IPRS: Leveraging Gene-Environment Interaction to Reconstruct Polygenic Risk Score

被引:8
作者
Tang, Yingdan [1 ]
You, Dongfang [1 ,2 ]
Yi, Honggang [1 ]
Yang, Sheng [1 ]
Zhao, Yang [1 ,2 ,3 ,4 ]
机构
[1] Nanjing Med Univ, Sch Publ Hlth, Dept Biostat, Nanjing, Peoples R China
[2] Nanjing Med Univ, Lab Biomed Big Data, Nanjing, Peoples R China
[3] Nanjing Med Univ, Ctr Biomed Big Data, Nanjing, Peoples R China
[4] Nanjing Med Univ, Collaborat Innovat Ctr Canc Personalized Med, Jiangsu Key Lab Canc Biomarkers Prevent & Treatme, Nanjing, Peoples R China
基金
中国国家自然科学基金;
关键词
polygenic risk score; gene-environment interaction; genome-wide association analysis; prediction model; risk stratification; MISSING HERITABILITY; LUNG;
D O I
10.3389/fgene.2022.801397
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
Background: Polygenic risk score (PRS) is widely regarded as a predictor of genetic susceptibility to disease, applied to individuals to predict the risk of disease occurrence. When the gene-environment (GxE) interaction is considered, the traditional PRS prediction model directly uses PRS to interact with the environment without considering the interactions between each variant and environment, which may lead to prediction performance and risk stratification of complex diseases are not promising.Methods: We developed a method called interaction PRS (iPRS), reconstructing PRS by leveraging GxE interactions. Two extensive simulations evaluated prediction performance, risk stratification, and calibration performance of the iPRS prediction model, and compared it with the traditional PRS prediction model. Real data analysis was performed using existing data from the Prostate, Lung, Colorectal, and Ovarian (PLCO) Cancer Screening Trial study to predict genetic susceptibility, pack-years of smoking history, and GxE interactions in patients with lung cancer.Results: Two extensive simulations indicated iPRS prediction model could improve the prediction performance of disease risk, the accuracy of risk stratification, and clinical calibration performance compared with the traditional PRS prediction model, especially when antagonism accounted for the majority of the interaction. PLCO real data analysis also suggested that the iPRS prediction model was superior to the PRS prediction model in predictive effect (p = 0.0205).Conclusion: IPRS prediction model could have a good application prospect in predicting disease risk, optimizing the screening of high-risk populations, and improving the clinical benefits of preventive interventions among populations.
引用
收藏
页数:9
相关论文
共 50 条
  • [31] Artificial neural networks modeling gene-environment interaction
    Guenther, Frauke
    Pigeot, Iris
    Bammann, Karin
    [J]. BMC GENETICS, 2012, 13
  • [32] Candidate Gene-Environment Interaction Research: Reflections and Recommendations
    Dick, Danielle M.
    Agrawal, Arpana
    Keller, Matthew C.
    Adkins, Amy
    Aliev, Fazil
    Monroe, Scott
    Hewitt, John K.
    Kendler, Kenneth S.
    Sher, Kenneth J.
    [J]. PERSPECTIVES ON PSYCHOLOGICAL SCIENCE, 2015, 10 (01) : 37 - 59
  • [33] Gene-environment interaction in the pathophysiology of type 1 diabetes
    Mittal, Rahul
    Camick, Nathanael
    Lemos, Joana R. N.
    Hirani, Khemraj
    [J]. FRONTIERS IN ENDOCRINOLOGY, 2024, 15
  • [34] High-Dimensional Gene-Environment Interaction Analysis
    Wu, Mengyun
    Li, Yingmeng
    Ma, Shuangge
    [J]. ANNUAL REVIEW OF STATISTICS AND ITS APPLICATION, 2025, 12 : 361 - 383
  • [35] Unveiling challenges in Mendelian randomization for gene-environment interaction
    Gorfine, Malka
    Qu, Conghui
    Peters, Ulrike
    Hsu, Li
    [J]. GENETIC EPIDEMIOLOGY, 2024, 48 (04) : 164 - 189
  • [36] Modelling gene-environment interaction in first episodes of psychosis
    Bernardo, Miguel
    Bioque, Miquel
    Cabrera, Bibiana
    Lobo, Antonio
    Gonzalez-Pinto, Ana
    Pina, Laura
    Corripio, Iluminada
    Sanjuan, Julio
    Mane, Anna
    Castro-Fornieles, Josefina
    Vieta, Eduard
    Arango, Celso
    Mezquida, Gisela
    Gasso, Patricia
    Parellada, Mara
    Saiz-Ruiz, Jeronimo
    Cuesta, Manuel J.
    Mas, Sergi
    [J]. SCHIZOPHRENIA RESEARCH, 2017, 189 : 181 - 189
  • [37] Regulation of Pancreatic β-Cell Mass by Gene-Environment Interaction
    Asahara, Shun-Ichiro
    Inoue, Hiroyuki
    Kido, Yoshiaki
    [J]. DIABETES & METABOLISM JOURNAL, 2022, 46 (01) : 38 - 48
  • [38] Gene-environment interaction demonstrates the vulnerability of the embryonic heart
    O'Reilly, Victoria C.
    Floro, Kylie Lopes
    Shi, Hongjun
    Chapman, Bogdan E.
    Preis, Jost I.
    James, Alexander C.
    Chapman, Gavin
    Harvey, Richard P.
    Johnson, Randall S.
    Grieve, Stuart M.
    Sparrow, Duncan B.
    Dunwoodie, Sally L.
    [J]. DEVELOPMENTAL BIOLOGY, 2014, 391 (01) : 99 - 110
  • [39] GENE-ENVIRONMENT INTERACTION IN AD: WE ARE JUST AT THE BEGINNING
    Fratiglioni, Laura
    [J]. NEUROBIOLOGY OF AGING, 2016, 39 : S22 - S23
  • [40] Artificial neural networks modeling gene-environment interaction
    Frauke Günther
    Iris Pigeot
    Karin Bammann
    [J]. BMC Genetics, 13