1st International ICST Worksop on Situation Recognition and Medical Data Analysis in Pervasive Health Environments

Research Article

Intelligent context-aware monitoring of hypertensive patients

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  • @INPROCEEDINGS{10.4108/ICST.PERVASIVEHEALTH2009.6058,
        author={Alessandro Copetti and Orlando Loques and J. C. B. Leite and Thais P. C. Barbosa and Antonio C. L. da Nobrega},
        title={Intelligent context-aware monitoring of hypertensive patients},
        proceedings={1st International ICST Worksop on Situation Recognition and Medical Data Analysis in Pervasive Health Environments},
        proceedings_a={PERVASENSE},
        year={2009},
        month={8},
        keywords={Pervasive health care context-awareness home care decision making},
        doi={10.4108/ICST.PERVASIVEHEALTH2009.6058}
    }
    
  • Alessandro Copetti
    Orlando Loques
    J. C. B. Leite
    Thais P. C. Barbosa
    Antonio C. L. da Nobrega
    Year: 2009
    Intelligent context-aware monitoring of hypertensive patients
    PERVASENSE
    IEEE
    DOI: 10.4108/ICST.PERVASIVEHEALTH2009.6058
Alessandro Copetti1,*, Orlando Loques1,*, J. C. B. Leite1,*, Thais P. C. Barbosa2,*, Antonio C. L. da Nobrega2,*
  • 1: Computer Science Institute, Fluminense Federal University, Niteroi, Brazil
  • 2: Biomedical Institute, Fluminense Federal University, Niteroi, Brazil
*Contact email: acopetti@ic.uff.br, loques@ic.uff.br, julius@ic.uff.br, chequerthais@hotmail.com, anobrega@vm.uff.br

Abstract

We present a decision-level data fusion technique for monitoring and reporting critical health conditions of a hypertensive patient at home. Variables associated to the patient (physiological and behavioral) and to the living environment are considered in the solution, contributing to improve the confidence on the system outputs. In the paper, we model the problem variables as fuzzy, aiming to capture their intrinsic essence, and draw rules based on medical recommendations to identify the health condition of the patient. This initiative move towards to build an abstract framework for context-aware telemonitoring applications. We also describe the relevant components of the framework and provide an initial evaluation of its decision component. Our results demonstrate that a principled choice of rules and variables may lead to a consistent identification of critical patient's conditions.