Am J Perinatol 2009; 26(10): 693-701
DOI: 10.1055/s-0029-1239494
© Thieme Medical Publishers

Does Information Available at Admission for Delivery Improve Prediction of Vaginal Birth after Cesarean?

William A. Grobman1 , Yinglei Lai2 , Mark B. Landon3 , Catherine Y. Spong4 , Kenneth J. Leveno5 , Dwight J. Rouse6 , Michael W. Varner7 , Atef H. Moawad8 , Hyagriv N. Simhan9 , Margaret Harper10 , Ronald J. Wapner11 , Yoram Sorokin12 , Menachem Miodovnik13 , 14 , Marshall Carpenter15 , Mary J. O'Sullivan16 , Baha M. Sibai17 , Oded Langer18 , John M. Thorp19 , Susan M. Ramin20 , Brian M. Mercer21
  • 1Departments of Obstetrics and Gynecology, Northwestern University, Chicago, Illinois
  • 2The George Washington University Biostatistics Center, Washington, DC
  • 3The Ohio State University, Columbus, Ohio
  • 4 Eunice Kennedy Shriver National Institute of Child Health and Human Development, Bethesda, Maryland
  • 5University of Texas Southwestern Medical Center, Dallas, Texas
  • 6University of Alabama at Birmingham, Birmingham, Alabama
  • 7University of Chicago, Chicago, Illinois
  • 8University of Utah, Salt Lake City, Utah
  • 9University of Pittsburgh, Pittsburgh, Pennsylvania
  • 10Wake Forest University, Winston-Salem, North Carolina
  • 11Thomas Jefferson University, Philadelphia, Pennsylvania
  • 12Wayne State University, Detroit, Michigan
  • 13University of Cincinnati, Cincinnati, Ohio
  • 14Columbia University, New York, New York
  • 15Brown University, Providence, Rhode Island
  • 16University of Miami, Miami, Florida
  • 17University of Tennessee, Memphis, Tennessee
  • 18University of Texas at San Antonio, San Antonio, Texas
  • 19University of North Carolina, Chapel Hill, North Carolina
  • 20University of Texas at Houston, Houston, Texas
  • 21Case Western Reserve University, Cleveland, Ohio
Further Information

Publication History

Publication Date:
07 October 2009 (online)

ABSTRACT

We sought to construct a predictive model for vaginal birth after cesarean (VBAC) that combines factors that can be ascertained only as the pregnancy progresses with those known at initiation of prenatal care. Using multivariable modeling, we constructed a predictive model for VBAC that included patient factors known at the initial prenatal visit as well as those that only become evident as the pregnancy progresses to the admission for delivery. We analyzed 9616 women. The regression equation for VBAC success included multiple factors that could not be known at the first prenatal visit. The area under the curve for this model was significantly greater (p < 0.001) than that of a model that included only factors available at the first prenatal visit. A prediction model for VBAC success, which incorporates factors that can be ascertained only as the pregnancy progresses, adds to the predictive accuracy of a model that uses only factors available at a first prenatal visit.

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William A GrobmanM.D. M.B.A. 

250 East Superior Street

Suite 05-2175, Chicago, IL 60611. Reprints not available from the author

Email: w-grobman@northwestern.edu

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