Centre for Research in Evidence-Based Practice, Bond University, Robina, Australia.
Australian Institute of Health Innovation, Macquarie University, Sydney, Australia.
Syst Rev. 2018 May 19;7(1):77. doi: 10.1186/s13643-018-0740-7.
Systematic reviews (SR) are vital to health care, but have become complicated and time-consuming, due to the rapid expansion of evidence to be synthesised. Fortunately, many tasks of systematic reviews have the potential to be automated or may be assisted by automation. Recent advances in natural language processing, text mining and machine learning have produced new algorithms that can accurately mimic human endeavour in systematic review activity, faster and more cheaply. Automation tools need to be able to work together, to exchange data and results. Therefore, we initiated the International Collaboration for the Automation of Systematic Reviews (ICASR), to successfully put all the parts of automation of systematic review production together. The first meeting was held in Vienna in October 2015. We established a set of principles to enable tools to be developed and integrated into toolkits.This paper sets out the principles devised at that meeting, which cover the need for improvement in efficiency of SR tasks, automation across the spectrum of SR tasks, continuous improvement, adherence to high quality standards, flexibility of use and combining components, the need for a collaboration and varied skills, the desire for open source, shared code and evaluation, and a requirement for replicability through rigorous and open evaluation.Automation has a great potential to improve the speed of systematic reviews. Considerable work is already being done on many of the steps involved in a review. The 'Vienna Principles' set out in this paper aim to guide a more coordinated effort which will allow the integration of work by separate teams and build on the experience, code and evaluations done by the many teams working across the globe.
系统评价(SR)对医疗保健至关重要,但由于需要综合的证据迅速增加,它们变得复杂且耗时。幸运的是,系统评价的许多任务都有可能实现自动化,或者可以通过自动化来辅助。自然语言处理、文本挖掘和机器学习的最新进展产生了新的算法,可以更快速、更廉价地准确模拟系统评价活动中的人类努力。自动化工具需要能够协同工作,以交换数据和结果。因此,我们发起了国际系统评价自动化协作(ICASR),以成功地将系统评价生产的所有自动化部分整合在一起。第一次会议于 2015 年 10 月在维也纳举行。我们制定了一套原则,使工具能够得到开发并集成到工具包中。本文阐述了那次会议制定的原则,涵盖提高 SR 任务效率、全面自动化系统评价任务、持续改进、遵守高质量标准、灵活使用和组合组件、协作和多样化技能的需求、对开源、共享代码和评估的渴望,以及通过严格和公开的评估实现可重复性的要求。自动化具有极大的潜力来提高系统评价的速度。已经有大量工作涉及到审查的许多步骤。本文中提出的“维也纳原则”旨在指导更协调的努力,这将允许集成来自不同团队的工作,并借鉴全球许多团队的经验、代码和评估。