Singh Brajendra K, Michael Edwin
Department of Biological Sciences, University of Notre Dame, Notre Dame, IN, USA.
Parasit Vectors. 2015 Oct 22;8:522. doi: 10.1186/s13071-015-1132-7.
Mathematical models of parasite transmission can help integrate a large body of information into a consistent framework, which can then be used for gaining mechanistic insights and making predictions. However, uncertainty, spatial variability and complexity, can hamper the use of such models for decision making in parasite management programs.
We have adapted a Bayesian melding framework for calibrating simulation models to address the need for robust modelling tools that can effectively support management of lymphatic filariasis (LF) elimination in diverse endemic settings. We applied this methodology to LF infection and vector biting data from sites across the major LF endemic regions in order to quantify model parameters, and generate reliable predictions of infection dynamics along with credible intervals for modelled output variables. We used the locally calibrated models to estimate breakpoint values for various indicators of parasite transmission, and simulate timelines to parasite extinction as a function of local variations in infection dynamics and breakpoints, and effects of various currently applied and proposed LF intervention strategies.
We demonstrate that as a result of parameter constraining by local data, breakpoint values for all the major indicators of LF transmission varied significantly between the sites investigated. Intervention simulations using the fitted models showed that as a result of heterogeneity in local transmission and extinction dynamics, timelines to parasite elimination in response to the current Mass Drug Administration (MDA) and various proposed MDA with vector control strategies also varied significantly between the study sites. Including vector control, however, markedly reduced the duration of interventions required to achieve elimination as well as decreased the risk of recrudescence following stopping of MDA.
We have demonstrated how a Bayesian data-model assimilation framework can enhance the use of transmission models for supporting reliable decision making in the management of LF elimination. Extending this framework for delivering predictions in settings either lacking or with only sparse data to inform the modelling process, however, will require development of procedures to estimate and use spatio-temporal variations in model parameters and inputs directly, and forms the next stage of the work reported here.
寄生虫传播的数学模型有助于将大量信息整合到一个一致的框架中,进而用于获得机制性见解并进行预测。然而,不确定性、空间变异性和复杂性可能会妨碍此类模型在寄生虫管理计划决策中的应用。
我们采用了一种贝叶斯融合框架来校准模拟模型,以满足对强大建模工具的需求,这些工具能够有效支持在不同流行地区消除淋巴丝虫病(LF)的管理工作。我们将此方法应用于来自主要LF流行地区各地点的LF感染和媒介叮咬数据,以量化模型参数,并生成感染动态的可靠预测以及模型输出变量的可信区间。我们使用局部校准的模型来估计寄生虫传播各种指标的断点值,并模拟作为感染动态和断点局部变化以及各种当前应用和提议的LF干预策略效果函数的寄生虫灭绝时间线。
我们证明,由于本地数据对参数的约束,LF传播所有主要指标的断点值在所调查的地点之间存在显著差异。使用拟合模型进行的干预模拟表明,由于本地传播和灭绝动态的异质性,响应当前大规模药物管理(MDA)以及各种提议的结合病媒控制策略的MDA,各研究地点的寄生虫消除时间线也存在显著差异。然而,纳入病媒控制显著缩短了实现消除所需的干预持续时间,并降低了停止MDA后复发的风险。
我们已经证明了贝叶斯数据 - 模型同化框架如何能够增强传播模型在支持LF消除管理中可靠决策方面的应用。然而,将此框架扩展到在缺乏数据或仅有稀疏数据以告知建模过程的环境中进行预测,将需要开发直接估计和使用模型参数及输入中的时空变化的程序,这构成了本文所报告工作的下一阶段。