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Odds per Adjusted Standard Deviation: Comparing Strengths of Associations for Risk Factors Measured on Different Scales and Across Diseases and Populations

机译:调整后标准差的赔率:比较不同规模疾病和人群的危险因素关联的强度

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摘要

How can the “strengths” of risk factors, in the sense of how well they discriminate cases from controls, be compared when they are measured on different scales such as continuous, binary, and integer? Given that risk estimates take into account other fitted and design-related factors—and that is how risk gradients are interpreted—so should the presentation of risk gradients. Therefore, for each risk factor X0, I propose using appropriate regression techniques to derive from appropriate population data the best fitting relationship between the mean of X0 and all the other covariates fitted in the model or adjusted for by design (X1, X2, … , Xn). The odds per adjusted standard deviation (OPERA) presents the risk association for X0 in terms of the change in risk per s = standard deviation of X0 adjusted for X1, X2, … , Xn, rather than the unadjusted standard deviation of X0 itself. If the increased risk is relative risk (RR)-fold over A adjusted standard deviations, then OPERA = exp[ln(RR)/A] = RRs. This unifying approach is illustrated by considering breast cancer and published risk estimates. OPERA estimates are by definition independent and can be used to compare the predictive strengths of risk factors across diseases and populations.
机译:当以连续,二元和整数等不同尺度对风险因素的“优势”进行区分时,如何比较风险因素的“优势”?鉴于风险估计考虑了其他与设计相关的因素,这就是如何解释风险梯度的原因,因此风险梯度的表示也应如此。因此,对于每个风险因子X0,我建议使用适当的回归技术从适当的总体数据中得出X0的平均值与模型中拟合的所有其他协变量或通过设计调整的所有其他协变量之间的最佳拟合关系(X1,X2,…, Xn)。每个调整后的标准差的赔率(OPERA)表示X0的风险关联,即每s的风险变化=针对X1,X2,…,Xn调整的X0的标准差,而不是X0本身的未经调整的标准差。如果增加的风险是相对风险(RR)超过A调整后的标准偏差,则OPERA = exp [ln(RR)/ A] = RR s 。通过考虑乳腺癌和已公布的风险评估来说明这种统一的方法。根据定义,OPERA估计数是独立的,可以用来比较跨疾病和人群的风险因素的预测强度。

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