首页> 外文期刊>International journal of psychophysiology: official journal of the International Organization of Psychophysiology >The diagnosticity of psychophysiological signatures: Can we disentangle mental workload from acute stress with ECG and fNIRS?
【24h】

The diagnosticity of psychophysiological signatures: Can we disentangle mental workload from acute stress with ECG and fNIRS?

机译:心理生理签名的诊断性:我们可以与心电图和Fnirs的急压力解开心理工作量吗?

获取原文
获取原文并翻译 | 示例
           

摘要

The ability to identify reliable and sensitive physiological signatures of psychological dimensions is key to developing intelligent adaptive systems that may in turn help to mitigate human error in complex operations. The challenge of this endeavor lies with diagnosticity. Despite different underlying causes, the physiological correlates of workload and acute psychological stress manifest in rather similar ways and can be easily confounded. The current work aimed to build a diagnostic model of mental state through the simultaneous classification of mental workload (varied through three levels of the n-back task) and acute stress (the presence/absence of aversive sounds) with machine learning. Using functional near infrared spectroscopy (fNIRS) and electrocardiography (ECG), the model's classifiers was above-chance to disentangle variations of mental workload from variations of acute stress. Both ECG and fNIRS could predict mental workload level, the best accuracy resulted from the two measures in combination. Stress level could not be accurately diagnosed through ECG alone, only with fNIRS or ECG and fNIRS combined. Individual calibration may be important since stress classification was more accurate for those with higher subjective state anxiety, perhaps due to a greater sensitivity to stress. Mental workload and stress were both better classified with activity in lateral prefrontal regions of the cortex than the medial areas, and the HbO2 signal generally lead to better classification than HHB. The current model represents a step forward to finely discriminate different mental states despite their rather analog physiological correlates.
机译:识别心理维度可靠和敏感的生理签名的能力是开发智能自适应系统的关键,这些系统可能反过来有助于减轻复杂操作中的人为错误。这一努力的挑战在于诊断性。尽管有不同的原因,但工作量和急性心理压力的生理相关性以相当类似的方式表现出来,并且可以很容易地混淆。目前的工作旨在通过同时分类心理工作量(通过三级的N-Wact任务)和机器学习的急压(厌恶的存在/不存在)来构建精神状态的诊断模型。使用近红外光谱(FNIR)和心电图(ECG),模型的分类器是急性急性压力变化的差异上的机会。 ECG和FNIR都可以预测心理工作量水平,最佳精度是由两种措施组合的。单独通过ECG无法准确诊断应力水平,仅使用FNIR或ECG和FNIR组合。由于对具有更高主观焦虑的人更准确,因此单独的校准可能是重要的,因为对具有更高的主观焦虑的人来说,可能是由于对压力的敏感性更大。心理工作量和应力均在皮质的横向前额平面区域的活性比内侧区域更好,并且HBO2信号通常导致比HHB更好的分类。尽管它们相当类似的地生理相关性,但目前的模型代表了精细区分不同心理状态的一步。

著录项

相似文献

  • 外文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号