Does the inclusion of rare variants improve risk prediction?

被引:1
|
作者
Erin Austin
Wei Pan
Xiaotong Shen
机构
[1] School of Public Health,Division of Biostatistics
[2] University of Minnesota,School of Statistics
[3] University of Minnesota,undefined
关键词
Systolic Blood Pressure; Ridge Regression; Causative SNPs; GAW18 Data; Predictive Mean Square Error;
D O I
10.1186/1753-6561-8-S1-S94
中图分类号
学科分类号
摘要
Every known link between a genetic variant and blood pressure improves the understanding and potentially the risk assessment of related diseases such as hypertension. Genetic data have become increasingly comprehensive and available for an increasing number of samples. The availability of whole-genome sequencing data means that statistical genetic models must evolve to meet the challenge of using both rare variants (RVs) and common variants (CVs) to link previously unidentified genome loci to disease-related traits. Penalized regression has two features, variable selection and proportional coefficient shrinkage, that allow researchers to build models tailored to hypothesized characteristics of the genotype-phenotype map. The following work uses the Genetic Analysis Workshop 18 data to investigate the performance of a spectrum of penalized regressions using at first only CVs or only RVs to predict systolic blood pressure (SBP). Next, combinations of CVs and RVs are used to model SBP, and the impact on prediction is quantified. The study demonstrates that penalized regression improves blood pressure prediction for any combination of CVs and RVs compared with maximum likelihood estimation. More significantly, models using both types of variants provide better predictions of SBP than those using only CVs or only RVs. The predictive mean squared error was reduced by up to 11.5% when RVs were added to CV-only penalized regression models. Elastic net regression with equally weighted LASSO and ridge components, in particular, can use large numbers of single-nucleotide polymorphisms to improve prediction.
引用
收藏
相关论文
共 50 条
  • [1] Disease risk prediction with rare and common variants
    Chengqing Wu
    Kyle M Walsh
    Andrew T DeWan
    Josephine Hoh
    Zuoheng Wang
    BMC Proceedings, 5 (Suppl 9)
  • [2] Inclusion of genetic variants in an ensemble of gradient boosting decision trees does not improve the prediction of citalopram treatment response
    Jason Shumake
    Travis T. Mallard
    John E. McGeary
    Christopher G. Beevers
    Scientific Reports, 11
  • [3] Inclusion of genetic variants in an ensemble of gradient boosting decision trees does not improve the prediction of citalopram treatment response
    Shumake, Jason
    Mallard, Travis T.
    McGeary, John E.
    Beevers, Christopher G.
    SCIENTIFIC REPORTS, 2021, 11 (01)
  • [4] Common and Rare Variants in the Exons and Regulatory Regions of Osteoporosis-Related Genes Improve Osteoporotic Fracture Risk Prediction
    Lee, Seung Hun
    Kang, Moo Il
    Ahn, Seong Hee
    Lim, Kyeong-Hye
    Lee, Gun Eui
    Shin, Eun-Soon
    Lee, Jong-Eun
    Kim, Beom-Jun
    Cho, Eun-Hee
    Kim, Sang-Wook
    Kim, Tae-Ho
    Kim, Hyun-ju
    Yoon, Kun-Ho
    Lee, Won Chul
    Kim, Ghi Su
    Koh, Jung-Min
    Kim, Shin-Yoon
    JOURNAL OF CLINICAL ENDOCRINOLOGY & METABOLISM, 2014, 99 (11): : E2400 - E2411
  • [5] Does the Inclusion of a Genome-Wide Polygenic Score Improve Early Risk Prediction for Later Language and Literacy Delay?
    Dale, Philip S.
    von Stumm, Sophie
    Selzam, Saskia
    Hayiou-Thomas, Marianna E.
    JOURNAL OF SPEECH LANGUAGE AND HEARING RESEARCH, 2020, 63 (05): : 1467 - 1478
  • [6] Proteomic signatures improve risk prediction for common and rare diseases
    Carrasco-Zanini, Julia
    Pietzner, Maik
    Davitte, Jonathan
    Surendran, Praveen
    Croteau-Chonka, Damien C.
    Robins, Chloe
    Torralbo, Ana
    Tomlinson, Christopher
    Gruenschlaeger, Florian
    Fitzpatrick, Natalie
    Ytsma, Cai
    Kanno, Tokuwa
    Gade, Stephan
    Freitag, Daniel
    Ziebell, Frederik
    Haas, Simon
    Denaxas, Spiros
    Betts, Joanna C.
    Wareham, Nicholas J.
    Hemingway, Harry
    Scott, Robert A.
    Langenberg, Claudia
    NATURE MEDICINE, 2024, 30 (09) : 2489 - 2498
  • [7] Risk prediction of type 2 diabetes using common and rare variants
    Bae, Sunghwan
    Park, Taesung
    INTERNATIONAL JOURNAL OF DATA MINING AND BIOINFORMATICS, 2018, 20 (01) : 77 - 90
  • [8] DOES ERECTILE DYSFUNCTION IMPROVE CARDIOVASCULAR DISEASE RISK PREDICTION?
    Araujo, Andre
    Hall, Susan
    Ganz, Peter
    Chiu, Gretchen
    Rosen, Raymond
    Kupelian, Varant
    McKinlay, John
    JOURNAL OF UROLOGY, 2010, 183 (04): : E23 - E23
  • [9] Common and Rare Variants in the Exons and Regulatory Regions of Osteoporosis-Related Genes Improve Osteoporotic Fracture Risk Prediction.
    Lee, Seung Hun
    Kang, Moo Il
    Ahn, Seong Hee
    Lim, Kyeong-Hye
    Lee, Gun Eui
    Shin, Eun-Soon
    Lee, Jong-Eun
    Kim, Beom-Jun
    Cho, Eun-Hee
    Kim, Sang-Wook
    Kim, Tae-Ho
    Kim, Hyun-Ju
    Yoon, Kun-Ho
    Lee, Won Chul
    Kim, Ghi Su
    Koh, Jung-Min
    Kim, Shin-Yoon
    JOURNAL OF BONE AND MINERAL RESEARCH, 2014, 29 : S299 - S299
  • [10] Does inclusion of GARCH variance in deep learning models improve financial contagion prediction?
    Rayadurgam, Vikram Chandramouli
    Mangalagiri, Jayasree
    FINANCE RESEARCH LETTERS, 2023, 54