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比较文本挖掘和手动编码方法:分析老年人长期护理中护理质量的访谈数据。

Comparing text mining and manual coding methods: Analysing interview data on quality of care in long-term care for older adults.

机构信息

Faculty of Health Medicine and Life Sciences, Department of Health Services Research, CAPHRI Care and Public Health Research Institute, Maastricht University, Maastricht, The Netherlands.

The Living Lab in Ageing & Long-Term Care, Maastricht, The Netherlands.

出版信息

PLoS One. 2023 Nov 8;18(11):e0292578. doi: 10.1371/journal.pone.0292578. eCollection 2023.

Abstract

OBJECTIVES

In long-term care for older adults, large amounts of text are collected relating to the quality of care, such as transcribed interviews. Researchers currently analyze textual data manually to gain insights, which is a time-consuming process. Text mining could provide a solution, as this methodology can be used to analyze large amounts of text automatically. This study aims to compare text mining to manual coding with regard to sentiment analysis and thematic content analysis.

METHODS

Data were collected from interviews with residents (n = 21), family members (n = 20), and care professionals (n = 20). Text mining models were developed and compared to the manual approach. The results of the manual and text mining approaches were evaluated based on three criteria: accuracy, consistency, and expert feedback. Accuracy assessed the similarity between the two approaches, while consistency determined whether each individual approach found the same themes in similar text segments. Expert feedback served as a representation of the perceived correctness of the text mining approach.

RESULTS

An accuracy analysis revealed that more than 80% of the text segments were assigned the same themes and sentiment using both text mining and manual approaches. Interviews coded with text mining demonstrated higher consistency compared to those coded manually. Expert feedback identified certain limitations in both the text mining and manual approaches.

CONCLUSIONS AND IMPLICATIONS

While these analyses highlighted the current limitations of text mining, they also exposed certain inconsistencies in manual analysis. This information suggests that text mining has the potential to be an effective and efficient tool for analysing large volumes of textual data in the context of long-term care for older adults.

摘要

目的

在老年人的长期护理中,会收集大量与护理质量相关的文本,例如转录的访谈。研究人员目前手动分析文本数据以获取见解,这是一个耗时的过程。文本挖掘可以提供一种解决方案,因为这种方法可用于自动分析大量文本。本研究旨在比较文本挖掘和手动编码在情感分析和主题内容分析方面的效果。

方法

从与居民(n=21)、家庭成员(n=20)和护理专业人员(n=20)的访谈中收集数据。开发了文本挖掘模型并将其与手动方法进行了比较。根据三个标准评估手动和文本挖掘方法的结果:准确性、一致性和专家反馈。准确性评估两种方法之间的相似性,而一致性则确定每种方法是否在相似的文本段中找到相同的主题。专家反馈代表了对文本挖掘方法的正确性的看法。

结果

准确性分析表明,使用文本挖掘和手动方法对超过 80%的文本段分配了相同的主题和情感。与手动编码相比,使用文本挖掘编码的访谈显示出更高的一致性。专家反馈确定了文本挖掘和手动方法的某些局限性。

结论和意义

虽然这些分析突出了文本挖掘的当前局限性,但也揭示了手动分析的某些不一致性。这些信息表明,文本挖掘有可能成为分析老年人长期护理中大量文本数据的有效且高效的工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/587b/10631650/4e0b0fe7a51e/pone.0292578.g001.jpg

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