Biases of Happy Faces in Face Classification Processing of Depression in Chinese Patients.

Biases of Happy Faces in Face Classification Processing of Depression in Chinese Patients. Neural Plast. 2020;2020:7235734 Authors: Tong Y, Zhao G, Zhao J, Xie N, Han D, Yang B, Liu Q, Sun H, Yang Y Abstract We explored the face classification processing mechanism in depressed patients, especially the biases of happy faces in face classification processing of depression. Thirty patients with the first episode of depression at the First Affiliated Hospital of Harbin Medical University were selected as the depression group, while healthy people matched for age, gender, and educational level were assigned to the control group. The Hamilton Depression Scale and Hamilton Anxiety Scale were used to select the subjects; then, we used the forced face classification paradigm to collect behavioral (response time and accuracy) and event-related potential (ERP) data of the subjects. The differences between the groups were estimated using a repeated measurement analysis of variance. The total response time of classified faces in the depression group was longer than that in the control group, the correct rate was lower, and the difference was statistically significant (P < 0.05). N170 component analysis demonstrated that the latency of the depression group was prolonged, and the difference was statistically significant (P < 0.05). When classifying happy faces, the depressed patients demonstrated a decrease in N170 amplitude and a prolongatio...
Source: Neural Plasticity - Category: Neurology Authors: Tags: Neural Plast Source Type: research