Investigating myocardial infarction and its effects in patients with
urgent medical problems using advanced data mining tools
- URL: http://arxiv.org/abs/2112.07890v1
- Date: Wed, 15 Dec 2021 05:10:55 GMT
- Title: Investigating myocardial infarction and its effects in patients with
urgent medical problems using advanced data mining tools
- Authors: Tanya Aghazadeh and Mostafa Bagheri
- Abstract summary: Myocardial infarction is a serious risk factor in mortality.
The purpose of the present study is to utilize data analysis algorithms and compare their accuracy in patients with a heart attack.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In medical science, it is very important to gather multiple data on different
diseases and one of the most important objectives of the data is to investigate
the diseases. Myocardial infarction is a serious risk factor in mortality and
in previous studies, the main emphasis has been on people with heart disease
and measuring the likelihood of myocardial infarction in them through
demographic features, echocardiography, and electrocardiogram. In contrast, the
purpose of the present study is to utilize data analysis algorithms and compare
their accuracy in patients with a heart attack in order to identify the heart
muscle strength during myocardial infarction by taking into account emergency
operations and consequently predict myocardial infarction. For this purpose,
105 medical records of myocardial infarction patients with fourteen features
including age, the time of emergency operation, Creatine Phosphokinase (CPK)
test, heart rate, blood sugar, and vein are gathered and investigated through
classification techniques of data analysis including random decision forests,
decision tree, support vector machine (SVM), k-nearest neighbor, and ordinal
logistic regression. Finally, the model of random decision forests with an
accuracy of 76% is selected as the best model in terms of the mean evaluation
indicator. Also, seven features of the creatine Phosphokinase test, urea, white
and red blood cell count, blood sugar, time, and hemoglobin are identified as
the most effective features of the ejection fraction variable.
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