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Boosting qualifies capture-recapture methods for estimating the comprehensiveness of literature searches for systematic reviews

机译:Boosting使捕获-捕获方法可用于评估文献检索对系统评价的全面性

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Objective: Capture-recapture methods were proposed to evaluate the comprehensiveness of systematic literature searches. We investigate the statistical feasibility of capture-recapture techniques with model selection for estimating the number of missing references in literature searches using two systematic reviews in gastroenterology and hematology. Study Design and Setting: First, we compared manually selected Poisson regression models that differ with respect to included interactions. Secondly, we performed selection via componentwise boosting, which provides automatic variable selection. The proposed boosting technique is a regularized, stepwise procedure allowing to distinguish between mandatory and optional variables. Results from all models were compared based on Akaike's Information Criterion and the Bayesian Information Criterion. Results: For the first example, the best manually selected model suggested a number of 82 missing articles (95% CI: 52-128), whereas the boosting technique provided 127 (95% CI: 86-186) missing articles. For the second example, 140 (95% CI: 116-168) missing articles were estimated for the manually selected and 188 (95% CI: 159-223) for the automatically selected model. Conclusion: Capture-recapture analysis requires the selection of an appropriate model. Because of problems of variable selection and overfitting, manual model selection yielded large estimates, varying markedly, with broad confidence intervals. By contrast, boosting was robust against overfitting and automatically created an appropriate model for inference.
机译:目的:提出了捕获-捕获方法来评估系统文献检索的全面性。我们使用模型选择研究胃肠道和血液学的两种系统评价,通过模型选择来研究捕获-捕获技术的统计可行性,以估计文献检索中缺失参考文献的数量。研究设计和设置:首先,我们比较了人工选择的泊松回归模型,这些模型在所包含的相互作用方面有所不同。其次,我们通过逐级增强执行选择,该选择提供了自动变量选择。提出的增强技术是一种规范化的逐步过程,可以区分强制变量和可选变量。根据Akaike的信息标准和贝叶斯信息标准比较所有模型的结果。结果:对于第一个示例,最佳手动选择模型建议了82篇缺失文章(95%CI:52-128),而增强技术提供了127篇(95%CI:86-186)缺失文章。对于第二个示例,对于手动选择的模型,估计有140(95%CI:116-168)丢失的文章,对于自动选择的模型,则估计有188(95%CI:159-223)。结论:捕获-捕获分析需要选择适当的模型。由于变量选择和过度拟合的问题,手动模型选择产生了大量估计值,且估计值明显不同,且置信区间很宽。相比之下,boosting可以防止过度拟合,并会自动创建合适的推理模型。

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