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Comparative analysis of algorithms for identifying amplifications and deletions in array CGH data

机译:鉴定阵列CGH数据中扩增和缺失的算法的比较分析

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Motivation: Array Comparative Genomic Hybridization (CGH) can reveal chromosomal aberrations in the genomic DNA. These amplifications and deletions at the DNA level are important in the pathogenesis of cancer and other diseases. While a large number of approaches have been proposed for analyzing the large array CGH datasets, the relative merits of these methods in practice are not clear. Results: We compare 11 different algorithms for analyzing array CGH data. These include both segment detection methods and smoothing methods, based on diverse techniques such as mixture models, Hidden Markov Models, maximum likelihood, regression, wavelets and genetic algorithms. We compute the Receiver Operating Characteristic (ROC) curves using simulated data to quantify sensitivity and specificity for various levels of signal-to-noise ratio and different sizes of abnormalities. We also characterize their performance on chromosomal regions of interest in a real dataset obtained from patients with Glioblastoma Multiforme. While comparisons of this type are difficult due to possibly sub-optimal choice of parameters in the methods, they nevertheless reveal general characteristics that are helpful to the biological investigator.
机译:动机:阵列比较基因组杂交(CGH)可以揭示基因组DNA中的染色体畸变。在DNA水平上的这些扩增和缺失在癌症和其他疾病的发病机理中很重要。虽然已经提出了许多方法来分析大型阵列CGH数据集,但这些方法在实践中的相对优点尚不清楚。结果:我们比较了分析阵列CGH数据的11种不同算法。这些包括基于多种技术的片段检测方法和平滑方法,例如混合模型,隐马尔可夫模型,最大似然,回归,小波和遗传算法。我们使用模拟数据计算接收器工作特性(ROC)曲线,以量化各种信噪比水平和不同大小异常情况的灵敏度和特异性。我们还在从多形性胶质母细胞瘤患者获得的真实数据集中表征了它们在感兴趣的染色体区域上的表现。尽管由于方法中参数的选择可能不够理想,很难进行这种类型的比较,但它们仍显示出有助于生物学研究者的一般特征。

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