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   a deep learning approach to skin cancer detection in dermoscopy images  
   
نویسنده ameri a
منبع journal of biomedical physics and engineering - 2020 - دوره : 10 - شماره : 6 - صفحه:801 -806
چکیده    This work proposes a deep learning model for skin cancer detection from skin lesion images. in this analytic study, from ham10000 dermoscopy image database, 3400 images were employed including melanoma and nonmelanoma lesions. the images comprised 860 melanoma, 327 actinic keratoses and intraepithelial carcinoma (akiec), 513 basal cell carcinoma (bcc), 795 melanocytic nevi, 790 benign keratosis, and 115 dermatofibroma cases. a deep convolutional neural network was developed to classify the images into benign and malignant classes. a transfer learning method was leveraged with alexnet as the pretrained model. the proposed model takes the raw image as the input and automatically learns useful features from the image for classification. therefore, it eliminates complex procedures of lesion segmentation and feature extraction. the proposed model achieved an area under the receiver operating characteristic (roc) curve of 0.91. using a confidence score threshold of 0.5, a classification accuracy of 84%, the sensitivity of 81%, and specificity of 88% was obtained. the user can change the confidence threshold to adjust sensitivity and specificity if desired. the results indicate the high potential of deep learning for the detection of skin cancer including melanoma and nonmelanoma malignancies. the proposed approach can be deployed to assist dermatologists in skin cancer detection. moreover, it can be applied in smartphones for selfdiagnosis of malignant skin lesions. hence, it may expedite cancer detection that is critical for effective treatment.
کلیدواژه skin cancer ,deep learning ,melanoma ,transfer learning ,dermoscopy
آدرس shahid beheshti university of medical sciences, school of medicine, department of biomedical engineering, iran
پست الکترونیکی aliameri86@gmail.com
 
     
   
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