通过数据抽样和监督学习支持艾滋病文献筛选

Hayda Almeida, Marie-Jean Meurs, Leila Kosseim, A. Tsang
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引用次数: 1

摘要

本文提出了一种监督学习方法来支持HIV文献的筛选。生物医学文献的人工筛选是系统评价过程中的一项重要工作。研究人员和策展人都有非常苛刻、耗时和容易出错的任务,即手动识别必须包含在有关特定问题的系统审查中的文件。我们实现了一种监督学习方法来支持筛选任务,通过在文献数据库搜索检索到的列表中自动标记可能被选中的文档。为了克服与自动文献筛选任务相关的主要问题,我们评估了数据采样、特征组合和特征选择方法的使用,共生成了105个分类模型。产生最佳结果的模型由Logistic模型树分类器、相当平衡的训练集以及Bag-Of-Words和MeSH术语的特征组合组成。根据我们的结果,该系统正确地标记了绝大多数相关文件,并且它可以用于支持HIV系统评价,使研究人员能够在更短的时间内评估更多的文件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supporting HIV literature screening with data sampling and supervised learning
This paper presents a supervised learning approach to support the screening of HIV literature. The manual screening of biomedical literature is an important task in the process of systematic reviews. Researchers and curators have the very demanding, time-consuming and error-prone task of manually identifying documents that must be included in a systematic review concerning a specific problem. We implemented a supervised learning approach to support screening tasks, by automatically flagging potentially selected documents in a list retrieved by a literature database search. To overcome the main issues associated with the automatic literature screening task, we evaluated the use of data sampling, feature combinations, and feature selection methods, generating a total of 105 classification models. The models yielding best results were composed by the Logistic Model Trees classifier, a fairly balanced training set, and feature combination of Bag-Of-Words and MeSH terms. According to our results, the system correctly labels the great majority of relevant documents, and it could be used to support HIV systematic reviews to allow researchers to assess a greater number of documents in less time.
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