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Development of Multiservice Machine Learning Models to Predict Postsurgical Length of Stay and Discharge Disposition at the Time of Case Posting.

Publication ,  Journal Article
Zaribafzadeh, H; Howell, TC; Webster, WL; Vail, CJ; Kirk, AD; Allen, PJ; Henao, R; Buckland, DM
Published in: Ann Surg Open
March 2025

OBJECTIVE: Develop machine learning (ML) models to predict postsurgical length of stay (LOS) and discharge disposition (DD) for multiple services with only the data available at the time of case posting. BACKGROUND: Surgeries are scheduled largely based on operating room resource availability with little attention to downstream resource availability such as inpatient bed availability and the care needs after hospitalization. Predicting postsurgical LOS and DD at the time of case posting could support resource allocation and earlier discharge planning. METHODS: This retrospective study included 63,574 adult patients undergoing elective inpatient surgery at a large academic health system. We used surgical case data available at the time of case posting and created gradient-boosting decision tree classification models to predict LOS as short (≤1 day), medium (2-4 days), and prolonged stays (≥5 days) and DD as home versus nonhome. RESULTS: The LOS model achieved an area under the receiver operating characteristic curve (AUC) of 0.81. Adding relative value unit and historical LOS through the similarity cascade increased the accuracy of short and prolonged LOS prediction by 9.0% and 3.9% to 72.9% and 74%, respectively, compared with a model without these features (P = 0.001). The DD model had an AUC of 0.88 for home versus nonhome prediction. CONCLUSIONS: We developed ML models to predict, at the time of case posting, the postsurgical LOS and DD for adult elective inpatient cases across multiple services. These models could support case scheduling, resource allocation, optimal bed utilization, earlier discharge planning, and preventing case cancelation due to bed unavailability.

Duke Scholars

Published In

Ann Surg Open

DOI

EISSN

2691-3593

Publication Date

March 2025

Volume

6

Issue

1

Start / End Page

e547

Location

United States
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Zaribafzadeh, H., Howell, T. C., Webster, W. L., Vail, C. J., Kirk, A. D., Allen, P. J., … Buckland, D. M. (2025). Development of Multiservice Machine Learning Models to Predict Postsurgical Length of Stay and Discharge Disposition at the Time of Case Posting. Ann Surg Open, 6(1), e547. https://doi.org/10.1097/AS9.0000000000000547
Zaribafzadeh, Hamed, T Clark Howell, Wendy L. Webster, Christopher J. Vail, Allan D. Kirk, Peter J. Allen, Ricardo Henao, and Daniel M. Buckland. “Development of Multiservice Machine Learning Models to Predict Postsurgical Length of Stay and Discharge Disposition at the Time of Case Posting.Ann Surg Open 6, no. 1 (March 2025): e547. https://doi.org/10.1097/AS9.0000000000000547.
Zaribafzadeh H, Howell TC, Webster WL, Vail CJ, Kirk AD, Allen PJ, et al. Development of Multiservice Machine Learning Models to Predict Postsurgical Length of Stay and Discharge Disposition at the Time of Case Posting. Ann Surg Open. 2025 Mar;6(1):e547.
Zaribafzadeh, Hamed, et al. “Development of Multiservice Machine Learning Models to Predict Postsurgical Length of Stay and Discharge Disposition at the Time of Case Posting.Ann Surg Open, vol. 6, no. 1, Mar. 2025, p. e547. Pubmed, doi:10.1097/AS9.0000000000000547.
Zaribafzadeh H, Howell TC, Webster WL, Vail CJ, Kirk AD, Allen PJ, Henao R, Buckland DM. Development of Multiservice Machine Learning Models to Predict Postsurgical Length of Stay and Discharge Disposition at the Time of Case Posting. Ann Surg Open. 2025 Mar;6(1):e547.

Published In

Ann Surg Open

DOI

EISSN

2691-3593

Publication Date

March 2025

Volume

6

Issue

1

Start / End Page

e547

Location

United States