Skin conductance responses in Major Depressive Disorder (MDD) under mental arithmetic stress.
Ah Young KimEun Hye JangKwan Woo ChoiHong Jin JeonSangwon ByunJoo Yong SimJae Hun ChoiHan Young YuPublished in: PloS one (2019)
Depressive symptoms are related to abnormalities in the autonomic nervous system (ANS), and physiological signals that can be used to measure and evaluate such abnormalities have previously been used as indicators for diagnosing mental disorder, such as major depressive disorder (MDD). In this study, we investigate the feasibility of developing an objective measure of depressive symptoms that is based on examining physiological abnormalities in individuals when they are experiencing mental stress. To perform this, we recruited 30 patients with MDD and 31 healthy controls. Then, skin conductance (SC) was measured during five 5-min experimental phases, comprising baseline, mental stress, recovery from the stress, relaxation, and recovery from the relaxation, respectively. For each phase, the mean amplitude of the skin conductance level (MSCL), standard deviations of the SCL (SDSCL), slope of the SCL (SSCL), mean amplitude of the non-specific skin conductance responses (MSCR), number of non-specific skin conductance responses (NSCR), and power spectral density (PSD) were evaluated from the SC signals, producing 30 parameters overall (six features for each phase). These features were used as input data for a support vector machine (SVM) algorithm designed to distinguish MDD patients from healthy controls based on their physiological responses. Statistical tests showed that the main effect of task was significant in all SC features, and the main effect of group was significant in MSCL, SDSCL, SSCL, and PSD. In addition, the proposed algorithm achieved 70% accuracy, 70% sensitivity, 71% specificity, 70% positive predictive value, 71% negative predictive value in classifying MDD patients and healthy controls. These results demonstrated that it is possible to extract meaningful features that reflect changes in ANS responses to various stimuli. Using these features, detection of MDD was feasible, suggesting that SC analysis has great potential for future diagnostics and prediction of depression based on objective interpretation of depressive states.
Keyphrases
- major depressive disorder
- bipolar disorder
- depressive symptoms
- end stage renal disease
- wound healing
- soft tissue
- ejection fraction
- newly diagnosed
- mental health
- machine learning
- deep learning
- peritoneal dialysis
- social support
- magnetic resonance imaging
- patient reported outcomes
- computed tomography
- oxidative stress
- optical coherence tomography
- electronic health record
- single molecule
- risk assessment
- big data
- contrast enhanced
- structural basis
- real time pcr