Margevicius Kristen J, Generous Nicholas, Taylor-McCabe Kirsten J, Brown Mac, Daniel W Brent, Castro Lauren, Hengartner Andrea, Deshpande Alina
Defense Systems and Analysis Division, Los Alamos National Laboratory, Los Alamos, New Mexico, United States of America.
Biosciences Division, Los Alamos National Laboratory, Los Alamos, New Mexico, United States of America.
PLoS One. 2014 Jan 2;9(1):e83730. doi: 10.1371/journal.pone.0083730. eCollection 2014.
In recent years, biosurveillance has become the buzzword under which a diverse set of ideas and activities regarding detecting and mitigating biological threats are incorporated depending on context and perspective. Increasingly, biosurveillance practice has become global and interdisciplinary, requiring information and resources across public health, One Health, and biothreat domains. Even within the scope of infectious disease surveillance, multiple systems, data sources, and tools are used with varying and often unknown effectiveness. Evaluating the impact and utility of state-of-the-art biosurveillance is, in part, confounded by the complexity of the systems and the information derived from them. We present a novel approach conceptualizing biosurveillance from the perspective of the fundamental data streams that have been or could be used for biosurveillance and to systematically structure a framework that can be universally applicable for use in evaluating and understanding a wide range of biosurveillance activities. Moreover, the Biosurveillance Data Stream Framework and associated definitions are proposed as a starting point to facilitate the development of a standardized lexicon for biosurveillance and characterization of currently used and newly emerging data streams. Criteria for building the data stream framework were developed from an examination of the literature, analysis of information on operational infectious disease biosurveillance systems, and consultation with experts in the area of biosurveillance. To demonstrate utility, the framework and definitions were used as the basis for a schema of a relational database for biosurveillance resources and in the development and use of a decision support tool for data stream evaluation.
近年来,生物监测已成为一个流行语,根据不同的背景和视角,一系列关于检测和减轻生物威胁的不同想法和活动都被纳入其中。生物监测实践日益全球化和跨学科化,需要公共卫生、“同一健康”和生物威胁领域的信息和资源。即使在传染病监测范围内,也使用了多个系统、数据源和工具,其有效性各不相同且往往未知。评估先进生物监测的影响和效用,部分受到系统及其衍生信息复杂性的困扰。我们提出了一种新颖的方法,从已用于或可用于生物监测的基本数据流的角度对生物监测进行概念化,并系统地构建一个框架,该框架可普遍适用于评估和理解广泛的生物监测活动。此外,提出了生物监测数据流框架及相关定义,作为促进生物监测标准化词汇表开发以及对当前使用和新出现的数据流进行特征描述的起点。构建数据流框架的标准是通过查阅文献、分析传染病业务监测系统的信息以及咨询生物监测领域的专家而制定的。为了展示其效用,该框架和定义被用作生物监测资源关系数据库模式的基础,并用于开发和使用数据流评估决策支持工具。