Predicting Infectious Diseases: A Bibliometric Review on Africa.

Int J Environ Res Public Health

Department of Information Technology, Central University of Technology, Free State, Private Bag X200539, Bloemfontein 9300, South Africa.

Published: February 2022

AI Article Synopsis

  • Africa has faced numerous infectious disease outbreaks, leading to increased scientific publications, especially in the last decade, highlighting a growing interest in predicting these diseases.
  • The analysis of 247 papers indicates that African researchers are underrepresented, while the USA dominates in productivity and collaboration, with key research areas including malaria, COVID-19, and weather-based predictions.
  • Emerging themes suggest the need for incorporating advanced technologies like machine learning within integrated approaches to improve prediction systems for infectious diseases in Africa.

Article Abstract

Africa has a long history of novel and re-emerging infectious disease outbreaks. This reality has attracted the attention of researchers interested in the general research theme of predicting infectious diseases. However, a knowledge mapping analysis of literature to reveal the research trends, gaps, and hotspots in predicting Africa's infectious diseases using bibliometric tools has not been conducted. A bibliometric analysis of 247 published papers on predicting infectious diseases in Africa, published in the Web of Science core collection databases, is presented in this study. The results indicate that the severe outbreaks of infectious diseases in Africa have increased scientific publications during the past decade. The results also reveal that African researchers are highly underrepresented in these publications and that the United States of America (USA) is the most productive and collaborative country. The relevant hotspots in this research field include malaria, models, classification, associations, COVID-19, and cost-effectiveness. Furthermore, weather-based prediction using meteorological factors is an emerging theme, and very few studies have used the fourth industrial revolution (4IR) technologies. Therefore, there is a need to explore 4IR predicting tools such as machine learning and consider integrated approaches that are pivotal to developing robust prediction systems for infectious diseases, especially in Africa. This review paper provides a useful resource for researchers, practitioners, and research funding agencies interested in the research theme-the prediction of infectious diseases in Africa-by capturing the current research hotspots and trends.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8835071PMC
http://dx.doi.org/10.3390/ijerph19031893DOI Listing

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