학술논문

Genome-wide Modeling of Polygenic Risk Score in Colorectal Cancer Risk.
Document Type
Author
Thomas, MintaSakoda, Lori CHoffmeister, MichaelRosenthal, Elisabeth ALee, Jeffrey Kvan Duijnhoven, Franzel J BPlatz, Elizabeth AWu, Anna HDampier, Christopher Hde la Chapelle, AlbertWolk, AlicjaJoshi, Amit DBurnett-Hartman, AndreaGsur, AndreaLindblom, AnnikaCastells, AntoniWin, Aung KoNamjou, BahramVan Guelpen, BethanyTangen, Catherine MHe, QianchuanLi, Christopher ISchafmayer, ClemensJoshu, Corinne EUlrich, Cornelia MBishop, D TimothyBuchanan, Daniel DSchaid, DanielDrew, David AMuller, David CDuggan, DavidCrosslin, David RAlbanes, DemetriusGiovannucci, Edward LLarson, EricQu, FloraMentch, FrankGiles, Graham GHakonarson, HakonHampel, HeatherStanaway, Ian BFigueiredo, Jane CHuyghe, Jeroen RMinnier, JessicaChang-Claude, JennyHampe, JochenHarley, John BVisvanathan, KalaCurtis, Keith ROffit, KennethLi, LiLe Marchand, LoicVodickova, LudmilaGunter, Marc JJenkins, Mark ASlattery, Martha LLemire, MathieuWoods, Michael OSong, MingyangMurphy, NeilLindor, Noralane MDikilitas, OzanPharoah, Paul D PCampbell, Peter TNewcomb, Polly AMilne, Roger LMacInnis, Robert JCastellví-Bel, SergiOgino, ShujiBerndt, Sonja IBézieau, StéphaneThibodeau, Stephen NGallinger, Steven JZaidi, Syed HHarrison, Tabitha AKeku, Temitope OHudson, Thomas JVymetalkova, VeronikaMoreno, VictorMartín, VicenteArndt, VolkerWei, Wei-QiChung, WendySu, Yu-RuHayes, Richard BWhite, EmilyVodicka, PavelCasey, GrahamGruber, Stephen BSchoen, Robert EChan, Andrew TPotter, John DBrenner, HermannJarvik, Gail PCorley, Douglas APeters, UlrikeHsu, Li
Source
American Journal of Human Genetics. 107(3):432-444
Subject
cancer risk prediction
colorectal cancer
machine learning
polygenic risk score
Language
English
ISSN
0002-9297
1537-6605
Abstract
Accurate colorectal cancer (CRC) risk prediction models are critical for identifying individuals at low and high risk of developing CRC, as they can then be offered targeted screening and interventions to address their risks of developing disease (if they are in a high-risk group) and avoid unnecessary screening and interventions (if they are in a low-risk group). As it is likely that thousands of genetic variants contribute to CRC risk, it is clinically important to investigate whether these genetic variants can be used jointly for CRC risk prediction. In this paper, we derived and compared different approaches to generating predictive polygenic risk scores (PRS) from genome-wide association studies (GWASs) including 55,105 CRC-affected case subjects and 65,079 control subjects of European ancestry. We built the PRS in three ways, using (1) 140 previously identified and validated CRC loci; (2) SNP selection based on linkage disequilibrium (LD) clumping followed by machine-learning approaches; and (3) LDpred, a Bayesian approach for genome-wide risk prediction. We tested the PRS in an independent cohort of 101,987 individuals with 1,699 CRC-affected case subjects. The discriminatory accuracy, calculated by the age- and sex-adjusted area under the receiver operating characteristics curve (AUC), was highest for the LDpred-derived PRS (AUC = 0.654) including nearly 1.2 M genetic variants (the proportion of causal genetic variants for CRC assumed to be 0.003), whereas the PRS of the 140 known variants identified from GWASs had the lowest AUC (AUC = 0.629). Based on the LDpred-derived PRS, we are able to identify 30% of individuals without a family history as having risk for CRC similar to those with a family history of CRC, whereas the PRS based on known GWAS variants identified only top 10% as having a similar relative risk. About 90% of these individuals have no family history and would have been considered average risk under current screening guidelines, but might benefit from earlier screening. The developed PRS offers a way for risk-stratified CRC screening and other targeted interventions.