[Spatiotemporal distribution of newly diagnosed echinococcosis patients in Qinghai Province from 2016 to 2022].

X Cui, X Ma, N Liu, J Liu, W Lei, S Wu, X Qin, C Gong, X Mo, S Yang, T Zhang, L Cao
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引用次数: 0

Abstract

Objective: To investigate the spatiotemporal distribution characteristics and potential influencing factors of newly diagnosed echinococcosis cases in Qinghai Province from 2016 to 2022, so as to provide insights into the formulation of the echinococcosis control strategy in Qinghai Province.

Methods: The number of individuals screened for echinococcosis, number of newly diagnosed echinococcosis cases, number of registered dogs and number of stray dogs were captured from the annual reports of echinococcosis control program in Qinghai Province from 2016 to 2022, and the detection of newly diagnosed echinococcosis cases was calculated. The number of populations, precipitation, temperature, wind speed, sunshine hours, average altitude, number of year-end cattle stock, number of year-end sheep stock, gross domestic product (GDP) per capita, and number of village health centers in each county (district) of Qinghai Province were captured from the Qinghai Provincial Statistical Yearbook, and county-level electronic maps in Qinghai Province were downloaded from the National Platform for Common Geospatial Information Services. The software ArcGIS 10.8 was used to map the distribution of newly diagnosed echinococcosis cases in Qinghai Province, and the spatial autocorrelation analysis of newly diagnosed echinococcosis cases was performed. In addition, the spacetime scan analyses of number of individuals screened for echinococcosis, number of newly diagnosed echinococcosis cases and geographical coordinates in Qinghai Province were performed with the software SaTScan 10.1.2, and the spatial stratified heterogeneity of the detection of newly diagnosed echinococcosis cases was investigated with the software GeoDetector.

Results: A total of 6 569 426 residents were screened for echinococcosis in Qinghai Province from 2016 to 2022, and 5 924 newly diagnosed echinococcosis cases were found. The detection of newly diagnosed echinococcosis cases appeared a tendency towards a decline over years from 2016 to 2022 (χ2 = 11.107, P < 0.01), with the highest detection in Guoluo Tibetan Autonomous Prefecture in 2017 (82.12/105). There were spatial clusters in the detection of newly diagnosed echinococcosis cases in Qinghai Province from 2016 to 2018 (Moran's I = 0.34 to 0.65, all Z values > 1.96, all P values < 0.05), and the distribution of newly diagnosed echinococcosis cases appeared random distribution from 2019 to 2022 (Moran's I = -0.09 to 0.04, all Z values < 1.96, all P values > 0.05). Local spatial autocorrelation analysis showed high-high clusters and low-low clusters in the detection of new diagnosed echinococcosis cases in Qinghai Province from 2016 to 2022, and space-time scan analysis showed that the first most likely cluster areas of newly diagnosed echinococcosis cases in Qinghai Province from 2016 to 2022 were mainly distributed in Yushu Tibetan Autonomous Prefecture and Guoluo Tibetan Autonomous Prefecture. GeoDetector-based analysis of the driving factors for the spatial stratified heterogeneity of detection of newly diagnosed echinococcosis cases in Qinghai Province showed that average altitude, number of village health centers, number of cattle and sheep stock, GDP per capita, annual average sunshine hours, and annual average temperature had a strong explanatory power for the spatial distribution of newly diagnosed echinococcosis cases, with q values of 0.630, 0.610, 0.600, 0.590, 0.588, 0.537 and 0.526, respectively.

Conclusions: The detection of newly diagnosed echinococcosis cases appeared a tendency towards a decline in Qinghai Province over years from 2016 to 2022, showing spatial clustering. Targeted control measures are required in cluster areas of newly diagnosed echinococcosis cases for further control of the disease.

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2016 - 2022年青海省新发棘球蚴病患者时空分布分析
目的:了解青海省2016 - 2022年棘球蚴病新发病例的时空分布特征及潜在影响因素,为青海省棘球蚴病防治策略的制定提供参考。方法:采集青海省2016 - 2022年棘球蚴病防治项目年度报告中棘球蚴病筛查人数、新诊断棘球蚴病病例数、登记犬数和流浪犬数,计算新诊断棘球蚴病的检出率。从《青海省统计年鉴》中获取青海省各县(区)人口数量、降水量、气温、风速、日照时数、平均海拔、年末牛存栏数、年末羊存栏数、人均国内生产总值(GDP)、村卫生院数,并从国家公共地理空间信息服务平台下载青海省县级电子地图。采用ArcGIS 10.8软件绘制青海省新诊断棘球蚴病病例分布图,并对新诊断棘球蚴病病例进行空间自相关分析。此外,利用SaTScan 10.1.2软件对青海省棘球蚴病筛查人数、新诊断棘球蚴病病例数和地理坐标进行时空扫描分析,并利用GeoDetector软件对新诊断棘球蚴病病例检测的空间分层异质性进行分析。结果:2016 - 2022年青海省共筛查居民棘球蚴病6 569 426例,发现新诊断棘球蚴病5 924例。2016 - 2022年棘球蚴病新诊断率呈逐年下降趋势(χ2 = 11.107, P < 0.01), 2017年果洛藏族自治州棘球蚴病新诊断率最高(82.12/105)。2016 - 2018年青海省新诊断棘球蚴病病例检测呈空间聚类分布(Moran’s I = 0.34 ~ 0.65, Z值均为> 1.96,P值均< 0.05),2019 - 2022年棘球蚴病新诊断病例分布呈随机分布(Moran’s I = -0.09 ~ 0.04, Z值均< 1.96,P值均为> 0.05)。局部空间自相关分析显示,2016 - 2022年青海省新发棘球蚴病病例检测呈高聚类和低聚类,时空扫描分析显示,2016 - 2022年青海省新发棘球蚴病病例第一可能聚集区主要分布在玉树藏族自治州和果洛藏族自治州。基于geodetection的青海省新发棘球蚴病病例空间分层异质性驱动因素分析表明,平均海拔、村卫生院数、牛羊存畜量、人均GDP、年平均日照时数、年平均气温对新发棘球蚴病病例的空间分布具有较强的解释力,其q值分别为0.630、0.610、0.600、0.590、0.588。分别为0.537和0.526。结论:2016 - 2022年青海省棘球蚴病新发病例检出率呈下降趋势,呈空间聚类。为进一步控制该病,需要在新诊断棘球蚴病病例聚集地区采取有针对性的控制措施。
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来源期刊
中国血吸虫病防治杂志
中国血吸虫病防治杂志 Medicine-Medicine (all)
CiteScore
1.30
自引率
0.00%
发文量
7021
期刊介绍: Chinese Journal of Schistosomiasis Control (ISSN: 1005-6661, CN: 32-1374/R), founded in 1989, is a technical and scientific journal under the supervision of Jiangsu Provincial Health Commission and organised by Jiangsu Institute of Schistosomiasis Control. It is a scientific and technical journal under the supervision of Jiangsu Provincial Health Commission and sponsored by Jiangsu Institute of Schistosomiasis Prevention and Control. The journal carries out the policy of prevention-oriented, control-oriented, nationwide and grassroots, adheres to the tenet of scientific research service for the prevention and treatment of schistosomiasis and other parasitic diseases, and mainly publishes academic papers reflecting the latest achievements and dynamics of prevention and treatment of schistosomiasis and other parasitic diseases, scientific research and management, etc. The main columns are Guest Contributions, Experts‘ Commentary, Experts’ Perspectives, Experts' Forums, Theses, Prevention and Treatment Research, Experimental Research, The main columns include Guest Contributions, Expert Commentaries, Expert Perspectives, Expert Forums, Treatises, Prevention and Control Studies, Experimental Studies, Clinical Studies, Prevention and Control Experiences, Prevention and Control Management, Reviews, Case Reports, and Information, etc. The journal is a useful reference material for the professional and technical personnel of schistosomiasis and parasitic disease prevention and control research, management workers, and teachers and students of medical schools.    The journal is now included in important domestic databases, such as Chinese Core List (8th edition), China Science Citation Database (Core Edition), China Science and Technology Core Journals (Statistical Source Journals), and is also included in MEDLINE/PubMed, Scopus, EBSCO, Chemical Abstract, Embase, Zoological Record, JSTChina, Ulrichsweb, Western Pacific Region Index Medicus, CABI and other international authoritative databases.
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