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基于地理信息系统(GIS)的空气污染对囊性纤维化分布的评估

Assessment of Cystic Fibrosis Distribution Based on Air Pollution by Geographical Information System (GIS).

作者信息

Hassanzad Maryam, Farnia Parissa, Farnia Poopak, Arian Mahdieh, Valinejadi Ali, Ghaffaripour Hosseinali, Baghaie Noushin, Hassanzad Nima, Mohammadpour Leila, Velayati Ali Akbar

机构信息

Pediatric Respiratory Diseases Research Center, National Research Institute of Tuberculosis and Lung Diseases (NRITLD), Shahid Beheshti University of Medical Sciences, Tehran, Iran.

Mycobacteriology Research Center, NRITLD, Shahid Beheshti University of Medical Sciences, Tehran, Iran.

出版信息

Tanaffos. 2022 Jan;21(1):31-44.

Abstract

BACKGROUND

It is widely accepted that concerns have been recently raised regarding the impact of air pollution on the health of children with cystic fibrosis (CF). Air pollution probably affects the exacerbation of CF and its laboratory findings. On the other hand, the World Health Organization (WHO) has asked all countries to update their data and reports on the distribution and prevalence of CF in different areas. The purpose of the present study was to investigate the distribution and prevalence of CF based on the levels of atmospheric pollutants, such as PM, PM, SO, NO, CO, and O in 22 zones of Tehran, and to report the abnormal laboratory findings that might indicate the exacerbation of CF.

MATERIALS AND METHODS

The studied statistical population included children with CF referred to Masih Daneshvari Hospital from 2003 to 2020. Demographic data, location of living area, and laboratory findings were extracted from patient records. The geographic information system (GIS) was applied to indicate the distribution and dispersion of the disease. The information related to air pollutants was collected from all stations in Tehran during the studied period by the Department of Environment of Tehran Province, and the average levels were used for final reporting.

RESULTS

The analysis results on 287 CF patients demonstrated that the risk of disease exacerbation significantly increased by the presence of air pollutants. In areas with multiple air pollutants, more laboratory findings were observed to be abnormal, and the lower survival rate for patients with CF was recorded. Investigating the CF distribution pattern based on climatic layers and above mean sea level (AMSL) indicated that distribution of the disease was higher in dry areas with lower AMSL and the higher volume of the atmospheric pollutants, which were primarily centralized in southern and central Tehran.

CONCLUSION

Environmental factors, such as air pollution, can be considered vital parameters, along with high-risk factors, such as pure and integrated race, migration, and mutation, influencing the prevalence and exacerbation of CF symptoms. Considering the higher prevalence of CF in deprived areas of Tehran, households' cultural and economic level appears to be a factor in the lack of diagnostic screening and prevention of CF in these areas. On the other hand, continuous monitoring of the air pollution caused by traffic and giving warnings to CF patients and their parents is particularly important.

摘要

背景

空气污染对囊性纤维化(CF)患儿健康的影响近来引发了广泛关注,这一点已被广泛认可。空气污染可能会影响CF的病情加重及其实验室检查结果。另一方面,世界卫生组织(WHO)要求所有国家更新不同地区CF的分布和患病率数据及报告。本研究的目的是基于德黑兰22个区域的大气污染物水平,如颗粒物(PM)、二氧化硫(SO)、氮氧化物(NO)、一氧化碳(CO)和臭氧(O),调查CF的分布和患病率,并报告可能表明CF病情加重的异常实验室检查结果。

材料与方法

研究的统计人群包括2003年至2020年转诊至马西·达内什瓦里医院的CF患儿。从患者记录中提取人口统计学数据、居住地区位置和实验室检查结果。应用地理信息系统(GIS)来显示疾病的分布和扩散情况。在研究期间,德黑兰省环境部从德黑兰所有监测站收集了与空气污染物相关的信息,并将平均水平用于最终报告。

结果

对287例CF患者的分析结果表明,空气污染物的存在显著增加了疾病加重的风险。在存在多种空气污染物的地区,观察到更多实验室检查结果异常,且CF患者的生存率较低。基于气候层和平均海平面以上(AMSL)调查CF的分布模式表明,该病在AMSL较低、大气污染物含量较高的干旱地区分布较高,这些地区主要集中在德黑兰南部和中部。

结论

空气污染等环境因素可被视为与纯种和混血种族、移民及突变等高风险因素一样的重要参数,影响CF的患病率和症状加重情况。考虑到CF在德黑兰贫困地区的患病率较高,家庭的文化和经济水平似乎是这些地区缺乏CF诊断筛查和预防的一个因素。另一方面,持续监测交通造成的空气污染并向CF患者及其家长发出警告尤为重要。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e6de/9571236/52de4cdd4446/Tanaffos-21-31-g001.jpg

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