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Bayesian sensitivity analysis methods to evaluate bias due to misclassification and missing data using informative priors and external validation data

机译:贝叶斯敏感性分析方法,可使用信息丰富的先验数据和外部验证数据评估由于分类错误和数据丢失而造成的偏差

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Background: Recent research suggests that the Bayesian paradigm may be useful for modeling biases in epidemiological studies, such as those due to misclassification and missing data. We used Bayesian methods to perform sensitivity analyses for assessing the robustness of study findings to the potential effect of these two important sources of bias. Methods: We used data from a study of the joint associations of radiotherapy and smoking with primary lung cancer among breast cancer survivors. We used Bayesian methods to provide an operational way to combine both validation data and expert opinion to account for misclassification of the two risk factors and missing data. For comparative purposes we considered a " full model" that allowed for both misclassification and missing data, along with alternative models that considered only misclassification or missing data, and the na?ve model that ignored both sources of bias. Results: We identified noticeable differences between the four models with respect to the posterior distributions of the odds ratios that described the joint associations of radiotherapy and smoking with primary lung cancer. Despite those differences we found that the general conclusions regarding the pattern of associations were the same regardless of the model used. Overall our results indicate a nonsignificantly decreased lung cancer risk due to radiotherapy among nonsmokers, and a mildly increased risk among smokers. Conclusions: We described easy to implement Bayesian methods to perform sensitivity analyses for assessing the robustness of study findings to misclassification and missing data. ? 2012 Elsevier Ltd.
机译:背景:最近的研究表明,贝叶斯范式可能有助于对流行病学研究中的偏见进行建模,例如由于分类错误和数据丢失而造成的偏见。我们使用贝叶斯方法进行敏感性分析,以评估研究结果对这两个重要偏差来源的潜在影响的稳健性。方法:我们使用了乳腺癌幸存者中放疗和吸烟与原发性肺癌的联合关联研究的数据。我们使用贝叶斯方法提供了一种结合验证数据和专家意见的操作方法,以解决两个风险因素和缺失数据的错误分类。为了进行比较,我们考虑了允许对数据进行错误分类和缺失的“完整模型”,以及仅考虑分类错误或缺失数据的替代模型,以及忽略了两种偏差来源的朴素模型。结果:我们确定了四种模型之间比值比的后验分布之间的显着差异,后者描述了放疗和吸烟与原发性肺癌的联合关联。尽管存在这些差异,但我们发现,无论使用哪种模型,有关关联模式的一般结论都是相同的。总体而言,我们的研究结果表明,非吸烟者由于放疗而患肺癌的风险显着降低,而吸烟者患肺癌的风险则略有增加。结论:我们描述了易于实施的贝叶斯方法进行敏感性分析,以评估研究结果对误分类和缺失数据的稳健性。 ? 2012爱思唯尔有限公司

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