Literature DB >> 31571034

Prediction of thirty-day morbidity and mortality after laparoscopic sleeve gastrectomy: data from an artificial neural network.

Eric S Wise1, Stuart K Amateau2, Sayeed Ikramuddin3, Daniel B Leslie3.   

Abstract

BACKGROUND: Multiple patient factors may convey increased risk of 30-day morbidity and mortality after laparoscopic vertical sleeve gastrectomy (LVSG). Assessing the likelihood of short-term morbidity is useful for both the bariatric surgeon and patient. Artificial neural networks (ANN) are computational algorithms that use pattern recognition to predict outcomes, providing a potentially more accurate and dynamic model relative to traditional multiple regression. Using a comprehensive national database, this study aims to use an ANN to optimize the prediction of the composite endpoint of 30-day readmission, reoperation, reintervention, or mortality, after LVSG.
METHODS: A cohort of 101,721 LVSG patients was considered for analysis from the 2016 Metabolic and Bariatric Surgery Accreditation and Quality Improvement Program national dataset. Select patient factors were chosen a priori as simple, pertinent and easily obtainable, and their association with the 30-day endpoint was assessed. Those factors with a significant association on both bivariate and multivariate nominal logistic regression analysis were incorporated into a back-propagation ANN with three nodes each assigned a training value of 0.333, with k-fold internal validation. Logistic regression and ANN models were compared using area under receiver-operating characteristic curves (AUROC).
RESULTS: Upon bivariate analysis, factors associated with 30-day complications were older age (P = 0.03), non-white race, higher initial body mass index, severe hypertension, diabetes mellitus, non-independent functional status, and previous foregut/bariatric surgery (all P < 0.001). These factors remained significant upon nominal logistic regression analysis (n = 100,791, P < 0.001, r2= 0.008, AUROC = 0.572). Upon ANN analysis, the training set (80% of patients) was more accurate than logistic regression (n = 80,633, r2= 0.011, AUROC = 0.581), and it was confirmed by the validation set (n = 20,158, r2= 0.012, AUROC = 0.585).
CONCLUSIONS: This study identifies a panel of simple and easily obtainable preoperative patient factors that may portend increased morbidity after LSG. Using an ANN model, prediction of these events can be optimized relative to standard logistic regression modeling.

Entities:  

Keywords:  Artificial neural networks; Bariatric surgery; Clinical outcomes; MBSAQIP; Sleeve gastrectomy

Mesh:

Year:  2019        PMID: 31571034     DOI: 10.1007/s00464-019-07130-0

Source DB:  PubMed          Journal:  Surg Endosc        ISSN: 0930-2794            Impact factor:   4.584


  4 in total

Review 1.  A Scoping Review of Artificial Intelligence and Machine Learning in Bariatric and Metabolic Surgery: Current Status and Future Perspectives.

Authors:  Athanasios G Pantelis; Georgios K Stravodimos; Dimitris P Lapatsanis
Journal:  Obes Surg       Date:  2021-07-15       Impact factor: 4.129

Review 2.  Artificial Intelligence in Bariatric Surgery: Current Status and Future Perspectives.

Authors:  Mustafa Bektaş; Beata M M Reiber; Jaime Costa Pereira; George L Burchell; Donald L van der Peet
Journal:  Obes Surg       Date:  2022-06-17       Impact factor: 3.479

Review 3.  Current Applications of Artificial Intelligence in Bariatric Surgery.

Authors:  Valentina Bellini; Marina Valente; Melania Turetti; Paolo Del Rio; Francesco Saturno; Massimo Maffezzoni; Elena Bignami
Journal:  Obes Surg       Date:  2022-05-26       Impact factor: 3.479

4.  Type 2 Diabetes and HbA1c Predict All-Cause Post-Metabolic and Bariatric Surgery Hospital Readmission.

Authors:  Elisa Morales-Marroquin; Luyu Xie; Luigi Meneghini; Nestor de la Cruz-Muñoz; Jaime P Almandoz; Sunil M Mathew; Benjamin E Schneider; Sarah E Messiah
Journal:  Obesity (Silver Spring)       Date:  2020-11-20       Impact factor: 9.298

  4 in total

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