Low-cost biomedical monitoring systems: A systematic review
DOI:
https://doi.org/10.17981/bilo.2.2.2020.2Keywords:
E-health, low cost, ; biomedical monitoring, BiomedicineAbstract
Introduction: Telemedicine has brought great advances in diagnosis and treatment of human health, since it allows the provision of remote medical services. Health systems in many countries are limited by a shortage of medical personnel and the lack of automation in patient follow-up.
Objective: This review aims to analyze worldwide progress in the implementation and design of low-cost Biomedical Monitoring Systems (BMS). In addition, an analysis is made of the types of low-cost technologies or platforms most used in developing these systems.
Method: For the present review, the Cochrane literature review methodology was used, research questions were asked, search criteria were defined in the IEEE and Scopus databases. It’s defined the inclusion and exclusion criteria and the variables to be analyzed on the studies found.
Results: Some of the OpenSource platforms for BMS applications were found to be Libelium, Raspberry Pi, Arduino, among others. Also, some of the most frequent applications are heart rate monitoring.
Conclusions: These types of reviews are important for the development of new technologies and applications for the benefit of improving the quality of health. In addition, contribute to future related research, since they allow us to identify the current state of the subject, its achievements, difficulties and prospects.
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