三角测量
主题分析
定性研究
定性性质
感知
多元方法论
突出
流程图
计算机科学
心理学
管理科学
应用心理学
数据科学
医学教育
医学
人工智能
社会学
工程类
数学教育
社会科学
机器学习
地图学
神经科学
程序设计语言
地理
作者
Insa Mannstadt,Susan M. Goodman,Mangala Rajan,Sarah Young,Fei Wang,Iris Navarro‐Millán,Bella Mehta
摘要
Objective Mixed‐methods research is valuable in health care to gain insights into patient perceptions. However, analyzing textual data from interviews can be time‐consuming and require multiple analysts for investigator triangulation. This study aims to explore a novel approach to investigator triangulation in mixed‐methods research by employing a large language model (LLM) for analyzing data from patient interviews. Methods This study compared the thematic analysis and survey generation performed by human investigators and ChatGPT‐4, which uses GPT‐4 as its backbone model, using data from an existing study that explored patient perceptions of barriers to arthroplasty. The human‐ and ChatGPT‐4–generated themes and surveys were compared and evaluated based on their representation of salient themes from a predetermined topic guide. Results ChatGPT‐4 generated analogous dominant themes and a comprehensive corresponding survey as the human investigators but in significantly less time. The survey questions generated by ChatGPT‐4 were less precise than those developed by human investigators. The mixed‐methods flowchart proposes integrating LLMs and human investigators as a supplementary tool for the preliminary thematic analysis of qualitative data and survey generation. Conclusion By utilizing a combination of LLMs and human investigators through investigator triangulation, researchers may be able to conduct more efficient mixed‐methods research to better understand patient perspectives. Ethical and qualitative implications of using LLMs should be considered.
科研通智能强力驱动
Strongly Powered by AbleSci AI