Abstract
In the area of Cardiovascular Diseases (CVD), dyspnea, one of many conditions that can be symptom of heart failure, is a metric used by New York Heart Association (NYHA) classification in order to describe the impact of heart failure on a patient. Based on four classes this classification measures the level of limitation during a simples physical activity. With the use of a non-invasive home tele monitoring system called Smart BEAT to retrieve biological data and heart metrics combined with a data-mining engine called PDME (Pervasive Data Mining Engine) is possible to obtain a different type of analysis sustained by a real time classification. The connection between the risk factors of CVD with the accuracy levels in the data models is recognizable, and continuously reflected with all the scenarios that were created. As soon, the data models used less CVD’s risk factors variables, the data models become useless, showing us how connected the risks are to this disease, this sustains the idea that PDME can be competent data mining engine in this field of work.
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References
World Health Organization: Global Health Estimates 2016: Deaths by Cause, Age, Sex, by Country and by Region, 2000–2016. WHO, Geneva (2018)
Yazdanyar, A., Newman, A.B.: The burden of cardiovascular disease in the elderly: morbidity, mortality, and costs. Clin. Geriatr. Med. 25, 563–577 (2009)
United Nations: World Population Ageing 2019 - Highlights. United Nations (2019)
Lappa, A., Goumopoulos, C.: A home-based early risk detection system for congestive heart, Patras, Greece (2019)
Peixoto, R.D.F.: Pervasive data mining engine, Guimarães (2015)
Ramageri, B.M.: Data mining techniques and applications. Indian J. Comput. Sci. Eng. 1, 301–305 (2010)
Mannila, H., Smyth, P., Hand, D.: Principles of Data Mining. The MIT Press, Cambridge (2001)
Koudstaal, S., Asselbergs, W., Brons, M.: Algorithms used in telemonitoring programmes for patients with chronic heart failure: a systematic review. Eur. J. Cardiovasc. Nurs. 17, 580–588 (2018)
Cardoso, J., Moreira, E., Lopes, I.: SmartBEAT: a smartphone-based heart, Porto (2016)
Sullivan, P.L.: Correlation and Linear Regression. Boston University School of Public Health. http://sphweb.bumc.bu.edu/otlt/MPH-Modules/BS/BS704_Correlation-Regression/BS704_Correlation-Regression_print.html
INS Português Doutor Ricardo Jorge: Doenças Cardiovasculares (2016)
Mukerji, V.: Clinical Methods: The History, Physical, and Laboratory Examinations. Butterworth-Heinemann, Boston (1990)
Nason, E.: An overview of cardiovascular disease and research (2007)
Su, J.: Developing an early warning system for congestive heart failure using a Bayesian reasoning network. Doctoral dissertation, Massachusetts Institute of Technology (2001)
Auble, T.E.: A prediction rule to identify low-risk patients with heart failure. Acad. Emerg. Med. 12, 514–521 (2005)
Visweswaran, S., Angus, D.C., Cooper, G.F.: Learning patient-specific predictive models from clinical data, University of Pittsburgh (2010)
Varma, D., Shete, V., Somani, S.B.: Development of home health care self. Int. J. Adv. Res. Comput. Commun. Eng. (2015). https://www.ijarcce.com/upload/2015/june-15/IJARCCE%252054.pdf&ved=2ahUKEwipn8Xz_vjoAhU6DGMBHdpRA8kQFjAKegQIBhAB&usg=AOvVaw3jCeLDzja9paQTjBoiRxoK
Alturki, A., Bandara, W., Gable, G.: DSR and the core of information systems (2012)
Hevner, A.: Design science in information systems research (2004)
Chapman, P., Clinton, J., Kerber, R., Khabaza, T., Reinartz, T., Shearer, C., Wirth, R.: CRISP-DM 1.0. CRISP-DM Consortium, p. 76 (2000)
New York Heart Association: Specifications Manual for Joint Commission National Quality Measures (2016)
Acknowledgments
This article is a result of the project Deus Ex Machina: NORTE-01-0145-FEDER-000026, supported by Norte Portugal Regional Operational Program (NORTE 2020), under the PORTUGAL 2020 Partnership Agreement, through the European Regional Development Fund (ERDF). The work has been supported by FCT – Fundação para a Ciência e Tecnologia within the Project Scope: UID/CEC/00319/2019.
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Freitas, F., Peixoto, R., Portela, C.F., Santos, M. (2020). Data Intelligence Using PDME for Predicting Cardiovascular Predictive Failures. In: Rocha, Á., Adeli, H., Reis, L., Costanzo, S., Orovic, I., Moreira, F. (eds) Trends and Innovations in Information Systems and Technologies. WorldCIST 2020. Advances in Intelligent Systems and Computing, vol 1161. Springer, Cham. https://doi.org/10.1007/978-3-030-45697-9_31
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DOI: https://doi.org/10.1007/978-3-030-45697-9_31
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