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Presenting the Uncertainties of Odds Ratios Using Empirical-Bayes Prediction Intervals

机译:使用经验贝叶斯预测间隔表示赔率的不确定性

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摘要

Quantifying exposure-disease associations is a central issue in epidemiology. Researchers of a study often present an odds ratio (or a logarithm of odds ratio, logOR) estimate together with its confidence interval (CI), for each exposure they examined. Here the authors advocate using the empirical-Bayes-based ‘prediction intervals’ (PIs) to bound the uncertainty of logORs. The PI approach is applicable to a panel of factors believed to be exchangeable (no extra information, other than the data itself, is available to distinguish some logORs from the others). The authors demonstrate its use in a genetic epidemiological study on age-related macular degeneration (AMD). The proposed PIs can enjoy straightforward probabilistic interpretations—a 95% PI has a probability of 0.95 to encompass the true value, and the expected number of true values that are being encompassed is for a total of 95% PIs. The PI approach is theoretically more efficient (producing shorter intervals) than the traditional CI approach. In the AMD data, the average efficiency gain is 51.2%. The PI approach is advocated to present the uncertainties of many logORs in a study, for its straightforward probabilistic interpretations and higher efficiency while maintaining the nominal coverage probability.
机译:量化暴露-疾病关联是流行病学的核心问题。研究人员经常针对他们所检查的每次暴露,提出比值比(或比值比的对数,logOR)及其置信区间(CI)。在这里,作者主张使用基于经验贝叶斯的“预测间隔”(PI)来限制logOR的不确定性。 PI方法适用于认为可以交换的一组因素(除了数据本身之外,没有其他信息可用于区分某些logOR与其他logOR)。作者证明了它在与年龄相关的黄斑变性(AMD)的遗传流行病学研究中的用途。提议的PI可以享受直接的概率解释-95%的PI包含0.95的概率包含真实值,而包含的真实值的预期数量总计为95%PI。从理论上讲,PI方法比传统的CI方法更有效(产生更短的间隔)。在AMD数据中,平均效率提升为51.2%。提倡PI方法在研究中提出许多logOR的不确定性,因为它具有直接的概率解释和更高的效率,同时又能保持标称覆盖率。

著录项

  • 作者

    Lin, Wan-Yu; Lee, Wen-Chung;

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  • 年度 2012
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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