scholarly journals A Clinical-Genetic Score for Predicting Weight Loss after Bariatric Surgery: The OBEGEN Study

2021 ◽  
Vol 11 (10) ◽  
pp. 1040
Author(s):  
Andreea Ciudin ◽  
Enzamaría Fidilio ◽  
Liliana Gutiérrez-Carrasquilla ◽  
Assumpta Caixàs ◽  
Núria Vilarrasa ◽  
...  

Around 30% of the patients that undergo bariatric surgery (BS) do not reach an appropriate weight loss. The OBEGEN study aimed to assess the added value of genetic testing to clinical variables in predicting weight loss after BS. A multicenter, retrospective, longitudinal, and observational study including 416 patients who underwent BS was conducted (Clinical.Trials.gov- NCT02405949). 50 single nucleotide polymorphisms (SNPs) from 39 genes were examined. Receiver Operating Characteristic (ROC) curve analysis were used to calculate sensitivity and specificity. Satisfactory response to BS was defined as at nadir excess weight loss >50%. A good predictive model of response [area under ROC of 0.845 (95% CI 0.805–0.880), p < 0.001; sensitivity 90.1%, specificity 65.5%] was obtained by combining three clinical variables (age, type of surgery, presence diabetes) and nine SNPs located in ADIPOQ, MC4R, IL6, PPARG, INSIG2, CNR1, ELOVL6, PLIN1 and BDNF genes. This predictive model showed a significant higher area under ROC than the clinical score (p = 0.0186). The OBEGEN study shows the key role of combining clinical variables with genetic testing to increase the predictability of the weight loss response after BS. This finding will permit us to implement a personalized medicine which will be associated with a more cost-effective clinical practice.

2011 ◽  
Vol 96 (6) ◽  
pp. E953-E957 ◽  
Author(s):  
Mark A. Sarzynski ◽  
Peter Jacobson ◽  
Tuomo Rankinen ◽  
Björn Carlsson ◽  
Lars Sjöström ◽  
...  

Context and Objective: The magnitude of weight loss-induced high-density lipoprotein cholesterol (HDL-C) changes may depend on genetic factors. We examined the associations of eight candidate genes, identified by genome-wide association studies, with HDL-C at baseline and 10 yr after bariatric surgery in the Swedish Obese Subjects study. Methods: Single-nucleotide polymorphisms (SNP) (n = 60) in the following gene loci were genotyped: ABCA1, APOA5, CETP, GALNT2, LIPC, LIPG, LPL, and MMAB/MVK. Cross-sectional associations were tested before (n = 1771) and 2 yr (n = 1583) and 10 yr (n = 1196) after surgery. Changes in HDL-C were tested between baseline and yr 2 (n = 1518) and yr 2 and 10 (n = 1149). A multiple testing corrected threshold of P = 0.00125 was used for statistical significance. Results: In adjusted multivariate models, CETP SNP rs3764261 explained from 3.2–4.2% (P &lt; 10−14) of the variation in HDL-C at all three time points, whereas CETP SNP rs9939224 contributed an additional 0.6 and 0.9% at baseline and yr 2, respectively. LIPC SNP rs1077834 showed consistent associations across all time points (R2 = 0.4–1.1%; 3.8 × 10−6 &lt; P &lt; 3 × 10−3), whereas LPL SNP rs6993414 contributed approximately 0.5% (5 × 10−4 &lt; P &lt; 0.0012) at yr 2 and 10. In aggregate, four SNP in three genes explained 4.2, 6.8, and 5.6% of the HDL-C variance at baseline, yr 2, and yr 10, respectively. None of the SNP was significantly associated with weight loss-related changes in HDL-C. Conclusions: SNP in the CETP, LIPC, and LPL loci contribute significantly to plasma HDL-C levels in obese individuals, and the associations persist even after considerable weight loss due to bariatric surgery. However, they are not associated with surgery-induced changes in HDL-C levels.


2018 ◽  
Vol 28 (11) ◽  
pp. 3393-3399 ◽  
Author(s):  
Kevin Seyssel ◽  
Michel Suter ◽  
François Pattou ◽  
Robert Caiazzo ◽  
Helene Verkindt ◽  
...  

Blood ◽  
2015 ◽  
Vol 126 (23) ◽  
pp. 921-921
Author(s):  
Elena Buces ◽  
Carolina Martínez-Laperche ◽  
M Carmen Aguilera ◽  
Antoni Picornell ◽  
Rosa Lillo ◽  
...  

Abstract Introduction Graft versus host disease (GVHD) is the main cause of morbi-mortality after allogeneic stem cell transplantation (allo-SCT). Despite considerable advances in our understanding of the pathophysiology, nowdays anticipation of GVHD is an unresolved matter. Several single-nucleotide polymorphisms (SNPs) in cytokine genes have shown to be associated with donor-recipient alloreactivity and, ultimately, with SCT outcome. In the present study, we propose a novel predictive model based on both clinical and genetic (SNP) variables applying an innovative estimation linear regression model, the least absolute shrinkage and selection operator (LASSO), in a large cohort of HLA-identical sibling donor allo-SCT. Patients and Methods The study evaluated 25 SNPs in 12 genes (Table 1) in genomic DNA obtained from PB samples from 273 patients with available acute GVHD (aGVHD) data and 213 patients with chronic GVHD (cGVHD) data included in the DNA Bank of the Spanish Group for Hematopoietic Stem Cell Transplantation (GETH) and their HLA-identical sibling donors. Each SNP was assessed for different models of transmission (recessive, dominant, co-dominant and additive), producing 25 SNPs x 4 models = 100 variables. Clinical variables known to influence the development of GVHD were also considered (Table 1). Univariate regression analysis was performed using Cox regression (data not shown). Multivariant analysis was made with LASSO, an innovative estimation method for linear regression models which is able to select a set of optimal predictors from a large set of potential predictor variables and was considered as a variables selection method under the estimation of a Logit regression model. In this model, the strength of the penalty term is controlled by a smoothing parameter (λ), which is chosen by maximizing the area under ROC curve (AUC) and the correct classification rate (CCR). The statistical model was fitted (goodness-of-fit assessment) by randomly selecting the 85% of the data (the so-called "training set"), and the predictive ability was computed with the remaining 15% (the so-called "testing set"). In order to evaluate the performance and the prediction ability of each model, training and testing samples were randomly selected a total of 100 times. The distribution of the CCR and the AUC over the 100 samplings, were shown by means of box plots and statistical summary in the results data. Finally, for prediction purposes, we considered a cut-off value according to the proportion of Y=1 in the sample (0.28 for grades II-IV aGVHD, 0.11 for grades III-IV aGVHD and 0.30 for extensive cGVHD). Results The best model to predict aGVHD II-IV included 11 genetic variables and no clinical variables with a CCR for patients who developed (CCR1) aGVHD II-IV of 63.6% (Figure 2). The best model to predict aGVHD III-IV included 20 genetic and 7 clinical variables with a CCR1 for aGVHD III-IV of 100%. The best model to predict extensive chronic GVHD included 10 genetic and 3 clinical variables with a CCR1 for extensive cGVHD of 80%. On the other hand, predictive models with only clinical variables showed a poorer CCR1 for patients who developed aGVHD II-IV, aGVHD III-IV and extensive cGVHD (55.6%, 50% and 66.7% respectively; Figure 1). Based on the results from LASSO multivariate analyses, a risk score was calculated for grades II-IV and III-IV aGVHD as well as for cGVHD and extensive cGVHD. Patients were categorized into two groups: low risk (below the cut-off value) and high risk (above the cut-off). Such risk model was able to stratify patients who develop grades II-IV aGVHD (p<0.001), grades III-IV aGVHD (p<0.001) and extensive cGVHD (p<0.001) more consistently than models only considering clinical variables (Figure 2). Conclusions Identification of biomarkers useful for the estimation of the risk of GVHD constitutes an unmet need in the clinical management of GVHD. The novel predictive model proposed here, based on clinical and genetic factors, allows significantly improved anticipation of aGVHD III-IV (100% accuracy) and extensive cGVHD (80%) after HLA-identical sibling donor allo-SCT. This approach would allow a personalized risk-adapted clinical management of patients after transplantation. Disclosures No relevant conflicts of interest to declare.


2019 ◽  
Vol 8 (7) ◽  
pp. 964 ◽  
Author(s):  
Andreea Ciudin ◽  
Enzamaria Fidilio ◽  
Angel Ortiz ◽  
Sara Pich ◽  
Eduardo Salas ◽  
...  

Introduction: The aim of this pilot study was to assess genetic predisposition risk scores (GPS) in type 2 diabetic and non-diabetic patients in order to predict the better response to bariatric surgery (BS) in terms of either weight loss or diabetes remission. Research Design and Methods: A case-control study in which 96 females (47 with type 2 diabetes) underwent Roux-en-Y gastric by-pass were included. The DNA was extracted from saliva samples and SNPs were examined and grouped into 3 GPS. ROC curves were used to calculate sensitivity and specificity. Results: A highly sensitive and specific predictive model of response to BS was obtained by combining the GPS in non-diabetic subjects. This combination was different in diabetic subjects and highly predictive of diabetes remission. Additionally, the model was able to predict the weight regain and type 2 diabetes relapse after 5 years’ follow-up. Conclusions: Genetic testing is a simple, reliable and useful tool for implementing personalized medicine in type 2 diabetic patients requiring BS.


2018 ◽  
Vol 24 ◽  
pp. 49
Author(s):  
Keren Zhou ◽  
Kathy Wolski ◽  
Ali Aminian ◽  
Steven Malin ◽  
Philip Schauer ◽  
...  

2012 ◽  
Author(s):  
Leslie M. Schuh ◽  
David B. Creel ◽  
Joseph Stote ◽  
Katharine Hudson ◽  
Karen K. Saules ◽  
...  

2020 ◽  
Vol 105 (3) ◽  
pp. 866-876 ◽  
Author(s):  
Anita P Courcoulas ◽  
James W Gallagher ◽  
Rebecca H Neiberg ◽  
Emily B Eagleton ◽  
James P DeLany ◽  
...  

Abstract Context Questions remain about bariatric surgery for type 2 diabetes mellitus (T2DM) treatment. Objective Compare the remission of T2DM following surgical or nonsurgical treatments. Design, setting, and participants Randomized controlled trial at the University of Pittsburgh, in the United States. Five-year follow-up from February 2015 until June 2016. Interventions 61 participants with obesity and T2DM who were initially randomized to either bariatric surgical treatments (Roux-en-Y gastric bypass [RYGB] or laparoscopic adjustable gastric banding [LAGB]) or an intensive lifestyle weight loss intervention (LWLI) program for 1 year. Lower level lifestyle weight loss interventions (LLLIs) were then delivered for 4 years. Main Outcomes and Measures Diabetes remission assessed at 5 years. Results The mean age of the patients was 47 ± 6.6 years, 82% were women, and 21% African American. Mean hemoglobin A1c level 7.8% ± 1.9%, body mass index (BMI) 35.7 ± 3.1 kg/m2, and 26 participants (43%) had BMI &lt; 35 kg/m2. Partial or complete T2DM remission was achieved by 30% (n = 6) of RYGB, 19% (n = 4) of LAGB, and no LWLI participants (P = .0208). At 5 years those in the RYGB group had the largest percentage of individuals (56%) not requiring any medications for T2DM compared with those in the LAGB (45%) and LWLI (0%) groups (P = .0065). Mean reductions in percent body weight at 5 years was the greatest after RYGB 25.2% ± 2.1%, followed by LAGB 12.7% ± 2.0% and lifestyle treatment 5.1% ± 2.5% (all pairwise P &lt; .01). Conclusions Surgical treatments are more effective than lifestyle intervention alone for T2DM treatment.


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