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Brain-computer interfaces inspired spiking neural network model for depression stage identification.
Ponrani, M Angelin; Anand, Monika; Alsaadi, Mahmood; Dutta, Ashit Kumar; Fayaz, Roma; Mathew, Sojomon; Chaurasia, Mousmi Ajay; Bhende, Manisha.
Affiliation
  • Ponrani MA; Department of ECE, St. Joseph's College of Engineering, Chennai -119, India. Electronic address: angelinponrani.m@gmail.com.
  • Anand M; Computer Science & Engineering, Chandigarh University, Mohali, India.
  • Alsaadi M; Department of computer science, Al-Maarif University College, Al Anbar 31001, Iraq.
  • Dutta AK; Department of Computer Science and Information Systems, College of Applied Sciences, AlMaarefa University, Ad Diriyah, Riyadh 13713, Saudi Arabia.
  • Fayaz R; Dapartmemt of computer science, college of computer science and information technology, Jazan university, Jazan, Saudi Arabia.
  • Mathew S; Government College Kottayam, Kerala 686013, India.
  • Chaurasia MA; Dept of Computer Science and Engineering, Koneru Lakshmaiah Education Foundation, Hyderabad, India.
  • Sunila; Guru Jambheshwar University of Science and Technology, Hisar, Haryana, India.
  • Bhende M; Dr. D. Y. Patil Vidyapeeth, Pune, Dr. D. Y. Patil School of Science & Technology, Tathawade, Pune, India.
J Neurosci Methods ; 409: 110203, 2024 Jun 15.
Article in En | MEDLINE | ID: mdl-38880343
ABSTRACT

BACKGROUND:

Depression is a global mental disorder, and traditional diagnostic methods mainly rely on scales and subjective evaluations by doctors, which cannot effectively identify symptoms and even carry the risk of misdiagnosis. Brain-Computer Interfaces inspired deep learning-assisted diagnosis based on physiological signals holds promise for improving traditional methods lacking physiological basis and leads next generation neuro-technologies. However, traditional deep learning methods rely on immense computational power and mostly involve end-to-end network learning. These learning methods also lack physiological interpretability, limiting their clinical application in assisted diagnosis.

METHODOLOGY:

A brain-like learning model for diagnosing depression using electroencephalogram (EEG) is proposed. The study collects EEG data using 128-channel electrodes, producing a 128×128 brain adjacency matrix. Given the assumption of undirected connectivity, the upper half of the 128×128 matrix is chosen in order to minimise the input parameter size, producing 8,128-dimensional data. After eliminating 28 components derived from irrelevant or reference electrodes, a 90×90 matrix is produced, which can be used as an input for a single-channel brain-computer interface image.

RESULT:

At the functional level, a spiking neural network is constructed to classify individuals with depression and healthy individuals, achieving an accuracy exceeding 97.5 %. COMPARISON WITH EXISTING

METHODS:

Compared to deep convolutional methods, the spiking method reduces energy consumption.

CONCLUSION:

At the structural level, complex networks are utilized to establish spatial topology of brain connections and analyse their graph features, identifying potential abnormal brain functional connections in individuals with depression.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: J Neurosci Methods Year: 2024 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: J Neurosci Methods Year: 2024 Document type: Article