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Showing 2 results for Coronary Artery Disease

Iman Zabbah, Majid Hassaanzadeh, Zahra Kohjani,
Volume 4, Issue 4 (1-2017)
Abstract

Background & Aim: Coronary artery disease is among the common diseases in societies. The best method of assessing coronary artery diseases is through angiography. This study aimed at investigating the effect of disease parameters on the diagnosis of coronary artery disease using artificial neural networks.

Methods: This analytic study included a database of 200 non-attributable records. In this research, different neural networks such as MLP, LVQ and BR were used to predict whether the coronary arteries were blocked or not. In addition, the importance of the continuous risk factors of coronary artery disease was studied.

Results: The most important criteria of the diagnosis systems are the specificity and sensitivity indicators. In this study, these two indicators were calculated in the test. The best accuracy was observed in MLP, with a back-error propagation of 88%. It was also observed that the removal of discrete parameters positively affects neural network convergence speed so that the prediction accuracy could reach 85%.

Conclusion: Angiography is a high-cost invasive procedure with risk factors such as death, stroke and heart attack. Therefore, noninvasive methods should be applied in order to minimize   error and maximize reliability to predict the disease. Using data mining methods can decrease the complications of the disease.


Iman Zabbah, Zahra Koohjani, Ali Maroosi, Kamran Layeghi,
Volume 6, Issue 3 (12-2018)
Abstract

Background & Aim: Coronary artery disease is one of the most common diseases in different societies. Coronary angiography is established as one of the best methods for diagnosis of this disease. Angiography is an invasive and costly method. Furthermore, it is associated with risks such as death, heart attack, and stroke. Thus, this study introduces a neuro-fuzzy-based method which can help the physicians in prediction of patient’s coronary artery condition.
Methods: This is an analytical study carried on 200 patients of Cardiovascular Center in Torbat Heydarieh. Patient records include 13 risk factors and are non-attributable. In this work, models are presented based on data mining methods for the diagnosis of coronary artery disease Furthermore, artificial neural network and neuro-fuzzy method were used for modeling the diagnosis of coronary artery disease.
Results: The mean square error (MSE) of prediction for artificial neural network and neuro-fuzzy method were p=0.2574 and p=0.0007, respectively.
Conclusion: Since angiography is invasive and associated with various risks, we suggest the use of non-invasive methods with low error and high reliability. New data mining strategies can be effective in reducing the mentioned complications.

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