Computational Psychometrics Using Psychophysiological Measures for the Assessment of Acute Mental Stress.
Pietro CipressoDesirée ColomboGiuseppe RivaPublished in: Sensors (Basel, Switzerland) (2019)
The goal of this study was to provide reliable quantitative analyses of psycho-physiological measures during acute mental stress. Acute, time-limited stressors are used extensively as experimental stimuli in psychophysiological research. In particular, the Stroop Color Word Task and the Arithmetical Task have been widely used in several settings as effective mental stressors. We collected psychophysiological data on blood volume pulse, thoracic respiration, and skin conductance from 60 participants at rest and during stressful situations. Subsequently, we used statistical univariate tests and multivariate computational approaches to conduct comprehensive studies on the discriminative properties of each condition in relation to psychophysiological correlates. The results showed evidence of a greater discrimination capability of the Arithmetical Task compared to the Stroop test. The best predictors were the short time Heart Rate Variability (HRV) indices, in particular, the Respiratory Sinus Arrhythmia index, which in turn could be predicted by other HRV and respiratory indices in a hierarchical, multi-level regression analysis. Thus, computational psychometrics analyses proved to be an effective tool for studying such complex variables. They could represent the first step in developing complex platforms for the automatic detection of mental stress, which could improve the treatment.
Keyphrases
- liver failure
- heart rate variability
- respiratory failure
- mental health
- drug induced
- aortic dissection
- heart rate
- stress induced
- blood pressure
- data analysis
- spinal cord
- high resolution
- multidrug resistant
- soft tissue
- heat stress
- deep learning
- spinal cord injury
- mechanical ventilation
- intensive care unit
- electronic health record
- atrial fibrillation
- big data
- living cells
- quantum dots