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坦桑尼亚农村村庄家庭居住情况与疟疾媒介叮咬风险之间的相关性:对控制干预措施高分辨率空间定位的启示

Correlations between household occupancy and malaria vector biting risk in rural Tanzanian villages: implications for high-resolution spatial targeting of control interventions.

作者信息

Kaindoa Emmanuel W, Mkandawile Gustav, Ligamba Godfrey, Kelly-Hope Louise A, Okumu Fredros O

机构信息

Environmental Health and Ecological Sciences Thematic Group, Ifakara Health Institute, Morogoro, Tanzania.

Liverpool School of Tropical Medicine, Pembroke Place, Liverpool, UK.

出版信息

Malar J. 2016 Apr 12;15:199. doi: 10.1186/s12936-016-1268-8.

Abstract

BACKGROUND

Fine-scale targeting of interventions is increasingly important where epidemiological disease profiles depict high geographical stratifications. This study verified correlations between household biomass and mosquito house-entry using experimental hut studies, and then demonstrated how geographical foci of mosquito biting risk can be readily identified based on spatial distributions of household occupancies in villages.

METHODS

A controlled 4 × 4 Latin square experiment was conducted in rural Tanzania, in which no, one, three or six adult male volunteers slept under intact bed nets, in experimental huts. Mosquitoes entering the huts were caught using exit interception traps on eaves and windows. Separately, monthly mosquito collections were conducted in 96 randomly selected households in three villages using CDC light traps between March-2012 and November-2013. The number of people sleeping in the houses and other household and environmental characteristics were recorded. ArcGIS 10 (ESRI-USA) spatial analyst tool, Gi* Ord Statistic was used to analyse clustering of vector densities and household occupancy.

RESULTS

The densities of all mosquito genera increased in huts with one, three or six volunteers, relative to huts with no volunteers, and direct linear correlations within tested ranges (P < 0.001). Significant geographical clustering of indoor densities of malaria vectors, Anopheles arabiensis and Anopheles funestus, but not Culex or Mansonia species occurred in locations where households with highest occupancy were also most clustered (Gi* P ≤ 0.05, and Gi* Z-score ≥ 1.96).

CONCLUSIONS

This study demonstrates strong correlations between household occupancy and malaria vector densities in households, but also spatial correlations of these variables within and between villages in rural southeastern Tanzania. Fine-scale clustering of indoor densities of vectors within and between villages occurs in locations where houses with highest occupancy are also clustered. The study indicates potential for using household census data to preliminarily identify households with greatest Anopheles mosquito biting risk.

摘要

背景

在流行病学疾病特征呈现高度地理分层的情况下,精准干预目标定位变得愈发重要。本研究通过实验小屋研究验证了家庭生物质与蚊子进入房屋之间的相关性,然后展示了如何根据村庄内家庭居住情况的空间分布轻松识别蚊子叮咬风险的地理聚集点。

方法

在坦桑尼亚农村进行了一项受控的4×4拉丁方实验,其中0名、1名、3名或6名成年男性志愿者在实验小屋内的完整蚊帐下睡觉。进入小屋的蚊子通过屋檐和窗户上的出口拦截陷阱捕获。另外,在2012年3月至2013年11月期间,使用疾控中心诱蚊灯在三个村庄的96个随机选择的家庭中每月进行一次蚊子采集。记录房屋内睡觉的人数以及其他家庭和环境特征。使用ArcGIS 10(美国环境系统研究所)空间分析工具Gi* Ord统计量分析病媒密度和家庭居住情况的聚集性。

结果

与没有志愿者的小屋相比,有1名、3名或6名志愿者的小屋中所有蚊子属的密度均增加,且在测试范围内呈直接线性相关(P < 0.001)。在居住人数最多的家庭也最聚集的地方,出现了疟疾病媒阿拉伯按蚊和嗜人按蚊室内密度的显著地理聚集,但库蚊或曼蚊属物种没有出现(Gi* P≤0.05,且Gi* Z分数≥1.96)。

结论

本研究表明家庭居住情况与家庭内疟疾病媒密度之间存在强相关性,同时也表明这些变量在坦桑尼亚东南部农村村庄内部和村庄之间存在空间相关性。在居住人数最多的房屋也聚集的地方,村庄内部和村庄之间出现了病媒室内密度的精细聚集。该研究表明利用家庭普查数据初步识别感染按蚊叮咬风险最大的家庭具有潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4e4d/4828883/09be5643fdaa/12936_2016_1268_Fig1_HTML.jpg

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