A comprehensive study on tuberculosis prediction models: Integrating machine learning into epidemiological analysis.

Journal: Journal of theoretical biology
PMID:

Abstract

Tuberculosis (TB), the second leading infectious killer globally, claimed the lives of 1.3 million individuals in 2022, after COVID-19, surpassing the toll of HIV and AIDS. With an estimated 10.6 million new TB cases worldwide in 2022, the gravity of the disease persists, necessitating urgent attention. Tuberculosis remains a critical public health crisis, and efforts to combat this infectious disease demand intensified global commitment and resources. This study utilizes predictive modeling techniques to forecast the incidence of Tuberculosis (TB), employing a range of machine learning models. Additionally, the research incorporates impactful visualizations for comprehensive data exploration, analysis and comparison. Various machine learning models are developed to anticipate TB incidence, with the optimal performing model to customize a user-defined function. This research provides valuable insights into the potential determinants influencing TB incidence, contributing to the identification of strategies for preventing the spread of Tuberculosis.

Authors

  • Hamna Mariyam K B
    School of Data Analytics, Mahatma Gandhi University, Kottayam, India.
  • Sayooj Aby Jose
    School of Data Analytics, Mahatma Gandhi University, Kottayam, India; Department of Mathematics, Faculty of Education, Phuket Rajabhat University, Phuket, Thailand. Electronic address: sayooaby999@gmail.com.
  • Anuwat Jirawattanapanit
    Department of Mathematics, Faculty of Education, Phuket Rajabhat University, Phuket, Thailand.
  • Karuna Mathew
    Faculty of Engineering Environment and Computing, Coventry University, Coventry, United Kingdom.