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多病原体系统的统计推断。

Statistical inference for multi-pathogen systems.

机构信息

Department of Ecology & Evolutionary Biology, University of Michigan, Ann Arbor, Michigan, United States of America.

出版信息

PLoS Comput Biol. 2011 Aug;7(8):e1002135. doi: 10.1371/journal.pcbi.1002135. Epub 2011 Aug 18.

Abstract

There is growing interest in understanding the nature and consequences of interactions among infectious agents. Pathogen interactions can be operational at different scales, either within a co-infected host or in host populations where they co-circulate, and can be either cooperative or competitive. The detection of interactions among pathogens has typically involved the study of synchrony in the oscillations of the protagonists, but as we show here, phase association provides an unreliable dynamical fingerprint for this task. We assess the capacity of a likelihood-based inference framework to accurately detect and quantify the presence and nature of pathogen interactions on the basis of realistic amounts and kinds of simulated data. We show that when epidemiological and demographic processes are well understood, noisy time series data can contain sufficient information to allow correct inference of interactions in multi-pathogen systems. The inference power is dependent on the strength and time-course of the underlying mechanism: stronger and longer-lasting interactions are more easily and more precisely quantified. We examine the limitations of our approach to stochastic temporal variation, under-reporting, and over-aggregation of data. We propose that likelihood shows promise as a basis for detection and quantification of the effects of pathogen interactions and the determination of their (competitive or cooperative) nature on the basis of population-level time-series data.

摘要

人们越来越关注理解感染性病原体之间相互作用的性质和后果。病原体相互作用可以在不同的尺度上发生,无论是在共同感染的宿主内还是在它们共同循环的宿主群体中,并且可以是合作的或竞争的。病原体相互作用的检测通常涉及对主角的波动同步性的研究,但是正如我们在这里所展示的,相位关联为这项任务提供了不可靠的动态指纹。我们评估了基于似然的推理框架的能力,该框架能够基于真实数量和种类的模拟数据准确地检测和量化病原体相互作用的存在和性质。我们表明,当了解流行病学和人口统计学过程时,嘈杂的时间序列数据可以包含足够的信息,以允许对多病原体系统中的相互作用进行正确推断。推理能力取决于潜在机制的强度和时间过程:更强和更持久的相互作用更容易且更精确地量化。我们研究了我们的方法对随机时间变化、报告不足和数据过度聚合的限制。我们提出,似然有希望成为基于群体水平时间序列数据检测和量化病原体相互作用的影响及其确定其(竞争或合作)性质的基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8815/3158042/8289e6b3796c/pcbi.1002135.g001.jpg

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