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首页> 外文期刊>Statistics in medicine >Evaluating spatial surveillance: detection of known outbreaks in real data.
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Evaluating spatial surveillance: detection of known outbreaks in real data.

机译:评估空间监视:检测真实数据中的已知爆发。

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摘要

Since the anthrax attacks of October 2001 and the SARS outbreaks of recent years, there has been an increasing interest in developing surveillance systems to aid in the early detection of such illness. Systems have been established which do this is by monitoring primary health-care visits, pharmacy sales, absenteeism records, and other non-traditional sources of data. While many resources have been invested in establishing such systems, relatively little effort has as yet been expended in evaluating their performance.One way to evaluate a given surveillance system is to compare the signals it generates with known outbreaks identified in other systems. In public health practice, for example, public health departments investigate reports of illness and sometimes track hospital admissions. Comparison of new systems with extant systems cannot generate estimates of test characteristics such as sensitivity and specificity, since the actual number of positives and negatives cannot be known. However, the comparison can reveal whether a new or proposed system's signals match outbreaks detected by the existing system. This could help support or reject the new system as an alternative or complement to the extant system.We propose three methods to test the null hypothesis that the new system does not signal true outbreaks more often than would be expected by chance. The methods differ in the restrictiveness of the assumptions required. Each test may detect weaknesses in the new system, depending on the distribution of outbreaks and can be used to construct confidence limits on the agreement between the new system's signals and the outbreaks, given the distribution of the signals. They can be used to assess whether the new system works in that it detects the outbreaks better than chance would suggest and can also determine if the new systems' signals are generated earlier than an extant system.
机译:自2001年10月发生炭疽袭击和最近几年的SARS爆发以来,人们越来越关注开发监视系统以帮助及早发现此类疾病。已经建立了通过监测初级保健访问,药房销售,缺勤记录和其他非传统数据源来实现此目的的系统。尽管已投入大量资源来建立这样的系统,但在评估其性能方面却花费了很少的精力。评估给定监视系统的一种方法是将其生成的信号与其他系统中识别出的已知爆发进行比较。例如,在公共卫生实践中,公共卫生部门会调查疾病报告,有时还会跟踪住院情况。由于无法确定阳性和阴性的实际数目,因此将新系统与现有系统进行比较无法生成对测试特性(如灵敏度和特异性)的估计。但是,比较可以揭示新系统或提议系统的信号是否与现有系统检测到的爆发相匹配。这可以帮助支持或拒绝新系统,以作为对现有系统的替代或补充。我们提出了三种方法来检验零假设,即新系统不会以比偶然预期更多的频率发出真实疫情的信号。这些方法的局限性在于所需假设的局限性。每个测试都可以根据爆发的分布来检测新系统中的弱点,并且可以在给定信号分布的情况下,用于对新系统的信号与爆发之间的协议建立置信度限制。它们可以用来评估新系统是否能正常工作,因为它可以比偶然提示更好地检测爆发,并且还可以确定新系统的信号是否早于现有系统生成。

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