Institute of Psychological Medicine and Clinical Neurosciences, MRC Centre for Neuropsychiatric Genetics and Genomics, Cardiff University, Cardiff, UK; Dementia Research Institute, Cardiff University, Cardiff, UK.
Dementia Research Institute, Cardiff University, Cardiff, UK.
Neurobiol Aging. 2019 May;77:178-182. doi: 10.1016/j.neurobiolaging.2018.12.002. Epub 2019 Jan 22.
Genetic case-control association studies are often based on clinically ascertained cases and population or convenience controls. It is known that some of the controls will contain cases, as they are usually not screened for the disease of interest. However, even clinically assessed cases and controls can be misassigned. For Alzheimer's disease (AD), it is important to know the accuracy of the clinical assignment. The predictive accuracy of AD risk by polygenic risk score analysis has been reported in both clinical and pathologically confirmed cohorts. The genetic risk prediction can provide additional insights to inform classification of subjects to case and control sets at a preclinical stage. In this study, we take a mathematical approach and aim to assess the importance of a genetic component for the assignment of subjects to AD-positive and -negative groups, and provide an estimate of misassignment rates (MARs) in AD case/control cohorts accounting for genetic prediction modeling results. The derived formulae provide a tool to estimate MARs in any sample. This approach can also provide an estimate of the maximal and minimal MARs and therefore could be useful for statistical power estimation at the study design stage. We illustrate this approach in 2 independent clinical cohorts and estimate misdiagnosis rate up to 36% in controls unscreened for the APOE genotype, and up to 29% when E3 homozygous subjects are used as controls in clinical studies.
遗传病例对照关联研究通常基于临床确定的病例和人群或方便对照。众所周知,由于对照通常不针对感兴趣的疾病进行筛查,因此其中一些对照将包含病例。然而,即使是临床评估的病例和对照也可能被错误分配。对于阿尔茨海默病 (AD),了解临床分配的准确性很重要。多基因风险评分分析已在临床和病理证实的队列中报告了 AD 风险的预测准确性。遗传风险预测可以提供额外的见解,以便在临床前阶段将受试者分类为病例和对照组。在这项研究中,我们采用数学方法,旨在评估遗传因素对将受试者分配到 AD 阳性和阴性组的重要性,并提供 AD 病例/对照队列中考虑遗传预测建模结果的错误分配率 (MAR) 的估计值。推导的公式为任何样本中的 MAR 估计值提供了一个工具。这种方法还可以提供最大和最小 MAR 的估计值,因此在研究设计阶段进行统计功效估计时可能很有用。我们在 2 个独立的临床队列中说明了这种方法,并估计在未筛查 APOE 基因型的对照中误诊率高达 36%,而在临床研究中使用 E3 纯合子作为对照时误诊率高达 29%。