Fischer Eaj, Pahan D, Chowdhury Sk, Oskam L, Richardus Jh
Department of Public Health, Erasmus MC, University Medical Center Rotterdam, Rotterdam, The Netherlands.
BMC Infect Dis. 2008 Sep 23;8:125. doi: 10.1186/1471-2334-8-125.
There is a higher case-detection rate for leprosy among spatially proximate contacts such as household members and neighbors. Spatial information regarding the clustering of leprosy can be used to improve intervention strategies. Identifying high-risk areas within villages around known cases can be helpful in finding new cases.
Using geographic information systems, we created digital maps of four villages in a highly endemic area in northwest Bangladesh. The villages were surveyed three times over four years. The spatial pattern of the compounds--a small group of houses--was analyzed, and we looked for spatial clusters of leprosy cases.
The four villages had a total population of 4,123. There were 14 previously treated patients and we identified 19 new leprosy patients during the observation period. However, we found no spatial clusters with a probability significantly different from the null hypothesis of random occurrence.
Spatial analysis at the microlevel of villages in highly endemic areas does not appear to be useful for identifying clusters of patients. The search for clustering should be extended to a higher aggregation level, such as the subdistrict or regional level. Additionally, in highly endemic areas, it appears to be more effective to target complete villages for contact tracing, rather than narrowly defined contact groups such as households.
在诸如家庭成员和邻居等空间上接近的接触者中,麻风病的病例检出率更高。关于麻风病聚集情况的空间信息可用于改进干预策略。在已知病例周围的村庄内识别高风险区域有助于发现新病例。
利用地理信息系统,我们绘制了孟加拉国西北部一个麻风病高度流行地区四个村庄的数字地图。在四年时间里对这些村庄进行了三次调查。分析了由一小群房屋组成的住宅区域的空间格局,并寻找麻风病病例的空间聚集情况。
这四个村庄总人口为4123人。有14名既往接受过治疗的患者,在观察期内我们识别出19名新的麻风病患者。然而,我们未发现空间聚集情况,其概率与随机发生的零假设无显著差异。
在麻风病高度流行地区的村庄微观层面进行空间分析似乎无助于识别患者聚集情况。对聚集情况的搜索应扩展到更高的聚集层面,如分区或区域层面。此外,在麻风病高度流行地区,针对整个村庄进行接触者追踪似乎比针对如家庭等狭义定义的接触群体更有效。