| Literature DB >> 33129155 |
Eduardo Pérez1, Oscar Reyes2, Sebastián Ventura3.
Abstract
Melanoma is the type of skin cancer with the highest levels of mortality, and it is more dangerous because it can spread to other parts of the body if not caught and treated early. Melanoma diagnosis is a complex task, even for expert dermatologists, mainly due to the great variety of morphologies in moles of patients. Accordingly, the automatic diagnosis of melanoma is a task that poses the challenge of developing efficient computational methods that ease the diagnostic and, therefore, aid dermatologists in decision-making. In this work, an extensive analysis was conducted, aiming at assessing and illustrating the effectiveness of convolutional neural networks in coping with this complex task. To achieve this objective, twelve well-known convolutional network models were evaluated on eleven public image datasets. The experimental study comprised five phases, where first it was analyzed the sensitivity of the models regarding the optimization algorithm used for their training, and then it was analyzed the impact in performance when using different techniques such as cost-sensitive learning, data augmentation and transfer learning. The conducted study confirmed the usefulness, effectiveness and robustness of different convolutional architectures in solving melanoma diagnosis problem. Also, important guidelines to researchers working on this area were provided, easing the selection of both the proper convolutional model and technique according the characteristics of data.Entities:
Keywords: Convolutional neural networks; Data augmentation; Dermoscopy images; Melanoma diagnosis; Transfer learning; Weigth balancing
Mesh:
Year: 2020 PMID: 33129155 DOI: 10.1016/j.media.2020.101858
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545