BOO-ST and CBCEC: two novel hybrid machine learning methods aim to reduce the mortality of heart failure patients.

Journal: Scientific reports
Published Date:

Abstract

Heart failure (HF) is a leading cause of mortality worldwide. Machine learning (ML) approaches have shown potential as an early detection tool for improving patient outcomes. Enhancing the effectiveness and clinical applicability of the ML model necessitates training an efficient classifier with a diverse set of high-quality datasets. Hence, we proposed two novel hybrid ML methods ((a) consisting of Boosting, SMOTE, and Tomek links (BOO-ST); (b) combining the best-performing conventional classifier with ensemble classifiers (CBCEC)) to serve as an efficient early warning system for HF mortality. The BOO-ST was introduced to tackle the challenge of class imbalance, while CBCEC was responsible for training the processed and selected features derived from the Feature Importance (FI) and Information Gain (IG) feature selection techniques. We also conducted an explicit and intuitive comprehension to explore the impact of potential characteristics correlating with the fatality cases of HF. The experimental results demonstrated the proposed classifier CBCEC showcases a significant accuracy of 93.67% in terms of providing the early forecasting of HF mortality. Therefore, we can reveal that our proposed aspects (BOO-ST and CBCEC) can be able to play a crucial role in preventing the death rate of HF and reducing stress in the healthcare sector.

Authors

  • Ananda Sutradhar
    Department of Computer Science and Engineering, Daffodil International University, Daffodil Smart City (DSC), Birulia, Savar, Dhaka, 1216, Bangladesh.
  • Mustahsin Al Rafi
    Department of Computer Science and Engineering, Daffodil International University, Daffodil Smart City (DSC), Birulia, Savar, Dhaka, 1216, Bangladesh.
  • F M Javed Mehedi Shamrat
    Department of Computer System and Technology, Universiti Malaya, Kuala Lumpur, Malaysia.
  • Pronab Ghosh
    Department of Computer Science, Lakehead University, Thunder Bay, ON, Canada.
  • Subrata Das
    Department of Computer Science, Lakehead University, 955 Oliver Rd, Thunder Bay, ON, P7B 5E1, Canada.
  • Md Anaytul Islam
    Department of Computer Science, Lakehead University, 955 Oliver Rd, Thunder Bay, ON, P7B 5E1, Canada.
  • Kawsar Ahmed
    Group of Biophotomatiχ, Department of Information and Communication Technology, Mawlana Bhashani Science and Technology University, Santosh, Tangail-1902, Bangladesh; Department of Information and Communication Technology, Mawlana Bhashani Science and Technology University, Santosh, Tangail, 1902, Bangladesh. Electronic address: kawsar.ict@mbstu.ac.bd.
  • Xujuan Zhou
    Centre for Health Informatics, Australian Institute of Health Innovation, The University of New South Wales, Sydney, NSW 2052, Australia.
  • A K M Azad
    Department of Data Science & AI, Monash University, Melbourne, Australia.
  • Salem A Alyami
    Department of Mathematics and StatisticsImam Muhammad Ibn Saud Islamic UniversityRiyadh13318Saudi Arabia.
  • Mohammad Ali Moni
    Bone Biology Divisions, Garvan Institute of Medical Research, Sydney, NSW 2010, Australia; The University of Sydney, School of Medical Sciences, Faculty of Medicine & Health, NSW 2006, Australia. Electronic address: mohammad.moni@sydney.edu.au.