Application of Machine Learning in Melanoma Detection and the Identification of 'Ugly Duckling' and Suspicious Naevi: A Review
Fatima Al Zegair, Nathasha Naranpanawa, Brigid Betz-Stablein, Monika, Janda, H. Peter Soyer, Shekhar S. Chandra

TL;DR
This review discusses how machine learning and deep learning techniques are increasingly used in melanoma detection and identifying suspicious naevi, improving accuracy and aiding early diagnosis in skin cancer.
Contribution
It provides a comprehensive overview of modern ML and DL algorithms applied to melanoma and naevi detection, highlighting their effectiveness and potential in clinical settings.
Findings
ML techniques like CNN achieve dermatologist-level accuracy
Automated systems can assist in early melanoma detection
ML methods improve diagnostic speed and reduce costs
Abstract
Skin lesions known as naevi exhibit diverse characteristics such as size, shape, and colouration. The concept of an "Ugly Duckling Naevus" comes into play when monitoring for melanoma, referring to a lesion with distinctive features that sets it apart from other lesions in the vicinity. As lesions within the same individual typically share similarities and follow a predictable pattern, an ugly duckling naevus stands out as unusual and may indicate the presence of a cancerous melanoma. Computer-aided diagnosis (CAD) has become a significant player in the research and development field, as it combines machine learning techniques with a variety of patient analysis methods. Its aim is to increase accuracy and simplify decision-making, all while responding to the shortage of specialized professionals. These automated systems are especially important in skin cancer diagnosis where specialist…
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Taxonomy
TopicsCutaneous Melanoma Detection and Management
