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Web-based textual analysis of free-text patient experience comments from a survey in primary care.

机译:基于网络的文本文本分析,来自初级保健调查中的自由文本患者体验评论。

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摘要

BACKGROUND: Open-ended questions eliciting free-text comments have been widely adopted in surveys of patient experience. Analysis of free text comments can provide deeper or new insight, identify areas for action, and initiate further investigation. Also, they may be a promising way to progress from documentation of patient experience to achieving quality improvement. The usual methods of analyzing free-text comments are known to be time and resource intensive. To efficiently deal with a large amount of free-text, new methods of rapidly summarizing and characterizing the text are being explored. OBJECTIVE: The aim of this study was to investigate the feasibility of using freely available Web-based text processing tools (text clouds, distinctive word extraction, key words in context) for extracting useful information from large amounts of free-text commentary about patient experience, as an alternative to more resource intensive analytic methods. METHODS: We collected free-text responses to a broad, open-ended question on patients' experience of primary care in a cross-sectional postal survey of patients recently consulting doctors in 25 English general practices. We encoded the responses to text files which were then uploaded to three Web-based textual processing tools. The tools we used were two text cloud creators: TagCrowd for unigrams, and Many Eyes for bigrams; and Voyant Tools, a Web-based reading tool that can extract distinctive words and perform Keyword in Context (KWIC) analysis. The association of patients' experience scores with the occurrence of certain words was tested with logistic regression analysis. KWIC analysis was also performed to gain insight into the use of a significant word. RESULTS: In total, 3426 free-text responses were received from 7721 patients (comment rate: 44.4%). The five most frequent words in the patients' comments were "doctor", "appointment", "surgery", "practice", and "time". The three most frequent two-word combinations were "reception staff", "excellent service", and "two weeks". The regression analysis showed that the occurrence of the word "excellent" in the comments was significantly associated with a better patient experience (OR=1.96, 95%CI=1.63-2.34), while "rude" was significantly associated with a worse experience (OR=0.53, 95%CI=0.46-0.60). The KWIC results revealed that 49 of the 78 (63%) occurrences of the word "rude" in the comments were related to receptionists and 17(22%) were related to doctors. CONCLUSIONS: Web-based text processing tools can extract useful information from free-text comments and the output may serve as a springboard for further investigation. Text clouds, distinctive words extraction and KWIC analysis show promise in quick evaluation of unstructured patient feedback. The results are easily understandable, but may require further probing such as KWIC analysis to establish the context. Future research should explore whether more sophisticated methods of textual analysis (eg, sentiment analysis, natural language processing) could add additional levels of understanding.
机译:背景:引发自由文本评论的开放式问题已在患者体验调查中被广泛采用。对自由文本评论的分析可以提供更深入或新的见解,确定需要采取的行动并发起进一步调查。同样,它们可能是从记录患者经验到改善质量的有前途的方法。众所周知,分析自由文本评论的常用方法需要大量时间和资源。为了有效处理大量的自由文本,正在探索快速总结和表征文本的新方法。目的:本研究的目的是研究使用免费的基于Web的文本处理工具(文本云,独特词提取,上下文中的关键词)从大量有关患者经验的自由文本评论中提取有用信息的可行性。 ,以替代耗费大量资源的分析方法。方法:我们在最近一次以25种英语通用实践向医生咨询的患者的横断面邮政调查中,收集了有关患者初级保健经验的广泛,开放式问题的自由文本回复。我们对文本文件的响应进行了编码,然后将其上传到三个基于Web的文本处理工具中。我们使用的工具是两个文本云创建者:用于Unigram的TagCrowd和用于bigrams的Many Eyes。 Voyant Tools,这是一种基于Web的阅读工具,可以提取独特的单词并执行上下文中的关键字(KWIC)分析。用logistic回归分析检验患者的经验分数与某些单词的出现之间的关系。还进行了KWIC分析,以了解重要单词的用法。结果:总共从7721名患者中收到3426篇自由文本回复(评论率:44.4%)。患者评论中最常使用的五个词是“医生”,“任命”,“手术”,“实践”和“时间”。三个最常见的两个词组合是“接待人员”,“优质服务”和“两个星期”。回归分析显示,注释中出现“优秀”一词与更好的患者体验显着相关(OR = 1.96,95%CI = 1.63-2.34),而“粗鲁”与糟糕的体验显着相关( OR = 0.53,95%CI = 0.46-0.60)。 KWIC结果显示,在注释中出现的78个粗鲁词中有49个(63%)与接待员有关,而与医生有关的有17个(22%)。结论:基于Web的文本处理工具可以从自由文本注释中提取有用的信息,并且输出结果可以作为进一步研究的跳板。文本云,独特词提取和KWIC分析显示了对非结构化患者反馈的快速评估的希望。结果很容易理解,但可能需要进行进一步的探查,例如KWIC分析才能确定具体情况。未来的研究应探索更复杂的文本分析方法(例如,情感分析,自然语言处理)是否可以增加理解水平。

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