的8807个表达阵列,构建了超过2××10 8 支持向量机(SVM)模型来重建癌症网络。我们发现〜19,000个未差异表达基因中的〜3%是II类癌症基因候选物。最近发现一些我们发现的II类基因,例如SLC19A1和ATAD3B与癌症结果有关。据我们所知,这是第一项利用机器学习和网络生物学方法来发现II类癌症基因以协调癌症网络功能的研究,这将阐明我们对如何在组织特异性网络中调节基因如何促进肿瘤发生和发展的理解。治疗的发展。

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