Literature DB >> 34585763

Sub-second transient activated patterns to sad expressions in major depressive disorders discovered via hidden Markov model.

Zhongpeng Dai1,2, Siqi Zhang1,2, Xinyi Wang1,2, Huan Wang1,2, Hongliang Zhou3,4, Shui Tian1,2, Zhilu Chen3,4, Qing Lu1,2, Zhijian Yao3,4.   

Abstract

The pathological mechanisms of major depressive disorders (MDDs) is associated with the overexpression of negative emotions, and the fast transient-activated patterns underlying overrepresentation in depression still remain to be revealed to date. We hypothesized that the aberrant spatiotemporal attributes of the process of sad expressions are related to the neuropathology of MDD and help to detect the depression severity. We enrolled a total of 96 subjects including 47 patients with MDD and 49 healthy controls (HCs), and recorded their magnetoencephalography data under a sad expression recognition task. A hidden Markov model (HMM) was applied to separate the whole neural activity into several brain states, then to characterize the dynamics. To find the disrupted temporal-spatial characteristics, power estimations and fractional occupancy (FO) of each state were estimated and contrasted between MDDs and HCs. Three states were found over the period of emotional stimuli processing procedure. The early visual stage (0-270 ms) was mainly manifested by state 1, and the emotional information processing stage (270-600 ms) was manifested by state 2, while the state 3 remained a steady proportion across the whole period. MDDs activated statistically more in limbic system during state 2 (p = 0.0045) and less in frontoparietal control network during state 3 (p = 5.38 × 10-5 ) relative to HCs. Hamilton Depression Rating Scale scores were significantly correlated with the predicted disorder severity using FO values (p = 0.0062, r = 0.3933). Relative to HCs, MDDs perceived the sad contents quickly and spent more time overexpressing the negative emotions. These phenomena indicated MDD patients might easily indulge in negative emotion and neglect other things. Furthermore, temporal descriptors built by HMM could be potential biomarkers for identifying the severity of depression disorders.
© 2021 Wiley Periodicals LLC.

Entities:  

Keywords:  hidden Markov model; magnetoencephalography; major depressive disorders; negative stimuli

Mesh:

Year:  2021        PMID: 34585763     DOI: 10.1002/jnr.24942

Source DB:  PubMed          Journal:  J Neurosci Res        ISSN: 0360-4012            Impact factor:   4.164


  2 in total

1.  Global and local feature fusion via long and short-term memory mechanism for dance emotion recognition in robot.

Authors:  Yin Lyu; Yang Sun
Journal:  Front Neurorobot       Date:  2022-08-24       Impact factor: 3.493

2.  Attenuated alpha-gamma coupling in emotional dual pathways with right-Amygdala predicting ineffective antidepressant response.

Authors:  Zhongpeng Dai; Cong Pei; Siqi Zhang; Shui Tian; Zhilu Chen; Hongliang Zhou; Qing Lu; Zhijian Yao
Journal:  CNS Neurosci Ther       Date:  2021-12-24       Impact factor: 5.243

  2 in total

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