TY - JOUR
T1 - Benchmarking in Congenital Heart Surgery Using Machine Learning-Derived Optimal Classification Trees
AU - Bertsimas, Dimitris
AU - Zhuo, Daisy
AU - Levine, Jordan
AU - Dunn, Jack
AU - Tobota, Zdzislaw
AU - Maruszewski, Bohdan
AU - Fragata, Jose
AU - Sarris, George E.
N1 - Funding Information:
We gratefully acknowledge the contributions of ECDB participating surgeons and centers, whose CHS data have made this study possible. The authors received no financial support for the research, authorship, and/or publication of this article.
Publisher Copyright:
© The Author(s) 2021.
PY - 2022/1
Y1 - 2022/1
N2 - Background: We have previously shown that the machine learning methodology of optimal classification trees (OCTs) can accurately predict risk after congenital heart surgery (CHS). We have now applied this methodology to define benchmarking standards after CHS, permitting case-adjusted hospital-specific performance evaluation. Methods: The European Congenital Heart Surgeons Association Congenital Database data subset (31 792 patients) who had undergone any of the 10 “benchmark procedure group” primary procedures were analyzed. OCT models were built predicting hospital mortality (HM), and prolonged postoperative mechanical ventilatory support time (MVST) or length of hospital stay (LOS), thereby establishing case-adjusted benchmarking standards reflecting the overall performance of all participating hospitals, designated as the “virtual hospital.” These models were then used to predict individual hospitals’ expected outcomes (both aggregate and, importantly, for risk-matched patient cohorts) for their own specific cases and case-mix, based on OCT analysis of aggregate data from the “virtual hospital.” Results: The raw average rates were HM = 4.4%, MVST = 15.3%, and LOS = 15.5%. Of 64 participating centers, in comparison with each hospital's specific case-adjusted benchmark, 17.0% statistically (under 90% confidence intervals) overperformed and 26.4% underperformed with respect to the predicted outcomes for their own specific cases and case-mix. For MVST and LOS, overperformers were 34.0% and 26.4%, and underperformers were 28.3% and 43.4%, respectively. OCT analyses reveal hospital-specific patient cohorts of either overperformance or underperformance. Conclusions: OCT benchmarking analysis can assess hospital-specific case-adjusted performance after CHS, both overall and patient cohort-specific, serving as a tool for hospital self-assessment and quality improvement.
AB - Background: We have previously shown that the machine learning methodology of optimal classification trees (OCTs) can accurately predict risk after congenital heart surgery (CHS). We have now applied this methodology to define benchmarking standards after CHS, permitting case-adjusted hospital-specific performance evaluation. Methods: The European Congenital Heart Surgeons Association Congenital Database data subset (31 792 patients) who had undergone any of the 10 “benchmark procedure group” primary procedures were analyzed. OCT models were built predicting hospital mortality (HM), and prolonged postoperative mechanical ventilatory support time (MVST) or length of hospital stay (LOS), thereby establishing case-adjusted benchmarking standards reflecting the overall performance of all participating hospitals, designated as the “virtual hospital.” These models were then used to predict individual hospitals’ expected outcomes (both aggregate and, importantly, for risk-matched patient cohorts) for their own specific cases and case-mix, based on OCT analysis of aggregate data from the “virtual hospital.” Results: The raw average rates were HM = 4.4%, MVST = 15.3%, and LOS = 15.5%. Of 64 participating centers, in comparison with each hospital's specific case-adjusted benchmark, 17.0% statistically (under 90% confidence intervals) overperformed and 26.4% underperformed with respect to the predicted outcomes for their own specific cases and case-mix. For MVST and LOS, overperformers were 34.0% and 26.4%, and underperformers were 28.3% and 43.4%, respectively. OCT analyses reveal hospital-specific patient cohorts of either overperformance or underperformance. Conclusions: OCT benchmarking analysis can assess hospital-specific case-adjusted performance after CHS, both overall and patient cohort-specific, serving as a tool for hospital self-assessment and quality improvement.
KW - Congenital heart disease
KW - congenital heart surgery
KW - database (all types)
KW - outcomes
KW - risk analysis/modeling
KW - statistics
KW - statistics-survival analysis
UR - http://www.scopus.com/inward/record.url?scp=85147461945&partnerID=8YFLogxK
U2 - 10.1177/21501351211051227
DO - 10.1177/21501351211051227
M3 - Article
C2 - 34783609
AN - SCOPUS:85147461945
SN - 2150-1351
VL - 13
SP - 23
EP - 35
JO - World Journal for Pediatric and Congenital Heart Surgery
JF - World Journal for Pediatric and Congenital Heart Surgery
IS - 1
ER -