Disease Management Research Using Event Graphs

H.G. Allore , L.W. Schruben
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引用次数: 5

Abstract

Event Graphs, conditional representations of stochastic relationships between discrete events, simulate disease dynamics. In this paper, we demonstrate how Event Graphs, at an appropriate abstraction level, also extend and organize scientific knowledge about diseases. They can identify promising treatment strategies and directions for further research and provide enough detail for testing combinations of new medicines and interventions. Event Graphs can be enriched to incorporate and validate data and test new theories to reflect an expanding dynamic scientific knowledge base and establish performance criteria for the economic viability of new treatments. To illustrate, an Event Graph is developed for mastitis, a costly dairy cattle disease, for which extensive scientific literature exists. With only a modest amount of imagination, the methodology presented here can be seen to apply modeling to any disease, human, plant, or animal. The Event Graph simulation presented here is currently being used in research and in a new veterinary epidemiology course.

使用事件图的疾病管理研究
事件图,离散事件之间随机关系的条件表示,模拟疾病动态。在本文中,我们演示了事件图如何在适当的抽象层次上扩展和组织有关疾病的科学知识。它们可以确定有希望的治疗策略和进一步研究的方向,并为测试新药和干预措施的组合提供足够的细节。事件图可以丰富,以纳入和验证数据,并测试新的理论,以反映不断扩大的动态科学知识库,并为新治疗方法的经济可行性建立性能标准。为了说明这一点,为乳腺炎开发了一个事件图,乳腺炎是一种昂贵的奶牛疾病,存在大量的科学文献。只要稍加想象,就可以看到这里提出的方法可以应用于任何疾病,人类,植物或动物的建模。这里提出的事件图模拟目前正在研究和新的兽医流行病学课程中使用。
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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