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Ambulatory Surgery Ensemble: Predicting Adult and Pediatric Same-Day Surgery Cases Across Specialties.

Publication ,  Journal Article
Howell, TC; Zaribafzadeh, H; Sumner, MD; Rogers, U; Rollman, J; Buckland, DM; Kent, M; Kirk, AD; Allen, PJ; Rogers, B
Published in: Ann Surg Open
March 2025

OBJECTIVE: To develop an ensemble model using case-posting data to predict which patients could be discharged on the day of surgery. BACKGROUND: Few models have predicted which surgeries are appropriate for day cases. Increasing the ratio of ambulatory surgeries can decrease costs and inpatient bed utilization while improving resource utilization. METHODS: Adult and pediatric patients undergoing elective surgery with any surgical specialty in a multisite academic health system from January 2021 to December 2023 were included in this retrospective study. We used surgical case data available at the time of case posting and created 3 gradient-boosting decision tree classification models to predict case length (CL) less than 6 hours, postoperative length of stay (LOS) less than 6 hours, and home discharge disposition (DD). The models were used to develop an ambulatory surgery ensemble (ASE) model to predict same-day surgery (SDS) cases. RESULTS: The ASE achieved an area under the receiver operating characteristic curve of 0.95 and an average precision of 0.96. In total, 139,593 cases were included, 48,464 of which were in 2023 and were used for model validation. These methods identified that up to 20% of inpatient cases could be moved to SDS and identified which specialties, procedures, and surgeons had the most opportunity to transition cases. CONCLUSIONS: An ensemble model can predict CL, LOS, and DD for elective cases across multiple services and locations at the time of case posting. While limited in its inclusion of patient factors, this model can systematically facilitate clinical operations such as strategic planning, surgical block time, and case scheduling.

Duke Scholars

Published In

Ann Surg Open

DOI

EISSN

2691-3593

Publication Date

March 2025

Volume

6

Issue

1

Start / End Page

e534

Location

United States
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Howell, T. C., Zaribafzadeh, H., Sumner, M. D., Rogers, U., Rollman, J., Buckland, D. M., … Rogers, B. (2025). Ambulatory Surgery Ensemble: Predicting Adult and Pediatric Same-Day Surgery Cases Across Specialties. Ann Surg Open, 6(1), e534. https://doi.org/10.1097/AS9.0000000000000534
Howell, Thomas Clark, Hamed Zaribafzadeh, Maxwell D. Sumner, Ursula Rogers, John Rollman, Daniel M. Buckland, Michael Kent, Allan D. Kirk, Peter J. Allen, and Bruce Rogers. “Ambulatory Surgery Ensemble: Predicting Adult and Pediatric Same-Day Surgery Cases Across Specialties.Ann Surg Open 6, no. 1 (March 2025): e534. https://doi.org/10.1097/AS9.0000000000000534.
Howell TC, Zaribafzadeh H, Sumner MD, Rogers U, Rollman J, Buckland DM, et al. Ambulatory Surgery Ensemble: Predicting Adult and Pediatric Same-Day Surgery Cases Across Specialties. Ann Surg Open. 2025 Mar;6(1):e534.
Howell, Thomas Clark, et al. “Ambulatory Surgery Ensemble: Predicting Adult and Pediatric Same-Day Surgery Cases Across Specialties.Ann Surg Open, vol. 6, no. 1, Mar. 2025, p. e534. Pubmed, doi:10.1097/AS9.0000000000000534.
Howell TC, Zaribafzadeh H, Sumner MD, Rogers U, Rollman J, Buckland DM, Kent M, Kirk AD, Allen PJ, Rogers B. Ambulatory Surgery Ensemble: Predicting Adult and Pediatric Same-Day Surgery Cases Across Specialties. Ann Surg Open. 2025 Mar;6(1):e534.

Published In

Ann Surg Open

DOI

EISSN

2691-3593

Publication Date

March 2025

Volume

6

Issue

1

Start / End Page

e534

Location

United States