Machine Learning Model in Obesity to Predict Weight Loss One Year after Bariatric Surgery: A Pilot Study.
Enrique NadalEsther BenitoAna María Ródenas-NavarroAna PalancaSergio Martinez-HervasMiguel CiveraJoaquín OrtegaBlanca AlabadíLaura PiquerasJuan José RódenasJosé T RealPublished in: Biomedicines (2024)
Roux-en-Y gastric bypass (RYGB) is a treatment for severe obesity. However, many patients have insufficient total weight loss (TWL) after RYGB. Although multiple factors have been involved, their influence is incompletely known. The aim of this exploratory study was to evaluate the feasibility and reliability of the use of machine learning (ML) techniques to estimate the success in weight loss after RYGP, based on clinical, anthropometric and biochemical data, in order to identify morbidly obese patients with poor weight responses. We retrospectively analyzed 118 patients, who underwent RYGB at the Hospital Clínico Universitario of Valencia (Spain) between 2013 and 2017. We applied a ML approach using local linear embedding (LLE) as a tool for the evaluation and classification of the main parameters in conjunction with evolutionary algorithms for the optimization and adjustment of the parameter model. The variables associated with one-year postoperative %TWL were obstructive sleep apnea, osteoarthritis, insulin treatment, preoperative weight, insulin resistance index, apolipoprotein A, uric acid, complement component 3, and vitamin B12. The model correctly classified 71.4% of subjects with TWL < 30% although 36.4% with TWL ≥ 30% were incorrectly classified as "unsuccessful procedures". The ML-model processed moderate discriminatory precision in the validation set. Thus, in severe obesity, ML-models can be useful to assist in the selection of patients before bariatric surgery.
Keyphrases
- weight loss
- roux en y gastric bypass
- bariatric surgery
- machine learning
- gastric bypass
- obese patients
- end stage renal disease
- insulin resistance
- metabolic syndrome
- type diabetes
- obstructive sleep apnea
- chronic kidney disease
- newly diagnosed
- ejection fraction
- glycemic control
- uric acid
- peritoneal dialysis
- weight gain
- healthcare
- body composition
- deep learning
- patients undergoing
- body mass index
- dna methylation
- artificial intelligence
- early onset
- prognostic factors
- genome wide
- big data
- rheumatoid arthritis
- patient reported outcomes