Brookes Keeley J, Guetta-Baranes Tamar, Thomas Alan, Morgan Kevin
Interdisciplinary Biomedical Research Centre, Biosciences, Clifton Campus, Nottingham Trent University, Nottingham, United Kingdom.
Human Genetics, Life Sciences, University Park, University of Nottingham, Nottingham, United Kingdom.
Front Dement. 2023 Jul 31;2:1120206. doi: 10.3389/frdem.2023.1120206. eCollection 2023.
Polygenic risk scores (PRSs) have great clinical potential for detecting late-onset diseases such as Alzheimer's disease (AD), allowing the identification of those most at risk years before the symptoms present. Although many studies use various and complicated machine learning algorithms to determine the best discriminatory values for PRSs, few studies look at the commonality of the Single Nucleotide Polymorphisms (SNPs) utilized in these models.
This investigation focussed on identifying SNPs that tag blocks of linkage disequilibrium across the genome, allowing for a generalized PRS model across cohorts and genotyping panels. PRS modeling was conducted on five AD development cohorts, with the best discriminatory models exploring for a commonality of linkage disequilibrium clumps. Clumps that contributed to the discrimination of cases from controls that occurred in multiple cohorts were used to create a generalized model of PRS, which was then tested in the five development cohorts and three further AD cohorts.
The model developed provided a discriminability accuracy average of over 70% in multiple AD cohorts and included variants of several well-known AD risk genes.
A key element of devising a polygenic risk score that can be used in the clinical setting is one that has consistency in the SNPs that are used to calculate the score; this study demonstrates that using a model based on commonality of association findings rather than meta-analyses may prove useful.
多基因风险评分(PRSs)在检测阿尔茨海默病(AD)等迟发性疾病方面具有巨大的临床潜力,能够在症状出现前数年识别出风险最高的人群。尽管许多研究使用各种复杂的机器学习算法来确定PRSs的最佳判别值,但很少有研究关注这些模型中所使用的单核苷酸多态性(SNP)的共性。
本研究着重于识别标记全基因组连锁不平衡区域的SNP,从而构建一个适用于不同队列和基因分型平台的通用PRS模型。在五个AD发病队列中进行PRS建模,最佳判别模型用于探索连锁不平衡簇的共性。将在多个队列中有助于区分病例与对照的簇用于创建PRS通用模型,然后在五个发病队列和另外三个AD队列中进行测试。
所开发的模型在多个AD队列中的平均判别准确率超过70%,并包含几个知名AD风险基因的变体。
设计可用于临床的多基因风险评分的一个关键要素是用于计算该评分的SNP具有一致性;本研究表明,使用基于关联发现共性而非荟萃分析的模型可能是有用的。