A Reliable Machine Intelligence Model for Accurate Identification of Cardiovascular Diseases Using Ensemble Techniques.

Journal: Journal of healthcare engineering
Published Date:

Abstract

Machine intelligence can convert raw clinical data into an informational source that helps make decisions and predictions. As a result, cardiovascular diseases are more likely to be addressed as early as possible before affecting the lifespan. Artificial intelligence has taken research on disease diagnosis and identification to another level. Despite several methods and models coming into existence, there is a possibility of improving the classification or forecast accuracy. By selecting the connected combination of models and features, we can improve accuracy. To achieve a better solution, we have proposed a reliable ensemble model in this paper. The proposed model produced results of 96.75% on the cardiovascular disease dataset obtained from the Mendeley Data Center, 93.39% on the comprehensive dataset collected from IEEE DataPort, and 88.24% on data collected from the Cleveland dataset. With this proposed model, we can achieve the safety and health security of an individual.

Authors

  • Bhanu Prakash Doppala
    Department of Computer Science and Multimedia, Lincoln University College, Kuala Lumpur 47301, Malaysia.
  • Debnath Bhattacharyya
    Computer Science and Engineering Department, Koneru Lakshmaiah Education Foundation, Vaddeswaram, Guntur 522302, India.
  • Midhunchakkaravarthy Janarthanan
    Department of Computer Science and Multimedia, Lincoln University College, Kuala Lumpur 47301, Malaysia.
  • Namkyun Baik
    Busan University of Foreign Studies, Geumjeong-gu, Busan, Republic of Korea.