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Identification of Genes for Complex Diseases by Integrating Multiple Types of Genomic Data

机译:通过整合多种基因组数据来鉴定复杂疾病的基因

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Combining multi-types of genomic data for integrative analyses can take advantage of complementary information and thus can have higher power to identify genes/variables that would otherwise be impossible with individual data analysis. Here we proposed a sparse representation based clustering (SRC) method for integrative data analyses, and applied the SRC method to the integrative analysis of 376821 SNPs in 200 subjects (100 cases and 100 controls) and expression data for 22283 genes in 80 subjects (40 cases and 40 controls) to identify significant genes for osteoporosis (OP). Comparing our results with previous studies, we identified some genes known related to OP risk, as well as some uncovered novel osteoporosis susceptible genes ('DICER1', 'PTMA', etc.) that may function importantly in osteoporosis etiology. In addition, the SRC method identified genes can lead to higher accuracy for the identification of osteoporosis subjects when compared with the traditional T-test and Fisher-exact test, which further validate the proposed SRC approach for integrative analysis.
机译:组合用于综合分析的多种基因组数据可以利用互补信息,因此可以具有更高的功率来识别将无法与个别数据分析不可能的基因/变量。在这里,我们提出了一种基于稀疏表示的聚类(SRC)方法,用于集成数据分析,并将SRC方法应用于200个受试者(100例和100个对照)中的376821个SNP的总体分析和22283个基因的表达数据(40病例和40个对照)以鉴定骨质疏松症(OP)的重要基因。将结果与先前的研究相比,我们确定了一些已知有关OP风险相关的基因,以及一些未覆盖的新型骨质疏松症易感基因('Dicer1','PTMA'等),其可以在骨质疏松病因中主要起作用。此外,与传统的T检验和Fisher精确测试相比,SRC方法鉴定的基因可导致鉴定骨质疏松症受试者的准确性,进一步验证了所提出的SRC方法进行整合分析。

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