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Quantifying the value of surveillance data for improving model predictions of lymphatic filariasis elimination.

Edwin MichaelSwarnali SharmaMorgan E SmithPanayiota TouloupouFederica GiardinaJoaquin M PradaWilma A StolkDeirdre HollingsworthSake J de Vlas
Published in: PLoS neglected tropical diseases (2018)
Knowledge of relative information contributions of model only versus data-informed models is valuable for improving the usefulness of LF model predictions in management decision making, learning system dynamics, and for supporting the design of parasite monitoring programmes. The present results further pinpoint the crucial need for longitudinal infection surveillance data for enhancing the precision and accuracy of model predictions of the intervention durations required to achieve parasite elimination in an endemic location.
Keyphrases
  • electronic health record
  • public health
  • decision making
  • randomized controlled trial
  • big data
  • healthcare
  • machine learning