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Related Experiment Video

Updated: May 20, 2025

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Mpox-XDE: an ensemble model utilizing deep CNN and explainable AI for monkeypox detection and classification.

Dip Kumar Saha1, Sadman Rafi2, M F Mridha3

  • 1Department of CSE, Stamford University Bangladesh, Siddeswari, Dhaka, Bangladesh.

BMC Infectious Diseases
|March 26, 2025
PubMed
Summary

Early detection of monkeypox (Mpox) is crucial. A new ensemble deep learning model, Mpox-XDE, accurately identifies Mpox from skin images, achieving 98.70% accuracy.

Keywords:
Deep learningDetectionEnsemble modelMonkeypoxMpoxXAI

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Area of Science:

  • Medical Imaging
  • Artificial Intelligence
  • Dermatology

Background:

  • Human monkeypox (Mpox) is a growing global health concern requiring early identification.
  • Current deep learning (DL) models for Mpox detection need further reliability improvements for early-stage diagnosis.
  • Accurate and timely diagnosis is essential to prevent the spread of Mpox.

Purpose of the Study:

  • To develop a robust and accurate ensemble deep learning model for early Mpox detection.
  • To enhance the classification performance of existing DL models for Mpox identification.
  • To provide a reliable tool for healthcare professionals in diagnosing Mpox.

Main Methods:

  • An ensemble model, Mpox-XDE, was created by combining three modified DL models: Xception, DenseNet201, and EfficientNetB7.
  • The Mpox Skin Images Dataset (MSID) with 770 images was utilized for training and testing.
  • The ensemble model incorporated Softmax, dense, and flattened layers with dropout, and a global average pooling layer for classification.

Main Results:

  • The Mpox-XDE model achieved high performance metrics: 98.70% testing accuracy, 98.90% precision, 98.80% recall, and 98.80% F1-score.
  • The model successfully classified images into four categories: chickenpox, measles, normal, and Mpox.
  • Explainable AI (XAI) using Grad-CAM visualized the model's decision-making process, highlighting relevant image regions.

Conclusions:

  • The proposed Mpox-XDE ensemble model demonstrates exceptional accuracy in early Mpox detection from skin images.
  • This methodology offers a significant advancement in diagnostic tools for Mpox.
  • The explainability feature aids in understanding and trusting the model's predictions for clinical application.