IEEE Access (Jan 2023)

Deep Learning and Optimization-Based Methods for Skin Lesions Segmentation: A Review

  • Khalid M. Hosny,
  • Doaa Elshoura,
  • Ehab R. Mohamed,
  • Eleni Vrochidou,
  • George A. Papakostas

DOI
https://doi.org/10.1109/ACCESS.2023.3303961
Journal volume & issue
Vol. 11
pp. 85467 – 85488

Abstract

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Skin cancer is a senior public health issue that could profit from computer-aided diagnosis to decrease the encumbrance of this widespread disease. Researchers have been more motivated to develop computer-aided diagnosis systems because visual examination wastes time. The initial stage in skin lesion analysis is skin lesion segmentation, which might assist in the following categorization task. It is a difficult task because sometimes the whole lesion might be the same colors, and the borders of pigment regions can be foggy. Several studies have effectively handled skin lesion segmentation; nevertheless, developing new methodologies to improve efficiency is necessary. This work thoroughly analyzes the most advanced algorithms and methods for skin lesion segmentation. The review begins with traditional segmentation techniques, followed by a brief review of skin lesion segmentation using deep learning and optimization techniques. The main objective of this work is to highlight the strengths and weaknesses of a wide range of algorithms. Additionally, it examines various commonly used datasets for skin lesions and the metrics used to evaluate the performance of these techniques.

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