1. Influence of glucometric 'dynamical' variables on Duodenal-Jejunal Bypass Liner (DJBL) anthropometric and metabolic outcomes
- Author
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David Cuesta-Frau, Martin Haluzik, Luis Vigil, Borja Vargas, Marek Benes, Milos Mraz, Terezie Pelikanova, Manuel Varela, Daniel Novák, Ana Colas, and Vaclav Burda
- Subjects
Adult ,Blood Glucose ,Male ,medicine.medical_specialty ,Duodenum ,Endocrinology, Diabetes and Metabolism ,Gastric Bypass ,030209 endocrinology & metabolism ,030204 cardiovascular system & hematology ,Duodenal-jejunal bypass liner ,03 medical and health sciences ,0302 clinical medicine ,Endocrinology ,Biomedical data ,Diabetes mellitus ,Internal medicine ,Weight Loss ,Type 2 diabetes mellitus ,Internal Medicine ,medicine ,Humans ,Continuous glucose monitoring ,Aged ,Glycated Hemoglobin ,Metabolic Syndrome ,Duodenal-jejunal bypass liner (DJBL) ,business.industry ,Metabolic surgery ,Type 2 Diabetes Mellitus ,Diabesity ,Anthropometry ,Middle Aged ,medicine.disease ,Prognosis ,Obesity, Morbid ,ARQUITECTURA Y TECNOLOGIA DE COMPUTADORES ,Jejunum ,Diabetes Mellitus, Type 2 ,Informatics ,Female ,Detrended fluctuation analysis (DFA) ,business ,Biomarkers ,Follow-Up Studies - Abstract
[EN] Background The endoscopically implanted duodenal-jejunal bypass liner (DJBL) is an attractive alternative to bariatric surgery for obese diabetic patients. This article aims to study dynamical aspects of the glycaemic profile that may influence DJBL effects. Methods Thirty patients underwent DJBL implantation and were followed for 10 months. Continuous glucose monitoring (CGM) was performed before implantation and at month 10. Dynamical variables from CGM were measured: coefficient of variation of glycaemia, mean amplitude of glycaemic excursions (MAGE), detrended fluctuation analysis (DFA), % of time with glycaemia under 6.1 mmol/L (TU6.1), area over 7.8 mmol/L (AO7.8) and time in range. We analysed the correlation between changes in both anthropometric (body mass index, BMI and waist circumference) and metabolic (fasting blood glucose, FBG and HbA1c) variables and dynamical CGM-derived metrics and searched for variables in the basal CGM that could predict successful outcomes. Results There was a poor correlation between anthropometric and metabolic outcomes. There was a strong correlation between anthropometric changes and changes in glycaemic tonic control ( increment BMI- increment TU6.1: rho = - 0.67, P < .01) and between metabolic outcomes and glycaemic phasic control ( increment FBG- increment AO7.8: r = .60, P < .01). Basal AO7.8 was a powerful predictor of successful metabolic outcome (0.85 in patients with AO7.8 above the median vs 0.31 in patients with AO7.8 below the median: Chi-squared = 5.67, P = .02). Conclusions In our population, anthropometric outcomes of DJBL correlate with improvement in tonic control of glycaemia, while metabolic outcomes correlate preferentially with improvement in phasic control. Assessment of basal phasic control may help in candidate profiling for DJBL implantation., Research Center for Informatics, Grant/Award Number: CZ.02.1.01/0.0/0.0/16_019/0000765; Biomedical data acquisition, processing and visualization, Grant/Award Number: SGS19/171/OHK3/3T/13; MH CZ - DRO ("IKEM, IN 00023001"); RVO VFN64165
- Published
- 2020
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