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Featured researches published by Belén Pons.


Diabetes Technology & Therapeutics | 2008

Real-Time Continuous Glucose Monitoring Together with Telemedical Assistance Improves Glycemic Control and Glucose Stability in Pump-Treated Patients

Mercedes Rigla; M. Elena Hernando; Enrique J. Gómez; Eulalia Brugués; Gema García-Sáez; Ismael Capel; Belén Pons; Alberto de Leiva

BACKGROUND Real-time continuous glucose monitoring (CGM) has recently been incorporated into routine diabetes management because of the potential advantages it offers for glycemic control. The aim of our study was to evaluate the impact of the use of real-time CGM together with a telemedicine system in hemoglobin A1c and glucose variability in patients with type 1 diabetes treated with insulin pumps. METHODS Ten patients (five women, 41.2 [range, 21-62] years old, duration of diabetes 14.9 [range, 3-52] years) were included in this randomized crossover study. Patients used the DIABTel telemedicine system throughout the study, and real-time CGM was used for 3 days every week during the intervention phase. At the end of the control phase, a blind 3-day CGM was performed. Glucose variability was evaluated using the Glucose Risk Index (GRI), a comparative analysis of continuous glucose values over two consecutive hours. RESULTS Hemoglobin A1c decreased significantly (8.1 +/- 1.1% vs. 7.3 +/- 0.8%; P = 0.007) after the intervention phase, while no changes were observed during the control phase. The mean number of daily capillary glucose readings was higher during the intervention phase (4.7 +/- 1.1 vs. 3.8 +/- 1.0; P < 0.01), because of an increase in random analyses (1.22 +/- 0.3 vs. 0.58 +/- 0.1; P < 0.01), and there was also a significant increase in the mean number of bolus doses per day (5.23 +/- 1.1 vs. 4.4 +/- 0.8; P < 0.05). The GRI was higher during the control phase than during the experimental phase (9.6 vs. 6.25; P < 0.05). CONCLUSIONS Real-time CGM in conjunction with the DIABTel system improves glycemic control and glucose stability in pump-treated patients with type 1 diabetes.


Journal of diabetes science and technology | 2014

Patient-oriented Computerized Clinical Guidelines for Mobile Decision Support in Gestational Diabetes

Gema García-Sáez; Mercedes Rigla; Iñaki Martínez-Sarriegui; Erez Shalom; Mor Peleg; Tom H. F. Broens; Belén Pons; Estefanía Caballero-Ruíz; Enrique J. Gómez; M. Elena Hernando

Background: The risks associated with gestational diabetes (GD) can be reduced with an active treatment able to improve glycemic control. Advances in mobile health can provide new patient-centric models for GD to create personalized health care services, increase patient independence and improve patients’ self-management capabilities, and potentially improve their treatment compliance. In these models, decision-support functions play an essential role. Methods: The telemedicine system MobiGuide provides personalized medical decision support for GD patients that is based on computerized clinical guidelines and adapted to a mobile environment. The patient’s access to the system is supported by a smartphone-based application that enhances the efficiency and ease of use of the system. We formalized the GD guideline into a computer-interpretable guideline (CIG). Results: We identified several workflows that provide decision-support functionalities to patients and 4 types of personalized advice to be delivered through a mobile application at home, which is a preliminary step to providing decision-support tools in a telemedicine system: (1) therapy, to help patients to comply with medical prescriptions; (2) monitoring, to help patients to comply with monitoring instructions; (3) clinical assessment, to inform patients about their health conditions; and (4) upcoming events, to deal with patients’ personal context or special events. Conclusions: The whole process to specify patient-oriented decision support functionalities ensures that it is based on the knowledge contained in the GD clinical guideline and thus follows evidence-based recommendations but at the same time is patient-oriented, which could enhance clinical outcomes and patients’ acceptance of the whole system.


Journal of diabetes science and technology | 2009

Automatic Data Processing to Achieve a Safe Telemedical Artificial Pancreas

M. Elena Hernando; Gema García-Sáez; Iñaki Martínez-Sarriegui; Agustín Rodríguez-Herrero; Carmen Pérez-Gandía; Mercedes Rigla; Alberto de Leiva; Ismael Capel; Belén Pons; Enrique J. Gómez

Background: The use of telemedicine for diabetes care has evolved over time, proving that it contributes to patient self-monitoring, improves glycemic control, and provides analysis tools for decision support. The timely development of a safe and robust ambulatory artificial pancreas should rely on a telemedicine architecture complemented with automatic data analysis tools able to manage all the possible high-risk situations and to guarantee the patients safety. Methods: The Intelligent Control Assistant system (INCA) telemedical artificial pancreas architecture is based on a mobile personal assistant integrated into a telemedicine system. The INCA supports four control strategies and implements an automatic data processing system for risk management (ADP-RM) providing short-term and medium-term risk analyses. The system validation comprises data from 10 type 1 pump-treated diabetic patients who participated in two randomized crossover studies, and it also includes in silico simulation and retrospective data analysis. Results: The ADP-RM short-term risk analysis prevents hypoglycemic events by interrupting insulin infusion. The pump interruption has been implemented in silico and tested for a closed-loop simulation over 30 hours. For medium-term risk management, analysis of capillary blood glucose notified the physician with a total of 62 alarms during a clinical experiment (56% for hyperglycemic events). The ADP-RM system is able to filter anomalous continuous glucose records and to detect abnormal administration of insulin doses with the pump. Conclusions: Automatic data analysis procedures have been tested as an essential tool to achieve a safe ambulatory telemedical artificial pancreas, showing their ability to manage short-term and medium-term risk situations.


Journal of diabetes science and technology | 2018

Artificial Intelligence Methodologies and Their Application to Diabetes

Mercedes Rigla; Gema García-Sáez; Belén Pons; Maria Elena Hernando

In the past decade diabetes management has been transformed by the addition of continuous glucose monitoring and insulin pump data. More recently, a wide variety of functions and physiologic variables, such as heart rate, hours of sleep, number of steps walked and movement, have been available through wristbands or watches. New data, hydration, geolocation, and barometric pressure, among others, will be incorporated in the future. All these parameters, when analyzed, can be helpful for patients and doctors’ decision support. Similar new scenarios have appeared in most medical fields, in such a way that in recent years, there has been an increased interest in the development and application of the methods of artificial intelligence (AI) to decision support and knowledge acquisition. Multidisciplinary research teams integrated by computer engineers and doctors are more and more frequent, mirroring the need of cooperation in this new topic. AI, as a science, can be defined as the ability to make computers do things that would require intelligence if done by humans. Increasingly, diabetes-related journals have been incorporating publications focused on AI tools applied to diabetes. In summary, diabetes management scenarios have suffered a deep transformation that forces diabetologists to incorporate skills from new areas. This recently needed knowledge includes AI tools, which have become part of the diabetes health care. The aim of this article is to explain in an easy and plane way the most used AI methodologies to promote the implication of health care providers—doctors and nurses—in this field.


Journal of diabetes science and technology | 2018

Gestational diabetes management using smart mobile telemedicine

Mercedes Rigla; Iñaki Martínez-Sarriegui; Gema García-Sáez; Belén Pons; Maria Elena Hernando

Gestational diabetes (GDM) burden has been increasing progressively over the past years. Knowing that intrauterine exposure to maternal diabetes confers high risk for macrosomia as well as for future type 2 diabetes and obesity of the offspring, health care organizations try to provide effective control in spite of the limited resources. Artificial-intelligence-augmented telemedicine has been proposed as a helpful tool to facilitate an efficient widespread medical assistance to GDM. The aim of the study we present was to test the feasibility and acceptance of a mobile decision-support system for GDM, developed in the seventh framework program MobiGuide Project, which includes computer-interpretable clinical practice guidelines, access to data from the electronic health record as well as from glucose, blood pressure, and activity sensors. The results of this pilot study with 20 patients showed that the system is feasible. Compliance of patients with blood glucose monitoring was higher than that observed in a historical group of 247 patients, similar in clinical characteristics, who had been followed up for the 3 years prior to the pilot study. A questionnaire on the use of the telemedicine system showed a high degree of acceptance.


International Journal of Medical Informatics | 2017

Assessment of a personalized and distributed patient guidance system

Mor Peleg; Yuval Shahar; Silvana Quaglini; Tom H. F. Broens; Roxana Ioana Budasu; Nick Lik San Fung; Adi Fux; Gema García-Sáez; Ayelet Goldstein; Arturo González-Ferrer; Hermie J. Hermens; M. Elena Hernando; Valerie M. Jones; Guy Klebanov; Denis Klimov; Daniël F Knoppel; Nekane Larburu; Carlos Marcos; Iñaki Martínez-Sarriegui; Carlo Napolitano; Àngels Pallàs; Angel Palomares; Enea Parimbelli; Belén Pons; Mercedes Rigla; Lucia Sacchi; Erez Shalom; Pnina Soffer; Boris W. van Schooten


Expert Systems With Applications | 2016

Automatic classification of glycaemia measurements to enhance data interpretation in an expert system for gestational diabetes

Estefanía Caballero-Ruíz; Gema García-Sáez; Mercedes Rigla; María Villaplana; Belén Pons; M. Elena Hernando


American Diabetes Association's 75th Scientific Sessions | American Diabetes Association's 75th Scientific Sessions | 05/06/2015 - 09/06/2015 | Boston, EE.UU | 2015

Successful replacement of weekly face-to-face visits by unsupervised smart home telecare in diet-treated gestational diabetes (GD)

Mercedes Rigla Cros; Gema García Sáez; María Villaplana; Estefanía Caballero Ruiz; Belén Pons; Anna Méndez; Montserrat Aguilar; Enrique J. Gómez Aguilera; María Elena Hernando Pérez


18th European Congress of Endocrinology | 2016

Relationship between the severity of obstructive sleep apnoea (OSA), low-grade-inflammation (LGI) and Heme Oxygenase 1 (HO1) in morbidly obese (MO) patients, before and after bariatric surgery (BS)

Raquel Tirado; Masdeu Maria Jose; Laura Vigil; Pere Rebassa; Alexis Luna; Sandra Montmany; María Villaplana; Belén Pons; Mercedes Rigla; Assumpta Caixàs


18th European Congress of Endocrinology | 2016

Decrease in arterial stiffness (AS) in morbidly obese (MO) patients after bariatric surgery (BS): Relationship with obstructive sleep apnoea (OSA), anthropometric parameters and low-grade inflammation (LGI)

Assumpta Caixàs; Raquel Tirado; Laura Vigil; Masdeu Maria Jose; María Villaplana; Alexis Luna; Pere Rebassa; Marta Hurtado; Rocío Pareja; Belén Pons; Mercedes Rigla

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Mercedes Rigla

Autonomous University of Barcelona

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María Villaplana

Autonomous University of Barcelona

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Enrique J. Gómez

Technical University of Madrid

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Alberto de Leiva

Autonomous University of Barcelona

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Alexis Luna

Autonomous University of Barcelona

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