Oliynyk Roman Teo
Centre for Computational Evolution, University of Auckland, Auckland 1010, New Zealand.
Department of Computer Science, University of Auckland, Auckland 1010, New Zealand.
J Pers Med. 2019 Jul 22;9(3):38. doi: 10.3390/jpm9030038.
For more than a decade, genome-wide association studies have been making steady progress in discovering the causal gene variants that contribute to late-onset human diseases. Polygenic late-onset diseases in an aging population display a risk allele frequency decrease at older ages, caused by individuals with higher polygenic risk scores becoming ill proportionately earlier and bringing about a change in the distribution of risk alleles between new cases and the as-yet-unaffected population. This phenomenon is most prominent for diseases characterized by high cumulative incidence and high heritability, examples of which include Alzheimer's disease, coronary artery disease, cerebral stroke, and type 2 diabetes, while for late-onset diseases with relatively lower prevalence and heritability, exemplified by cancers, the effect is significantly lower. In this research, computer simulations have demonstrated that genome-wide association studies of late-onset polygenic diseases showing high cumulative incidence together with high initial heritability will benefit from using the youngest possible age-matched cohorts. Moreover, rather than using age-matched cohorts, study cohorts combining the youngest possible cases with the oldest possible controls may significantly improve the discovery power of genome-wide association studies.
十多年来,全基因组关联研究在发现导致晚发性人类疾病的致病基因变异方面一直在稳步取得进展。在老龄化人群中,多基因晚发性疾病在老年时显示出风险等位基因频率下降,这是由于多基因风险评分较高的个体发病相对较早,导致新发病例与尚未受影响人群之间风险等位基因的分布发生变化。这种现象在以高累积发病率和高遗传度为特征的疾病中最为突出,例如阿尔茨海默病、冠状动脉疾病、脑卒中和2型糖尿病,而对于患病率和遗传度相对较低的晚发性疾病,如癌症,这种影响则明显较小。在这项研究中,计算机模拟表明,对具有高累积发病率和高初始遗传度的晚发性多基因疾病进行全基因组关联研究,使用尽可能年轻的年龄匹配队列将有所助益。此外,与使用年龄匹配队列相比,将尽可能年轻的病例与尽可能年长的对照相结合的研究队列可能会显著提高全基因组关联研究的发现能力。