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A multivariate partial least squares approach to joint association analysis for multiple correlated traits
  • ISSN号:1000-7857
  • 期刊名称:《科技导报》
  • 时间:0
  • 分类:S33[农业科学—作物遗传育种;农业科学—农艺学]
  • 作者机构:Jiangsu Key Laboratory of Crop Genetics and Physiology, Co-Innovation Center for Modern Production Technology of Grain Crops,Key Laboratory of Plant Functional Genomics of the Ministry of Education, Yangzhou University
  • 相关基金:supported by grants from the National Program on the Development of Basic Research (2011CB100100);the Priority Academic Program Development of Jiangsu Higher Education Institutions, the National Natural Science Foundations (31391632, 31200943, 31171187, and 91535103);the National High-tech R&D Program (863 Program) (2014AA10A601-5);the Natural Science Foundations of Jiangsu Province (BK20150010);the Natural Science Foundation of the Jiangsu Higher Education Institutions (14KJA210005);the Innovative Research Team of Universities in Jiangsu Province (KYLX_1352)
中文摘要:

Many complex traits are highly correlated rather than independent. By taking the correlation structure of multiple traits into account, joint association analyses can achieve both higher statistical power and more accurate estimation. To develop a statistical approach to joint association analysis that includes allele detection and genetic effect estimation, we combined multivariate partial least squares regression with variable selection strategies and selected the optimal model using the Bayesian Information Criterion(BIC). We then performed extensive simulations under varying heritabilities and sample sizes to compare the performance achieved using our method with those obtained by single-trait multilocus methods. Joint association analysis has measurable advantages over single-trait methods, as it exhibits superior gene detection power, especially for pleiotropic genes. Sample size, heritability,polymorphic information content(PIC), and magnitude of gene effects influence the statistical power, accuracy and precision of effect estimation by the joint association analysis.

英文摘要:

Many complex traits are highly correlated rather than independent. By taking the correlation structure of multiple traits into account, joint association analyses can achieve both higher statistical power and more accurate estimation. To develop a statistical approach to joint association analysis that includes allele detection and genetic effect estimation, we combined multivariate partial least squares regression with variable selection strategies and selected the optimal model using the Bayesian Information Criterion (BIC). We then performed extensive simulations under varying heritabilities and sample sizes to compare the performance achieved using our method with those obtained by single-trait multilocus methods. Joint association analysis has measurable advantages over single-trait methods, as it exhibits superior gene detection power, especially for pleiotropic genes. Sample size, heritability, polymorphic information content (PIC), and magnitude of gene effects influence the statistical power, accuracy and precision of effect estimation by the joint association analysis.

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期刊信息
  • 《科技导报》
  • 北大核心期刊(2011版)
  • 主管单位:中国科学技术协会
  • 主办单位:中国科学技术协会
  • 主编:项昌乐
  • 地址:北京市海淀区学院南路86号科技导报社
  • 邮编:100081
  • 邮箱:kjdbbjb@cast.org.cn
  • 电话:010-62138113
  • 国际标准刊号:ISSN:1000-7857
  • 国内统一刊号:ISSN:11-1421/N
  • 邮发代号:2-872
  • 获奖情况:
  • 国内外数据库收录:
  • 俄罗斯文摘杂志,美国化学文摘(网络版),英国农业与生物科学研究中心文摘,波兰哥白尼索引,美国乌利希期刊指南,美国剑桥科学文摘,英国科学文摘数据库,中国中国科技核心期刊,中国北大核心期刊(2008版),中国北大核心期刊(2011版),中国北大核心期刊(2014版)
  • 被引量:24858