So Hon-Cheong, Sham Pak C
Department of Psychiatry, University of Hong Kong, Hong Kong, SAR, China.
Hum Hered. 2010;70(3):205-18. doi: 10.1159/000319192. Epub 2010 Sep 13.
The interest in risk prediction using genomic profiles has surged recently. A proper interpretation of effect size measures in association studies is crucial to accurate risk prediction. In this study, we clarified the relationship between the odds ratio (OR), relative risk and incidence rate ratios in the context of genetic association studies. We demonstrated that under the common practice of sampling prevalent cases and controls, the resulting ORs approximate the incidence rate ratios. Based on this result, we presented a framework to compute the disease risk given the current age and follow-up period (including lifetime risk), with consideration of competing risks of mortality. We considered two extensions. One is correcting the incidence rate to reflect the person-years alive and disease-free, the other is converting prevalence to incidence estimates. The methodology was applied to an example of breast cancer prediction. We observed that simply multiplying the OR by the average lifetime risk estimates yielded a final estimate >100% (101%), while using our method that accounts for competing risks produces an estimate of 63% only. We also applied the method to risk prediction of Alzheimer's disease in Hong Kong. We recommend that companies offering direct-to-consumer genetic testing employ more rigorous prediction algorithms considering competing risks.
近期,利用基因组图谱进行风险预测的关注度急剧上升。在关联研究中,对效应大小度量进行恰当解读对于准确的风险预测至关重要。在本研究中,我们阐明了遗传关联研究背景下优势比(OR)、相对风险和发病率比之间的关系。我们证明,在对现患病例和对照进行抽样的常见做法下,所得的OR近似于发病率比。基于这一结果,我们提出了一个框架,用于在考虑死亡竞争风险的情况下,根据当前年龄和随访期(包括终生风险)计算疾病风险。我们考虑了两种扩展方法。一种是校正发病率以反映存活且无病的人年数,另一种是将患病率转换为发病率估计值。该方法应用于乳腺癌预测的一个实例。我们观察到,简单地将OR乘以平均终生风险估计值会得出最终估计值>100%(101%),而使用我们考虑竞争风险的方法得出的估计值仅为63%。我们还将该方法应用于香港阿尔茨海默病的风险预测。我们建议提供直接面向消费者的基因检测的公司采用更严格的考虑竞争风险的预测算法。