将大数据应用于环境公共卫生:挑战与建议。

Bringing Big Data to Bear in Environmental Public Health: Challenges and Recommendations.

作者信息

Comess Saskia, Akbay Alexia, Vasiliou Melpomene, Hines Ronald N, Joppa Lucas, Vasiliou Vasilis, Kleinstreuer Nicole

机构信息

Department of Environmental Health Sciences, Yale School of Public Health, New Haven, CT, United States.

Department of Statistics and Data Science, Yale University, New Haven, CT, United States.

出版信息

Front Artif Intell. 2020 May;3. doi: 10.3389/frai.2020.00031. Epub 2020 May 15.

Abstract

Understanding the role that the environment plays in influencing public health often involves collecting and studying large, complex data sets. There have been a number of private and public efforts to gather sufficient information and confront significant unknowns in the field of environmental public health, yet there is a persistent and largely unmet need for findable, accessible, interoperable, and reusable (FAIR) data. Even when data are readily available, the ability to create, analyze, and draw conclusions from these data using emerging computational tools, such as augmented and artificial inteligence (AI) and machine learning, requires technical skills not currently implemented on a programmatic level across research hubs and academic institutions. We argue that collaborative efforts in data curation and storage, scientific computing, and training are of paramount importance to empower researchers within environmental sciences and the broader public health community to apply AI approaches and fully realize their potential. Leaders in the field were asked to prioritize challenges in incorporating big data in environmental public health research: inconsistent implementation of FAIR principles in data collection and sharing, a lack of skilled data scientists and appropriate cyber-infrastructures, and limited understanding of possibilities and communication of benefits were among those identified. These issues are discussed, and actionable recommendations are provided.

摘要

了解环境在影响公众健康方面所起的作用通常需要收集和研究大型复杂数据集。在环境公共卫生领域,已经有许多公私合作的努力来收集足够的信息并应对重大未知因素,但对于可查找、可访问、可互操作和可重复使用(FAIR)的数据,仍存在持续且基本未得到满足的需求。即使数据 readily available,使用新兴计算工具(如增强智能和人工智能(AI)以及机器学习)从这些数据中创建、分析并得出结论的能力,需要目前在各个研究中心和学术机构尚未在编程层面实施的技术技能。我们认为,在数据管理与存储、科学计算和培训方面的合作努力对于使环境科学和更广泛的公共卫生领域的研究人员能够应用人工智能方法并充分发挥其潜力至关重要。该领域的领导者被要求优先考虑在环境公共卫生研究中纳入大数据的挑战:数据收集和共享中 FAIR 原则的不一致实施、缺乏熟练的数据科学家和适当的网络基础设施,以及对可能性的理解有限和对益处的沟通不足等问题都在其中。本文对这些问题进行了讨论,并提供了可采取行动的建议。

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