首页> 美国卫生研究院文献>Journal of the American Medical Informatics Association : JAMIA >Capturing patient information at nursing shift changes: methodological evaluation of speech recognition and information extraction
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Capturing patient information at nursing shift changes: methodological evaluation of speech recognition and information extraction

机译:在护理班次变更时捕获患者信息:语音识别和信息提取的方法学评估

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摘要

>Objective We study the use of speech recognition and information extraction to generate drafts of Australian nursing-handover documents.>Methods Speech recognition correctness and clinicians’ preferences were evaluated using 15 recorder–microphone combinations, six documents, three speakers, Dragon Medical 11, and five survey/interview participants. Information extraction correctness evaluation used 260 documents, six-class classification for each word, two annotators, and the CRF++ conditional random field toolkit.>Results A noise-cancelling lapel-microphone with a digital voice recorder gave the best correctness (79%). This microphone was also the most preferred option by all but one participant. Although the participants liked the small size of this recorder, their preference was for tablets that can also be used for document proofing and sign-off, among other tasks. Accented speech was harder to recognize than native language and a male speaker was detected better than a female speaker. Information extraction was excellent in filtering out irrelevant text (85% F1) and identifying text relevant to two classes (87% and 70% F1). Similarly to the annotators’ disagreements, there was confusion between the remaining three classes, which explains the modest 62% macro-averaged F1.>Discussion We present evidence for the feasibility of speech recognition and information extraction to support clinicians’ in entering text and unlock its content for computerized decision-making and surveillance in healthcare.>Conclusions The benefits of this automation include storing all information; making the drafts available and accessible almost instantly to everyone with authorized access; and avoiding information loss, delays, and misinterpretations inherent to using a ward clerk or transcription services.
机译:>目的我们研究了使用语音识别和信息提取来生成澳大利亚护理移交文件的草稿。>方法使用15个录音机-麦克风评估了语音识别的正确性和临床医生的偏好组合,六个文档,三个发言人,Dragon Medical 11和五个调查/访谈参与者。信息提取正确性评估使用了260个文档,每个单词六级分类,两个注释器以及CRF ++条件随机字段工具包。>结果配有数字录音笔的消噪翻领式麦克风效果最好正确性(79%)。除了一位参与者外,这款麦克风还是所有参与者的首选。尽管参与者喜欢这种录音机的体积小,但他们更喜欢平板电脑,平板电脑还可以用于文档校对和签核等任务。口音比母语难辨认,男性说话者比女性说话者更好。信息提取在过滤无关文本(85%F1)和识别与两类(87%和70%F1)相关的文本方面表现出色。与注释者的分歧类似,其余三个类别之间也存在混淆,这解释了平均F1为62%的宏观平均水平。>讨论我们为语音识别和信息提取为临床医生提供可行性提供了证据>结论:这种自动化的好处包括存储所有信息;在文本中输入文字并解锁其内容,以便进行医疗保健中的计算机决策和监视。具有授权访问权限的所有人几乎可以立即获取和访问草稿;并避免使用监护人或转录服务所固有的信息丢失,延迟和误解。

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