Frontiers in Public Health (Mar 2024)

Spatial pattern of isoniazid-resistant tuberculosis and its associated factors among a population with migrants in China: a retrospective population-based study

  • Hongyin Zhang,
  • Ruoyao Sun,
  • Zheyuan Wu,
  • Zheyuan Wu,
  • Yueting Liu,
  • Meiru Chen,
  • Jinrong Huang,
  • Yixiao Lv,
  • Fei Zhao,
  • Fei Zhao,
  • Fei Zhao,
  • Yangyi Zhang,
  • Yangyi Zhang,
  • Yangyi Zhang,
  • Minjuan Li,
  • Hongbing Jiang,
  • Yiqiang Zhan,
  • Jimin Xu,
  • Yanzi Xu,
  • Jianhui Yuan,
  • Yang Zhao,
  • Xin Shen,
  • Xin Shen,
  • Chongguang Yang,
  • Chongguang Yang,
  • Chongguang Yang

DOI
https://doi.org/10.3389/fpubh.2024.1372146
Journal volume & issue
Vol. 12

Abstract

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BackgroundIsoniazid-resistant, rifampicin-susceptible tuberculosis (Hr-TB) globally exhibits a high prevalence and serves as a potential precursor to multidrug-resistant tuberculosis (MDR-TB). Recognizing the spatial distribution of Hr-TB and identifying associated factors can provide strategic entry points for interventions aimed at early detection of Hr-TB and prevention of its progression to MDR-TB. This study aims to analyze spatial patterns and identify socioeconomic, demographic, and healthcare factors associated with Hr-TB in Shanghai at the county level.MethodWe conducted a retrospective study utilizing data from TB patients with available Drug Susceptible Test (DST) results in Shanghai from 2010 to 2016. Spatial autocorrelation was explored using Global Moran’s I and Getis-Ord Gi∗ statistics. A Bayesian hierarchical model with spatial effects was developed using the INLA package in R software to identify potential factors associated with Hr-TB at the county level.ResultsA total of 8,865 TB patients with DST were included in this analysis. Among 758 Hr-TB patients, 622 (82.06%) were new cases without any previous treatment history. The drug-resistant rate of Hr-TB among new TB cases in Shanghai stood at 7.20% (622/8014), while for previously treated cases, the rate was 15.98% (136/851). Hotspot areas of Hr-TB were predominantly situated in southwestern Shanghai. Factors positively associated with Hr-TB included the percentage of older adult individuals (RR = 3.93, 95% Crl:1.93–8.03), the percentage of internal migrants (RR = 1.35, 95% Crl:1.15–1.35), and the number of healthcare institutions per 100 population (RR = 1.17, 95% Crl:1.02–1.34).ConclusionWe observed a spatial heterogeneity of Hr-TB in Shanghai, with hotspots in the Songjiang and Minhang districts. Based on the results of the models, the internal migrant population and older adult individuals in Shanghai may be contributing factors to the emergence of areas with high Hr-TB notification rates. Given these insights, we advocate for targeted interventions, especially in identified high-risk hotspots and high-risk areas.

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