Biofeedback: e-health prediction based on evolving fuzzy neural network and wearable technologies

Author:

Malcangi MarioORCID,Nano Giovanni

Abstract

AbstractRecent advances in wearable microelectronics and new neural networks paradigms, capable to evolve and learn online such as the Evolving Fuzzy Neural Network (EFuNN), enable the deploy of biofeedback-based applications. The missed physiologic response could be recovered by measuring uninvasively the vital signs such as the heart rate, the bio impedance, the body temperature, the motion activity, the blood pressure, the blood oxygenation and the respiration rate. Then, the prediction could be performed applying the evolving ANN paradigms. The simulation of a wearable biofeedback system has been executed applying the Evolving Fuzzy Neural Network (EFuNN) paradigm for prediction. An highly integrated wearable microelectronic device for uninvasively vital signs measurement has been deployed. Simulation results demonstrate that biofeedback control model could be an effective reference design that enables short and long-term e-health prediction. The biofeedback framework was been then defined.

Funder

Università degli Studi di Milano

Publisher

Springer Science and Business Media LLC

Subject

Control and Optimization,Computer Science Applications,Modelling and Simulation,Control and Systems Engineering

Reference22 articles.

1. Bjarne BM, Gutvik CR, Lavie CJ, Nauman J, Wisloff U (2016) Personalized activity intelligence (PAI) for prevention of cardiovascular disease and promotion of physical activity. Am J Med 130(3):328–336

2. Bulaj G (2014) Biofeedback-coupled digital health technologies for the treatment of chronic diseases, and opportunities for drug-device translational research. In: 3th international conference on translational medicine, Las Vegas NV

3. Charlton PH, Birrenkott DA, Bonnici T, Pimentel MAF, Johnson AEW (2017) Breathing rate estimation from the electrocardiogram and photoplethysmogram: a review. IEEE Rev Biomed Eng 11:2–20

4. Dai K, Chan SHH (2013) Translational medicine-what, why and how: an international perspective. Karger

5. https://kedri.aut.ac.nz/areas-of-expertise/data-mining-and-decision-support/neucom

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