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Assessing 3 Outbreak Detection Algorithms in an Electronic Syndromic Surveillance System in a Resource-Limited Setting

机译:在资源有限设置中评估电子综合征监视系统中的3个爆发检测算法

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Syndromic surveillance uses prediagnostic healthrelated data to signal probable outbreaks warranting public health response (1). Alerta and Vigila are internet-based syndromic surveillance systems successively implemented by Peru’s navy (2–4). Among other disease syndromes, individual cases of acute diarrheal disease (ADD) are self-reported to healthcare workers at sites providing care for service members, dependents, and civilian employees. We assessed the performance of 3 ADD aberration detection algorithms in this resource-limited setting: X-bar chart, exponentially weighted moving average (EWMA), and Early Aberration Reporting System (EARS) C3 cumulative sums (CUSUM) models.
机译:综合征监测使用Prediagnostic HealthRelated数据来发出有可能的爆发,保证公共卫生响应(1)。 Alerta和Vigila是由秘鲁海军(2-4)连续实施的基于互联网的综合征监控系统。在其他疾病综合征中,急性腹泻病(ADD)的个别病例(ADD)是向医疗保健工人自我报告,提供服务成员,家属和民用员工的护理。我们评估了3个添加像差检测算法在该资源限制的设置中的性能:X-Bar图表,指数加权移动平均(EWMA)和早期像差报告系统(耳朵)C3累积总和(CUSUM)模型。

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