A smart dermoscope design using artificial neural network

Serkan Turkeli, Mehmet Salih Oguz, S. Abay, T. Kumbasar, Hüseyin Tanzer Atay, Kenan Kaan Kurt
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引用次数: 5

Abstract

Melanoma is certainly the deadliest skin cancer. Clinicians try to detect melanoma at early stages in order to increase the successful treatment rate by using dermoscopes. We have designed a digital dermoscope that is both mobile and highly sensitive for automatic classification. We developed an accurate image processing software and a learning program that uses artificial neural network learning algorithm. A dataset of 200 images were used for training and 12 features were extracted. We considered common nevus, atypical nevus and melanoma as our diagnostic results. By doing that, we acquire three sensitivity and specifity values for each of the outputs. For the common nevus detection, SE = 100%, SP = 98.3%, for the atypical nevus detection, SE = 95%, SP = 97.5%, for the melanoma detection, SE = 92.5%, SP = 98.75%.
一种基于人工神经网络的智能皮肤镜设计
黑色素瘤无疑是最致命的皮肤癌。临床医生试图在早期阶段发现黑色素瘤,以增加成功的治疗率,使用皮肤镜。我们设计了一种可移动且高度敏感的自动分类数字皮肤镜。我们开发了一个精确的图像处理软件和一个使用人工神经网络学习算法的学习程序。使用200张图像的数据集进行训练,提取出12个特征。我们考虑了普通痣、非典型痣和黑色素瘤作为我们的诊断结果。通过这样做,我们为每个输出获得三个灵敏度和特异性值。普通痣检测,SE = 100%, SP = 98.3%;非典型痣检测,SE = 95%, SP = 97.5%;黑色素瘤检测,SE = 92.5%, SP = 98.75%。
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