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首页> 外文期刊>The Journal of Infectious Diseases >Digital Pharmacovigilance and Disease Surveillance: Combining Traditional and Big-Data Systems for Better Public Health
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Digital Pharmacovigilance and Disease Surveillance: Combining Traditional and Big-Data Systems for Better Public Health

机译:数字药理治和疾病监测:结合传统和大数据系统以获得更好的公共卫生

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摘要

The digital revolution has contributed to very large data sets (ie, big data) relevant for public health. The two major data sources are electronic health records from traditional health systems and patient-generated data. As the two data sources have complementary strengths-high veracity in the data from traditional sources and high velocity and variety in patient-generated data-they can be combined to build more-robust public health systems. However, they also have unique challenges. Patient-generated data in particular are often completely unstructured and highly context dependent, posing essentially a machine-learning challenge. Some recent examples from infectious disease surveillance and adverse drug event monitoring demonstrate that the technical challenges can be solved. Despite these advances, the problem of verification remains, and unless traditional and digital epidemiologic approaches are combined, these data sources will be constrained by their intrinsic limits.
机译:数字革命为与公共卫生相关的非常大的数据集(即大数据)贡献。 两个主要数据来源是来自传统健康系统和患者生成数据的电子健康记录。 由于两种数据源具有在传统来源的数据中具有互补的优势 - 来自传统来源的数据以及患者生成数据中的高速和品种 - 它们可以组合以构建更强大的公共卫生系统。 然而,它们也具有独特的挑战。 患者生成的数据尤其通常是完全非结构化的和高度依赖性的,基本上是一种机器学习挑战。 最近传染病监测和不良药物事件监测的一些例子表明技术挑战可以解决。 尽管这些进展,但核实问题仍然存在,除非组合传统和数字流行病学方法,否则这些数据源将受到其内在限制的限制。

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