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Data-Driven Insights into Labor Progression with Gaussian Processes. | LitMetric

Data-Driven Insights into Labor Progression with Gaussian Processes.

Bioengineering (Basel)

Medical Research and Development, PeriGen Inc., Cary, NC 27518, USA.

Published: January 2024

AI Article Synopsis

  • Clinicians often perform pelvic exams to monitor labor progress, but existing guidelines don't effectively reduce cesarean-section rates.
  • A new Gaussian process model for predicting cervical dilation and fetal station shows improved accuracy over previous statistical methods.
  • This model provides confidence estimates for its predictions and is more effective when predicting both dilation and station together, rather than using separate models.

Article Abstract

Clinicians routinely perform pelvic examinations to assess the progress of labor. Clinical guidelines to interpret these examinations, using time-based models of cervical dilation, are not always followed and have not contributed to reducing cesarean-section rates. We present a novel Gaussian process model of labor progress, suitable for real-time use, that predicts cervical dilation and fetal station based on clinically relevant predictors available from the pelvic exam and cardiotocography. We show that the model is more accurate than a statistical approach using a mixed-effects model. In addition, it provides confidence estimates on the prediction, calibrated to the specific delivery. Finally, we show that predicting both dilation and station with a single Gaussian process model is more accurate than two separate models with single predictions.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11154427PMC
http://dx.doi.org/10.3390/bioengineering11010073DOI Listing

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