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首页> 外文期刊>Sensors >Genome-Wide SNP Signal Intensity Scanning Revealed Genes Differentiating Cows with Ovarian Pathologies from Healthy Cows
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Genome-Wide SNP Signal Intensity Scanning Revealed Genes Differentiating Cows with Ovarian Pathologies from Healthy Cows

机译:全基因组SNP信号强度扫描揭示了区分卵巢疾病与健康母牛的基因

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摘要

Hypoplasia and ovarian cysts are the most common ovarian pathologies in cattle. In this genome-wide study we analyzed the signal intensity of 648,315 Single Nucleotide Polymorphisms (SNPs) and identified 1338 genes differentiating cows with ovarian pathologies from healthy cows. The sample consisted of six cows presenting an ovarian pathology and six healthy cows. SNP signal intensities were measured with a genotyping process using the Axiom Genome-Wide BOS 1 SNPchip. Statistical tests for equality of variance and mean were applied to SNP intensities, and significance p -values were obtained. A Benjamini-Hochberg multiple testing correction reveled significant SNPs. Corresponding genes were identified using the Bovine Genome UMD 3.1 annotation. Principal Components Analysis (PCA) confirmed differentiation. An analysis of Copy Number Variations (CNVs), obtained from signal intensities, revealed no evidence of association between ovarian pathologies and CNVs. In addition, a haplotype frequency analysis showed no association with ovarian pathologies. Results show that SNP signal intensity, which captures not only information for base-pair genotypes elucidation, but the amount of fluorescence nucleotide synthetization produced in an enzymatic reaction, is a rich source of information that, by itself or in combination with base-pair genotypes, might be used to implement differentiation, prediction and diagnostic procedures, increasing the scope of applications for Genotyping Microarrays.
机译:发育不全和卵巢囊肿是牛中最常见的卵巢病变。在这项全基因组研究中,我们分析了648,315个单核苷酸多态性(SNP)的信号强度,并鉴定了1338个使卵巢疾病与健康母牛相区分的基因。样品由表现出卵巢病理的六头母牛和六头健康的母牛组成。使用Axiom Genome-Wide BOS 1 SNPchip通过基因分型过程测量SNP信号强度。对SNP强度进行方差和均值相等性的统计检验,并获得显着性p值。 Benjamini-Hochberg多重测试校正显示出重要的SNP。使用牛基因组UMD 3.1注释鉴定了相应的基因。主成分分析(PCA)证实了差异。从信号强度获得的拷贝数变异(CNV)的分析显示,卵巢病理与CNV之间没有关联的证据。此外,单倍型频率分析显示与卵巢病理没有关联。结果表明,SNP信号强度不仅捕获碱基对基因型阐明的信息,而且捕获酶促反应中产生的荧光核苷酸合成的量,是其自身或与碱基对基因型结合的丰富信息来源。 ,可用于实施区分,预测和诊断程序,从而扩大了基因分型微阵列的应用范围。
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