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Validation of a Prediction Model for Vaginal Birth after Cesarean Delivery Reveals Unexpected Success in a Diverse American Population

Objective To investigate the validity of a prediction model for success of vaginal birth after cesarean delivery (VBAC) in an ethnically diverse population. Methods We performed a retrospective cohort study of women admitted at a single academic institution for a trial of labor after cesarean from M...

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Autores principales: Maykin, Melanie Mai, Mularz, Amanda J., Lee, Lydia K., Valderramos, Stephanie Gaw
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Thieme Medical Publishers 2017
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5330796/
https://www.ncbi.nlm.nih.gov/pubmed/28255520
http://dx.doi.org/10.1055/s-0037-1599129
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author Maykin, Melanie Mai
Mularz, Amanda J.
Lee, Lydia K.
Valderramos, Stephanie Gaw
author_facet Maykin, Melanie Mai
Mularz, Amanda J.
Lee, Lydia K.
Valderramos, Stephanie Gaw
author_sort Maykin, Melanie Mai
collection PubMed
description Objective To investigate the validity of a prediction model for success of vaginal birth after cesarean delivery (VBAC) in an ethnically diverse population. Methods We performed a retrospective cohort study of women admitted at a single academic institution for a trial of labor after cesarean from May 2007 to January 2015. Individual predicted success rates were calculated using the Maternal–Fetal Medicine Units Network prediction model. Participants were stratified into three probability-of-success groups: low (<35%), moderate (35–65%), and high (>65%). The actual versus predicted success rates were compared. Results In total, 568 women met inclusion criteria. Successful VBAC occurred in 402 (71%), compared with a predicted success rate of 66% (p = 0.016). Actual VBAC success rates were higher than predicted by the model in the low (57 vs. 29%; p < 0.001) and moderate (61 vs. 52%; p = 0.003) groups. In the high probability group, the observed and predicted VBAC rates were the same (79%). Conclusion When the predicted success rate was above 65%, the model was highly accurate. In contrast, for women with predicted success rates <35%, actual VBAC rates were nearly twofold higher in our population, suggesting that they should not be discouraged by a low prediction score.
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spelling pubmed-53307962017-03-02 Validation of a Prediction Model for Vaginal Birth after Cesarean Delivery Reveals Unexpected Success in a Diverse American Population Maykin, Melanie Mai Mularz, Amanda J. Lee, Lydia K. Valderramos, Stephanie Gaw AJP Rep Objective To investigate the validity of a prediction model for success of vaginal birth after cesarean delivery (VBAC) in an ethnically diverse population. Methods We performed a retrospective cohort study of women admitted at a single academic institution for a trial of labor after cesarean from May 2007 to January 2015. Individual predicted success rates were calculated using the Maternal–Fetal Medicine Units Network prediction model. Participants were stratified into three probability-of-success groups: low (<35%), moderate (35–65%), and high (>65%). The actual versus predicted success rates were compared. Results In total, 568 women met inclusion criteria. Successful VBAC occurred in 402 (71%), compared with a predicted success rate of 66% (p = 0.016). Actual VBAC success rates were higher than predicted by the model in the low (57 vs. 29%; p < 0.001) and moderate (61 vs. 52%; p = 0.003) groups. In the high probability group, the observed and predicted VBAC rates were the same (79%). Conclusion When the predicted success rate was above 65%, the model was highly accurate. In contrast, for women with predicted success rates <35%, actual VBAC rates were nearly twofold higher in our population, suggesting that they should not be discouraged by a low prediction score. Thieme Medical Publishers 2017-01 /pmc/articles/PMC5330796/ /pubmed/28255520 http://dx.doi.org/10.1055/s-0037-1599129 Text en © Thieme Medical Publishers
spellingShingle Maykin, Melanie Mai
Mularz, Amanda J.
Lee, Lydia K.
Valderramos, Stephanie Gaw
Validation of a Prediction Model for Vaginal Birth after Cesarean Delivery Reveals Unexpected Success in a Diverse American Population
title Validation of a Prediction Model for Vaginal Birth after Cesarean Delivery Reveals Unexpected Success in a Diverse American Population
title_full Validation of a Prediction Model for Vaginal Birth after Cesarean Delivery Reveals Unexpected Success in a Diverse American Population
title_fullStr Validation of a Prediction Model for Vaginal Birth after Cesarean Delivery Reveals Unexpected Success in a Diverse American Population
title_full_unstemmed Validation of a Prediction Model for Vaginal Birth after Cesarean Delivery Reveals Unexpected Success in a Diverse American Population
title_short Validation of a Prediction Model for Vaginal Birth after Cesarean Delivery Reveals Unexpected Success in a Diverse American Population
title_sort validation of a prediction model for vaginal birth after cesarean delivery reveals unexpected success in a diverse american population
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5330796/
https://www.ncbi.nlm.nih.gov/pubmed/28255520
http://dx.doi.org/10.1055/s-0037-1599129
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