Development and validation of a scoring system for pre-surgical and early post-surgical prediction of bariatric surgery unsuccess at 2 years.
Fabio BiolettoMarianna PellegriniChiara D'EusebioStefano BoschettiFarnaz RahimiAntonella De FrancescoSimone ArolfoMauro ToppinoMario MorinoEzio GhigoSimona BoPublished in: Scientific reports (2021)
Bariatric surgery (BS) is an effective treatment for morbid obesity. However, a simple and easy-to-use tool for the prediction of BS unsuccess is still lacking. Baseline and follow-up data from 300 consecutive patients who underwent BS were retrospectively collected. Supervised regression and machine-learning techniques were used for model development, in which BS unsuccess at 2 years was defined as a percentage of excess-weight-loss (%EWL) < 50%. Model performances were also assessed considering the percentage of total-weight-loss (%TWL) as the reference parameter. Two scoring systems (NAG-score and ENAG-score) were developed. NAG-score, comprising only pre-surgical data, was structured on a 4.5-point-scale (2 points for neck circumference ≥ 44 cm, 1.5 for age ≥ 50 years, and 1 for fasting glucose ≥ 118 mg/dL). ENAG-score, including also early post-operative data, was structured on a 7-point-scale (3 points for %EWL at 6 months ≤ 45%, 1.5 for neck circumference ≥ 44 cm, 1 for age ≥ 50 years, and 1.5 for fasting glucose ≥ 118 mg/dL). A 3-class-clustering was proposed for clinical application. In conclusion, our study proposed two scoring systems for pre-surgical and early post-surgical prediction of 2-year BS weight-loss, which may be useful to guide the pre-operative assessment, the appropriate balance of patients' expectations, and the post-operative care.
Keyphrases
- weight loss
- bariatric surgery
- machine learning
- obese patients
- roux en y gastric bypass
- end stage renal disease
- gastric bypass
- newly diagnosed
- blood glucose
- body mass index
- healthcare
- prognostic factors
- metabolic syndrome
- big data
- artificial intelligence
- peritoneal dialysis
- glycemic control
- palliative care
- weight gain
- adipose tissue
- chronic pain
- single cell
- deep learning
- body weight
- quality improvement
- high fat diet induced
- replacement therapy
- patient reported