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March 3, 2026
Convolutional neural networks for the automatic diagnosis of melanoma: An extensive experimental study
EP
Eduardo Pérez Perdomo
ÓR
Óscar Reyes
SS
S. Ventura Soto
Puntos clave
Automated diagnosis of melanoma achieved high accuracy, with a precision rate of over 90%.
The analysis utilized a dataset of thousands of labeled skin images for training and validation.
Implementing convolutional neural networks enabled efficient image classification and feature extraction.
Highlighting the potential for AI-based tools in dermatology to enhance diagnosis accuracy and minimize human error.
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Perdomo et al. (Fri,) studied this question.
synapsesocial.com/papers/69a75d55c6e9836116a27309
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Convolutional neural networks for the automatic diagnosis of melanoma: An extensive experimental study | Synapse