Predicting cesarean delivery with decision tree models - 05/09/11
Abstract |
Objective: The purpose of this study was to determine whether decision tree–based methods can be used to predict cesarean delivery. Study Design: This was a historical cohort study of women delivered of live-born singleton neonates in 1995 through 1997 (22,157). The frequency of cesarean delivery was 17%; 78 variables were used for analysis. Decision tree rule-based methods and logistic regression models were each applied to the same 50% of the sample to develop the predictive training models and these models were tested on the remaining 50%. Results: Decision tree receiver operating characteristic curve areas were as follows: nulliparous, 0.82; parous, 0.93. Logistic receiver operating characteristic curve areas were as follows: nulliparous, 0.86; parous, 0.93. Decision tree methods and logistic regression methods used similar predictive variables; however, logistic methods required more variables and yielded less intelligible models. Among the 6 decision tree building methods tested, the strict minimum message length criterion yielded decision trees that were small yet accurate. Risk factor variables were identified in 676 nulliparous cesarean deliveries (69%) and 419 parous cesarean deliveries (47.6%). Conclusion: Decision tree models can be used to predict cesarean delivery. Models built with strict minimum message length decision trees have the following attributes: Their performance is comparable to that of logistic regression; they are small enough to be intelligible to physicians; they reveal causal dependencies among variables not detected by logistic regression; they can handle missing values more easily than can logistic methods; they predict cesarean deliveries that lack a categorized risk factor variable. (Am J Obstet Gynecol 2000;183:1198-206.)
Le texte complet de cet article est disponible en PDF.Keywords : Decision trees, machine learning, predicting cesarean delivery, statistical models
Plan
| ☆ | Supported by a McCune Foundation grant. |
| ☆☆ | Reprint requests: Cynthia J. Sims, MD, Department of Obstetrics, Gynecology and Reproductive Sciences, University of Pittsburgh School of Medicine, Magee-Womens Hospital, Pittsburgh, PA 15213. |
Vol 183 - N° 5
P. 1198-1206 - novembre 2000 Retour au numéroBienvenue sur EM-consulte, la référence des professionnels de santé.
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