Jagannath Swathi, Sarcevic Aleksandra, Marsic Ivan
Drexel University Philadelphia, PA, United States {sj532,aleksarc}@drexel.edu.
Rutgers University Piscataway, NJ, United States
Int Conf Pervasive Comput Technol Healthc. 2018 May;2018:88-97. doi: 10.1145/3240925.3240941.
We analyzed the nature of verbal communication among team members in a dynamic medical setting of trauma resuscitation to inform the design of a speech-based automatic activity recognition system. Using speech transcripts from 20 resuscitations, we identified common keywords and speech patterns for different resuscitation activities. Based on these patterns, we developed narrative schemas (speech "workflow" models) for five most frequently performed activities and applied linguistic models to represent relationships between sentences. We evaluated the narrative schemas with 17 new cases, finding that all five schemas adequately represented speech during activities and could serve as a basis for speech-based activity recognition. We also identified similarities between narrative schemas of different activities. We conclude with design implications and challenges associated with speech-based activity recognition in complex medical processes.
我们分析了创伤复苏动态医疗环境中团队成员之间言语交流的性质,以为基于语音的自动活动识别系统的设计提供信息。利用20次复苏的语音记录,我们确定了不同复苏活动的常见关键词和语音模式。基于这些模式,我们为五项最常执行的活动开发了叙事模式(语音“工作流程”模型),并应用语言模型来表示句子之间的关系。我们用17个新病例对叙事模式进行了评估,发现所有五个模式都能充分代表活动期间的言语,可作为基于语音的活动识别的基础。我们还确定了不同活动叙事模式之间的相似性。我们最后讨论了在复杂医疗过程中基于语音的活动识别的设计意义和挑战。