Towards an Accurate Faults Detection Approach in Internet of Medical Things Using Advanced Machine Learning Techniques.
Mohamed BahacheAbdou El Karim TahariJorge Herrera-TapiaNasreddine LagraaCarlos Tavares CalafateChaker Abdelaziz KerrachePublished in: Sensors (Basel, Switzerland) (2022)
Remotely monitoring people's healthcare is still among the most important research topics for researchers from both industry and academia. In addition, with the Wireless Body Networks (WBANs) emergence, it becomes possible to supervise patients through an implanted set of body sensors that can communicate through wireless interfaces. These body sensors are characterized by their tiny sizes, and limited resources (power, computing, and communication capabilities), which makes these devices prone to have faults and sensible to be damaged. Thus, it is necessary to establish an efficient system to detect any fault or anomalies when receiving sensed data. In this paper, we propose a novel, optimized, and hybrid solution between machine learning and statistical techniques, for detecting faults in WBANs that do not affect the devices' resources and functionality. Experimental results illustrate that our approach can detect unwanted measurement faults with a high detection accuracy ratio that exceeds the 99.62%, and a low mean absolute error of 0.61%, clearly outperforming the existing state-of-art solutions.
Keyphrases
- machine learning
- healthcare
- low cost
- end stage renal disease
- big data
- ejection fraction
- chronic kidney disease
- loop mediated isothermal amplification
- artificial intelligence
- newly diagnosed
- label free
- real time pcr
- peritoneal dialysis
- high resolution
- electronic health record
- hiv infected
- prognostic factors
- patient reported outcomes