Dolley Shawn
Cloudera, Inc., Palo Alto, CA, United States.
Front Public Health. 2018 Mar 7;6:68. doi: 10.3389/fpubh.2018.00068. eCollection 2018.
Precision public health is an emerging practice to more granularly predict and understand public health risks and customize treatments for more specific and homogeneous subpopulations, often using new data, technologies, and methods. Big data is one element that has consistently helped to achieve these goals, through its ability to deliver to practitioners a volume and variety of structured or unstructured data not previously possible. Big data has enabled more widespread and specific research and trials of stratifying and segmenting populations at risk for a variety of health problems. Examples of success using big data are surveyed in surveillance and signal detection, predicting future risk, targeted interventions, and understanding disease. Using novel big data or big data approaches has risks that remain to be resolved. The continued growth in volume and variety of available data, decreased costs of data capture, and emerging computational methods mean big data success will likely be a required pillar of precision public health into the future. This review article aims to identify the precision public health use cases where big data has added value, identify classes of value that big data may bring, and outline the risks inherent in using big data in precision public health efforts.
精准公共卫生是一种新兴实践,旨在更细致地预测和理解公共卫生风险,并为更特定、同质化的亚群体定制治疗方案,通常会运用新数据、技术和方法。大数据是始终有助于实现这些目标的一个要素,因为它能够为从业者提供大量且多样的结构化或非结构化数据,而这些数据在以前是无法获取的。大数据使得对面临各种健康问题风险的人群进行分层和细分的研究与试验更加广泛和具体。在监测与信号检测、预测未来风险、针对性干预以及疾病理解等方面,对使用大数据取得成功的案例进行了调研。使用新型大数据或大数据方法存在一些尚待解决的风险。可用数据的数量和种类持续增长、数据采集成本降低以及新兴计算方法的出现,意味着大数据的成功应用很可能成为未来精准公共卫生的一个必要支柱。这篇综述文章旨在确定大数据已带来价值的精准公共卫生用例,识别大数据可能带来的价值类别,并概述在精准公共卫生工作中使用大数据所固有的风险。