Prediction of Short-Term Postoperative Complications Following Open Reduction Internal Fixation of Ankle Fractures. Academic Article uri icon

Overview

abstract

  • BACKGROUND: Minimizing postoperative complications is imperative to improving patient outcomes. The purpose of this investigation is to develop machine learning (ML) models that can predict complications following open reduction and internal fixation of ankle fractures and compare them with legacy indices. METHODS: The ACS-NSQIP database was queried from 2011 to 2020 for ankle fractures. Training and validation sets were created by randomly assigning 80% and 20% of the data set, respectively. Age, body mass index (BMI), surgical time, smoking status, comorbidities, and preoperative hematocrit and albumin were included. Complications included any adverse event, transfusion, extended length of stay (>3 days), surgical site infection, deep vein thrombosis/pulmonary embolism, and discharge home. ML algorithms were compared with legacy indices, such as the American Society of Anesthesiologists classification, Charlson Comorbidity Index, and modified frailty index. Model strength was evaluated by calculating the area under the receiver operating characteristic. RESULTS: A total of 42,254 cases were identified. Mean age, BMI, and length of stay were 44.5 ± 18.5 years, 30.6 ± 7.7 kg/m2, and 1.6 ± 4.4 days. Percentage hematocrit, BMI, age, and surgical time were among the highest importance in outcome prediction. Logistic regression ML algorithm outperformed American Society of Anesthesiologists classification for predicting any adverse event (73% vs. 69%), transfusion (93% vs. 82%), extended length of stay (82% vs. 75%), deep vein thrombosis/pulmonary embolism (55% vs. 53%), surgical site infection (62% vs. 58%), and discharge home (89% vs. 79%). Logistic regression ML had the highest positive predictive value (91.4%) for discharge home and negative predictive value (99.4%) for blood transfusion. CONCLUSION: ML algorithms can calculate patient-specific risk for complications following open reduction and internal fixation of ankle fractures. These models have greater utility in predicting adverse events than legacy indices. With continued validation, ML can stratify surgical candidates, identify site of surgery, and allocate resources postoperatively. LEVEL OF EVIDENCE: IV, Cohort Study.

publication date

  • October 31, 2025

Identity

Digital Object Identifier (DOI)

  • 10.5435/JAAOS-D-25-00532

PubMed ID

  • 41202199