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Correlated Mixed Membership Modeling for Somatic Mutations

机译:体细胞突变的相关混合成员模型

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Recent studies of cancer somatic mutation profiles seek to identify mutations for targeted therapy in personalized medicine. Analysis of profiles, however, is not trivial, as each profile is heterogeneous and there are multiple confounding factors that influence the cause-and-effect relationships between cancer genes such as cancer (sub)type, biological processes, total number of mutations, and non-linear mutation interactions. Moreover, cancer is biologically redundant, i.e., distinct mutations can result in the alteration of similar biological processes, so it is important to identify all possible combinatorial sets of mutations for effective patient treatment. To model this phenomena, we propose the correlated zero-inflated negative binomial process to infer the inherent structure of somatic mutation profiles through latent representations. This stochastic process takes into account different, yet correlated, co-occurring mutations using profile-specific negative binomial dispersion parameters that are mixed with a correlated beta-Bernoulli process and a probability parameter to model profile heterogeneity. These model parameters are inferred by iterative optimization via amortized and stochastic variational inference using the Pan Cancer dataset from The Cancer Genomic Archive (TCGA). By examining the the latent space, we identify biologically relevant correlations between somatic mutations.
机译:癌症体细胞突变谱的最新研究旨在鉴定针对个性化医学中靶向治疗的突变。但是,分析轮廓并不是一件容易的事,因为每个轮廓都是异质的,并且存在多种混杂因素会影响癌症基因之间的因果关系,例如癌症(亚)类型,生物学过程,突变总数和非线性突变相互作用。而且,癌症在生物学上是多余的,即,独特的突变可导致相似的生物学过程的改变,因此,对于有效的患者治疗,识别所有可能的突变组合非常重要。为了对这种现象进行建模,我们提出了相关的零膨胀负二项式过程,以通过潜在表示来推断体细胞突变谱的内在结构。此随机过程考虑了使用特定于轮廓的负二项式离散参数与相关的β-伯努利过程和概率参数混合以建模轮廓异质性的不同但相关的共现突变。这些模型参数是使用癌症基因组档案(TCGA)的Pan Cancer数据集通过摊销和随机变异推断进行迭代优化得出的。通过检查潜在的空间,我们确定体细胞突变之间的生物学相关的关联。

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