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文本挖掘在以损伤为重点的系统评价中的应用评价,以减少筛选工作量。

Evaluation of text mining to reduce screening workload for injury-focused systematic reviews.

机构信息

Epidemiology and Preventive Medicine, Monash University, Melbourne, Victoria, Australia

Caulfield Pain Management and Research Centre, Caulfield Hospital, Caulfield, Victoria, Australia.

出版信息

Inj Prev. 2020 Feb;26(1):55-60. doi: 10.1136/injuryprev-2019-043247. Epub 2019 Aug 26.

Abstract

INTRODUCTION

Text mining to support screening in large-scale systematic reviews has been recommended; however, their suitability for reviews in injury research is not known. We examined the performance of text mining in supporting the second reviewer in a systematic review examining associations between fault attribution and health and work-related outcomes after transport injury.

METHODS

Citations were independently screened in Abstrackr in full (reviewer 1; 10 559 citations), and until no more citations were predicted to be relevant (reviewer 2; 1809 citations, 17.1%). All potentially relevant full-text articles were assessed by reviewer 1 (555 articles). Reviewer 2 used text mining (Wordstat, QDA Miner) to reduce assessment to full-text articles containing ≥1 fault-related exposure term (367 articles, 66.1%).

RESULTS

Abstrackr offered excellent workload savings: 82.7% of citations did not require screening by reviewer 2, and total screening time was reduced by 36.6% compared with traditional dual screening of all citations. Abstrackr predictions had high specificity (83.7%), and low false negatives (0.3%), but overestimated citation relevance, probably due to the complexity of the review with multiple outcomes and high imbalance of relevant to irrelevant records, giving low sensitivity (29.7%) and precision (14.5%). Text mining of full-text articles reduced the number needing to be screened by 33.9%, and reduced total full-text screening time by 38.7% compared with traditional dual screening.

CONCLUSIONS

Overall, text mining offered important benefits to systematic review workflow, but should not replace full screening by one reviewer, especially for complex reviews examining multiple health or injury outcomes.

TRIAL REGISTRATION NUMBER

CRD42018084123.

摘要

简介

文本挖掘支持大规模系统评价中的筛选已被推荐;然而,它们是否适用于伤害研究的评价尚不清楚。我们研究了文本挖掘在支持系统评价中第二 reviewer 的表现,该评价研究了运输伤害后过错归因与健康和工作相关结果之间的关系。

方法

在 Abstrackr 中独立筛选全文(reviewer 1;10559 条引文),直到预计没有更多相关引文(reviewer 2;1809 条引文,占 17.1%)。所有潜在相关的全文文章均由 reviewer 1 评估(555 篇文章)。reviewer 2 使用文本挖掘(Wordstat、QDA Miner)将评估减少到包含≥1 个过错相关暴露术语的全文文章(367 篇文章,占 66.1%)。

结果

Abstrackr 提供了出色的工作负荷节省:82.7%的引文不需要 reviewer 2 筛选,与传统的所有引文双重筛选相比,总筛选时间减少了 36.6%。Abstrackr 的预测具有很高的特异性(83.7%)和低的假阴性率(0.3%),但高估了引文的相关性,可能是由于该评价具有多个结局和相关记录与不相关记录之间高度不平衡的复杂性,导致敏感性(29.7%)和准确性(14.5%)较低。全文文章的文本挖掘减少了需要筛选的数量 33.9%,与传统的双重筛选相比,减少了总全文筛选时间 38.7%。

结论

总体而言,文本挖掘为系统评价工作流程提供了重要的益处,但不应替代一个 reviewer 的全面筛选,尤其是对于检查多个健康或伤害结局的复杂评价。

试验注册编号

CRD42018084123。

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