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Quantifying cancer progression with conjunctive Bayesian networks

机译:使用联合贝叶斯网络量化癌症进展

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Motivation: Cancer is an evolutionary process characterized by accumulating mutations. However, the precise timing and the order of genetic alterations that drive tumor progression remain enigmatic.Results: We present a specific probabilistic graphical model for the accumulation of mutations and their interdependencies. The Bayesian network models cancer progression by an explicit unobservable accumulation process in time that is separated from the observable but error-prone detection of mutations. Model parameters are estimated by an Expectation-Maximization algorithm and the underlying interaction graph is obtained by a simulated annealing procedure. Applying this method to cytogenetic data for different cancer types, we find multiple complex oncogenetic pathways deviating substantially from simplified models, such as linear pathways or trees. We further demonstrate how the inferred progression dynamics can be used to improve genetics-based survival predictions which could support diagnostics and prognosis.
机译:动机:癌症是一个以积累突变为特征的进化过程。然而,驱动肿瘤进展的遗传改变的确切时机和顺序仍然是令人困惑的。结果:我们提出了一种特定的概率图形模型,用于积累突变及其相互依赖性。贝叶斯网络通过明确的,不可观察的时间积累过程来模拟癌症的进展,该过程与可观察到但易于出错的突变检测是分开的。模型参数是通过Expectation-Maximization算法估算的,而基础交互图是通过模拟退火程序获得的。将这种方法应用于不同癌症类型的细胞遗传学数据,我们发现多个复杂的致癌途径与简化模型(例如线性途径或树木)大不相同。我们进一步证明,推断的进展动态可用于改善基于遗传学的生存预测,从而可以支持诊断和预后。

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