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Model distinguishability and inference robustness in mechanisms of cholera transmission and loss of immunity

机译:霍乱传播和免疫丧失机制的模型可区分性和推理鲁棒性

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摘要

Mathematical models of cholera and waterborne disease vary widely in their structures, in terms of transmission pathways, loss of immunity, and a range of other features. These differences can affect model dynamics, with different models potentially yielding different predictions and parameter estimates from the same data. Given the increasing use of mathematical models to inform public health decision-making, it is important to assess model distinguishability (whether models can be distinguished based on fit to data) and inference robustness (whether inferences from the model are robust to realistic variations in model structure).In this paper, we examined the effects of uncertainty in model structure in the context of epidemic cholera, testing a range of models with differences in transmission and loss of immunity structure, based on known features of cholera epidemiology. We fit these models to simulated epidemic and long-term data, as well as data from the 2006 Angola epidemic. We evaluated model distinguishability based on fit to data, and whether the parameter values, model behavior, and forecasting ability can accurately be inferred from incidence data.In general, all models were able to successfully fit to all data sets, both real and simulated, regardless of whether the model generating the simulated data matched the fitted model. However, in the long-term data, the best model fits were achieved when the loss of immunity structures matched those of the model that simulated the data. Two parameters, one representing person-to-person transmission and the other representing the reporting rate, were accurately estimated across all models, while the remaining parameters showed broad variation across the different models and data sets. The basic reproduction number (ℛ0) was often poorly estimated even using the correct model, due to practical unidentifiability issues in the waterborne transmission pathway which were consistent across all models. Forecasting efforts using noisy data were not successful early in the outbreaks, but once the epidemic peak had been achieved, most models were able to capture the downward incidence trajectory with similar accuracy. Forecasting from noise-free data was generally successful for all outbreak stages using any model.Our results suggest that we are unlikely to be able to infer mechanistic details from epidemic case data alone, underscoring the need for broader data collection, such as immunity/serology status, pathogen dose response curves, and environmental pathogen data. Nonetheless, with sufficient data, conclusions from forecasting and some parameter estimates were robust to variations in the model structure, and comparative modeling can help to determine how realistic variations in model structure may affect the conclusions drawn from models and data.
机译:霍乱和水传播疾病的数学模型在其传播途径,免疫力丧失和一系列其他特征方面的结构差异很大。这些差异可能会影响模型动力学,因为不同的模型可能会根据同一数据产生不同的预测和参数估计。鉴于越来越多地使用数学模型来为公共卫生决策提供信息,因此重要的是评估模型的可区分性(是否可以根据对数据的拟合来区分模型)和推断的鲁棒性(来自模型的推断是否对模型的实际变化具有鲁棒性)在本文中,我们根据霍乱流行病学的已知特征,研究了霍乱流行背景下模型结构不确定性的影响,并测试了一系列具有传播和免疫结构丧失差异的模型。我们将这些模型拟合为模拟的流行病和长期数据,以及2006年安哥拉流行病的数据。我们根据拟合数据评估模型的可区分性,并从入射数据中准确推断出参数值,模型行为和预测能力,总体而言,所有模型都能成功拟合所有真实和模拟数据集,不管生成模拟数据的模型是否与拟合模型匹配。但是,在长期数据中,当免疫结构的损失与模拟数据的模型的损失相匹配时,可以获得最佳的模型拟合。在所有模型中都准确估算了两个参数,一个代表人与人之间的传播,另一个代表报告率,而其余参数则在不同模型和数据集之间显示出很大的差异。即使在使用正确的模型的情况下,基本繁殖数(ℛ0)也常常被错误地估计,原因是水传播途径中的实际无法识别问题在所有模型中都是一致的。在爆发初期,使用嘈杂数据进行的预测工作并不成功,但是一旦达到流行高峰,大多数模型就能够以相似的准确度捕获下行事件的轨迹。使用任何模型,在所有暴发阶段从无噪声数据进行的预测通常都是成功的。我们的结果表明,我们不可能仅从流行病病例数据中推断出机械细节,从而强调了对更广泛的数据收集(如免疫力/血清学)的需求状态,病原体剂量反应曲线和环境病原体数据。尽管如此,有了足够的数据,预测和一些参数估计的结论对于模型结构的变化是稳健的,而比较模型可以帮助确定模型结构的实际变化如何影响从模型和数据得出的结论。

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