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Predicting the glycemic response to gastric bypass surgery in patients with type 2 diabetes

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posted on 2024-07-26, 14:21 authored by John B. Dixon, Lee Ming Chuang, Keong Chong, Shu Chun Chen, Gavin LambertGavin Lambert, Nora E. Straznicky, Elisabeth LambertElisabeth Lambert, Wei Jei Lee
OBJECTIVE To find clinically meaningful preoperative predictors of diabetes remission and conversely inadequate glycemic control after gastric bypass surgery. Predicting the improvement in glycemic control in those with type 2 diabetes after bariatric surgery may help in patient selection. RESEARCH DESIGN AND METHODS Preoperative details of 154 ethnic Chinese subjects with type 2 diabetes were examined for their influence on glycemic outcomes at 1 year after gastric bypass. Remission was defined as HbA(1c) ≤6%. Analysis involved binary logistic regression to identify predictors and provide regression equations and receiver operating characteristic curves to determine clinically useful cutoff values.RESULTSRemission was achieved in 107 subjects (69.5%) at 12 months. Diabetes duration <4 years, body mass >35 kg/m(2), and fasting C-peptide concentration >2.9 ng/mL provided three independent preoperative predictors and three clinically useful cutoffs. The regression equation classification plot derived from continuous data correctly assigned 84% of participants. A combination of two or three of these predictors allows a sensitivity of 82% and specificity of 87% for remission. Duration of diabetes (with different cutoff points) and C-peptide also predicted those cases in which HbA(1c) ≤7% was not attained. Percentage weight loss after surgery was also predictive of remission and of less satisfactory outcomes. CONCLUSIONS The glycemic response to gastric bypass is related to BMI, duration of diabetes, fasting C-peptide (influenced by insulin resistance and residual β-cell function), and weight loss. These data support and refine previous findings in non-Asian populations. Specific ethnic and procedural regression equations and cutoff points may vary.

Funding

American Diabetes Association

National Health and Medical Research Council

Baker IDI Heart and Diabetes Institute

AbbVie (United States)

Government of Victoria

Medtronic (United States)

Abbott (United States)

Servier (France)

History

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PDF (Published version)

ISSN

0149-5992

Journal title

Diabetes Care

Volume

36

Issue

1

Pagination

6 pp

Publisher

American Diabetes Association

Copyright statement

Copyright © 2013 by the American Diabetes Association. Readers may use this article as long as the work is properly cited, the use is educational and not for profit, and the work is not altered. See http://creativecommons.org/licenses/by-nc-nd/3.0/ for details.

Language

eng

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