基于时空特征的风险分析:以疾病风险制图为例

Vipul Raheja, K. Rajan
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引用次数: 2

摘要

风险分析的挑战之一是,确定的决定因素是基于因果关系驱动的方法,主要来自潜在因素的相关性研究。这些方法不仅需要大量的主题信息层——空间的和非空间的,这些信息层可能代表感兴趣的因素,而且往往忽略结果本身的空间和时间变异性(例如,疾病发病率)。另一方面,由于过去25年来监测和监测系统的进步使空间明确数据的可用性增加,因此需要有效地利用这些数据来了解或解释这一现象本身。在本文中,我们提出了一种方法来利用观察到的事件数据——疾病发生的空间和时间特征,来生成风险图,这将为其地理传播提供有价值的见解,并有助于量化与之相关的空间风险因素。显然,这种方法将有助于确定决策过程的优先次序,以便更好地评估和管理风险,包括疾病暴发。在美国的两个州沙门氏菌病的说明性案例研究,提出了证明该方法的效用。结果表明,该方法本身可以应用于具有类似时空动态行为的其他领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Risk analysis based on spatio-temporal characterization: a case study of disease risk mapping
One of the challenges in risk analysis has been that the determinants which are identified are based on a causality-driven approach drawn largely from the correlation studies of underlying factors. These approaches not only require numerous thematic information layers - spatial and non-spatial, that may potentially represent the factors of interest, but also tend to ignore the spatial and temporal variability of the outcome itself (say, disease incidence). On the other hand, owing to the advances in surveillance and monitoring systems resulting in enhanced availability of spatially explicit data over the last 25 years, there is a need to use these effectively at understanding or explaining the phenomenon itself. In this paper, we propose a method to leverage the observed event data - both spatial and temporal characterizations of disease occurrences, to generate a risk map that will provide valuable insights into its geographical spread and to help quantify the spatial risk factor associated with it. It is evident that such a methodology will help prioritize decision-making process for better risk assessment and management including disease outbreak. Illustrative case studies of Salmonellosis disease in two states of USA are presented to demonstrate the utility of the method. It is observed that this method, per se, can be applied to other domains that exhibit similar spatio-temporal dynamic behavior.
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