PLoS Neglected Tropical Diseases (Nov 2018)

Integrating evidence, models and maps to enhance Chagas disease vector surveillance.

  • Alexander Gutfraind,
  • Jennifer K Peterson,
  • Erica Billig Rose,
  • Claudia Arevalo-Nieto,
  • Justin Sheen,
  • Gian Franco Condori-Luna,
  • Narender Tankasala,
  • Ricardo Castillo-Neyra,
  • Carlos Condori-Pino,
  • Priyanka Anand,
  • Cesar Naquira-Velarde,
  • Michael Z Levy

DOI
https://doi.org/10.1371/journal.pntd.0006883
Journal volume & issue
Vol. 12, no. 11
p. e0006883

Abstract

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BackgroundUntil recently, the Chagas disease vector, Triatoma infestans, was widespread in Arequipa, Perú, but as a result of a decades-long campaign in which over 70,000 houses were treated with insecticides, infestation prevalence is now greatly reduced. To monitor for T. infestans resurgence, the city is currently in a surveillance phase in which a sample of houses is selected for inspection each year. Despite extensive data from the control campaign that could be used to inform surveillance, the selection of houses to inspect is often carried out haphazardly or by convenience. Therefore, we asked, how can we enhance efforts toward preventing T. infestans resurgence by creating the opportunity for vector surveillance to be informed by data?Methodology/principal findingsTo this end, we developed a mobile app that provides vector infestation risk maps generated with data from the control campaign run in a predictive model. The app is intended to enhance vector surveillance activities by giving inspectors the opportunity to incorporate the infestation risk information into their surveillance activities, but it does not dictate which houses to surveil. Therefore, a critical question becomes, will inspectors use the risk information? To answer this question, we ran a pilot study in which we compared surveillance using the app to the current practice (paper maps). We hypothesized that inspectors would use the risk information provided by the app, as measured by the frequency of higher risk houses visited, and qualitative analyses of inspector movement patterns in the field. We also compared the efficiency of both mediums to identify factors that might discourage risk information use. Over the course of ten days (five with each medium), 1,081 houses were visited using the paper maps, of which 366 (34%) were inspected, while 1,038 houses were visited using the app, with 401 (39%) inspected. Five out of eight inspectors (62.5%) visited more higher risk houses when using the app (Fisher's exact test, p Conclusions/significanceWithout staying vigilant to remaining and re-emerging vector foci following a vector control campaign, disease transmission eventually returns and progress achieved is reversed. Our results suggest that, when provided the opportunity, most inspectors will use risk information to direct their surveillance activities, at least over the short term. The study is an initial, but key, step toward evidence-based vector surveillance.