학술논문

Statistical genetics and polygenic risk score for precision medicine
Document Type
Academic Journal
Source
Inflammation and Regeneration. June 17, 2021, Vol. 41 Issue 1
Subject
Prevention
Genetic aspects
Risk factors
Precision medicine
Coronary heart disease -- Genetic aspects -- Prevention -- Risk factors
Type 2 diabetes -- Risk factors -- Prevention -- Genetic aspects
Single nucleotide polymorphisms -- Genetic aspects
Medical research
Genomes -- Genetic aspects
Genomics -- Genetic aspects
Medicine, Experimental
Language
English
Abstract
Author(s): Takahiro Konuma[sup.1,2] and Yukinori Okada[sup.1,3,4] Background Understanding human disease risk factors that contribute to disease onset is vital for the implementation of early disease detection, prevention, and intervention. The [...]
The prediction of disease risks is an essential part of personalized medicine, which includes early disease detection, prevention, and intervention. The polygenic risk score (PRS) has become the standard for quantifying genetic liability in predicting disease risks. PRS utilizes single-nucleotide polymorphisms (SNPs) with genetic risks elucidated by genome-wide association studies (GWASs) and is calculated as weighted sum scores of these SNPs with genetic risks using their effect sizes from GWASs as their weights. The utilities of PRS have been explored in many common diseases, such as cancer, coronary artery disease, obesity, and diabetes, and in various non-disease traits, such as clinical biomarkers. These applications demonstrated that PRS could identify a high-risk subgroup of these diseases as a predictive biomarker and provide information on modifiable risk factors driving health outcomes. On the other hand, there are several limitations to implementing PRSs in clinical practice, such as biased sensitivity for the ethnic background of PRS calculation and geographical differences even in the same population groups. Also, it remains unclear which method is the most suitable for the prediction with high accuracy among numerous PRS methods developed so far. Although further improvements of its comprehensiveness and generalizability will be needed for its clinical implementation in the future, PRS will be a powerful tool for therapeutic interventions and lifestyle recommendations in a wide range of diseases. Thus, it may ultimately improve the health of an entire population in the future. Keywords: Statistical genomics, Genome-wide association study, Polygenic risk score, Precision medicine