Abstract

BackgroundToday’s globalised and interconnected world is characterized by intertwined and quickly evolving relationships between animals, humans and their environment and by an escalating number of accessible data for public health. The public veterinary services must exploit new modeling and decision strategies to face these changes. The organization and control of data flows have become crucial to effectively evaluate the evolution and safety concerns of a given situation in the territory. This paper discusses what is needed to develop modern strategies to optimize data distribution to the stakeholders.Main textIf traditionally the system manager and knowledge engineer have been concerned with the increase of speed of data flow and the improvement of data quality, nowadays they need to worry about data overflow as well. To avoid this risk an information system should be capable of selecting the data which need to be shown to the human operator. In this perspective, two aspects need to be distinguished: data classification vs data distribution. Data classification is the problem of organizing data depending on what they refer to and on the way they are obtained; data distribution is the problem of selecting which data is accessible to which stakeholder. Data classification can be established and implemented via ontological analysis and formal logic but we claim that a context-based selection of data should be integrated in the data distribution application. Data distribution should provide these new features: (a) the organization of situation types distinguishing at least ordinary vs extraordinary scenarios (contextualization of scenarios); (b) the possibility to focus on the data that are really important in a given scenario (data contextualization by scenarios); and (c) the classification of which data is relevant to which stakeholder (data contextualization by users).Short conclusionPublic veterinary services, to efficaciously and efficiently manage the information needed for today’s health and safety challenges, should contextualize and filter the continuous and growing flow of data by setting suitable frameworks to classify data, users’ roles and possible situations.

Highlights

  • If traditionally the system manager and knowledge engineer have been concerned with the increase of speed of data flow and the improvement of data quality, nowadays they need to worry about data overflow as well

  • Contalbrigo et al BMC Veterinary Research (2017) 13:397 web based applications to collect, store and analyze data from different sources with the aim to combine epidemiological, spatial and genetic data as well as data about farming systems in order to provide appropriate information to public authorities and scientists on the emergence and spread of animal diseases [6]. This huge amount of data requires a methodological approach to effectively assess and manage the health and safety of the ecosystems [7]. This is a significant challenge, which calls for efficient public veterinary data management systems, for quick and focused data distribution as to better help the stakeholders in their understanding of the situation and decision-making processes [8,9,10]

  • Modern veterinary data management systems should include services like data classification, selection and distribution that include these further contextualization features: (a) the organization of situation types starting from the distinction between ordinary vs emergence scenarios; (b) the possibility to focus on the data that are important in a given scenario; and (c) the classification of which data is relevant to which stakeholder

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Summary

Main text

The need of data selection strategies in the public veterinary management system The public veterinary data management system is an important actor in the territorial network of stakeholders since it functions as an information hub from which the different users receive updated data. Modern veterinary data management systems should include services like data classification, selection and distribution that include these further contextualization features: (a) the organization of situation types starting from the distinction between ordinary vs emergence scenarios (contextualization of scenarios); (b) the possibility to focus on the data that are important in a given scenario (data contextualization by scenarios); and (c) the classification of which data is relevant to which stakeholder (data contextualization by users) With this approach, veterinary data providers can become active information hubs enabling the generation of sustainable and optimized data flows suitable for today’s information age based on IoT and big data. Abbreviation GIS: Geopraphical Information System; IoT: Internet of Things; IT: Information Technology; NGS: Next-Generation Sequencing; PLF: Precision Livestock Farming

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