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Using Lifetime Risk Estimates in Personal Genomic Profiles: Estimation of Uncertainty

机译:在个人基因组概况中使用终生风险估算:不确定性估算

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摘要

Personal genome tests are now offered direct-to-consumer (DTC) via genetic variants identified by genome-wide association studies (GWAS) for common diseases. Tests report risk estimates (age-specific and lifetime) for various diseases based on genotypes at multiple loci. However, uncertainty surrounding such risk estimates has not been systematically investigated. With breast cancer as an example, we examined the combined effect of uncertainties in population incidence rates, genotype frequency, effect sizes, and models of joint effects among genetic variants on lifetime risk estimates. We performed simulations to estimate lifetime breast cancer risk for carriers and noncarriers of genetic variants. We derived population-based cancer incidence rates from Surveillance, Epidemiology, and End Results (SEER) Program and comparative international data. We used data for non-Hispanic white women from 2003 to 2005. We derived genotype frequencies and effect sizes from published GWAS and meta-analyses. For a single genetic variant in FGFR2 gene (rs2981582), combination of uncertainty in these parameters produced risk estimates where upper and lower 95% simulation intervals differed by more than 3-fold. Difference in population incidence rates was the largest contributor to variation in risk estimates. For a panel of five genetic variants, estimated lifetime risk of developing breast cancer before age 80 for a woman that carried all risk variants ranged from 6.1% to 21%, depending on assumptions of additive or multiplicative joint effects and breast cancer incidence rates. Epidemiologic parameters involved in computation of disease risk have substantial uncertainty, and cumulative uncertainty should be properly recognized. Reliance on point estimates alone could be seriously misleading.
机译:现在,可以通过针对常见疾病的全基因组关联研究(GWAS)确定的遗传变异,直接向消费​​者(DTC)提供个人基因组测试。测试报告了基于多个基因座的基因型的各种疾病的风险评估(年龄和寿命)。但是,围绕这种风险估计的不确定性尚未得到系统的研究。以乳腺癌为例,我们研究了人群发病率,基因型频率,效应大小以及遗传变异对终生风险估计之间的联合效应模型中的不确定性的综合影响。我们进行了模拟,以评估遗传变异携带者和非携带者终生患乳腺癌的风险。我们从监测,流行病学和最终结果(SEER)计划以及国际比较数据中得出了基于人群的癌症发病率。我们使用2003年至2005年非西班牙裔白人妇女的数据。我们从已发表的GWAS和荟萃分析中得出了基因型频率和效应大小。对于FGFR2基因的单个遗传变异(rs2981582),这些参数的不确定性组合产生了风险估计,其中95%的上下模拟间隔相差3倍以上。人口发病率差异是造成风险估计差异最大的原因。对于一组五种遗传变异,根据加性或乘积性联合效应和乳腺癌发病率的假设,携带所有危险变异的女性在80岁之前患乳腺癌的终生风险范围为6.1%至21%。疾病风险计算中涉及的流行病学参数具有很大的不确定性,应正确认识累积的不确定性。仅依靠点估计可能会严重误导。

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