Spatial modeling of individual-level infectious disease transmission: Tuberculosis data in Manitoba, Canada.

Stat Med

Department of Community Health Sciences, Rady Faculty of Health Sciences, University of Manitoba, Winnipeg, Manitoba, Canada.

Published: March 2021

AI Article Synopsis

  • Geographically dependent individual level models (GD-ILMs) analyze the spread of infectious diseases like tuberculosis (TB) by considering both individual and area-specific data, emphasizing spatial locations and distances between susceptible and infectious individuals.
  • The article highlights the need to identify communities with higher TB prevalence for targeted prevention efforts, which is particularly relevant for policymakers.
  • It introduces the expectation conditional maximization algorithm for estimating parameters of GD-ILMs, demonstrating through simulations that this method yields accurate and reliable estimates of TB infectivity rates.

Article Abstract

Geographically dependent individual level models (GD-ILMs) are a class of statistical models that can be used to study the spread of infectious disease through a population in discrete-time in which covariates can be measured both at individual and area levels. The typical ILMs to illustrate spatial data are based on the distance between susceptible and infectious individuals. A key feature of GD-ILMs is that they take into account the spatial location of the individuals in addition to the distance between susceptible and infectious individuals. As a motivation of this article, we consider tuberculosis (TB) data which is an infectious disease which can be transmitted through individuals. It is also known that certain areas/demographics/communities have higher prevalent of TB (see Section 4 for more details). It is also of interest of policy makers to identify those areas with higher infectivity rate of TB for possible preventions. Therefore, we need to analyze this data properly to address those concerns. In this article, the expectation conditional maximization algorithm is proposed for estimating the parameters of GD-ILMs to be able to predict the areas with the highest average infectivity rates of TB. We also evaluate the performance of our proposed approach through some simulations. Our simulation results indicate that the proposed method provides reliable estimates of parameters which confirms accuracy of the infectivity rates.

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Source
http://dx.doi.org/10.1002/sim.8863DOI Listing

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