Cramond Fala, O'Mara-Eves Alison, Doran-Constant Lee, Rice Andrew Sc, Macleod Malcolm, Thomas James
Pain Research, Department of Surgery and Cancer, Faculty of Medicine, Imperial College London, London, UK.
EPPI-Centre, Department of Social Science, UCL Institute of Education, University College London, London, UK.
Wellcome Open Res. 2019 Mar 7;3:157. doi: 10.12688/wellcomeopenres.14738.3. eCollection 2018.
The extraction of data from the reports of primary studies, on which the results of systematic reviews depend, needs to be carried out accurately. To aid reliability, it is recommended that two researchers carry out data extraction independently. The extraction of statistical data from graphs in PDF files is particularly challenging, as the process is usually completely manual, and reviewers need sometimes to revert to holding a ruler against the page to read off values: an inherently time-consuming and error-prone process. To mitigate some of the above problems we integrated and customised two existing JavaScript libraries to create a new web-based graphical data extraction tool to assist reviewers in extracting data from graphs. This tool aims to facilitate more accurate and timely data extraction through a user interface which can be used to extract data through mouse clicks. We carried out a non-inferiority evaluation to examine its performance in comparison with participants' standard practice for extracting data from graphs in PDF documents. We found that the customised graphical data extraction tool is not inferior to users' (N=10) prior standard practice. Our study was not designed to show superiority, but suggests that, on average, participants saved around 6 minutes per graph using the new tool, accompanied by a substantial increase in accuracy. Our study suggests that the incorporation of this type of tool in online systematic review software would be beneficial in facilitating the production of accurate and timely evidence synthesis to improve decision-making.
从原始研究报告中提取数据(系统评价的结果依赖于此)需要准确进行。为提高可靠性,建议两名研究人员独立进行数据提取。从PDF文件中的图表提取统计数据尤其具有挑战性,因为这个过程通常完全是手动的,审阅者有时需要拿着尺子对照页面来读取数值:这是一个本质上耗时且容易出错的过程。为缓解上述一些问题,我们整合并定制了两个现有的JavaScript库,创建了一个新的基于网络的图形数据提取工具,以协助审阅者从图表中提取数据。该工具旨在通过一个可用于通过鼠标点击提取数据的用户界面,促进更准确、及时的数据提取。我们进行了一项非劣效性评估,以检验其与参与者从PDF文档图表中提取数据的标准做法相比的性能。我们发现定制的图形数据提取工具并不劣于用户(N = 10)之前的标准做法。我们的研究并非旨在显示优越性,但表明平均而言,参与者使用新工具每张图表节省了约6分钟,同时准确性大幅提高。我们的研究表明,在在线系统评价软件中纳入此类工具将有助于生成准确、及时的证据综述,以改善决策。