Get the most from your data: a propensity score model comparison on real-life data
Dennis Ferdinand,1 Mirko Otto,2 Christel Weiss1 1Department of Biomathematics and Medical Statistics, 2Department of Surgery, University Medical Center Mannheim (UMM), University of Heidelberg, Mannheim, Germany Purpose: In the past, the propensity score has been in the middle of s...
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doaj-37fbeb4305fa4d87801c78e61a8c77842020-11-25T01:23:42ZengDove Medical PressInternational Journal of General Medicine1178-70742016-05-012016Issue 112313126953Get the most from your data: a propensity score model comparison on real-life dataFerdinDOtto MWeiss CDennis Ferdinand,1 Mirko Otto,2 Christel Weiss1 1Department of Biomathematics and Medical Statistics, 2Department of Surgery, University Medical Center Mannheim (UMM), University of Heidelberg, Mannheim, Germany 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 χ2 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 χ2 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. Keywords: nonrandomized clinical trial, statistics, logistic regression, study design, ­balancing scorehttps://www.dovepress.com/get-the-most-from-your-data-a-propensity-score-model-comparison-on-rea-peer-reviewed-article-IJGMPropensity ScoreNon-randomized clinical trialstatisticsBalancing scoreheterogeneity |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ferdin D Otto M Weiss C |
spellingShingle |
Ferdin D Otto M Weiss C Get the most from your data: a propensity score model comparison on real-life data International Journal of General Medicine Propensity Score Non-randomized clinical trial statistics Balancing score heterogeneity |
author_facet |
Ferdin D Otto M Weiss C |
author_sort |
Ferdin |
title |
Get the most from your data: a propensity score model comparison on real-life data |
title_short |
Get the most from your data: a propensity score model comparison on real-life data |
title_full |
Get the most from your data: a propensity score model comparison on real-life data |
title_fullStr |
Get the most from your data: a propensity score model comparison on real-life data |
title_full_unstemmed |
Get the most from your data: a propensity score model comparison on real-life data |
title_sort |
get the most from your data: a propensity score model comparison on real-life data |
publisher |
Dove Medical Press |
series |
International Journal of General Medicine |
issn |
1178-7074 |
publishDate |
2016-05-01 |
description |
Dennis Ferdinand,1 Mirko Otto,2 Christel Weiss1 1Department of Biomathematics and Medical Statistics, 2Department of Surgery, University Medical Center Mannheim (UMM), University of Heidelberg, Mannheim, Germany 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 χ2 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 χ2 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. Keywords: nonrandomized clinical trial, statistics, logistic regression, study design, ­balancing score |
topic |
Propensity Score Non-randomized clinical trial statistics Balancing score heterogeneity |
url |
https://www.dovepress.com/get-the-most-from-your-data-a-propensity-score-model-comparison-on-rea-peer-reviewed-article-IJGM |
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