Use of an Extended Premise Condition Index for detection of priority areas for vector control actions

Acta Trop. 2020 Sep:209:105543. doi: 10.1016/j.actatropica.2020.105543. Epub 2020 May 26.

Abstract

The Premise Condition Index (PCI), proposed by Tun-Lin and colleagues in 1995, is a score that considers the conditions of a premise as well its yards and degree of shading. They hypothesized that the higher its value the greater the probability of the premise having the presence of Aedes aegypti. This study aimed to evaluate if there is a correspondence between PCI and Ae. aegypti infestation in four areas of a large city in the State of São Paulo, Brazil, if the inclusion of new categories related to the presence of animals in premises would increase the probability of detecting predictive areas for vector control actions and, if so, to propose an expanded PCI. The positivity of the premises for the presence of Ae. aegypti was modeled considering a Bernoulli probability distribution, in a Bayesian context using the Integrated Nested Laplace Approximation. The study showed that, in general, the higher the value of the PCI of a premise, the more likely it is to have the presence of Ae. aegypti, and the inclusion of information on the animals' presence can increase the discriminatory power of PCI. These results support the proposition of an extended PCI that would consider, in addition to the conditions of the premise, the presence of animals to classify it regarding the risk of the presence of Ae. aegypti.

Keywords: Aedes aegypti; dengue fever; vector control.

MeSH terms

  • Aedes* / growth & development
  • Animals
  • Bayes Theorem
  • Breeding
  • Dengue / prevention & control
  • Dengue / transmission*
  • Mosquito Control / methods*