Impact of individual level uncertainty of lung cancer polygenic risk score (PRS) on risk stratification
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Published:2024-02-05
Issue:1
Volume:16
Page:
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ISSN:1756-994X
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Container-title:Genome Medicine
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language:en
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Short-container-title:Genome Med
Author:
Wang Xinan, Zhang Ziwei, Ding Yi, Chen Tony, Mucci Lorelei, Albanes Demetrios, Landi Maria Teresa, Caporaso Neil E., Lam Stephen, Tardon Adonina, Chen Chu, Bojesen Stig E., Johansson Mattias, Risch Angela, Bickeböller Heike, Wichmann H-Erich, Rennert Gadi, Arnold Susanne, Brennan Paul, McKay James D., Field John K., Shete Sanjay S., Le Marchand Loic, Liu Geoffrey, Andrew Angeline S., Kiemeney Lambertus A., Zienolddiny-Narui Shan, Behndig Annelie, Johansson Mikael, Cox Angie, Lazarus Philip, Schabath Matthew B., Aldrich Melinda C., Hung Rayjean J., Amos Christopher I., Lin Xihong, Christiani David C.ORCID
Abstract
Abstract
Background
Although polygenic risk score (PRS) has emerged as a promising tool for predicting cancer risk from genome-wide association studies (GWAS), the individual-level accuracy of lung cancer PRS and the extent to which its impact on subsequent clinical applications remains largely unexplored.
Methods
Lung cancer PRSs and confidence/credible interval (CI) were constructed using two statistical approaches for each individual: (1) the weighted sum of 16 GWAS-derived significant SNP loci and the CI through the bootstrapping method (PRS-16-CV) and (2) LDpred2 and the CI through posteriors sampling (PRS-Bayes), among 17,166 lung cancer cases and 12,894 controls with European ancestry from the International Lung Cancer Consortium. Individuals were classified into different genetic risk subgroups based on the relationship between their own PRS mean/PRS CI and the population level threshold.
Results
Considerable variances in PRS point estimates at the individual level were observed for both methods, with an average standard deviation (s.d.) of 0.12 for PRS-16-CV and a much larger s.d. of 0.88 for PRS-Bayes. Using PRS-16-CV, only 25.0% of individuals with PRS point estimates in the lowest decile of PRS and 16.8% in the highest decile have their entire 95% CI fully contained in the lowest and highest decile, respectively, while PRS-Bayes was unable to find any eligible individuals. Only 19% of the individuals were concordantly identified as having high genetic risk (> 90th percentile) using the two PRS estimators. An increased relative risk of lung cancer comparing the highest PRS percentile to the lowest was observed when taking the CI into account (OR = 2.73, 95% CI: 2.12–3.50, P-value = 4.13 × 10−15) compared to using PRS-16-CV mean (OR = 2.23, 95% CI: 1.99–2.49, P-value = 5.70 × 10−46). Improved risk prediction performance with higher AUC was consistently observed in individuals identified by PRS-16-CV CI, and the best performance was achieved by incorporating age, gender, and detailed smoking pack-years (AUC: 0.73, 95% CI = 0.72–0.74).
Conclusions
Lung cancer PRS estimates using different methods have modest correlations at the individual level, highlighting the importance of considering individual-level uncertainty when evaluating the practical utility of PRS.
Publisher
Springer Science and Business Media LLC
Cited by
1 articles.
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