IEEE Open Journal of Engineering in Medicine and Biology (Jan 2022)

Diabetic Foot Ulcer Ischemia and Infection Classification Using EfficientNet Deep Learning Models

  • Ziyang Liu,
  • Josvin John,
  • Emmanuel Agu

DOI
https://doi.org/10.1109/OJEMB.2022.3219725
Journal volume & issue
Vol. 3
pp. 189 – 201

Abstract

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Motivation: Infection (bacteria in the wound) and ischemia (insufficient blood supply) in Diabetic Foot Ulcers (DFUs) increase the risk of limb amputation. Goal: To develop an image-based DFU infection and ischemia detection system that uses deep learning. Methods: The DFU dataset was augmented using geometric and color image operations, after which binary infection and ischemia classification was done using the EfficientNet deep learning model and a comprehensive set of baselines. Results: The EfficientNets model achieved 99% accuracy in ischemia classification and 98% in infection classification, outperforming ResNet and Inception (87% accuracy) and Ensemble CNN, the prior state of the art (Classification accuracy of 90% for ischemia 73% for infection). EfficientNets also classified test images in a fraction (10% to 50%) of the time taken by baseline models. Conclusions: This work demonstrates that EfficientNets is a viable deep learning model for infection and ischemia classification.

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