- Wang, Jane;
- Ashraf Ganjouei, Amir;
- Hibi, Taizo;
- Lluis, Nuria;
- Gomes, Camilla;
- Romero-Hernandez, Fernanda;
- Yin, Han;
- Calthorpe, Lucia;
- Okamura, Yukiyasu;
- Abe, Yuta;
- Tanaka, Shogo;
- Tanabe, Minoru;
- Morise, Zeniche;
- Asbun, Horacio;
- Geller, David;
- Abu Hilal, Mohammed;
- Adam, Mohamed;
- Alseidi, Adnan
OBJECTIVE: This study aimed to (1) develop a machine learning (ML) model that predicts the textbook outcome in liver surgery (TOLS) using preoperative variables and (2) validate the TOLS criteria by determining whether TOLS is associated with long-term survival after hepatectomy. BACKGROUND: Textbook outcome is a composite measure that combines several favorable outcomes into a single metric and represents the optimal postoperative course. Recently, an expert panel of surgeons proposed a Delphi consensus-based definition of TOLS. METHODS: Adult patients who underwent hepatectomies were identified from a multicenter, international cohort (2010-2022). After data preprocessing and train-test splitting (80:20), 4 models for predicting TOLS were trained and tested. Following model optimization, the performance of the models was evaluated using receiver operating characteristic curves, and a web-based calculator was developed. In addition, a multivariable Cox proportional hazards analysis was conducted to determine the association between TOLS and overall survival (OS). RESULTS: A total of 2059 patients were included, with 62.8% meeting the criteria for TOLS. The XGBoost model, which had the best performance with an area under the curve of 0.73, was chosen for the web-based calculator. The most predictive variables for having TOLS were a minimally invasive approach, fewer lesions, lower Charlson Comorbidity Index, lower preoperative creatinine levels, and smaller lesions. In the multivariable analysis, having TOLS was associated with improved OS (hazard ratio = 0.82, P = 0.015). CONCLUSIONS: Our ML model can predict TOLS with acceptable discrimination. We validated the TOLS criteria by demonstrating a significant association with improved OS, thus supporting their use in informing patient care.