Pneumonia Detection with Explainable Artificial Intelligence

This repository provides MATLAB implementations for pneumonia detection using deep learning models, enhanced with explainable AI techniques.

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This repository presents an approach for pneumonia detection using a MobileNetV2 pretrained model in MATLAB, combined with explainable AI techniques to improve interpretability. The deep learning model is trained on chest X-ray images, leveraging Grad-CAM, Grad-CAM++, Score-CAM, and Saliency Map to highlight critical regions that influence the model’s predictions.Key Features:
  1. MobileNetV2 Pretrained Model – A lightweight and efficient deep learning architecture for pneumonia classification.
  2. Grad-CAM & Grad-CAM++ – Gradient-based visualization techniques to generate class-discriminative heatmaps.
  3. Score-CAM – A perturbation-based method that improves upon Grad-CAM by removing the dependency on gradients.
  4. Saliency Map – Highlights pixel-wise contributions to the model’s decision.
  5. MATLAB Implementation – Fully coded in MATLAB, making it accessible for medical imaging researchers and engineers.
This project aims to enhance the transparency, reliability, and trustworthiness of AI-based medical diagnosis by providing clear visual explanations of model decisions, assisting clinicians in understanding why and how the model detects pneumonia.

Citation pour cette source

Putu Fadya (2026). Pneumonia Detection with Explainable Artificial Intelligence (https://fr.mathworks.com/matlabcentral/fileexchange/180171-pneumonia-detection-with-explainable-artificial-intelligence), MATLAB Central File Exchange. Extrait(e) le .

Informations générales

Compatibilité avec les versions de MATLAB

  • Compatible avec toutes les versions

Plateformes compatibles

  • Windows
  • macOS
  • Linux
Version Publié le Notes de version Action
1.0.0