Speech recognition technology for assessing team debriefing communication and interaction patterns: An algorithmic toolkit for healthcare simulation educators.

IF 2.8 Q2 HEALTH CARE SCIENCES & SERVICES
Robin Brutschi, Rui Wang, Michaela Kolbe, Kerrin Weiss, Quentin Lohmeyer, Mirko Meboldt
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引用次数: 0

Abstract

Background: Debriefings are central to effective learning in simulation-based medical education. However, educators often face challenges when conducting debriefings, which are further compounded by the lack of empirically derived knowledge on optimal debriefing processes. The goal of this study was to explore the technical feasibility of audio-based speaker diarization for automatically, objectively, and reliably measuring debriefing interaction patterns among debriefers and participants. Additionally, it aimed to investigate the ability to automatically create statistical analyses and visualizations, such as sociograms, solely from the audio recordings of debriefings among debriefers and participants.

Methods: We used a microphone to record the audio of debriefings conducted during simulation-based team training with third-year medical students. The debriefings were led by two healthcare simulation instructors. We processed the recorded audio file using speaker diarization machine learning algorithms and validated the results manually to showcase its accuracy. We selected two debriefings to compare the speaker diarization results between different sessions, aiming to demonstrate similarities and differences in interaction patterns.

Results: Ten debriefings were analyzed, each lasting about 30 min. After data processing, the recorded data enabled speaker diarization, which in turn facilitated the automatic creation of visualized interaction patterns, such as sociograms. The findings and data visualizations demonstrated the technical feasibility of implementing audio-based visualizations of interaction patterns, with an average accuracy of 97.78%.We further analyzed two different debriefing cases to uncover similarities and differences between the sessions. By quantifying the response rate from participants, we were able to determine and quantify the level of interaction patterns triggered by instructors in each debriefing session. In one session, the debriefers triggered 28% of the feedback from students, while in the other session, this percentage increased to 36%.

Conclusion: Our results indicate that speaker diarization technology can be applied accurately and automatically to provide visualizations of debriefing interactions. This application can be beneficial for the development of simulation educator faculty. These visualizations can support instructors in facilitating and assessing debriefing sessions, ultimately enhancing learning outcomes in simulation-based healthcare education.

用于评估团队汇报交流和互动模式的语音识别技术:医疗模拟教育工作者的算法工具包。
背景:汇报是模拟医学教育中有效学习的核心。然而,教育者在进行汇报时往往面临挑战,而缺乏有关最佳汇报流程的经验知识又进一步加剧了这一挑战。本研究的目的是探索基于音频的发言者日记的技术可行性,以自动、客观、可靠地测量汇报者和参与者之间的汇报互动模式。此外,本研究还旨在调查仅从汇报者和参与者之间的汇报录音自动创建统计分析和可视化(如社会图)的能力:我们使用麦克风录制了三年级医学生在模拟团队培训中进行汇报的音频。汇报由两名医疗模拟指导员主持。我们使用说话者日记化机器学习算法处理了录制的音频文件,并对结果进行了人工验证,以展示其准确性。我们选取了两个汇报来比较不同环节的说话者日记化结果,旨在展示互动模式的异同:我们分析了十次汇报,每次持续约 30 分钟。经过数据处理后,记录的数据实现了发言者日记化,这反过来又促进了可视化互动模式的自动创建,如社会图。研究结果和数据可视化证明了实现基于音频的交互模式可视化在技术上的可行性,平均准确率达到 97.78%。通过量化参与者的回复率,我们能够确定并量化教员在每次汇报中触发的互动模式的水平。在一个环节中,汇报者引发了 28% 的学生反馈,而在另一个环节中,这一比例上升到了 36%:我们的研究结果表明,说话者日记技术可以准确、自动地应用于提供汇报互动的可视化效果。这一应用有利于模拟教育师资队伍的发展。这些可视化技术可帮助教师促进和评估汇报会话,最终提高模拟医疗保健教育的学习效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
5.70
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审稿时长
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