Medicine and HealthTranslational Psychiatry
Identifying mental health status using deep neural network trained by visual metrics
S. B. Shafiei, Z. Lone, et al.
This innovative study, conducted by Somayeh B. Shafiei, Zaeem Lone, Ahmed S. Elsayed, Ahmed A. Hussein, and Khurshid A. Guru, presents an objective method for mental health evaluation through a CNN-LSTM model utilizing visual metrics time-series data. With impressive classification accuracy rates, this research opens the door for at-home mental health monitoring applications.
Related Publications
Explore these studies to deepen your understanding
Adjacent work that informs or extends this paper's methodology and findings.
Biology
Unraveling the Neural Network: Identifying Temporal Labeling of Visual Events through EEG-Based Functional Connectivity Analysis of Brain Regions
S. Khoonbani and H. Ramezanian
Cognitive Science
Brain-optimized deep neural network models of human visual areas learn non-hierarchical representations
G. St-yves, E. J. Allen, et al.
Medicine and Health
Preferences for and intention to use an app for premenstrual mental health symptoms using the Health Behaviour Model (HBM)
E. L. Funnell, N. A. Martin-key, et al.
Medicine and Health
The Journey of the Default Mode Network: Development, Function, and Impact on Mental Health
F. R. Azarias, G. H. D. R. Almeida, et al.

