Acral melanoma detection using a convolutional neural network for dermoscopy images
Autor: | Sejung Yang, Jin-Woong Jung, Chanki Yu, Sangwook Lee, Won-Oh Kim, Kee Yang Chung, Byung Ho Oh |
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Rok vydání: | 2018 |
Předmět: |
medicine.medical_specialty
Poor prognosis Skin Neoplasms lcsh:Medicine Dermoscopy Mutually exclusive events Convolutional neural network Sensitivity and Specificity Cross-validation General Biochemistry Genetics and Molecular Biology 030207 dermatology & venereal diseases 03 medical and health sciences 0302 clinical medicine Image Interpretation Computer-Assisted medicine Humans lcsh:Science skin and connective tissue diseases Melanoma Early Detection of Cancer Skin Multidisciplinary business.industry Foot lcsh:R Correction General Medicine medicine.disease Hand True negative Late diagnosis 030220 oncology & carcinogenesis Acral melanoma lcsh:Q Radiology Neural Networks Computer business General Agricultural and Biological Sciences |
Zdroj: | PLOS ONE PLoS ONE PLoS ONE, Vol 13, Iss 3, p e0193321 (2018) |
ISSN: | 1932-6203 |
DOI: | 10.1371/journal.pone.0193321 |
Popis: | Background/Purpose Acral melanoma is the most common type of melanoma in Asians, and usually results in a poor prognosis due to late diagnosis. We applied a convolutional neural network to dermoscopy images of acral melanoma and benign nevi on the hands and feet and evaluated its usefulness for the early diagnosis of these conditions. Methods A total of 724 dermoscopy images comprising acral melanoma (350 images from 81 patients) and benign nevi (374 images from 194 patients), and confirmed by histopathological examination, were analyzed in this study. To perform the 2-fold cross validation, we split them into two mutually exclusive subsets: half of the total image dataset was selected for training and the rest for testing, and we calculated the accuracy of diagnosis comparing it with the dermatologist’s and non-expert’s evaluation. Results The accuracy (percentage of true positive and true negative from all images) of the convolutional neural network was 83.51% and 80.23%, which was higher than the non-expert’s evaluation (67.84%, 62.71%) and close to that of the expert (81.08%, 81.64%). Moreover, the convolutional neural network showed area-under-the-curve values like 0.8, 0.84 and Youden’s index like 0.6795, 0.6073, which were similar score with the expert. Conclusion Although further data analysis is necessary to improve their accuracy, convolutional neural networks would be helpful to detect acral melanoma from dermoscopy images of the hands and feet. |
Databáze: | OpenAIRE |
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