INSERM, CESP Environmental epidemiology of cancer, U1018, Villejuif, France.
Int J Health Geogr. 2011 Oct 4;10:53. doi: 10.1186/1476-072X-10-53.
For many years, the detection of clusters has been of great public health interest. Several detection methods have been developed, the most famous of which is the circular scan method. The present study, which was conducted in the context of a rare disease distributed over a large territory (7675 cases registered over 17 years and located in 1895 units), aimed to evaluate the performance of several of the methods in realistic hot-spot cluster situations.
All the methods considered aim to identify the most likely cluster area, i.e. the zone that maximizes the likelihood ratio function, among a set of cluster candidates. The circular and elliptic scan methods were developed to detect regularly shaped clusters. Four other methods that focus on irregularly shaped clusters were also considered (the flexible scan method, the genetic algorithm method, and the double connected and maximum linkage spatial scan methods). The power of the methods was evaluated via Monte Carlo simulations under 27 alternative scenarios that corresponded to three cluster population sizes (20, 45 and 115 expected cases), three cluster shapes (linear, U-shaped and compact) and three relative risk values (1.5, 2.0 and 3.0).
Three situations emerged from this power study. All the methods failed to detect the smallest clusters with a relative risk lower than 3.0. The power to detect the largest cluster with relative risk of 1.5 was markedly better for all methods, but, at most, half of the true cluster was captured. For other clusters, either large or with the highest relative risk, the standard elliptic scan method appeared to be the best method to detect linear clusters, while the flexible scan method localized the U-shaped clusters more precisely than other methods. Large compact clusters were detected well by all methods, with better results for the circular and elliptic scan methods.
The elliptic scan method and flexible scan method seemed the most able to detect clusters of a rare disease in a large territory. However, the probability of detecting small clusters with relative risk lower than 3.0 remained low with all the methods tested.
多年来,聚集的检测一直是公共卫生的重要关注点。已经开发了几种检测方法,其中最著名的是圆形扫描方法。本研究在一种分布在广大地域的罕见疾病的背景下进行(17 年来共登记了 7675 例病例,分布在 1895 个单位),旨在评估几种方法在现实热点聚集情况下的性能。
所有考虑的方法旨在确定最有可能的聚集区域,即最大化似然比函数的区域,在一组聚集候选区域中。圆形和椭圆形扫描方法是为了检测规则形状的聚集而开发的。还考虑了另外四种关注不规则形状聚集的方法(灵活扫描方法、遗传算法方法以及双连接和最大链接空间扫描方法)。方法的效能通过在 27 种替代情景下的蒙特卡罗模拟进行评估,这些情景对应于三种聚集人群大小(20、45 和 115 例预期病例)、三种聚集形状(线性、U 形和紧凑)和三种相对风险值(1.5、2.0 和 3.0)。
从这项效能研究中出现了三种情况。所有方法都无法检测到相对风险低于 3.0 的最小聚集。对于所有方法来说,检测相对风险为 1.5 的最大聚集的效能明显更好,但最多只能捕捉到一半的真正聚集。对于其他聚集,无论是大的还是相对风险最高的,标准椭圆形扫描方法似乎是检测线性聚集的最佳方法,而灵活扫描方法比其他方法更精确地定位 U 形聚集。所有方法都能很好地检测到大的紧凑聚集,圆形和椭圆形扫描方法的结果更好。
椭圆形扫描方法和灵活扫描方法似乎最能够在大地区检测罕见疾病的聚集。然而,所有测试方法检测相对风险低于 3.0 的小聚集的概率仍然较低。