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Bayesian Hidden Markov Modeling of Array CGH Data

机译:阵列CGH数据的贝叶斯隐马尔可夫建模

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摘要

Genomic alterations have been linked to the development and progression of cancer. The technique of comparative genomic hybridization (CGH) yields data consisting of fluorescence intensity ratios of test and reference DNA samples. The intensity ratios provide information about the number of copies in DNA. Practical issues such as the contamination of tumor cells in tissue specimens and normalization errors necessitate the use of statistics for learning about the genomic alterations from array CGH data. As increasing amounts of array CGH data become available, there is a growing need for automated algorithms for characterizing genomic profiles. Specifically, there is a need for algorithms that can identify gains and losses in the number of copies based on statistical considerations, rather than merely detect trends in the data.We adopt a Bayesian approach, relying on the hidden Markov model to account for the inherent dependence in the intensity ratios. Posterior inferences are made about gains and losses in copy number. Localized amplifications (associated with oncogene mutations) and deletions (associated with mutations of tumor suppressors) are identified using posterior probabilities. Global trends such as extended regions of altered copy number are detected. Because the posterior distribution is analytically intractable, we implement a Metropolis-within-Gibbs algorithm for efficient simulation-based inference. Publicly available data on pancreatic adenocarcinoma, glioblastoma multiforme, and breast cancer are analyzed, and comparisons are made with some widely used algorithms to illustrate the reliability and success of the technique.
机译:基因组改变与癌症的发生和发展有关。比较基因组杂交技术(CGH)产生的数据包括测试和参考DNA样品的荧光强度比。强度比提供有关DNA中拷贝数的信息。实际问题,例如组织标本中肿瘤细胞的污染和归一化错误,需要使用统计数据来从阵列CGH数据中了解基因组变化。随着越来越多的阵列CGH数据可用,越来越需要用于表征基因组图谱的自动化算法。具体来说,需要一种算法,该算法可以基于统计考虑因素识别出副本数量的得失,而不仅仅是检测数据的趋势。我们采用贝叶斯方法,依靠隐马尔可夫模型来解决固有问题强度比的依赖性。对拷贝数的得失进行后验推断。使用后验概率鉴定局部扩增(与癌基因突变相关)和缺失(与肿瘤抑制基因的突变相关)。检测到全局趋势,例如拷贝数更改的扩展区域。由于后验分布在分析上难以处理,因此我们实现了基于Gibbbs的Metropolis-in-Gibbs算法,以进行基于仿真的高效推理。分析了胰腺癌,多形性胶质母细胞瘤和乳腺癌的公开数据,并与一些广泛使用的算法进行了比较,以说明该技术的可靠性和成功性。

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