PLoS Neglected Tropical Diseases (Jun 2024)

Automatic mapping of high-risk urban areas for Aedes aegypti infestation based on building facade image analysis.

  • Camila Laranjeira,
  • Matheus Pereira,
  • Raul Oliveira,
  • Gerson Barbosa,
  • Camila Fernandes,
  • Patricia Bermudi,
  • Ester Resende,
  • Eduardo Fernandes,
  • Keiller Nogueira,
  • Valmir Andrade,
  • José Alberto Quintanilha,
  • Jefersson A Dos Santos,
  • Francisco Chiaravalloti-Neto

DOI
https://doi.org/10.1371/journal.pntd.0011811
Journal volume & issue
Vol. 18, no. 6
p. e0011811

Abstract

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BackgroundDengue, Zika, and chikungunya, whose viruses are transmitted mainly by Aedes aegypti, significantly impact human health worldwide. Despite the recent development of promising vaccines against the dengue virus, controlling these arbovirus diseases still depends on mosquito surveillance and control. Nonetheless, several studies have shown that these measures are not sufficiently effective or ineffective. Identifying higher-risk areas in a municipality and directing control efforts towards them could improve it. One tool for this is the premise condition index (PCI); however, its measure requires visiting all buildings. We propose a novel approach capable of predicting the PCI based on facade street-level images, which we call PCINet.MethodologyOur study was conducted in Campinas, a one million-inhabitant city in São Paulo, Brazil. We surveyed 200 blocks, visited their buildings, and measured the three traditional PCI components (building and backyard conditions and shading), the facade conditions (taking pictures of them), and other characteristics. We trained a deep neural network with the pictures taken, creating a computational model that can predict buildings' conditions based on the view of their facades. We evaluated PCINet in a scenario emulating a real large-scale situation, where the model could be deployed to automatically monitor four regions of Campinas to identify risk areas.Principal findingsPCINet produced reasonable results in differentiating the facade condition into three levels, and it is a scalable strategy to triage large areas. The entire process can be automated through data collection from facade data sources and inferences through PCINet. The facade conditions correlated highly with the building and backyard conditions and reasonably well with shading and backyard conditions. The use of street-level images and PCINet could help to optimize Ae. aegypti surveillance and control, reducing the number of in-person visits necessary to identify buildings, blocks, and neighborhoods at higher risk from mosquito and arbovirus diseases.