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Neuro-Fuzzy Physiological Computing to Assess Stress Levels in Virtual Reality Therapy

机译:神经模糊生理计算以评估虚拟现实疗法中的压力水平

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摘要

This paper reports the design and assessment of a neuro-fuzzy model to support clinicians during virtual reality therapy. The implemented model is able to automatically recognize the perceived stress levels of the patients by analyzing physiological and behavioral data during treatment. The model, consisting of a self-organizingmap and a fuzzy-rule-basedmodule, was trained unobtrusively recording electrocardiogram, breath rate and activity during stress inoculation provided by the exposure to virtual environments. Twenty nurses were exposed to sessions simulating typical stressful situations experienced at their workplace. Four levels of stress severity were evaluated for each subject by gold standard clinical scales administered by trained personnel. The model's performances were discussed and compared with the main machine learning algorithms. The neurofuzzy model shows better performances in terms of stress level classification with 83% of mean recognition rate.
机译:本文报告了在虚拟现实治疗过程中支持临床医生的神经模糊模型的设计和评估。通过分析治疗期间的生理和行为数据,所实施的模型能够自动识别患者的感知压力水平。该模型由自组织图和基于模糊规则的模块组成,经过培训后可以毫不扰动地记录心电图,呼吸速率和在暴露于虚拟环境下提供的压力接种过程中的活动。 20名护士参加了模拟他们在工作场所遇到的典型压力情况的会议。通过受过培训的人员管理的金标准临床量表,对每个受试者评估了四个压力严重程度。对模型的性能进行了讨论,并与主要的机器学习算法进行了比较。神经模糊模型在压力水平分类方面表现出更好的性能,平均识别率达83%。

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