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QuantiSNP: an Objective Bayes Hidden-Markov Model to detect and accurately map copy number variation using SNP genotyping data

机译:QuantiSNP:一种客观的贝叶斯隐马尔可夫模型,可使用SNP基因分型数据检测并准确定位拷贝数变异

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Array-based technologies have been used to detect chromosomal copy number changes (aneuploidies) in the human genome. Recent studies identified numerous copy number variants (CNV) and some are common polymorphisms that may contribute to disease susceptibility. We developed, and experimentally validated, a novel computational framework (QuantiSNP) for detecting regions of copy number variation from BeadArray? SNP genotyping data using an Objective Bayes Hidden-Markov Model (OB-HMM). Objective Bayes measures are used to set certain hyperparameters in the priors using a novel re-sampling framework to calibrate the model to a fixed Type I (false positive) error rate. Other parameters are set via maximum marginal likelihood to prior training data of known structure. QuantiSNP provides probabilistic quantification of state classifications and significantly improves the accuracy of segmental aneuploidy identification and mapping, relative to existing analytical tools (Beadstudio, Illumina), as demonstrated by validation of breakpoint boundaries. QuantiSNP identified both novel and validated CNVs. QuantiSNP was developed using BeadArray? SNP data but it can be adapted to other platforms and we believe that the OB-HMM framework has widespread applicability in genomic research. In conclusion, QuantiSNP is a novel algorithm for high-resolution CNV/aneuploidy detection with application to clinical genetics, cancer and disease association studies.
机译:基于阵列的技术已用于检测人类基因组中的染色体拷贝数变化(非整倍性)。最近的研究确定了许多拷贝数变异(CNV),有些是可能导致疾病易感性的常见多态性。我们开发并通过实验验证了一种新颖的计算框架(QuantiSNP),用于检测BeadArray的拷贝数变异区域。使用客观贝叶斯隐马尔可夫模型(OB-HMM)进行SNP基因分型。使用新的重采样框架将模型校准为固定的I型(误报)错误率,然后使用客观贝叶斯度量来设置先验中的某些超参数。其他参数通过最大边缘可能性设置为已知结构的先前训练数据。相对于现有的分析工具(Beadstudio,Illumina),QuantiSNP提供状态分类的概率量化,并显着提高了分段非整倍性识别和映射的准确性,这已通过断点边界的验证得以证明。 QuantiSNP可以识别新型CNV和经过验证的CNV。 QuantiSNP是使用BeadArray开发的吗? SNP数据,但它可以适应其他平台,我们相信OB-HMM框架在基因组研究中具有广泛的适用性。总之,QuantiSNP是一种用于高分辨率CNV /非整倍性检测的新颖算法,可应用于临床遗传学,癌症和疾病关联研究。

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