| Literature DB >> 28770216 |
Kimberly VanderWaal1, Robert B Morrison1, Claudia Neuhauser2, Carles Vilalta1, Andres M Perez1.
Abstract
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.Entities:
Keywords: animal movement; big data; machine learning; modeling and simulation; surveillance
Year: 2017 PMID: 28770216 PMCID: PMC5511962 DOI: 10.3389/fvets.2017.00110
Source DB: PubMed Journal: Front Vet Sci ISSN: 2297-1769
Figure 1Characteristics of big data: volume, variety, velocity, and value. Arrows represent that data are progressively getting larger (more volume), more variable, and are accruing at faster rates than historically in the field of veterinary epidemiology. Italicized words are examples of types of data in veterinary epidemiology that meet some combination of volume, variety, and velocity.
Figure 2(A) Data pipeline utilized by the Morrison Swine Health Monitoring Project for generating near real-time insights about the spatiotemporal incidence of porcine reproductive and respiratory syndrome (PRRS) virus, including weekly reports on the (B) incidence of PRRS, with trends reported as an exponential weighted moving average (EWMA), and (C) heatmaps of PRRS risk based on the geographic distribution of sow farms shedding PRRS.