Principales desafíos y oportunidades de los sistemas de Internet de las cosas médicas - IoMT
Principales desafíos y oportunidades de los sistemas de Internet de las cosas médicas - IoMT
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En la actualidad hay millones de dispositivos IoT que utilizan las personas para la atención médica. Un IoT con dispositivos médicos se le conoce también como Internet de las cosas médicas (Internet of Medical Things - IoMT). Existen diversas aplicaciones IoMT como (Gómez et al., 2016; Alsubaei, et al., 2019; Basatneh et al.,2018; Nayyar et al., 2019; Pustokhina et al., 2019) entre otras. Los escenarios donde se utiliza esta tecnología son: asistencia a signos vitales de pacientes; monitoreo de información sanitaria; monitoreo en la ingesta de alimentos; monitoreo de señalepatológicas y fisiológicas; asistencia al personal sanitario; autogestión, bienestar y prevención; seguimiento de enfermedades entre otras.
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