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Alzheimer's disease prediction via an explainable CNN using genetic algorithm and SHAP values.

Mohammad Zahedipour1, Mohammad Saniee Abadeh1,2, Shakila Shojaei1,3

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This study introduces GASHAP, a novel explainable AI technique combining genetic algorithms and SHAP, to improve the transparency of 3D-CNN models for Alzheimer's disease diagnosis using MRI scans.

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Area of Science:

  • Artificial Intelligence
  • Medical Imaging Analysis
  • Neuroscience

Background:

  • Deep learning models like 3D-CNNs excel at image classification but lack transparency.
  • Interpreting black-box models is challenging in healthcare, particularly for diagnosing diseases like Alzheimer's.
  • Explainable AI (XAI) techniques aim to enhance model interpretability.

Purpose of the Study:

  • To introduce GASHAP, a novel XAI technique integrating genetic algorithms (GA) with SHAP, to improve 3D-CNN explainability.
  • To enhance the transparency of 3D-CNN models used for classifying Alzheimer's disease in MRI scans.
  • To provide diagnostic insights at the level of anatomically defined brain regions, moving beyond voxel-level analysis.

Main Methods:

  • Implemented a 3D-CNN for classifying Alzheimer's disease in MRI brain scans.
  • Applied the GASHAP technique, combining GA and SHAP, to identify significant brain regions.
  • Generated a definitive brain mask highlighting critical regions for Alzheimer's diagnosis.

Main Results:

  • Developed a 3D-CNN model for Alzheimer's disease classification from MRI scans.
  • Successfully applied GASHAP to enhance model transparency and interpretability.
  • Produced a brain mask pinpointing key anatomical regions for Alzheimer's diagnosis.

Conclusions:

  • GASHAP offers improved explainability for 3D-CNNs in medical imaging.
  • The technique aids in identifying crucial brain regions for Alzheimer's disease diagnosis.
  • This approach enhances the clinical utility of AI in neurodegenerative disease detection.