机器学习加速证据审查中的筛选

Mary Chappell, Mary Edwards, Deborah Watkins, Christopher Marshall, Sara Graziadio
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引用次数: 0

摘要

证据审查对于决策和初步研究很重要,但可能耗时且成本高昂。随着包括机器学习在内的人工智能的出现,有机会在许多阶段加快审查过程,研究筛选被确定为主要的援助候选。尽管有大量有望帮助研究筛选的工具可用,但这些工具在实践中并没有得到一致使用,人们对其应用持怀疑态度。单臂评估显示了减少筛查负担的工具的潜力。然而,将其纳入实践可能需要通过评估总体资源使用情况以及对审查结果和建议的影响等结果进行进一步调查。由于文献缺乏比较研究,目前无法确定其相对准确性。在这篇评论中,我们概述了已发表的研究,并讨论了将工具纳入审查工作流程的选项,同时考虑了不同类型审查的需求和要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning for accelerating screening in evidence reviews

Evidence reviews are important for informing decision-making and primary research, but they can be time-consuming and costly. With the advent of artificial intelligence, including machine learning, there is an opportunity to accelerate the review process at many stages, with study screening identified as a prime candidate for assistance. Despite the availability of a large number of tools promising to assist with study screening, these are not consistently used in practice and there is skepticism about their application. Single-arm evaluations suggest the potential for tools to reduce screening burden. However, their integration into practice may need further investigation through evaluations of outcomes such as overall resource use and impact on review findings and recommendations. Because the literature lacks comparative studies, it is not currently possible to determine their relative accuracy. In this commentary, we outline the published research and discuss options for incorporating tools into the review workflow, considering the needs and requirements of different types of review.

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