VanderWaal Kimberly, Morrison Robert B, Neuhauser Claudia, Vilalta Carles, Perez Andres M
Department of Veterinary Population Medicine, College of Veterinary Medicine, University of Minnesota, St. Paul, MN, United States.
Informatics Institute, University of Minnesota, Minneapolis, MN, United States.
Front Vet Sci. 2017 Jul 17;4:110. doi: 10.3389/fvets.2017.00110. eCollection 2017.
The increasing availability and complexity of data has led to new opportunities and challenges in veterinary epidemiology around how to translate abundant, diverse, and rapidly growing "big" data into meaningful insights for animal health. Big data analytics are used to understand health risks and minimize the impact of adverse animal health issues through identifying high-risk populations, combining data or processes acting at multiple scales through epidemiological modeling approaches, and harnessing high velocity data to monitor animal health trends and detect emerging health threats. The advent of big data requires the incorporation of new skills into veterinary epidemiology training, including, for example, machine learning and coding, to prepare a new generation of scientists and practitioners to engage with big data. Establishing pipelines to analyze big data in near real-time is the next step for progressing from simply having "big data" to create "smart data," with the objective of improving understanding of health risks, effectiveness of management and policy decisions, and ultimately preventing or at least minimizing the impact of adverse animal health issues.
数据的日益丰富和复杂给兽医流行病学带来了新的机遇和挑战,即如何将大量、多样且快速增长的“大数据”转化为对动物健康有意义的见解。大数据分析用于通过识别高风险群体、通过流行病学建模方法整合多尺度作用的数据或过程以及利用高速数据监测动物健康趋势和检测新出现的健康威胁,来了解健康风险并将动物健康不良问题的影响降至最低。大数据的出现要求将新技能纳入兽医流行病学培训,例如机器学习和编码,以便培养新一代科学家和从业者来处理大数据。建立近乎实时分析大数据的管道是从仅仅拥有“大数据”迈向创建“智能数据”的下一步,目标是增进对健康风险的理解、提高管理和政策决策的有效性,并最终预防或至少将动物健康不良问题的影响降至最低。