Law D C G, Serre M L, Christakos G, Leone P A, Miller W C
Epidemiology Department, CB#7435, University of North Carolina at Chapel Hill, Chapel Hill, NC 27599-7435, USA.
Sex Transm Infect. 2004 Aug;80(4):294-9. doi: 10.1136/sti.2003.006700.
We analysed and mapped the distribution of four reportable sexually transmitted diseases, chlamydial infection/non-gonococcal urethritis (chlamydial infection), gonorrhoea, primary and secondary syphilis (syphilis), and HIV infection, for Wake County, North Carolina, to optimise an intervention.
We used STD surveillance data reported to Wake County, for the year 2000 to analyse and map STD rates. STD rates were mathematically represented as a spatial random field. We analysed spatial variability by calculating and modelling covariance functions of random field theory. Covariances are useful in assessing spatial patterns of disease locally and at a distance. We combined observed STD rates and appropriate covariance models using a geostatistical method called kriging, to predict STD rates and associated prediction errors for a grid covering Wake County. Final disease estimates were interpolated using a spline with tension and mapped to generate a continuous surface of infection.
Lower incidence STDs exhibited larger spatial variability and smaller neighbourhoods of influence than higher incidence STDs. Each reported STD had a clustered spatial distribution with one primary core area of infection. Core areas overlapped for all four STDs.
Spatial heterogeneity within STD suggests that STD specific prevention strategies should not be targeted uniformly across Wake County, but rather to core areas. Overlap of core areas among STDs suggests that intervention and prevention strategies can be combined to target multiple STDs effectively. Geostatistical techniques are objective, population level approaches to spatial analysis and mapping that can be used to visualise disease patterns and identify emerging outbreaks.
我们分析并绘制了北卡罗来纳州韦克县四种应报告性传播疾病(衣原体感染/非淋菌性尿道炎(衣原体感染)、淋病、一期和二期梅毒(梅毒)以及艾滋病毒感染)的分布情况,以优化干预措施。
我们使用了2000年上报给韦克县的性传播疾病监测数据来分析和绘制性传播疾病发病率。性传播疾病发病率在数学上表示为空间随机场。我们通过计算和建模随机场理论的协方差函数来分析空间变异性。协方差有助于评估局部和远距离的疾病空间模式。我们使用一种名为克里金法的地质统计学方法,将观察到的性传播疾病发病率与适当的协方差模型相结合,以预测覆盖韦克县的网格的性传播疾病发病率及相关预测误差。最终的疾病估计值使用带张力的样条进行插值,并绘制地图以生成连续的感染表面。
与高发病率性传播疾病相比,低发病率性传播疾病表现出更大的空间变异性和更小的影响邻域。每种报告的性传播疾病都有聚集的空间分布,有一个主要的感染核心区域。所有四种性传播疾病的核心区域相互重叠。
性传播疾病内的空间异质性表明,性传播疾病特定的预防策略不应在韦克县统一实施,而应针对核心区域。性传播疾病之间核心区域的重叠表明,干预和预防策略可以结合起来,有效地针对多种性传播疾病。地质统计学技术是客观的、基于人群水平的空间分析和绘图方法,可用于可视化疾病模式并识别新出现的疫情。