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“Spatial heterogeneity of environmental risk in randomized prevention trials: consequences and modeling”

机译:“随机预防试验中环境风险的空间异质性:后果和模型”

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In the context of environmentally influenced communicable diseases, proximity to environmental sources results in spatial heterogeneity of risk, which is sometimes difficult to measure in the field. Most prevention trials use randomization to achieve comparability between groups, thus failing to account for heterogeneity. This study aimed to determine under what conditions spatial heterogeneity biases the results of randomized prevention trials, and to compare different approaches to modeling this heterogeneity. Using the example of a malaria prevention trial, simulations were performed to quantify the impact of spatial heterogeneity and to compare different models. Simulated scenarios combined variation in baseline risk, a continuous protective factor (age), a non-related factor (sex), and a binary protective factor (preventive treatment). Simulated spatial heterogeneity scenarios combined variation in breeding site density and effect, location, and population density. The performances of the following five statistical models were assessed: a non-spatial Cox Proportional Hazard (Cox-PH) model and four models accounting for spatial heterogeneity—i.e., a Data-Generating Model, a Generalized Additive Model (GAM), and two Stochastic Partial Differential Equation (SPDE) models, one modeling survival time and the other the number of events. Using a Bayesian approach, we estimated the SPDE models with an Integrated Nested Laplace Approximation algorithm. For each factor (age, sex, treatment), model performances were assessed by quantifying parameter estimation biases, mean square errors, confidence interval coverage rates (CRs), and significance rates. The four models were applied to data from a malaria transmission blocking vaccine candidate. The level of baseline risk did not affect our estimates. However, with a high breeding site density and a strong breeding site effect, the Cox-PH and GAM models underestimated the age and treatment effects (but not the sex effect) with a low CR. When population density was low, the Cox-SPDE model slightly overestimated the effect of related factors (age, treatment). The two SPDE models corrected the impact of spatial heterogeneity, thus providing the best estimates. Our results show that when spatial heterogeneity is important but not measured, randomization alone cannot achieve comparability between groups. In such cases, prevention trials should model spatial heterogeneity with an adapted method. The dataset used for the application example was extracted from Vaccine Trial #NCT02334462 ( ClinicalTrials.gov registry).
机译:在受环境影响的传染性疾病的背景下,接近环境源会导致风险的空间异质性,有时很难在现场进行测量。大多数预防试验使用随机化来实现组之间的可比性,因此无法解释异质性。这项研究旨在确定在何种条件下空间异质性会使随机预防试验的结果产生偏差,并比较建模这种异质性的不同方法。以疟疾预防试验为例,进行了模拟以量化空间异质性的影响并比较不同的模型。模拟方案结合了基线风险,连续保护因子(年龄),非相关因子(性)和二元保护因子(预防性治疗)的变化。模拟的空间异质性情景结合了繁殖地点密度,效果,位置和种群密度的变化。评估了以下五个统计模型的性能:一个非空间Cox比例危害模型(Cox-PH)和四个解释空间异质性的模型,即数据生成模型,广义加性模型(GAM)和两个随机偏微分方程(SPDE)模型,一个建模生存时间,另一个建模事件数。使用贝叶斯方法,我们使用集成的嵌套拉普拉斯近似算法估计了SPDE模型。对于每个因素(年龄,性别,治疗),通过量化参数估计偏差,均方误差,置信区间覆盖率(CR)和显着率来评估模型性能。将这四个模型应用于来自疟疾传播阻断疫苗候选者的数据。基线风险水平不影响我们的估计。但是,由于高繁殖点密度和强大的繁殖点效应,Cox-PH和GAM模型低估了CR较低的年龄和治疗效应(而不是性别效应)。当人口密度较低时,Cox-SPDE模型会稍微高估相关因素(年龄,治疗)的影响。这两个SPDE模型纠正了空间异质性的影响,从而提供了最佳估计。我们的结果表明,当空间异质性很重要但无法衡量时,仅靠随机性无法实现组之间的可比性。在这种情况下,预防试验应采用一种适应性方法对空间异质性进行建模。从疫苗试验#NCT02334462(ClinicalTrials.gov登录)中提取了用于该应用示例的数据集。

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