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Evaluating COVID-19 reporting data in the context of testing strategies across 31 low- and middle-income countries

机译:在31个低收入和中等收入国家的测试策略的背景下评估Covid-19报告数据

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Background The case count for coronavirus disease 2019 (COVID-19) is the predominant measure used to track epidemiological dynamics and inform policy decision-making. Case counts, however, are influenced by testing rates and strategies, which have varied over time and space. A method to interpret COVID-19 case counts consistently in the context of other surveillance data is needed, especially for data-limited settings in low- and middle-income countries (LMICs). Methods Statistical analyses were used to detect changes in COVID-19 surveillance data. The pruned exact linear time change detection method was applied for COVID-19 case counts, number of tests, and test positivity rate over time. With this information, change points were categorized as likely driven by epidemiological dynamics or non-epidemiological influences, such as noise. Findings Higher rates of epidemiological change detection are more associated with open testing policies than with higher testing rates. This study quantified alignment of non-pharmaceutical interventions with epidemiological changes. LMICs have the testing capacity to measure prevalence with precision if they use randomized testing. Rwanda stands out as a country with an efficient COVID-19 surveillance system. Subnational data reveal heterogeneity in epidemiological dynamics and surveillance. Interpretation Relying solely on case counts to interpret pandemic dynamics has important limitations. Normalizing counts by testing rate mitigates some of these limitations, and an open testing policy is key to efficient surveillance. The study findings can be leveraged by public health officials to strengthen COVID-19 surveillance and support programmatic decision-making.
机译:背景技术2019年冠状病毒疾病(Covid-19)是用于跟踪流行病学动态的主要措施,并告知政策决策。然而,案例计数受到测试率和策略的影响,这些速度和策略在时间和空间上变化。需要一种在需要在其他监视数据的背景下始终如一地解释Covid-19案例的方法,特别是对于低收入和中等收入国家(LMIC)的数据限制设定。方法使用统计分析来检测Covid-19监视数据的变化。将修剪精确的线性时间变化检测方法应用于Covid-19案例计数,测试数量和测试阳性率随时间。通过这些信息,改变点被分类为由流行病学动态或非流行病学影响的可能驱动,例如噪音。结果更高的流行病学变化检测率与开放测试政策更相关,而不是更高的测试率。该研究使非药物干预与流行病学变化进行对准。如果使用随机测试,LMICS有测试能力以精确度测量普及。卢旺达作为一个有高效的Covid-19监视系统的国家。水性数据显示流行病学动力学和监测中的异质性。依赖于案例计数以解释大流行动态的解释具有重要的限制。通过测试速率促使其中一些限制,开放式测试政策是有效监视的关键。公共卫生官员可以利用研究调查结果加强Covid-19监督和支持方案决策。

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