ABSTRACT
Type 1 Diabetes Mellitus (DM1) is a chronic disease characterized by fast changes in blood glucose (BG) due to a lack of insulin production. This forces the patient to check his BG several times per day in order to infer a trend and predict future values, thus making a decision about the insulin dosage. However, novel biosensors and gadgets offer, along with recent advances in information and communication technologies (ICT), a new perspective in DM1 management. In this work, an analysis of such perspective is presented, thoroughly describing all the elements involved as well as the challenges to be overcome in forthcoming DM1 smart management systems.
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Index Terms
- Towards a New Diabetes Mellitus Management by Means of Novel Biosensors and Information and Communication Technologies
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