Breakthrough AI Model Diagnoses Depression with 97.53% Accuracy Using Speech and Brain Activity

November 21, 2024
Breakthrough AI Model Diagnoses Depression with 97.53% Accuracy Using Speech and Brain Activity
  • Researchers at Kaunas University of Technology (KTU) have developed an innovative AI model that identifies depression by analyzing both speech and brain neural activity.

  • With depression affecting approximately 280 million people globally, this research aims to address a significant mental health challenge.

  • The new AI model boasts an impressive accuracy rate of 97.53% in diagnosing depression, significantly outperforming existing diagnostic techniques.

  • EEG data for the study was sourced from the Multimodal Open Dataset for Mental Disorder Analysis (MODMA), with recordings taken while participants were awake and relaxed.

  • Musyyab Yousufi, a Ph.D. student at KTU, highlights that while facial expressions can indicate emotional states, voice data is a more reliable source due to its subtlety.

  • As the model evolves, it must provide explanations for its diagnostic decisions, aligning with the growing demand for explainable AI (XAI) in healthcare.

  • The research findings were published in the Brain Sciences Journal under the title "Multimodal Fusion of EEG and Audio Spectrogram for Major Depressive Disorder Recognition Using Modified DenseNet121."

  • Utilizing a multimodal approach, the model integrates speech and neural data, allowing for a more precise analysis of emotional states compared to traditional single-data methods.

  • The algorithm employs a modified DenseNet-121 deep-learning model, transforming collected EEG and audio signals into spectrograms for effective depression detection.

  • To enhance the model's reliability, participants engaged in activities involving natural language use, such as answering questions and describing images, during audio data collection.

  • However, the model's effectiveness will require further clinical trials and refinement, particularly to address challenges related to insufficient data due to privacy concerns.

  • Rytis Maskeliūnas, a KTU professor involved in the project, emphasizes the need for more objective diagnostic methods to improve accessibility for individuals suffering from depression.

Summary based on 2 sources


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