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基于 PBICR 的中国烟草流行风险评估和烟民数量估计:一项横断面研究

Risk profiling of tobacco epidemic and estimated number of smokers living in China: a cross-sectional study based on PBICR.

机构信息

School of Public Health, Southern Medical University, Guangzhou510515, Guangzhou510515, China.

School of Health Management, Southern Medical University, Guangzhou510515, China.

出版信息

BMC Public Health. 2024 Aug 15;24(1):2219. doi: 10.1186/s12889-024-18559-x.

Abstract

BACKGROUND

Evidence on the prevalence of smoking in China remains insufficient, with most previous studies focusing on a single region. However, smoking prevalence exhibits significant inequalities across the entire country. This study aimed to evaluate the risk of tobacco prevalence across the country, taking into account spatial inequalities.

METHODS

The data used in this study were collected in 23 provinces, 5 autonomous regions, and 4 municipalities directly under the central government in 2022. Large population survey data were used, and a Bayesian geostatistical model was employed to investigate smoking prevalence rates across multiple spatial domains.

FINDINGS

Significant spatial variations were observed in smokers and exposure to secondhand smoke across China. Higher levels of smokers and secondhand smoke exposure were observed in western and northeastern regions. Additionally, the autonomous region of Tibet, Shanghai municipality, and Yunnan province had the highest prevalence of smokers, while Tibet, Qinghai province, and Yunnan province had the highest prevalence of exposure to secondhand smoke.

CONCLUSION

We have developed a model-based, high-resolution nationwide assessment of smoking risks and employed rigorous Bayesian geostatistical models to help visualize smoking prevalence predictions. These prediction maps provide estimates of the geographical distribution of smoking, which will serve as strong evidence for the formulation and implementation of smoking cessation policies.

HIGHLIGHTS

Our study investigated the prevalence of smokers and exposure to secondhand smoke in different spatial areas of China and explored various factors influencing the smoking prevalence. For the first time, our study applied Bayesian geostatistical modeling to generate a risk prediction map of smoking prevalence, which provides a more intuitive and clear understanding of the spatial disparities in smoking prevalence across different geographical regions, economic levels, and development status. We found significant spatial variations in smokers and secondhand smoke exposure in China, with higher rates in the western and northeastern regions.

摘要

背景

中国的吸烟流行率证据仍然不足,大多数先前的研究都集中在一个单一的地区。然而,吸烟流行率在全国范围内存在显著的不平等。本研究旨在评估全国范围内的烟草流行风险,同时考虑空间不平等因素。

方法

本研究使用的数据来自 2022 年中国 23 个省、5 个自治区和 4 个直辖市的大规模人口调查数据。采用贝叶斯地质统计学模型研究了多个空间域的吸烟流行率。

发现

中国的吸烟者和二手烟暴露在不同地区存在显著的空间差异。西部地区和东北地区的吸烟者和二手烟暴露水平较高。此外,西藏自治区、上海市和云南省的吸烟者比例最高,而西藏自治区、青海省和云南省的二手烟暴露比例最高。

结论

我们建立了一个基于模型的、高分辨率的全国吸烟风险评估,并采用严格的贝叶斯地质统计学模型来帮助可视化吸烟流行率预测。这些预测地图提供了吸烟地理分布的估计值,将为制定和实施戒烟政策提供有力证据。

亮点

本研究调查了中国不同空间地区的吸烟者和二手烟暴露情况,并探讨了影响吸烟流行率的各种因素。首次应用贝叶斯地质统计学模型生成了吸烟流行率的风险预测图,更直观、清晰地了解了不同地理区域、经济水平和发展状况下的吸烟流行率的空间差异。我们发现,中国的吸烟者和二手烟暴露在不同地区存在显著的空间差异,西部地区和东北地区的比例较高。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/64b6/11325620/84c0b9f96125/12889_2024_18559_Fig1_HTML.jpg

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