Identifying Genetic Interactions in Genome-Wide Data Using Bayesian Networks

被引:45
|
作者
Jiang, Xia [1 ]
Barmada, M. Michael [2 ]
Visweswaran, Shyam [1 ]
机构
[1] Univ Pittsburgh, Dept Biomed Informat, Pittsburgh, PA 15260 USA
[2] Univ Pittsburgh, Dept Human Genet, Pittsburgh, PA USA
关键词
Alzheimer's; APOE; GAB2; genome-wide; epistasis; Bayesian network; minimum description length; MULTIFACTOR-DIMENSIONALITY REDUCTION; ALZHEIMERS-DISEASE; ASSOCIATION ANALYSIS; COMPLEX DISEASES; BREAST-CANCER; RISK; EPISTASIS; VARIANTS; LOCI; STRATEGIES;
D O I
10.1002/gepi.20514
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
It is believed that interactions among genes (epistasis) may play an important role in susceptibility to common diseases (Moore and Williams [2002]. Ann Med 34:88-95; Ritchie et al. [2001]. Am J Hum Genet 69:138-147). To study the underlying genetic variants of diseases, genome-wide association studies (GWAS) that simultaneously assay several hundreds of thousands of SNPs are being increasingly used. Often, the data from these studies are analyzed with single-locus methods (Lambert et al. [2009]. Nat Genet 41: 1094-1099; Reiman et al. [2007]. Neuron 54:713-720). However, epistatic interactions may not be easily detected with single-locus methods (Marchini et al. [2005]. Nat Genet 37:413-417). As a result, both parametric and nonparametric multi-locus methods have been developed to detect such interactions (Heidema et al. [2006]. BMC Genet 7: 23). However, efficiently analyzing epistasis using high-dimensional genome-wide data remains a crucial challenge. We develop a method based on Bayesian networks and the minimum description length principle for detecting epistatic interactions. We compare its ability to detect gene-gene interactions and its efficiency to that of the combinatorial method multifactor dimensionality reduction (MDR) using 28,000 simulated data sets generated from 70 different genetic models We further apply the method to over 300,000 SNPs obtained from a GWAS involving late onset Alzheimer's disease (LOAD). Our method outperforms MDR and we substantiate previous results indicating that the GAB2 gene is associated with LOAD. To our knowledge, this is the first successful model-based epistatic analysis using a high-dimensional genome-wide data set. Genet. Epidemiol. 34: 575-581, 2010. (C) 2010 Wiley-Liss, Inc.
引用
收藏
页码:575 / 581
页数:7
相关论文
共 50 条
  • [31] Genetic structure of the Armenian population based on genome-wide data
    Hovhannisyan, A.
    Khachatryan, Z.
    Yepiskoposyan, L.
    [J]. EUROPEAN JOURNAL OF HUMAN GENETICS, 2018, 26 : 762 - 762
  • [32] Genome-wide searching of rare genetic variants in WTCCC data
    Tao Feng
    Xiaofeng Zhu
    [J]. Human Genetics, 2010, 128 : 269 - 280
  • [33] Genome-wide searching of rare genetic variants in WTCCC data
    Feng, Tao
    Zhu, Xiaofeng
    [J]. HUMAN GENETICS, 2010, 128 (03) : 269 - 280
  • [34] Genetic basis investigation of wattle phenotype in goat using genome-wide sequence data
    Zhang, Wei-Yi
    Yuan, Ying
    Zhang, Hao-Yuan
    He, Yong-Meng
    Liu, Cheng-Li
    Xu, Lu
    Yang, Bai-Gao
    Ren, Hang-Xing
    Wang, Gao-Fu
    Guang-Xin, E.
    [J]. ANIMAL GENETICS, 2022, 53 (05) : 700 - 705
  • [35] Exploring models of human migration to the Japanese archipelago using genome-wide genetic data
    Osada, Naoki
    Kawai, Yosuke
    [J]. ANTHROPOLOGICAL SCIENCE, 2021, 129 (01) : 45 - 58
  • [36] Discovering genetic interactions bridging pathways in genome-wide association studies
    Gang Fang
    Wen Wang
    Vanja Paunic
    Hamed Heydari
    Michael Costanzo
    Xiaoye Liu
    Xiaotong Liu
    Benjamin VanderSluis
    Benjamin Oately
    Michael Steinbach
    Brian Van Ness
    Eric E. Schadt
    Nathan D. Pankratz
    Charles Boone
    Vipin Kumar
    Chad L. Myers
    [J]. Nature Communications, 10
  • [37] Discovering genetic interactions bridging pathways in genome-wide association studies
    Fang, Gang
    Wang, Wen
    Paunic, Vanja
    Heydari, Hamed
    Costanzo, Michael
    Liu, Xiaoye
    Liu, Xiaotong
    VanderSluis, Benjamin
    Oately, Benjamin
    Steinbach, Michael
    Van Ness, Brian
    Schadt, Eric E.
    Pankratz, Nathan D.
    Boone, Charles
    Kumar, Vipin
    Myers, Chad L.
    [J]. NATURE COMMUNICATIONS, 2019, 10 (1)
  • [38] Predicting Nanomaterials toxicity pathways based on genome-wide transcriptomics studies using Bayesian networks.
    Furxhi, Irini
    Murphy, Finbarr
    Sheehan, Barry
    Mullins, Martin
    Mantecca, Paride
    [J]. 2018 IEEE 18TH INTERNATIONAL CONFERENCE ON NANOTECHNOLOGY (IEEE-NANO), 2018,
  • [39] Estimating Genome-Wide Gene Networks Using Nonparametric Bayesian Network Models on Massively Parallel Computers
    Tamada, Yoshinori
    Imoto, Seiya
    Araki, Hiromitsu
    Nagasaki, Masao
    Print, Cristin
    Charnock-Jones, D. Stephen
    Miyano, Satoru
    [J]. IEEE-ACM TRANSACTIONS ON COMPUTATIONAL BIOLOGY AND BIOINFORMATICS, 2011, 8 (03) : 683 - 697
  • [40] Modeling genome-wide by environment interactions through omnigenic interactome networks
    Wang, Haojie
    Ye, Meixia
    Fu, Yaru
    Dong, Ang
    Zhang, Miaomiao
    Feng, Li
    Zhu, Xuli
    Bo, Wenhao
    Jiang, Libo
    Griffin, Christopher H.
    Liang, Dan
    Wu, Rongling
    [J]. CELL REPORTS, 2021, 35 (06):