Lancaster Environment Centre, Lancaster University, Lancaster LA1 4YQ, UK.
Yordas Group, Lancaster University, Lancaster LA1 4YQ, UK.
Toxicol Sci. 2020 May 1;175(1):35-49. doi: 10.1093/toxsci/kfaa025.
Systematic evidence mapping offers a robust and transparent methodology for facilitating evidence-based approaches to decision-making in chemicals policy and wider environmental health (EH). Interest in the methodology is growing; however, its application in EH is still novel. To facilitate the production of effective systematic evidence maps for EH use cases, we survey the successful application of evidence mapping in other fields where the methodology is more established. Focusing on issues of "data storage technology," "data integrity," "data accessibility," and "transparency," we characterize current evidence mapping practice and critically review its potential value for EH contexts. We note that rigid, flat data tables and schema-first approaches dominate current mapping methods and highlight how this practice is ill-suited to the highly connected, heterogeneous, and complex nature of EH data. We propose this challenge is overcome by storing and structuring data as "knowledge graphs." Knowledge graphs offer a flexible, schemaless, and scalable model for systematically mapping the EH literature. Associated technologies, such as ontologies, are well-suited to the long-term goals of systematic mapping methodology in promoting resource-efficient access to the wider EH evidence base. Several graph storage implementations are readily available, with a variety of proven use cases in other fields. Thus, developing and adapting systematic evidence mapping for EH should utilize these graph-based resources to ensure the production of scalable, interoperable, and robust maps to aid decision-making processes in chemicals policy and wider EH.
系统证据图谱为促进循证决策方法在化学品政策和更广泛的环境健康 (EH) 中的应用提供了一种强大而透明的方法。人们对该方法的兴趣日益浓厚;然而,它在 EH 中的应用仍然是新颖的。为了促进针对 EH 用例的有效系统证据图谱的制作,我们调查了该方法在其他领域的成功应用,这些领域的方法更为成熟。我们专注于“数据存储技术”、“数据完整性”、“数据可访问性”和“透明度”等问题,描述当前的证据图谱实践,并批判性地审查其在 EH 背景下的潜在价值。我们注意到,僵化的平面数据表和先模式方法主导着当前的映射方法,并强调这种方法如何不适合 EH 数据的高度连接、异构和复杂性质。我们提出,通过将数据存储和构建为“知识图谱”可以克服这一挑战。知识图谱为系统地绘制 EH 文献提供了一种灵活、无模式和可扩展的模型。相关技术,如本体,非常适合系统映射方法的长期目标,即促进对更广泛的 EH 证据基础的资源高效访问。有几种图形存储实现已经可用,并且在其他领域有多种经过验证的用例。因此,为 EH 开发和采用系统证据图谱应该利用这些基于图形的资源,以确保制作可扩展、可互操作和稳健的图谱,以帮助化学品政策和更广泛的 EH 中的决策过程。