Seven Challenges for Spatial Analyses of Vector-Borne Diseases

T. Perkins, G. España, S. Moore, R. Oidtman, Swarnali Sharma, Brajendra K. Singh, A. Siraj, K. Soda, Morgan E. Smith, M. Walters, E. Michael
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Abstract

Prediction of spatial heterogeneity in disease incidence based on measurable spatial factors is a major goal of spatial epidemiology. There are a number of applied goals of these predictions, including appropriately targeting resources for surveillance and intervention and accurately quantifying disease burden. Although spatial heterogeneity is evident in the epidemiology of many diseases, several aspects of the biology of vector-borne diseases amplify this form of heterogeneity. Here, we review several aspects of this biology, highlighting seven distinct ways in which the biology of vector-borne diseases impacts understanding spatial heterogeneity in disease incidence. Whereas traditional methods place emphasis on spatial regression and other forms of statistical analysis of empirical data, the goal here is to offer a perspective on potential pitfalls of analyses that take data at face value and do not acknowledge the complex, nonlinear, and dynamic relationships between spatial patterns of disease incidence and spatial heterogeneity in transmission.
媒介传播疾病空间分析的七大挑战
基于可测量的空间因子预测疾病发病率的空间异质性是空间流行病学的主要目标。这些预测有许多适用的目标,包括适当地定位监测和干预资源以及准确量化疾病负担。虽然在许多疾病的流行病学中存在明显的空间异质性,但媒介传播疾病的生物学的几个方面放大了这种异质性。在这里,我们回顾了该生物学的几个方面,重点介绍了媒介传播疾病生物学影响理解疾病发病率空间异质性的七种不同方式。传统方法强调空间回归和其他形式的经验数据统计分析,而本研究的目标是提供一种观点,说明分析的潜在缺陷,这些分析只考虑数据的表面价值,而不承认疾病发病率的空间模式与传播的空间异质性之间的复杂、非线性和动态关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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