Machine learning-based prediction of gout using polygenic risk scores and clinical variables: A Korean cohort study.

IF 1.4 4区 医学 Q3 GENETICS & HEREDITY
Do-Hyeon Kwak, Hyunjung Kim, Hee-Won Park, Sun Shim Choi, Ki Won Moon
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引用次数: 0

Abstract

The prevalence of gout, a chronic metabolic disease, has recently increased. Polygenic risk scores (PRS) represent a useful tool for predicting patient outcomes of this condition. However, the clinical utility of PRS in disease prediction remains controversial. Using data from the Korean Genome and Epidemiology Study, machine learning (ML) models were developed to predict gout based on PRS and clinical variables such as uric acid, lifestyle habits, and metabolic syndrome (MetS) profiles. Five supervised learning algorithms were applied: logistic regression (a traditional statistical model often used in machine learning contexts), random forest (RF), decision tree (DT), extreme gradient boosting, and light gradient boosting. Among the models, the RF model incorporating PRS, age, sex, MetS, and uric acid levels achieved the highest area under the curve (0.7204, 95% CI = 0.7124-0.7284). Feature importance analysis highlighted uric acid levels as the most important predictor of gout, followed by PRS and age. Although PRS enhanced the predictive power of the ML models, its effect was modest, suggesting that traditional risk factors remain important for gout prediction. This study demonstrated that integrating genetic data with clinical variables improves gout prediction. Further research is necessary to optimize the utility of PRS in diverse populations.

基于机器学习的多基因风险评分和临床变量预测痛风:一项韩国队列研究。
痛风是一种慢性代谢性疾病,近年来发病率有所上升。多基因风险评分(PRS)是预测患者预后的有用工具。然而,PRS在疾病预测中的临床应用仍存在争议。利用韩国基因组和流行病学研究的数据,开发了机器学习(ML)模型,根据PRS和尿酸、生活习惯和代谢综合征(MetS)等临床变量预测痛风。我们应用了五种监督学习算法:逻辑回归(一种经常用于机器学习环境的传统统计模型)、随机森林(RF)、决策树(DT)、极端梯度增强和轻梯度增强。在所有模型中,纳入PRS、年龄、性别、MetS和尿酸水平的RF模型曲线下面积最大(0.7204,95% CI = 0.7124-0.7284)。特征重要性分析强调尿酸水平是痛风最重要的预测因子,其次是PRS和年龄。虽然PRS增强了ML模型的预测能力,但其效果并不明显,这表明传统的风险因素对痛风预测仍然很重要。该研究表明,将遗传数据与临床变量相结合可以改善痛风预测。需要进一步研究以优化PRS在不同种群中的效用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Lifestyle Genomics
Lifestyle Genomics Agricultural and Biological Sciences-Food Science
CiteScore
4.00
自引率
7.70%
发文量
11
审稿时长
28 weeks
期刊介绍: Lifestyle Genomics aims to provide a forum for highlighting new advances in the broad area of lifestyle-gene interactions and their influence on health and disease. The journal welcomes novel contributions that investigate how genetics may influence a person’s response to lifestyle factors, such as diet and nutrition, natural health products, physical activity, and sleep, amongst others. Additionally, contributions examining how lifestyle factors influence the expression/abundance of genes, proteins and metabolites in cell and animal models as well as in humans are also of interest. The journal will publish high-quality original research papers, brief research communications, reviews outlining timely advances in the field, and brief research methods pertaining to lifestyle genomics. It will also include a unique section under the heading “Market Place” presenting articles of companies active in the area of lifestyle genomics. Research articles will undergo rigorous scientific as well as statistical/bioinformatic review to ensure excellence.
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