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Related Experiment Videos

Depression detection from multimodalities based on LeNet with hunter-geese optimization.

Pradeep G1, Oswalt Manoj S2, S Karthikeyini3

  • 1Assistant Professor, Department of Computer Science and Engineering, Sri Krishna College of Engineering and Technology, Anna University, Kuniyamuthur, Coimbatore, 641008, India. pradeep.be2012@gmail.com.

Scientific Reports
|June 14, 2026
PubMed
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This study introduces HGMO-LeNet, a novel framework for detecting depression using Magnetic Resonance Imaging (MRI) and speech data. The model achieves high accuracy, offering a robust system for automated depression detection.

Area of Science:

  • Neuroscience
  • Artificial Intelligence
  • Medical Imaging

Background:

  • Depression diagnosis relies on subjective methods, leading to potential inaccuracies.
  • Single-modality approaches fail to capture the complexity of depression.
  • Early detection is crucial for effective intervention and reducing adverse outcomes.

Purpose of the Study:

  • To develop a novel, multimodal framework for enhanced depression detection.
  • To integrate Magnetic Resonance Imaging (MRI) and speech data for improved diagnostic accuracy.
  • To introduce the Hunter Geese Migration Optimization-based LeNet (HGMO-LeNet) model.

Main Methods:

  • Utilized adaptive Wiener and Gaussian filters for MRI and speech signal preprocessing, respectively.
  • Implemented ROI extraction and feature extraction (volumetric and textural) from MRI data.
Keywords:
Deep learningDepression detectionMagnetic resonance imagingMultimodalitySpeech signal

Related Experiment Videos

  • Employed a LeNet architecture fine-tuned with Hunter Geese Migration Optimization (HGMO) for depression detection from both modalities.
  • Merged outputs from MRI and speech using a correlation coefficient.
  • Main Results:

    • The HGMO-LeNet model achieved high performance metrics.
    • Achieved a maximum specificity of 91.000%, accuracy of 91.276%, and sensitivity of 92.266%.
    • Demonstrated superior performance compared to existing depression detection methods.

    Conclusions:

    • The proposed HGMO-LeNet framework offers a robust and accurate system for automated depression detection.
    • Multimodal data integration (MRI and speech) significantly enhances depression detection capabilities.
    • The study highlights the potential of advanced AI models in psychiatric diagnostics.