DeSpin:用于检测生物医学出版物中自旋的原型系统

A. Koroleva, S. Kamath, P. Bossuyt, P. Paroubek
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引用次数: 1

摘要

提高医学研究报告的质量对于减少可避免的研究浪费和提高保健质量至关重要。尽管有各种旨在改进研究报告的倡议——指南、核对表、写作辅助工具、同行评议程序等——但是对研究结果的过度解释,也就是所谓的spin,仍然是研究报告中的一个严重问题。在本文中,我们提出了一种自然语言处理(NLP)系统,用于检测随机对照试验(rct)生物医学文章中的几种自旋。我们结合使用基于规则和机器学习的方法来提取有关试验设计的重要信息并检测潜在的自旋。本文提出的旋转检测系统包括文本结构分析、句子分类、实体和关系提取、语义相似度评估等算法。我们的算法实现了这些任务的运行性能,不同任务的F-measure范围从79,42到97.86%。最困难的任务是提取报告的结果。我们的工具旨在作为一个半自动化的辅助工具来帮助作者和同行审稿人检测潜在的旋转。该工具包含一个简单的界面,允许运行算法并可视化其输出。它还可以用于手动注释和纠正输出中的错误。该工具是第一个用于自旋检测的工具。该工具和带注释的数据集是免费提供的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DeSpin: a prototype system for detecting spin in biomedical publications
Improving the quality of medical research reporting is crucial to reduce avoidable waste in research and to improve the quality of health care. Despite various initiatives aiming at improving research reporting – guidelines, checklists, authoring aids, peer review procedures, etc. – overinterpretation of research results, also known as spin, is still a serious issue in research reporting. In this paper, we propose a Natural Language Processing (NLP) system for detecting several types of spin in biomedical articles reporting randomized controlled trials (RCTs). We use a combination of rule-based and machine learning approaches to extract important information on trial design and to detect potential spin. The proposed spin detection system includes algorithms for text structure analysis, sentence classification, entity and relation extraction, semantic similarity assessment. Our algorithms achieved operational performance for the these tasks, F-measure ranging from 79,42 to 97.86% for different tasks. The most difficult task is extracting reported outcomes. Our tool is intended to be used as a semi-automated aid tool for assisting both authors and peer reviewers to detect potential spin. The tool incorporates a simple interface that allows to run the algorithms and visualize their output. It can also be used for manual annotation and correction of the errors in the outputs. The proposed tool is the first tool for spin detection. The tool and the annotated dataset are freely available.
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