PISIoT: A Machine Learning and IoT-Based Smart Health Platform for Overweight and Obesity Control
Fecha
2019-07-28Autor
Machorro-Cano, Isaac
Alor-Hernández, Giner
Paredes Valverde, Mario Andres
Ramos-Deonati, Uriel
Sánchez-Cervantes, José Luis
Rodríguez-Mazahua, Lisbeth
Metadatos
Mostrar el registro completo del ítemResumen
Overweight and obesity are affecting productivity and quality of life worldwide. The Internet of Things (IoT) makes it possible to interconnect, detect, identify, and process data between objects or services to fulfill a common objective. The main advantages of IoT in healthcare are the monitoring, analysis, diagnosis, and control of conditions such as overweight and obesity and the generation of recommendations to prevent them. However, the objects used in the IoT have limited resources, so it has become necessary to consider other alternatives to analyze the data generated from monitoring, analysis, diagnosis, control, and the generation of recommendations, such as machine learning. This work presents PISIoT: a machine learning and IoT-based smart health platform for the prevention, detection, treatment, and control of overweight and obesity, and other associated conditions or health problems. Weka API and the J48 machine learning algorithm were used to identify critical variables and classify patients, while Apache Mahout and RuleML were used to generate medical recommendations. Finally, to validate the PISIoT platform, we present a case study on the prevention of myocardial infarction in elderly patients with obesity by monitoring biomedical variables.
Temas
biomedical variablesInternet of Things
machine learning
overweight and obesity
Tipo
ArticleColecciones
- Artículos (MSC) [39]