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Machine Learning Classification and Structure-Functional Analysis of Cancer Mutations Reveal Unique Dynamic and Network Signatures of Driver Sites in Oncogenes and Tumor Suppressor Genes

机译:癌症突变的机器学习分类和结构功能分析揭示了癌肠和肿瘤抑制基因的独特动态和网络签名

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In this study, we developed two cancer-specific machine learning classifiers for prediction of driver mutations in cancer-associated genes that were validated on canonical data sets of functionally validated mutations and applied to a large cancer genomics data set. By examining sequence, structure, and ensemble-based integrated features, we have shown that evolutionary conservation scores play a critical role in classification of cancer drivers and provide the strongest signal in the machine learning prediction. Through extensive comparative analysis with structure-functional experiments and multicenter mutational calling data from Pan Cancer Atlas studies, we have demonstrated the robustness of our models and addressed the validity of computational predictions. To address the interpretability of cancer-specific classification models and obtain novel insights about molecular signatures of driver mutations, we have complemented machine learning predictions with structure-functional analysis of cancer driver mutations in several important oncogenes and tumor suppressor genes. By examining structural and dynamic signatures of known mutational hotspots and the predicted driver mutations, we have shown that the greater flexibility of specific functional regions targeted by driver mutations in oncogenes may facilitate activating conformational changes, while loss-of-function driver mutations in tumor suppressor genes can preferentially target structurally rigid positions that mediate allosteric communications in residue interaction networks and modulate protein binding interfaces. By revealing molecular signatures of cancer driver mutations, our results highlighted limitations of the binary driver/passenger classification, suggesting that functionally relevant cancer mutations may span a continuum spectrum of driver-like effects. Based on this analysis, we propose for experimental testing a group of novel potential driver mutations that can act by altering structure, global dynamics, and allosteric interaction networks in important cancer genes.
机译:在这项研究中,我们开发了两种癌症特异性机器学习分类器,用于预测癌症相关基因中的驾驶员突变,这些基因在功能验证的突变的规范数据组上验证并应用于大型癌症基因组学数据集。通过检查序列,结构和基于集合的综合特征,我们表明进化节约分数在癌症驱动程序的分类中发挥着关键作用,并在机器学习预测中提供最强的信号。通过具有与泛癌地图集研究的结构功能实验和多中心突变呼叫数据的广泛对比分析,我们已经证明了我们模型的稳健性,并解决了计算预测的有效性。为了解决癌症特异性分类模型的可解释性并获得关于驾驶员突变的分子签名的新见解,我们对几个重要的癌症和肿瘤抑制基因的癌症驾驶员突变结构功能分析进行了补充的机器学习预测。通过检查已知的突变热点的结构和动态签名和预测的驱动器突变,我们已经表明,在癌胶质中驾驶员突变靶向的特定功能区域的柔韧性可以促进激活构象变化,而肿瘤抑制器中的功能丧失损失突变基因可以优选地靶向结构上刚性位置,其在残留互动网络中介导变构通信并调节蛋白质结合界面。通过揭示癌症驾驶员突变的分子签名,我们的结果突出了二元驾驶员/乘客分类的局限性,这表明功能相关的癌症突变可能涵盖驾驶效果的连续谱。基于该分析,我们提出了一组新颖的潜在驾驶员突变,可以通过改变构造,全球动态和颠覆性相互作用网络在重要癌症基因中的构造。

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    Chapman Univ Schmid Coll Sci &

    Technol Dept Computat Sci Grad Program Computat &

    Data Sci One Univ Dr Orange CA 92866 USA;

    Chapman Univ Schmid Coll Sci &

    Technol Dept Computat Sci Grad Program Computat &

    Data Sci One Univ Dr Orange CA 92866 USA;

    Chapman Univ Schmid Coll Sci &

    Technol Dept Computat Sci Grad Program Computat &

    Data Sci One Univ Dr Orange CA 92866 USA;

    Chapman Univ Schmid Coll Sci &

    Technol Dept Computat Sci Grad Program Computat &

    Data Sci One Univ Dr Orange CA 92866 USA;

    Chapman Univ Schmid Coll Sci &

    Technol Dept Computat Sci Grad Program Computat &

    Data Sci One Univ Dr Orange CA 92866 USA;

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  • 正文语种 eng
  • 中图分类 化学;化学工业;
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