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Accurate confidence aware clustering of array CGH tumor profiles

机译:阵列CGH肿瘤轮廓的精确置信度聚类

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Motivation: Chromosomal aberrations tend to be characteristic for given (sub) types of cancer. Such aberrations can be detected with array comparative genomic hybridization (aCGH). Clustering aCGH tumor profiles aids in identifying chromosomal regions of interest and provides useful diagnostic information on the cancer type. An important issue here is to what extent individual aCGH tumor profiles can be reliably assigned to clusters associated with a given cancer type.Results: We introduce a novel evolutionary fuzzy clustering (EFC) algorithm, which is able to deal with overlapping clusterings. Our method assesses these overlaps by using cluster membership degrees, which we use here as a confidence measure for individual samples to be assigned to a given tumor type. We first demonstrate the usefulness of our method using a synthetic aCGH dataset and subsequently show that EFC outperforms existing methods on four real datasets of aCGH tumor profiles involving four different cancer types. We also show that in general best performance is obtained using 1-Pearson correlation coefficient as a distance measure and that extra preprocessing steps, such as segmentation and calling, lead to decreased clustering performance.
机译:动机:染色体畸变往往是给定(亚)类型癌症的特征。可以使用阵列比较基因组杂交(aCGH)检测到此类像差。聚类aCGH肿瘤概况有助于识别感兴趣的染色体区域,并提供有关癌症类型的有用诊断信息。这里的一个重要问题是,在何种程度上可以将单个aCGH肿瘤谱可靠地分配给与给定癌症类型相关的聚类。结果:我们引入了一种新颖的进化模糊聚类(EFC)算法,该算法能够处理重叠聚类。我们的方法通过使用聚类隶属度来评估这些重叠,在这里我们将其用作将各个样品分配给给定肿瘤类型的置信度度量。我们首先证明了使用合成aCGH数据集的方法的有效性,然后证明了EFC在涉及四种不同癌症类型的aCGH肿瘤概况的四个真实数据集上优于现有方法。我们还表明,通常,使用1-Pearson相关系数作为距离度量可以获得最佳性能,并且额外的预处理步骤(例如分段和调用)会导致聚类性能下降。

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