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Automatically Detecting Likely Edits in Clinical Notes Created Using Automatic Speech Recognition

机译:在使用自动语音识别功能创建的临床笔记中自动检测可能的编辑

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摘要

The use of automatic speech recognition (ASR) to create clinical notes has the potential to reduce costs associated with note creation for electronic medical records, but at current system accuracy levels, post-editing by practitioners is needed to ensure note quality. Aiming to reduce the time required to edit ASR transcripts, this paper investigates novel methods for automatic detection of edit regions within the transcripts, including both putative ASR errors but also regions that are targets for cleanup or rephrasing. We create detection models using logistic regression and conditional random field models, exploring a variety of text-based features that consider the structure of clinical notes and exploit the medical context. Different medical text resources are used to improve feature extraction. Experimental results on a large corpus of practitioner-edited clinical notes show that 67% of sentence-level edits and 45% of word-level edits can be detected with a false detection rate of 15%.
机译:使用自动语音识别(ASR)创建临床笔记具有减少与电子病历笔记创建相关的成本的潜力,但是在当前的系统准确性级别上,需要从业人员进行后期编辑以确保笔记质量。为了减少编辑ASR成绩单所需的时间,本文研究了自动检测成绩单中编辑区域的新颖方法,包括既定的ASR错误,也包括清理或重新定标的目标区域。我们使用逻辑回归和条件随机场模型创建检测模型,探索各种基于文本的特征,这些特征考虑了临床笔记的结构并利用了医学背景。使用不同的医学文本资源来改善特征提取。在大量由从业人员编辑的临床笔记的语料库上的实验结果表明,可以检出67%的句子级编辑和45%的单词级编辑,错误检测率为15%。

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