TB Research

World Influence of Infectious Diseases From Wikipedia Network Analysis

Guillaume Rollin, José Lages, Dima L. Shepelyansky

IEEE Access · 2019-01

Abstract

We consider the network of 5 416 537 articles of English Wikipedia extracted in 2017. Using the recent reduced Google matrix (REGOMAX) method we construct the reduced network of 230 articles (nodes) of infectious diseases and 195 articles of world countries. This method generates the reduced directed network between all 425 nodes taking into account all direct and indirect links with pathways via the huge global network. PageRank and CheiRank algorithms are used to determine the most influential diseases with the top PageRank diseases being Tuberculosis, HIV/AIDS, and Malaria. From the reduced Google matrix, we determine the sensitivity of world countries to specific diseases integrating their influence over all their history including the times of ancient Egyptian mummies. The obtained results are compared with the World Health Organization (WHO) data demonstrating that the Wikipedia network analysis provides reliable results with up to about 80 percent overlap between WHO and REGOMAX analyses.

MeSH terms

  • PageRank
  • Malaria
  • Computer science
  • Data science
  • Construct (python library)
  • Network analysis
  • Tuberculosis
  • Social network analysis
  • World Wide Web