Benchmarking Cesarean Delivery Rates using Machine Learning‐Derived Optimal Classification Trees

Objective

To establish a case-adjusted hospital-specific performance evaluation tool using machine learning methodology for cesarean delivery.

Data Sources

Secondary data were collected from patients between 1/1/2015–2/28/2018 using a hospital's “Electronic Data Warehouse” database from Illinois, USA.

Study Design

The machine learning methodology of Optimal Classification Trees (OCT's) was used to predict cesarean delivery rate by physician group, thereby establishing the case-adjusted benchmarking standards in comparison to the overall hospital cesarean delivery rate. Outcomes of specific patient populations of each participating practice were predicted, as if each were treated in the overall hospital environment. The resulting OCTs estimate physician group expected cesarean delivery outcomes, both aggregate and in specific clinical situations.

Data Collection/Extraction methods

12,841 singleton, vertex, term deliveries, cared for by practices with ≥50 births.

Principal Findings

The overall rate of cesarean delivery was 18.6% (n = 2384), with a range of 13.3%–33.7% amongst 22 physician practices. An optimal decision tree was used to create a prediction model for the overall hospital which defined 23 patient cohorts, divided by 46 nodes. The model's performance for prediction of cesarean delivery is as follows: area under the curve- 0.73, sensitivity- 98.4%, specificity- 16.1%, positive predictive value 83.7%, negative predictive value 70.6%. Comparisons with the overall hospital's specific-case adjusted benchmark groups revealed that several groups outperformed the overall hospital and some practice groups underperformed in comparison to the overall hospital.

Conclusions

OCT benchmarking can assess physician practice specific case-adjusted performance, both overall and clinical situation specific, and can serve as a valuable tool for hospital self-assessment and quality improvement.

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