Abstract

Electrocardiography (ECG) and electroencephalography (EEG) are powerful tools in medicine for the analysis of various diseases. The emergence of affordable ECG and EEG sensors and ubiquitous mobile devices provides an opportunity to make such analysis accessible to everyone. In this paper, we propose the implementation of a neural network-based method for the automatic identification of the relationship between the previously known conditions of older adults and the different features calculated from the various signals. The data were collected using a smartphone and low-cost ECG and EEG sensors during the performance of the timed-up and go test. Different patterns related to the features extracted, such as heart rate, heart rate variability, average QRS amplitude, average R-R interval, and average R-S interval from ECG data, and the frequency and variability from the EEG data were identified. A combination of these parameters allowed us to identify the presence of certain diseases accurately. The analysis revealed that the different institutions and ages were mainly identified. Still, the various diseases and groups of diseases were difficult to recognize, because the frequency of the different diseases was rare in the considered population. Therefore, the test should be performed with more people to achieve better results.

Highlights

  • The emergence of non-invasive methods for analyzing and detecting diseases is one of the most significant prospects in medicine

  • Mobile devices can be connected to different devices to head the creation of sophisticated hand-held systems for the monitoring of health states [9,10,11]

  • The method reported an accuracy of 95%, precision of 96%, recall value of 95%, and F1 score of 95%

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Summary

Introduction

The emergence of non-invasive methods for analyzing and detecting diseases is one of the most significant prospects in medicine. This research is included in the development of systems to support ambient assisted living technologies [3,4,5,6]. Cutting-edge approaches in the healthcare area have helped in solving various computer vision-based tasks by analyzing different features from various biosignals, including the facial features [7,8]. Mobile devices can be connected to different devices to head the creation of sophisticated hand-held systems for the monitoring of health states [9,10,11]. They are handy because they are portable and small, Computers 2020, 9, 55; doi:10.3390/computers9030055 www.mdpi.com/journal/computers

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