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Get the most from your data: a propensity score model comparison on real-life data

机译:充分利用数据:对真实数据进行倾向得分模型比较

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Purpose: In the past, the propensity score has been in the middle of several discussions in terms of its abilities and limitations. With a comprehensive review and a practical example, this study examines the effect of propensity score analysis of real-life data and introduces a simple and effective clinical approach. Materials and methods: After the authors reviewed current publications, they applied their insights to the data of a nonrandomized clinical trial in bariatric surgery. This study examined weight loss in 173 patients where 127 patients received Roux-en-Y gastric bypass surgery and 46 patients sleeve gastrectomy. Both groups underwent analysis in terms of their covariate distribution using Mann–Whitney U and χ 2 testing. Mean differences within excess weight loss in native data were examined with Student’s t-test. Three propensity score models were defined and matching was performed. Covariate distribution and mean differences in excess weight loss were checked with Mann–Whitney U and χ 2 testing. Results: Native data implied a significant difference in excess weight loss. The propensity score models did not confirm this difference. All models proved that both surgical procedures were equal, due to their weight-loss induction. Covariate distribution improved after the matching procedure in terms of an equal distribution. Conclusion: It seemed that a practical clinical approach with outcome-related covariates as a propensity score base is the ideal midpoint between an equal distribution in covariates and an acceptable loss of data. Nevertheless, propensity score models designed with clinical intent seemed to be absolutely suitable for overcoming heterogeneity in covariate distribution.
机译:目的:过去,倾向得分在其能力和局限性方面处于多次讨论之中。通过全面的综述和一个实际的例子,本研究考察了现实生活数据倾向得分分析的效果,并介绍了一种简单有效的临床方法。材料和方法:在作者审查了当前的出版物之后,他们将自己的见解应用于减肥手术的非随机临床试验数据。这项研究检查了173例患者的体重减轻,其中127例患者接受了Roux-en-Y胃旁路手术,而46例患者进行了袖胃切除术。两组均使用Mann–Whitney U和χ 2 检验进行协变量分布分析。通过学生的t检验,对原始数据中多余体重减轻的平均值差异进行了检验。定义了三个倾向得分模型并进行了匹配。用Mann–Whitney U和χ 2 检验检查协变量分布和平均体重下降差异。结果:原始数据暗示过量减肥的显着差异。倾向得分模型并未确认这种差异。所有模型均证明了它们的减肥效果,使两种手术方法均相同。在匹配过程之后,按照均等分布改善了协变量分布。结论:以结局相关的协变量作为倾向得分基础的实用临床方法似乎是协变量均等分布与可接受的数据丢失之间的理想中点。然而,具有临床意图的倾向评分模型似乎绝对适合克服协变量分布中的异质性。

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