Which risk factor best predicts coronary artery disease using artificial neural network method?

被引:4
|
作者
Azdaki, Nahid [1 ,2 ]
Salmani, Fatemeh [3 ]
Kazemi, Toba [1 ]
Partovi, Neda [1 ]
Bizhaem, Saeede Khosravi [1 ]
Moghadam, Masomeh Noori [1 ]
Moniri, Yoones [2 ]
Zarepur, Ehsan [4 ]
Mohammadifard, Noushin [5 ]
Alikhasi, Hassan [6 ]
Nouri, Fatemeh [7 ]
Sarrafzadegan, Nizal [8 ]
Moezi, Seyyed Ali [1 ]
Khazdair, Mohammad Reza [1 ]
机构
[1] Birjand Univ Med Sci, Cardiovasc Dis Res Ctr, Birjand 9717853111, Iran
[2] Birjand Univ Med Sci, Razi Hosp, Clin Res Dev Unit, Birjand, Iran
[3] Birjand Univ Med Sci, Social Determinants Hlth Res Ctr, Sch Hlth, Dept Epidemiol & Biostat, Birjand, Iran
[4] Isfahan Univ Med Sci, Cardiovasc Res Inst, Intervent Cardiol Res Ctr, Esfahan, Iran
[5] Isfahan Univ Med Sci, Cardiovasc Res Inst, Pediat Cardiovasc Res Ctr, Esfahan, Iran
[6] Isfahan Univ Med Sci, Isfahan Cardiovasc Res Inst, Heart Failure Res Ctr, Esfahan, Iran
[7] Isfahan Univ Med Sci, Cardiovasc Res Inst, Hypertens Res Ctr, Esfahan, Iran
[8] Isfahan Univ Med Sci, Cardiovasc Res Inst, Isfahan Cardiovasc Res Ctr, Esfahan, Iran
关键词
Coronary artery disease; Artificial neural network; Data mining; Risk factors; HEART-DISEASE; CARDIOVASCULAR-DISEASE; STRESS; METAANALYSIS; MORTALITY; GENDER; IRAN; AGE;
D O I
10.1186/s12911-024-02442-1
中图分类号
R-058 [];
学科分类号
摘要
BackgroundCoronary artery disease (CAD) is recognized as the leading cause of death worldwide. This study analyses CAD risk factors using an artificial neural network (ANN) to predict CAD.MethodsThe research data were obtained from a multi-center study, namely the Iran-premature coronary artery disease (I-PAD). The current study used the medical records of 415 patients with CAD hospitalized in Razi Hospital, Birjand, Iran, between May 2016 and June 2019. A total of 43 variables that affect CAD were selected, and the relevant data was extracted. Once the data were cleaned and normalized, they were imported into SPSS (V26) for analysis. The present study used the ANN technique.ResultsThe study revealed that 48% of the study population had a history of CAD, including 9.4% with premature CAD and 38.8% with CAD. The variables of age, sex, occupation, smoking, opium use, pesticide exposure, anxiety, sexual activity, and high fasting blood sugar were found to be significantly different among the three groups of CAD, premature CAD, and non-CAD individuals. The neural network achieved success with five hidden fitted layers and an accuracy of 81% in non-CAD diagnosis, 79% in premature diagnosis, and 78% in CAD diagnosis. Anxiety, acceptance, eduction and gender were the four most important factors in the ANN model.ConclusionsThe current study shows that anxiety is a high-prevalence risk factor for CAD in the hospitalized population. There is a need to implement measures to increase awareness about the psychological factors that can be managed in individuals at high risk for future CAD.
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页数:12
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