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Model-based clustering of array CGH data

机译:基于模型的阵列CGH数据群集

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Motivation: Analysis of array comparative genomic hybridization (aCGH) data for recurrent DNA copy number alterations from a cohort of patients can yield distinct sets of molecular signatures or profiles. 'This can be due to the presence of heterogeneous cancer subtypes within a supposedly homogeneous population. Results: We propose a novel statistical method for automatically detecting such subtypes or clusters. Our approach is model based: each cluster is defined in terms of a sparse profile, which contains the locations of unusually frequent alterations. The profile is represented as a hidden Markov model. Samples are assigned to clusters based on their similarity to the cluster's profile. We simultaneously infer the cluster assignments and the cluster profiles using an expectation maximization-like algorithm. We show, using a realistic simulation study, that our method is significantly more accurate than standard clustering techniques. We then apply our method to two clinical datasets. In particular, we examine previously reported aCGH data from a cohort of 106 follicular lymphoma patients, and discover clusters that are known to correspond to 'clinically relevant subgroups. In addition, we examine a cohort of 92 diffuse large B-cell lymphoma patients, and discover previously unreported clusters of biological interest which have inspired followup clinical research on an independent cohort.
机译:动机:阵列对比基因组杂交(ACGH)用于复发性DNA拷贝数来自患者群体的数据的数据可以产生不同的分子签名或谱。 “这可能是由于在假定的均质人群中存在异质癌亚型。结果:我们提出了一种新颖的统计方法,用于自动检测这些亚型或簇。我们的方法是基于模型:每个群集都在稀疏配置文件方面定义,其中包含异常频繁更改的位置。配置文件表示为隐藏的马尔可夫模型。示例基于与群集的配置文件的相似性分配给群集。我们同时使用期望最大化的算法推断群集分配和群集配置文件。我们展示了使用逼真的仿真研究,我们的方法比标准聚类技术明显更准确。然后,我们将方法应用于两个临床数据集。特别是,我们研究了先前报告的来自106个卵泡淋巴瘤患者的群组的ACGH数据,并发现已知对应于“临床相关的亚组的群集。此外,我们检查了92个弥漫性大B细胞淋巴瘤患者的群组,并发现了先前未报告的生物学群体,这对独立队列进行了启发的临床研究。

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