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Feature selection and prediction of treatment failure in tuberculosis.

Christopher Martin SauerDavid SassonKenneth Eugene PaikNed McCagueLeo Anthony CeliIván Sánchez FernándezBen M W Illigens
Published in: PloS one (2018)
Machine learning can help to identify patients at higher risk of treatment failure. Closer monitoring of these patients may decrease treatment failure rates and prevent emergence of antibiotic resistance. The use of inexpensive basic demographic and clinical features makes this approach attractive in low and middle-income countries.
Keyphrases
  • machine learning
  • emergency department
  • ejection fraction
  • combination therapy
  • replacement therapy
  • hiv infected
  • patient reported