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Published in: Obesity Surgery 7/2015

01-07-2015 | Original Contributions

Type 2 Diabetes Remission After Gastric Bypass: What Is the Best Prediction Tool for Clinicians?

Authors: Aurélie Cotillard, Christine Poitou, Guillemette Duchâteau-Nguyen, Judith Aron-Wisnewsky, Jean-Luc Bouillot, Thomas Schindler, Karine Clément

Published in: Obesity Surgery | Issue 7/2015

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Abstract

Background

Statistical models and scores have been recently suggested to predict remission of type 2 diabetes after bypass surgery, but their relevance in routine clinical practice still needs evaluation. Our objective was to assess these methods on a French cohort and to compare them with other easy-to-use models.

Methods

We investigated a cohort of 84 diabetic obese subjects who underwent Roux-en-Y gastric bypass surgery. Diabetes remission 1 year after surgery was defined based on the American Diabetes Association criteria. We tested six methods from the literature and four other models to predict remission of diabetes after bypass surgery using pre-operative bioclinical parameters. Predictive methods for diabetes remission were assessed using cross-validation error rates when appropriate.

Results

Sixty percent of the subjects had diabetes remission. Models from the literature had high error rates in our cohort (from 22.6 to 40.5 %), while published simple scoring systems behaved much better (15.9 and 16.7 %). Using other apprehensible models learned on our cohort did not improve the prediction error (from 17.2 to 19.9 %).

Conclusions

We showed that the scoring system DiaRem is easy to use and provides the best prediction error (15.9 %) compared to other methods. We additionally propose a DiaRem score threshold of ≤6 for likely remission of a subject 1 year after surgery, which may be considered in clinical decision-making.
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Metadata
Title
Type 2 Diabetes Remission After Gastric Bypass: What Is the Best Prediction Tool for Clinicians?
Authors
Aurélie Cotillard
Christine Poitou
Guillemette Duchâteau-Nguyen
Judith Aron-Wisnewsky
Jean-Luc Bouillot
Thomas Schindler
Karine Clément
Publication date
01-07-2015
Publisher
Springer US
Published in
Obesity Surgery / Issue 7/2015
Print ISSN: 0960-8923
Electronic ISSN: 1708-0428
DOI
https://doi.org/10.1007/s11695-014-1511-8

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