Development and internal validation of a clinical prediction model for serious complications after emergency laparotomy

Author:

Kokkinakis StamatiosORCID,Kritsotakis Evangelos I.ORCID,Paterakis Konstantinos,Karali Garyfallia-Apostolia,Malikides Vironas,Kyprianou Anna,Papalexandraki Melina,Anastasiadis Charalampos S.,Zoras Odysseas,Drakos Nikolas,Kehagias Ioannis,Kehagias Dimitrios,Gouvas Nikolaos,Kokkinos Georgios,Pozotou Ioanna,Papatheodorou Panayiotis,Frantzeskou Kyriakos,Schizas Dimitrios,Syllaios Athanasios,Palios Ifaistion M.,Nastos Konstantinos,Perdikaris Markos,Michalopoulos Nikolaos V.,Margaris Ioannis,Lolis Evangelos,Dimopoulou Georgia,Panagiotou Dimitrios,Nikolaou Vasiliki,Glantzounis Georgios K.,Pappas-Gogos George,Tepelenis Kostas,Zacharioudakis Georgios,Tsaramanidis Savvas,Patsarikas Ioannis,Stylianidis Georgios,Giannos Georgios,Karanikas Michail,Kofina Konstantinia,Markou Markos,Chrysos Emmanuel,Lasithiotakis KonstantinosORCID

Abstract

Abstract Purpose Emergency laparotomy (EL) is a common operation with high risk for postoperative complications, thereby requiring accurate risk stratification to manage vulnerable patients optimally. We developed and internally validated a predictive model of serious complications after EL. Methods Data for eleven carefully selected candidate predictors of 30-day postoperative complications (Clavien-Dindo grade >  = 3) were extracted from the HELAS cohort of EL patients in 11 centres in Greece and Cyprus. Logistic regression with Least Absolute Shrinkage and Selection Operator (LASSO) was applied for model development. Discrimination and calibration measures were estimated and clinical utility was explored with decision curve analysis (DCA). Reproducibility and heterogeneity were examined with Bootstrap-based internal validation and Internal–External Cross-Validation. The American College of Surgeons National Surgical Quality Improvement Program’s (ACS-NSQIP) model was applied to the same cohort to establish a benchmark for the new model. Results From data on 633 eligible patients (175 complication events), the SErious complications After Laparotomy (SEAL) model was developed with 6 predictors (preoperative albumin, blood urea nitrogen, American Society of Anaesthesiology score, sepsis or septic shock, dependent functional status, and ascites). SEAL had good discriminative ability (optimism-corrected c-statistic: 0.80, 95% confidence interval [CI] 0.79–0.81), calibration (optimism-corrected calibration slope: 1.01, 95% CI 0.99–1.03) and overall fit (scaled Brier score: 25.1%, 95% CI 24.1–26.1%). SEAL compared favourably with ACS-NSQIP in all metrics, including DCA across multiple risk thresholds. Conclusion SEAL is a simple and promising model for individualized risk predictions of serious complications after EL. Future external validations should appraise SEAL’s transportability across diverse settings.

Funder

University of Crete

Publisher

Springer Science and Business Media LLC

Subject

Critical Care and Intensive Care Medicine,Orthopedics and Sports Medicine,Emergency Medicine,Surgery

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