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Scaling Law Characteristics and Spatiotemporal Multicomponent Analysis of Syphilis from 2016 to 2022 in Zhejiang Province, China

Forum of nutrition(2023)

Zhejiang Prov Ctr Dis Control & Prevent | Hangzhou Ctr Dis Control & Prevent

Cited 2|Views24
Abstract
BackgroundSyphilis has caused epidemics for hundreds of years, and the global syphilis situation remains serious. The reported incidence rate of syphilis in Zhejiang Province has ranked first in the province in terms of notifiable infectious diseases for many years and is the highest in China. This study attempts to use the scaling law theory to study the relationship between population size and different types of syphilis epidemics, while also exploring the main driving factors affecting the incidence of syphilis in different regions.MethodsData on syphilis cases and affected populations at the county level were obtained from the China Disease Control and Prevention Information System. The scaling relationship between different stages of syphilis and population size was explained by scaling law. The trend of the incidence from 2016 to 2022 was tested by the joinpoint regression. The index of distance between indices of simulation and observation (DISO) was applied to evaluate the overall performance of joinpoint regression model. Furthermore, a multivariate time series model was employed to identify the main driving components that affected the occurrence of syphilis at the county level. The p value less than 0.05 or confidence interval (CI) does not include 0 represented statistical significance for all the tests.ResultsFrom 2016 to 2022, a total of 204,719 cases of syphilis were reported in Zhejiang Province, including 2 deaths, all of which were congenital syphilis. Latent syphilis accounted for 79.47% of total syphilis cases. The annual percent change (APCs) of all types of syphilis, including primary syphilis, secondary syphilis, tertiary syphilis, congenital syphilis and latent syphilis, were − 21.70% (p < 0.001, 95% CI: −26.70 to −16.30), −16.80% (p < 0.001, 95% CI: −20.30 to −13.30), −8.70% (p < 0.001, 95% CI: −11.30 to −6.00), −39.00% (p = 0.001, 95% CI: −49.30 to −26.60) and − 7.10% (p = 0.008, 95% CI: −11.20 to −2.80), respectively. The combined scaling exponents of primary syphilis, secondary syphilis, tertiary syphilis, congenital syphilis and latent syphilis based on the random effects model were 0.95 (95% CI: 0.88 to 1.01), 1.14 (95% CI: 1.12 to 1.16), 0.43 (95% CI: 0.37 to 0.49), 0.0264 (95% CI: −0.0047 to 0.0575) and 0.88 (95% CI: 0.82 to 0.93), respectively. The overall average effect values of the endemic component, spatiotemporal component and autoregressive component for all counties were 0.24, 0.035 and 0.72, respectively. The values of the autoregressive component for most counties were greater than 0.7. The endemic component of the top 10 counties with the highest values was greater than 0.34. Two counties with value of the spatiotemporal component higher than 0.1 were Xihu landscape county and Shengsi county. From 2016 to 2022, the endemic and autoregressive components of each county showed obvious seasonal changes.ConclusionThe scaling exponent had both temporal trend characteristics and significant heterogeneity in the association between each type of syphilis and population size. Primary syphilis and latent syphilis exhibited a linear pattern, secondary syphilis presented a superlinear pattern, and tertiary syphilis exhibited a sublinear pattern. This suggested that further prevention of infection and transmission among high-risk populations and improvement of diagnostic accuracy in underdeveloped areas is needed. The autoregressive components and the endemic components were the main driving factors that affected the occurrence of syphilis. Targeted prevention and control strategies must be developed based on the main driving modes of the epidemic in each county.
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Key words
syphilis,scaling law,multivariate time series model,joinpoint regression,epidemiology
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要点】:本研究运用标度律理论探讨了浙江省2016至2022年间不同类型梅毒疫情与人口规模的关系,并研究了影响不同地区梅毒发病率的主要驱动因素。创新点在于引入了标度律理论来分析梅毒疫情与人口规模之间的标度关系,并建立了多变量时间序列模型来识别影响县级梅毒发生的驱动成分。

方法】:从中国的疾病控制和预防信息系统中获取县级梅毒病例和受影响人口数据,通过标度律解释不同阶段梅毒与人口规模的标度关系,运用 Joinpoint 回归测试2016至2022年间发病率的趋势,使用模拟与观测指数差(DISO)评估 Joinpoint 回归模型的整体性能。

实验】:在多变量时间序列模型中,主要驱动影响梅毒发生的有传染性成分和时空成分,大多数县的传染性成分值大于0.7,排名前10的县中,有2县的时空成分值超过0.1。从2016到2022年,各县的传染性成分和自回归成分显示出明显的季节性变化。