Skip to main content
Top
Published in: BMC Medical Informatics and Decision Making 1/2019

Open Access 01-12-2019 | Elderly Care | Research Article

Forecasting one-day-forward wellness conditions for community-dwelling elderly with single lead short electrocardiogram signals

Authors: Xiaomao Fan, Yang Zhao, Hailiang Wang, Kwok Leung Tsui

Published in: BMC Medical Informatics and Decision Making | Issue 1/2019

Login to get access

Abstract

Background

The 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.

Method

In 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.

Results

The 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.

Conclusion

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.
Literature
1.
go back to reference Kashnitsky I, de Beer J, van Wissen L. Decomposition of regional convergence in population aging across Europe. Genus. 2017; 73(1):2.CrossRef Kashnitsky I, de Beer J, van Wissen L. Decomposition of regional convergence in population aging across Europe. Genus. 2017; 73(1):2.CrossRef
2.
go back to reference Yan E, Chan KL, Tiwari A. A systematic review of prevalence and risk factors for elder abuse in Asia. Trauma, Violence, & Abuse. 2015; 16(2):199–219.CrossRef Yan E, Chan KL, Tiwari A. A systematic review of prevalence and risk factors for elder abuse in Asia. Trauma, Violence, & Abuse. 2015; 16(2):199–219.CrossRef
3.
go back to reference Yu L, Chan WM, Zhao Y, Tsui KL. Personalized health monitoring system of elderly wellness at the community level in Hong Kong. IEEE Access. 2018; 6:35558–67.CrossRef Yu L, Chan WM, Zhao Y, Tsui KL. Personalized health monitoring system of elderly wellness at the community level in Hong Kong. IEEE Access. 2018; 6:35558–67.CrossRef
4.
go back to reference Stearns SC, Norton EC. Time to include time to death? The future of health care expenditure predictions. Health Econ. 2004; 13(4):315–27.CrossRef Stearns SC, Norton EC. Time to include time to death? The future of health care expenditure predictions. Health Econ. 2004; 13(4):315–27.CrossRef
5.
go back to reference He C, Fan X, Li Y. Toward ubiquitous healthcare services with a novel efficient cloud platform. IEEE Trans Biomed Engineer. 2012; 60(1):230–4.CrossRef He C, Fan X, Li Y. Toward ubiquitous healthcare services with a novel efficient cloud platform. IEEE Trans Biomed Engineer. 2012; 60(1):230–4.CrossRef
6.
go back to reference Fan X, He C, Cai Y, Li Y. HCloud: A novel application-oriented cloud platform for preventive healthcare. In: 4th IEEE International Conference on Cloud Computing Technology and Science Proceedings. Taipei: IEEE: 2012. p. 705–10. Fan X, He C, Cai Y, Li Y. HCloud: A novel application-oriented cloud platform for preventive healthcare. In: 4th IEEE International Conference on Cloud Computing Technology and Science Proceedings. Taipei: IEEE: 2012. p. 705–10.
7.
go back to reference Manogaran G, Varatharajan R, Lopez D, Kumar PM, Sundarasekar R, Thota C. A new architecture of Internet of Things and big data ecosystem for secured smart healthcare monitoring and alerting system. Future Gen Comput Syst. 2018; 82:375–87.CrossRef Manogaran G, Varatharajan R, Lopez D, Kumar PM, Sundarasekar R, Thota C. A new architecture of Internet of Things and big data ecosystem for secured smart healthcare monitoring and alerting system. Future Gen Comput Syst. 2018; 82:375–87.CrossRef
8.
go back to reference Kakria P, Tripathi N, Kitipawang P. A real-time health monitoring system for remote cardiac patients using smartphone and wearable sensors. Int J Telemed Appl. 2015; 2015:8. Kakria P, Tripathi N, Kitipawang P. A real-time health monitoring system for remote cardiac patients using smartphone and wearable sensors. Int J Telemed Appl. 2015; 2015:8.
9.
go back to reference Etemadi M, Inan OT, Heller JA, Hersek S, Klein L, Roy S. A wearable patch to enable long-term monitoring of environmental, activity and hemodynamics variables. IEEE Trans Biomed Circ Syst. 2015; 10(2):280–8.CrossRef Etemadi M, Inan OT, Heller JA, Hersek S, Klein L, Roy S. A wearable patch to enable long-term monitoring of environmental, activity and hemodynamics variables. IEEE Trans Biomed Circ Syst. 2015; 10(2):280–8.CrossRef
10.
go back to reference Sabesan S, Sankar R. Improving long-term management of epilepsy using a wearable multimodal seizure detection system. Epilepsy Behav. 2015; 46:56–7.CrossRef Sabesan S, Sankar R. Improving long-term management of epilepsy using a wearable multimodal seizure detection system. Epilepsy Behav. 2015; 46:56–7.CrossRef
11.
go back to reference Paradiso R, Loriga G, Taccini N. A wearable health care system based on knitted integrated sensors. IEEE Trans Informa Technol Biomed. 2005; 9(3):337–44.CrossRef Paradiso R, Loriga G, Taccini N. A wearable health care system based on knitted integrated sensors. IEEE Trans Informa Technol Biomed. 2005; 9(3):337–44.CrossRef
12.
go back to reference Lan M, Samy L, Alshurafa N, Suh MK, Ghasemzadeh H, Macabasco-O’Connell A, et al. Wanda: An end-to-end remote health monitoring and analytics system for heart failure patients. In: Proceedings of the conference on Wireless Health. San Diego: ACM: 2012. p. 9–17. Lan M, Samy L, Alshurafa N, Suh MK, Ghasemzadeh H, Macabasco-O’Connell A, et al. Wanda: An end-to-end remote health monitoring and analytics system for heart failure patients. In: Proceedings of the conference on Wireless Health. San Diego: ACM: 2012. p. 9–17.
13.
go back to reference Kailas A, Chong CC, Watanabe F. From mobile phones to personal wellness dashboards. IEEE Pulse. 2010; 1(1):57–63.CrossRef Kailas A, Chong CC, Watanabe F. From mobile phones to personal wellness dashboards. IEEE Pulse. 2010; 1(1):57–63.CrossRef
14.
go back to reference Mattila E, Pärkkä J, Hermersdorf M, Kaasinen J, Vainio J, Samposalo K, et al. Mobile diary for wellness management—results on usage and usability in two user studies, Vol. 12; 2008. pp. 501–12. Mattila E, Pärkkä J, Hermersdorf M, Kaasinen J, Vainio J, Samposalo K, et al. Mobile diary for wellness management—results on usage and usability in two user studies, Vol. 12; 2008. pp. 501–12.
15.
go back to reference Huh J, Le T, Reeder B, Thompson HJ, Demiris G. Perspectives on wellness self-monitoring tools for older adults. Int J Med Informa. 2013; 82(11):1092–103.CrossRef Huh J, Le T, Reeder B, Thompson HJ, Demiris G. Perspectives on wellness self-monitoring tools for older adults. Int J Med Informa. 2013; 82(11):1092–103.CrossRef
16.
go back to reference Suryadevara NK, Mukhopadhyay SC. Wireless sensor network based home monitoring system for wellness determination of elderly. IEEE Sensors J. 2012; 12(6):1965–72.CrossRef Suryadevara NK, Mukhopadhyay SC. Wireless sensor network based home monitoring system for wellness determination of elderly. IEEE Sensors J. 2012; 12(6):1965–72.CrossRef
17.
go back to reference Fan X, Yao Q, Cai Y, Miao F, Sun F, Li Y. Multiscaled fusion of deep convolutional neural networks for screening atrial fibrillation from single lead short ECG recordings. IEEE J Biomed Health Informa. 2018; 22(6):1744–53.CrossRef Fan X, Yao Q, Cai Y, Miao F, Sun F, Li Y. Multiscaled fusion of deep convolutional neural networks for screening atrial fibrillation from single lead short ECG recordings. IEEE J Biomed Health Informa. 2018; 22(6):1744–53.CrossRef
18.
go back to reference Acharya UR, Fujita H, Oh SL, Hagiwara Y, Tan JH, Adam M. Application of deep convolutional neural network for automated detection of myocardial infarction using ECG signals. Informa Sci. 2017; 415:190–8.CrossRef Acharya UR, Fujita H, Oh SL, Hagiwara Y, Tan JH, Adam M. Application of deep convolutional neural network for automated detection of myocardial infarction using ECG signals. Informa Sci. 2017; 415:190–8.CrossRef
19.
20.
go back to reference Yang Z, Zhou Q, Lei L, Zheng K, Xiang W. An IoT-cloud based wearable ECG monitoring system for smart healthcare. J Med Syst. 2016; 40(12):286.CrossRef Yang Z, Zhou Q, Lei L, Zheng K, Xiang W. An IoT-cloud based wearable ECG monitoring system for smart healthcare. J Med Syst. 2016; 40(12):286.CrossRef
21.
go back to reference Hunter JS. The exponentially weighted moving average. J Quality Technol. 1986; 18(4):203–10.CrossRef Hunter JS. The exponentially weighted moving average. J Quality Technol. 1986; 18(4):203–10.CrossRef
22.
go back to reference Murray NB, Gabbett TJ, Townshend AD, Blanch P. Calculating acute: chronic workload ratios using exponentially weighted moving averages provides a more sensitive indicator of injury likelihood than rolling averages. Br J Sports Med. 2017; 51(9):749–54.CrossRef Murray NB, Gabbett TJ, Townshend AD, Blanch P. Calculating acute: chronic workload ratios using exponentially weighted moving averages provides a more sensitive indicator of injury likelihood than rolling averages. Br J Sports Med. 2017; 51(9):749–54.CrossRef
24.
go back to reference Wu J, Roy J, Stewart WF. Prediction modeling using EHR data: challenges, strategies, and a comparison of machine learning approaches. Med Care. 2010; 48(6):106–13.CrossRef Wu J, Roy J, Stewart WF. Prediction modeling using EHR data: challenges, strategies, and a comparison of machine learning approaches. Med Care. 2010; 48(6):106–13.CrossRef
25.
go back to reference Santillana M, Nguyen AT, Dredze M, Paul MJ, Nsoesie EO, Brownstein JS. Combining search, social media, and traditional data sources to improve influenza surveillance. PLoS Comput Biol. 2015; 11(10):1–15.CrossRef Santillana M, Nguyen AT, Dredze M, Paul MJ, Nsoesie EO, Brownstein JS. Combining search, social media, and traditional data sources to improve influenza surveillance. PLoS Comput Biol. 2015; 11(10):1–15.CrossRef
26.
go back to reference Suryadevara NK, Mukhopadhyay SC, Wang R, Rayudu R. Forecasting the behavior of an elderly using wireless sensors data in a smart home. Engineer Appl Artif Intell. 2013; 26(10):2641–52.CrossRef Suryadevara NK, Mukhopadhyay SC, Wang R, Rayudu R. Forecasting the behavior of an elderly using wireless sensors data in a smart home. Engineer Appl Artif Intell. 2013; 26(10):2641–52.CrossRef
27.
go back to reference Srinivas K, Rao GR, Govardhan A. Analysis of coronary heart disease and prediction of heart attack in coal mining regions using data mining techniques. In: 2010 5th International Conference on Computer Science & Education. Hefei: IEEE: 2010. p. 1344–9. Srinivas K, Rao GR, Govardhan A. Analysis of coronary heart disease and prediction of heart attack in coal mining regions using data mining techniques. In: 2010 5th International Conference on Computer Science & Education. Hefei: IEEE: 2010. p. 1344–9.
28.
go back to reference Graves A, Mohamed Ar, Hinton G. Speech recognition with deep recurrent neural networks. In: 2013 IEEE international conference on acoustics, speech and signal processing. Vancouver, BC: IEEE: 2013. p. 6645–9. Graves A, Mohamed Ar, Hinton G. Speech recognition with deep recurrent neural networks. In: 2013 IEEE international conference on acoustics, speech and signal processing. Vancouver, BC: IEEE: 2013. p. 6645–9.
29.
go back to reference Sak H, Senior A, Rao K, Irsoy O, Graves A, Beaufays F, et al. Learning acoustic frame labeling for speech recognition with recurrent neural networks. In: 2015 IEEE international conference on acoustics, speech and signal processing (ICASSP). Brisbane, QLD: IEEE: 2015. p. 4280–4. Sak H, Senior A, Rao K, Irsoy O, Graves A, Beaufays F, et al. Learning acoustic frame labeling for speech recognition with recurrent neural networks. In: 2015 IEEE international conference on acoustics, speech and signal processing (ICASSP). Brisbane, QLD: IEEE: 2015. p. 4280–4.
30.
32.
go back to reference Ma F, Chitta R, Zhou J, You Q, Sun T, Gao J. Dipole: Diagnosis prediction in healthcare via attention-based bidirectional recurrent neural networks. In: Proceedings of the 23rd ACM SIGKDD international conference on knowledge discovery and data mining. Halifax, NS: ACM: 2017. p. 1903–11. Ma F, Chitta R, Zhou J, You Q, Sun T, Gao J. Dipole: Diagnosis prediction in healthcare via attention-based bidirectional recurrent neural networks. In: Proceedings of the 23rd ACM SIGKDD international conference on knowledge discovery and data mining. Halifax, NS: ACM: 2017. p. 1903–11.
33.
go back to reference Choi E, Schuetz A, Stewart WF, Sun J. Using recurrent neural network models for early detection of heart failure onset. J Am Med Informa Assoc. 2016; 24(2):361–70. Choi E, Schuetz A, Stewart WF, Sun J. Using recurrent neural network models for early detection of heart failure onset. J Am Med Informa Assoc. 2016; 24(2):361–70.
34.
go back to reference Choi E, Bahadori MT, Sun J, Kulas J, Schuetz A, Stewart W. Retain: An interpretable predictive model for healthcare using reverse time attention mechanism. In: Advances in Neural Information Processing Systems. Barcelona: NIPS: 2016. p. 3504–12. Choi E, Bahadori MT, Sun J, Kulas J, Schuetz A, Stewart W. Retain: An interpretable predictive model for healthcare using reverse time attention mechanism. In: Advances in Neural Information Processing Systems. Barcelona: NIPS: 2016. p. 3504–12.
35.
go back to reference Schuster M, Paliwal KK. Bidirectional recurrent neural networks. IEEE Trans Signal Process. 1997; 45(11):2673–81.CrossRef Schuster M, Paliwal KK. Bidirectional recurrent neural networks. IEEE Trans Signal Process. 1997; 45(11):2673–81.CrossRef
36.
go back to reference Sak H, Senior A, Beaufays F. Long short-term memory recurrent neural network architectures for large scale acoustic modeling. In: Fifteenth annual conference of the international speech communication association. Singapore: INTERSPEECH: 2014. p. 338–42. Sak H, Senior A, Beaufays F. Long short-term memory recurrent neural network architectures for large scale acoustic modeling. In: Fifteenth annual conference of the international speech communication association. Singapore: INTERSPEECH: 2014. p. 338–42.
37.
go back to reference Graves A, Jaitly N, Mohamed Ar. Hybrid speech recognition with deep bidirectional LSTM. In: 2013 IEEE workshop on automatic speech recognition and understanding. Olomouc: IEEE: 2013. p. 273–8. Graves A, Jaitly N, Mohamed Ar. Hybrid speech recognition with deep bidirectional LSTM. In: 2013 IEEE workshop on automatic speech recognition and understanding. Olomouc: IEEE: 2013. p. 273–8.
38.
go back to reference Demosthenous P, Nicolaou N, Georgiou J. A hardware-efficient lowpass filter design for biomedical applications. Paphos: IEEE; 2010. pp. 130–3. Demosthenous P, Nicolaou N, Georgiou J. A hardware-efficient lowpass filter design for biomedical applications. Paphos: IEEE; 2010. pp. 130–3.
39.
go back to reference Sparks R, Celler B, Okugami C, Jayasena R, Varnfield M. Telehealth monitoring of patients in the community. J Intell Syst. 2016; 25(1):37–53. Sparks R, Celler B, Okugami C, Jayasena R, Varnfield M. Telehealth monitoring of patients in the community. J Intell Syst. 2016; 25(1):37–53.
Metadata
Title
Forecasting one-day-forward wellness conditions for community-dwelling elderly with single lead short electrocardiogram signals
Authors
Xiaomao Fan
Yang Zhao
Hailiang Wang
Kwok Leung Tsui
Publication date
01-12-2019
Publisher
BioMed Central
Keyword
Elderly Care
Published in
BMC Medical Informatics and Decision Making / Issue 1/2019
Electronic ISSN: 1472-6947
DOI
https://doi.org/10.1186/s12911-019-1012-8

Other articles of this Issue 1/2019

BMC Medical Informatics and Decision Making 1/2019 Go to the issue