Intraclass Clustering-Based CNN Approach for Detection of Malignant Melanoma

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Abstract

This paper describes the process of developing a classification model for the effective detection of malignant melanoma, an aggressive type of cancer in skin lesions. Primary focus is given on fine-tuning and improving a state-of-the-art convolutional neural network (CNN) to obtain the optimal ROC-AUC score. The study investigates a variety of artificial intelligence (AI) clustering techniques to train the developed models on a combined dataset of images across data from the 2019 and 2020 IIM-ISIC Melanoma Classification Challenges. The models were evaluated using varying cross-fold validations, with the highest ROC-AUC reaching a score of 99.48%.

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Bandy, A. D., Spyridis, Y., Villarini, B., & Argyriou, V. (2023). Intraclass Clustering-Based CNN Approach for Detection of Malignant Melanoma. Sensors, 23(2). https://doi.org/10.3390/s23020926

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