Length of Stay Prediction Models for Oral Cancer Surgery: Machine Learning, Statistical and ACS‐NSQIP

Author:

Namavarian Amirpouyan1ORCID,Gabinet‐Equihua Alexander1ORCID,Deng Yangqing2,Khalid Shuja3,Ziai Hedyeh1ORCID,Deutsch Konrado1,Huang Jingyue2,Gilbert Ralph W.14,Goldstein David P.14,Yao Christopher M.K.L.14,Irish Jonathan C.14,Enepekides Danny J.15,Higgins Kevin M.15,Rudzicz Frank367,Eskander Antoine15,Xu Wei248,de Almeida John R.14910

Affiliation:

1. Department of Otolaryngology—Head & Neck Surgery University of Toronto Toronto Ontario Canada

2. Department of Biostatistics Princess Margaret Cancer Center—University Health Network Toronto Ontario Canada

3. Department of Computer Science University of Toronto Toronto Ontario Canada

4. Department of Otolaryngology—Head & Neck Surgery Princess Margaret Cancer Center—University Health Network Toronto Ontario Canada

5. Department of Otolaryngology—Head & Neck Surgery Sunnybrook Health Sciences Center Toronto Ontario Canada

6. International Centre for Surgical Safety Li Ka Shing Knowledge Institute, St. Michael's Hospital Toronto Ontario Canada

7. Vector Institute for Artificial Intelligence Toronto Ontario Canada

8. Department of Biostatistics Dalla Lana School of Public Health, University of Toronto Toronto Ontario Canada

9. Department of Otolaryngology—Head & Neck Surgery Sinai Health System Toronto Ontario Canada

10. Institute of Health Policy, Management, and Evaluation University of Toronto Toronto Ontario Canada

Abstract

ObjectiveAccurate prediction of hospital length of stay (LOS) following surgical management of oral cavity cancer (OCC) may be associated with improved patient counseling, hospital resource utilization and cost. The objective of this study was to compare the performance of statistical models, a machine learning (ML) model, and The American College of Surgeons National Surgical Quality Improvement Program's (ACS‐NSQIP) calculator in predicting LOS following surgery for OCC.Materials and MethodsA retrospective multicenter database study was performed at two major academic head and neck cancer centers. Patients with OCC who underwent major free flap reconstructive surgery between January 2008 and June 2019 surgery were selected. Data were pooled and split into training and validation datasets. Statistical and ML models were developed, and performance was evaluated by comparing predicted and actual LOS using correlation coefficient values and percent accuracy.ResultsTotally 837 patients were selected with mean patient age being 62.5 ± 11.7 [SD] years and 67% being male. The ML model demonstrated the best accuracy (validation correlation 0.48, 4‐day accuracy 70%), compared with the statistical models: multivariate analysis (0.45, 67%) and least absolute shrinkage and selection operator (0.42, 70%). All were superior to the ACS‐NSQIP calculator's performance (0.23, 59%).ConclusionWe developed statistical and ML models that predicted LOS following major free flap reconstructive surgery for OCC. Our models demonstrated superior predictive performance to the ACS‐NSQIP calculator. The ML model identified several novel predictors of LOS. These models must be validated in other institutions before being used in clinical practice.Level of Evidence3 Laryngoscope, 134:3664–3672, 2024

Publisher

Wiley

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