Published December 25, 2024 | Version v1
Journal article Open

Enhancing Multi–Class Prediction of Skin Lesions with Feature Importance Assessment

  • 1. ROR icon Kaunas University of Technology
  • 2. Artificial Intelligence Centre Kaunas
  • 3. ROR icon Lithuanian University of Health Sciences
  • 4. ROR icon Hospital of Lithuanian University of Health Sciences Kaunas Clinics

Abstract (English)

Numerous image processing techniques have been developed for the identification of various types of skin lesions. In real-world scenarios, the specific lesion type is often unknown in advance, leading to a multi-class prediction challenge. The available evidence underscores the importance of employing a comprehensive array of diverse features and subsequently identifying the most important ones as a crucial step in visual diagnostics. For this purpose, we addressed both binary and five-class classification tasks using a small dataset, with skin lesions prevalent in Lithuania. The model was trained using a rich set of 662 features, encompassing both conventional image features and graph-based ones, which were obtained from the superpixel graph generated using Delaunay triangulation. We explored the influence of feature importance determined by SHAP values, resulting in a weighted F1-score of 92.48% for the two-class classification and 71.21% for the five-class prediction.

Files

Enhancing-MultiClass-Prediction-of-Skin-Lesions-with-Feature-Importance-Assessment (2).pdf

Additional details

Funding

European Commission
SustAInLivWork - Centre of Excellence of AI for Sustainable Living and Working 101059903

Dates

Available
2024-12-24