一种新的皮肤癌分类深度学习模型

Melisa Uçkuner, H. Erol
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引用次数: 3

摘要

癌症是一组因细胞不受控制的增殖而损害组织的疾病。皮肤癌是一种常见的癌症,在没有技术支持的情况下,很难区分皮肤癌,因此有必要进行研究,帮助专家在诊断阶段进行诊断。在本研究中,设计了一个包含7个卷积层和3个神经层的深度学习模型来对HAM10000数据集进行分类,该数据集由7个类组成,包括皮肤镜图像。该模型对测试数据的准确率为99.01%。结果表明,该模型可以帮助专家诊断皮肤癌。
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A New Deep Learning Model for Skin Cancer Classification
Cancer is a group of diseases that damage tissues by the uncontrolled proliferation of cells. The difficulty of distinguishing skin cancer, which is a common type of cancer, without technical support necessitates studies that can help specialists in the diagnosis phase. In this study, a deep learning model with 7 convolution layers and 3 neural layers was designed to classify the HAM10000 dataset, which consists of 7 classes and includes dermoscopic images. The accuracy rate for the test data of the proposed model was calculated as 99.01%. This result shows that the proposed model can help experts in diagnosing skin cancer.
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