Author/Authors :
Ali, Liaqat Department of Electrical Engineering - University of Science and Technology - Bannu, Pakistan , Ullah Khan, Shafqat Department of Electronics - University of Buner - Buner, Pakistan , Amiri Golilarz, Noorbakhsh School of Computer Science and Engineering - University of Electronic Science and Technology of China (UESTC) - Chengdu, China , Yakubu, Imrana School of Computer Science and Engineering - University of Electronic Science and Technology of China (UESTC) - Chengdu, China , Qasim, Iqbal Department of Computer Science - University of Science and Technology - Bannu, Pakistan , Noor, Adeeb Department of Information Technology - Faculty of Computing and Information Technology - King Abdulaziz University - Jeddah, Saudi Arabia , Nour, Redhwan Department of Computer Science - Taibah University - Medina, Saudi Arabia
Abstract :
Heart failure (HF) is considered a deadliest disease worldwide. Therefore, different intelligent medical decision support systems
have been widely proposed for detection of HF in literature. However, low rate of accuracies achieved on the HF data is a major
problem in these decision support systems. To improve the prediction accuracy, we have developed a feature-driven decision
support system consisting of two main stages. In the first stage, χ2 statistical model is used to rank the commonly used 13 HF
features. Based on the χ2 test score, an optimal subset of features is searched using forward best-first search strategy. In the second
stage, Gaussian Naive Bayes (GNB) classifier is used as a predictive model. The performance of the newly proposed method
(χ2-GNB) is evaluated by using an online heart disease database of 297 subjects. Experimental results show that our proposed
method could achieve a prediction accuracy of 93.33%. The developed method (i.e., χ2-GNB) improves the HF prediction
performance of GNB model by 3.33%. Moreover, the newly proposed method also shows better performance than the available
methods in literature that achieved accuracies in the range of 57.85–92.22%.
Keywords :
Feature-Driven , Bayes , HF , χ2-GNB , System