Boston University Henry M. Goldman School of Dental Medicine, Boston, Massachusetts.
The School of Dentistry, University of Birmingham, Birmingham, UK.
J Clin Periodontol. 2018 Sep;45(9):1034-1044. doi: 10.1111/jcpe.12979. Epub 2018 Aug 9.
To simulate the exposure misclassification bias potential in studies of perio-systemic disease associations due to the use of partial-mouth recording (PMR) protocols.
Using data from 640 participants in the Dental Longitudinal Study, we evaluated distributions of clinical periodontitis parameters to simulate hypothetical outcome probabilities using bootstrap sampling. Logistic regression models were fit using the hypothetical outcome as the dependent variable. Models were run for exposure classifications based on full-mouth recording (FMR) and PMR protocols over 10,000 repetitions.
The impact of periodontitis exposure misclassification was dependent on periodontitis severity. Per cent relative bias for simulated ORs of size 1.5, 2 and 4 ranged from 0% to 30% for the effect of severe periodontitis. The magnitude and direction of the bias was dependent on the underlying distribution of the clinical parameters used in the simulation and the size of the association being estimated. Simulated effects of moderate periodontitis were consistently biased towards the null.
Exposure misclassification bias occurring through the use of PMR protocols may be dependent on the sensitivity of the classification system applied. Using the CDC-AAP case definition, bias in the estimated effects of severe disease was small, on average. Whereas effects of moderate disease were underestimated to a larger degree.
模拟由于使用部分口腔记录(PMR)方案而导致的牙周系统疾病相关性研究中暴露分类偏倚的潜在风险。
使用来自牙科纵向研究的 640 名参与者的数据,我们评估了临床牙周炎参数的分布,以使用自举抽样模拟假设的结果概率。使用假设的结果作为因变量拟合逻辑回归模型。使用全口记录(FMR)和 PMR 方案进行了 10000 次重复的暴露分类模型运行。
牙周炎暴露分类错误的影响取决于牙周炎的严重程度。对于大小为 1.5、2 和 4 的模拟 OR 的相对偏差百分比,严重牙周炎的影响范围从 0%到 30%。偏倚的大小和方向取决于模拟中使用的临床参数的分布以及估计的关联大小。中度牙周炎的模拟效果始终偏向于零。
通过使用 PMR 方案进行的暴露分类错误可能取决于应用的分类系统的敏感性。使用 CDC-AAP 诊断标准,严重疾病的估计效果的偏差较小,平均而言。而中度疾病的效果则被低估了更大的程度。