Rogers D J, Williams B G
Department of Zoology, Oxford.
Parasitology. 1993;106 Suppl:S77-92. doi: 10.1017/s0031182000086133.
The paper examines the possible contributions to be made by Geographic Information Systems (GIS) to studies on human and animal trypanosomiasis in Africa. The epidemiological characteristics of trypanosomiasis are reviewed in the light of the formula for the basic reproductive rate or number of vector-borne diseases. The paper then describes how important biological characteristics of the vectors of trypanosomiasis in West Africa may be monitored using data from the NOAA series of meteorological satellites. This will lead to an understanding of the spatial distribution of both vectors and disease. An alternative, statistical approach to understanding the spatial distribution of tsetse, based on linear discriminant analysis, is illustrated with the example of Glossina morsitans in Zimbabwe, Kenya and Tanzania. In the case of Zimbabwe, a single climatic variable, the maximum of the mean monthly temperature, correctly predicts the pre-rinderpest distribution of tsetse over 82% of the country; additional climatic and vegetation variables do not improve considerably on this figure. In the cases of Kenya and Tanzania, however, another variable, the maximum of the mean monthly Normalized Difference Vegetation Index, is the single most important variable, giving correct predictions over 69% of the area; the other climatic and vegetation variables improve this to 82% overall. Such statistical analyses can guide field work towards the correct biological interpretation of the distributional limits of vectors and may also be used to make predictions about the impact of global change on vector ranges. Examples are given of the areas of Zimbabwe which would become climatically suitable for tsetse given mean temperature increases of 1, 2 and 3 degrees Centigrade. Five possible causes for sleeping sickness outbreaks are given, illustrated by the analysis of field data or from the output of mathematical models. One cause is abiotic (variation in rainfall), three are biotic (variation in vectorial potential, host immunity, or parasite virulence) and one is historical (the impact of explorers, colonizers and dictators). The implications for disease monitoring, in order to anticipate sleeping sickness outbreaks, are briefly discussed. It is concluded that present data are inadequate to distinguish between these hypotheses. The idea that sleeping sickness outbreaks are periodic (i.e. cyclical) is only barely supported by hard data. Hence it is even difficult to conclude whether the major cause of sleeping sickness outbreaks is biotic (which, in model situations, tends to produce cyclical epidemics) or abiotic.(ABSTRACT TRUNCATED AT 400 WORDS)
本文探讨了地理信息系统(GIS)对非洲人类和动物锥虫病研究可能做出的贡献。根据媒介传播疾病的基本繁殖率公式,对锥虫病的流行病学特征进行了综述。本文接着描述了如何利用美国国家海洋和大气管理局(NOAA)系列气象卫星的数据来监测西非锥虫病媒介的重要生物学特征。这将有助于了解媒介和疾病的空间分布。以津巴布韦、肯尼亚和坦桑尼亚的采采蝇为例,说明了一种基于线性判别分析来理解采采蝇空间分布的统计方法。在津巴布韦,单一气候变量,即月平均温度的最高值,能正确预测该国82%以上地区采采蝇在牛瘟前的分布情况;其他气候和植被变量并未显著改善这一预测结果。然而,在肯尼亚和坦桑尼亚,另一个变量,即月平均归一化植被指数的最高值,是最重要的单一变量,能正确预测69%以上区域的情况;其他气候和植被变量将整体预测准确率提高到了82%。此类统计分析可为实地工作提供指导,以便对媒介分布界限进行正确的生物学解读,还可用于预测全球变化对媒介分布范围的影响。文中给出了津巴布韦在平均温度分别升高1摄氏度、2摄氏度和3摄氏度时,气候将变得适宜采采蝇生存的区域示例。文中给出了昏睡病暴发的五个可能原因,并通过实地数据分析或数学模型输出进行说明。一个原因是非生物因素(降雨变化),三个是生物因素(媒介潜能、宿主免疫力或寄生虫毒力的变化),一个是历史因素(探险家、殖民者和独裁者的影响)。简要讨论了为预测昏睡病暴发而进行疾病监测的意义。结论是,目前的数据不足以区分这些假设。昏睡病暴发具有周期性(即循环性)这一观点仅得到少量确凿数据的支持。因此,甚至难以断定昏睡病暴发的主要原因是生物因素(在模型情况下,往往会导致周期性流行)还是非生物因素。(摘要截选至400字)