使用自然语言处理和主题建模的临床报告分类。

Efsun Sarioglu, Hyeong-Ah Choi, Kabir Yadav
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引用次数: 20

摘要

大量的电子临床数据包含了自由文本格式的重要信息。为了能够帮助指导医疗决策,文本需要进行有效的处理和编码。在这项研究中,我们研究了改进急诊科计算机断层扫描(CT)报告分类的技术。所提出的系统使用自然语言处理(NLP)从报告中生成结构化输出,然后使用机器学习技术对创伤性眼眶骨折患者的临床重要损伤进行编码。语料库的主题建模也被用作患者报告的替代表示。我们的结果表明,NLP和主题建模都提高了原始文本分类结果。在NLP功能中,使用修饰符过滤代码可以产生最佳性能。主题建模显示出好坏参半的结果。主题向量提供了良好的降维,并获得了与NLP特征类似的分类结果。然而,二元主题分类并不能改善原始文本分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clinical report classification using Natural Language Processing and Topic Modeling.

Large amount of electronic clinical data encompasses important information in free text format. To be able to help guide medical decision-making, text needs to be efficiently processed and coded. In this research, we investigate techniques to improve classification of Emergency Department computed tomography (CT) reports. The proposed system uses Natural Language Processing (NLP) to generate structured output from the reports and then machine learning techniques to code for the presence of clinically important injuries for traumatic orbital fracture victims. Topic modeling of the corpora is also utilized as an alternative representation of the patient reports. Our results show that both NLP and topic modeling improves raw text classification results. Within NLP features, filtering the codes using modifiers produces the best performance. Topic modeling shows mixed results. Topic vectors provide good dimensionality reduction and get comparable classification results as with NLP features. However, binary topic classification fails to improve upon raw text classification.

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