Development and validation of an interpretable machine learning-based calculator for predicting 5-year weight trajectories after bariatric surgery: a multinational retrospective cohort SOPHIA study
Patrick Saux (Scool, CRIStAL), Pierre Bauvin, Violeta Raverdy, Julien, Teigny (Scool), H\'el\`ene Verkindt, Tomy Soumphonphakdy (Scool), Maxence, Debert (Scool), Anne Jacobs, Daan Jacobs, Valerie Monpellier, Phong Ching, Lee, Chin Hong Lim, Johanna C Andersson-Assarsson

TL;DR
This study developed and validated an interpretable machine learning model to predict 5-year weight loss trajectories after bariatric surgery, using multinational data and key preoperative variables, to aid personalized treatment planning.
Contribution
The paper introduces a novel, interpretable machine learning model for preoperative prediction of long-term weight loss after bariatric surgery, validated across multiple international cohorts.
Findings
Model achieved a median absolute deviation of 2.8 kg/m^2 in BMI predictions.
Seven key variables were identified as predictors, including age, weight, and diabetes status.
The model demonstrated good generalizability across diverse populations.
Abstract
Background Weight loss trajectories after bariatric surgery vary widely between individuals, and predicting weight loss before the operation remains challenging. We aimed to develop a model using machine learning to provide individual preoperative prediction of 5-year weight loss trajectories after surgery. Methods In this multinational retrospective observational study we enrolled adult participants (aged 18 years) from ten prospective cohorts (including ABOS [NCT01129297], BAREVAL [NCT02310178], the Swedish Obese Subjects study, and a large cohort from the Dutch Obesity Clinic [Nederlandse Obesitas Kliniek]) and two randomised trials (SleevePass [NCT00793143] and SM-BOSS [NCT00356213]) in Europe, the Americas, and Asia, with a 5 year followup after Roux-en-Y gastric bypass, sleeve gastrectomy, or gastric band. Patients with a previous history of bariatric surgery or large delays…
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