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Methodological challenges to multivariate syndromic surveillance: a case study using Swiss animal health data

机译:多元综合征监测的方法学挑战:使用瑞士动物健康数据的案例研究

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Background In an era of ubiquitous electronic collection of animal health data, multivariate surveillance systems (which concurrently monitor several data streams) should have a greater probability of detecting disease events than univariate systems. However, despite their limitations, univariate aberration detection algorithms are used in most active syndromic surveillance (SyS) systems because of their ease of application and interpretation. On the other hand, a stochastic modelling-based approach to multivariate surveillance offers more flexibility, allowing for the retention of historical outbreaks, for overdispersion and for non-stationarity. While such methods are not new, they are yet to be applied to animal health surveillance data. We applied an example of such stochastic model, Held and colleagues’ two-component model, to two multivariate animal health datasets from Switzerland. Results In our first application, multivariate time series of the number of laboratories test requests were derived from Swiss animal diagnostic laboratories. We compare the performance of the two-component model to parallel monitoring using an improved Farrington algorithm and found both methods yield a satisfactorily low false alarm rate. However, the calibration test of the two-component model on the one-step ahead predictions proved satisfactory, making such an approach suitable for outbreak prediction. In our second application, the two-component model was applied to the multivariate time series of the number of cattle abortions and the number of test requests for bovine viral diarrhea (a disease that often results in abortions). We found that there is a two days lagged effect from the number of abortions to the number of test requests. We further compared the joint modelling and univariate modelling of the number of laboratory test requests time series. The joint modelling approach showed evidence of superiority in terms of forecasting abilities. Conclusions Stochastic modelling approaches offer the potential to address more realistic surveillance scenarios through, for example, the inclusion of times series specific parameters, or of covariates known to have an impact on syndrome counts. Nevertheless, many methodological challenges to multivariate surveillance of animal SyS data still remain. Deciding on the amount of corroboration among data streams that is required to escalate into an alert is not a trivial task given the sparse data on the events under consideration (e.g. disease outbreaks).
机译:背景技术在无处不在的动物健康数据电子收集时代,多变量监视系统(同时监视多个数据流)应比单变量系统具有更大的检测疾病事件的可能性。但是,尽管存在局限性,但由于易于应用和解释,单变量像差检测算法仍被用于大多数主动症状监测(SyS)系统中。另一方面,基于随机建模的多变量监视方法提供了更大的灵活性,可以保留历史爆发,过分分散和不稳定。尽管这种方法并不新鲜,但尚未应用于动物健康监测数据。我们将这种随机模型的示例(Held和同事的两分量模型)应用于来自瑞士的两个多元动物健康数据集。结果在我们的第一个应用程序中,实验室测试请求数量的多元时间序列来自瑞士动物诊断实验室。我们将两部分模型的性能与使用改进的Farrington算法的并行监视进行比较,发现这两种方法均产生令人满意的低虚警率。但是,对两步模型的提前一步预测进行的校准测试证明是令人满意的,从而使这种方法适用于爆发预测。在我们的第二个应用程序中,将两部分模型应用于牛流产次数和牛病毒性腹泻(一种经常导致流产的疾病)的检测请求次数的多元时间序列。我们发现从堕胎数到测试请求数有两天的滞后效应。我们进一步比较了实验室测试请求时间序列数量的联合建模和单变量建模。联合建模方法显示了在预测能力方面的优越性证据。结论结论随机建模方法具有潜力,例如通过包含时间序列特定参数或已知对综合症计数有影响的协变量,可以解决更现实的监视情况。然而,仍然存在许多对动物SyS数据进行多变量监测的方法挑战。鉴于要考虑的事件(例如疾病暴发)的数据稀疏,因此决定升级为警报所需的数据流中确证的数量并非易事。

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