Machine-based emotion-assessment in waiting rooms – a feasibility and acceptance study

Thomas Wittenberg, Dominik Seuß, Jaspar Pahl, Eike Binz, Yon-Dschun Ko
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Abstract

Abstract Background: Due to an aging society and changing health behaviors, emergency room crowding has become a major problem in western health care systems. Empowering patients and health care workers to assess necessary and relevant information is critical to streamline clinical workflows. Health kiosks, designed for services like self-check-in or (ideally contactless) health self-assessment may be instrumental in solving this issue. Based on the collected data, automated workflows such as flagging critical patients, inducing specific diagnostics or early symptomatic treatment could be implemented. Objective: Using an AI-supported software, which visually analyzes and categorizes facial expressions, the emotional status of hemato-oncologic patients in a German oncology outpatient clinic was examined. Additionally a survey was conducted, evaluating the acceptance of such a self-assessment solution. Results: 98% of the participants were not stressed by the real-time emotion analysis. However, the current set of registered emotion categories was found to be only partially sufficient to adequately describe the emotional status of the patients. More importantly, 88% of the participants found such a system to be meaningful. Also, 84% of the participants agreed that such a self-analysis could be of potential assistance. No relevant generation- or gender-specific differences could be observed. Discussion: Automated analysis of patients’ emotional status can be a first step toward a more comprehensive assessment of the respective health status. Patients, in particular the elderly, approve to the vision and development of such a system. Next steps are a further improvement of the AI-based emotion recognition software with respect to more emotional states as well as the definition, inclusion and ideally contactless acquisition of physical biomarkers (as e.g. heart rate or respiratory rate) determining physical and mental well-being.
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候诊室中基于机器的情绪评估——可行性和可接受性研究
摘要背景:由于老龄化社会和健康行为的改变,急诊室拥挤已成为西方卫生保健系统的主要问题。赋予患者和卫生保健工作者评估必要和相关信息的能力,对于简化临床工作流程至关重要。为自助登记或(理想的非接触式)健康自我评估等服务而设计的健康信息亭可能有助于解决这一问题。根据收集到的数据,可以实现标记危重患者、诱导特定诊断或早期对症治疗等自动化工作流程。目的:利用人工智能支持的面部表情可视化分析和分类软件,对德国某肿瘤门诊血液肿瘤患者的情绪状态进行分析。此外,还进行了一项调查,评估这种自我评估解决方案的接受程度。结果:98%的参与者在实时情绪分析中没有压力。然而,目前注册的情绪类别被发现仅部分足以充分描述患者的情绪状态。更重要的是,88%的参与者认为这样的系统是有意义的。此外,84%的参与者认为这样的自我分析可能会有潜在的帮助。没有观察到相关的代际或性别差异。讨论:对患者情绪状态的自动分析可能是对各自健康状况进行更全面评估的第一步。患者,尤其是老年人,对这种系统的愿景和发展表示赞同。下一步是进一步改进基于人工智能的情绪识别软件,涉及更多的情绪状态,以及确定身心健康的物理生物标志物(如心率或呼吸频率)的定义、包含和理想的非接触式获取。
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来源期刊
Current Directions in Biomedical Engineering
Current Directions in Biomedical Engineering Engineering-Biomedical Engineering
CiteScore
0.90
自引率
0.00%
发文量
239
审稿时长
14 weeks
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