Abstract

BackgroundThe accelerated growth of elderly population is creating a heavy burden to the healthcare system in many developed countries and regions. Electrocardiogram (ECG) analysis has been recognized as effective approach to cardiovascular disease diagnosis and widely utilized for monitoring personalized health conditions.MethodIn this study, we present a novel approach to forecasting one-day-forward wellness conditions for community-dwelling elderly by analyzing single lead short ECG signals acquired from a station-based monitoring device. More specifically, exponentially weighted moving-average (EWMA) method is employed to eliminate the high-frequency noise from original signals at first. Then, Fisher-Yates normalization approach is used to adjust the self-evaluated wellness score distribution since the scores among different individuals are skewed. Finally, both deep learning-based and traditional machine learning-based methods are utilized for building wellness forecasting models.ResultsThe experiment results show that the deep learning-based methods achieve the best fitted forecasting performance, where the forecasting accuracy and F value are 93.21% and 91.98% respectively. The deep learning-based methods, with the merit of non-hand-crafted engineering, have superior wellness forecasting performance towards the competitive traditional machine learning-based methods.ConclusionThe developed approach in this paper is effective in wellness forecasting for community-dwelling elderly, which can provide insights in terms of implementing a cost-effective approach to informing healthcare provider about health conditions of elderly in advance and taking timely interventions to reduce the risk of malignant events.

Highlights

  • The accelerated growth of elderly population is creating a heavy burden to the healthcare system in many developed countries and regions

  • The developed approach in this paper is effective in wellness forecasting for community-dwelling elderly, which can provide insights in terms of implementing a cost-effective approach to informing healthcare provider about health conditions of elderly in advance and taking timely interventions to reduce the risk of malignant events

  • The proposed framework can provide insights in terms of implementing a cost-effective approach to informing health conditions of elderly in advance and taking timely interventions to reduce the risk of malignant events

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Summary

Introduction

The accelerated growth of elderly population is creating a heavy burden to the healthcare system in many developed countries and regions. Kailas et al [13] proposed a general wellness system which could enable health-care professionals to master the wellness conditions by comprehensive real-time patient data These healthcare platforms aforementioned process physiological data and vital signs on-line or off-line in the backend, and deliver the corresponding healthcare reports of wellness conditions to the medical provider and cared individuals in real time or at fixed time. Integrating wearable data and vital signs from an all-in-one station-based monitoring device, they took advantage of machine learning tools to predict personal wellness conditions for elderly Their forecasting model is a highly personal data-dependent which could not provide an instant wellness forecasting service for other individuals

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