Title of article :
Using Data Mining Algorithm for Assigning Family- Centered Empowerment Model as to Improve the Quality of Life in Cardiac Infarction Patients
Author/Authors :
Keumarsi, Zahra Department of Biostatistics - School of Allied Medical Sciences - Shahid Beheshti University of Medical Sciences,Tehran,Iran , Zayeri, Farid Proteomics Research Center - Department of Biostatistics - School of Allied Medical Sciences, Shahid Beheshti University of Medical Sciences,Tehran,Iran , Vahedian Azimi, Amir Trauma Research Center - Baqiyatallah University of Medical Sciences,Tehran,Iran , Akbarzadeh Baghban, Alireza Proteomics Research Center - Department of Biostatistics - School of Allied Medical Sciences - Shahid Beheshti University of Medical Sciences,Tehran,Iran
Abstract :
Introduction: Today, cardiovascular disease is a major threat to advanced
human societies, and is acting as a major cause of disability in many aspects of
a patient and family members' lives, including their quality of life. Therefore,
the aim of the present study is to provide models for classifying and
determining the factors influencing the allocation of family-centered
empowerment model to further improve the psychological quality of life of
these patients.
Materials and Methods: In this study, data from a clinical trial study were
used in which 70 patients with myocardial infarction who randomly received a
family-centered empowerment pattern and control group. A model of linear
mixed effects and then learning algorithms were used to predict the success or
failure of the empowerment model.
Results: In this study, the decision tree model was able to accurately predict
more than 96% of patients (Kappa=0.828, ROC=0.96). Physical functions,
walking status, creatinine level, EF level, employment status, gender, stress
level and body mass index were identified as the effective factors in assigning a
family-centered empowerment pattern (P value <0.05). This process was done
through software of SPSS24, SAS9.1 and WEKA 3.6.9
Conclusion: The decision tree model was able to correctly classify more than
96% of patients; if a family-centered empowerment model was assigned, this
model would improve the psychological dimension of their quality of life.
Farsi abstract :
فاقد چكيده فارسي
Keywords :
Family-Centered Empowerment Model , Quality of Life , Cardiac Infarction , Data Mining , Longitudinal Study
Journal title :
Archives of Advances in Biosciences