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首页> 外文期刊>BMC Bioinformatics >DePicT Melanoma Deep-CLASS: a deep convolutional neural networks approach to classify skin lesion images
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DePicT Melanoma Deep-CLASS: a deep convolutional neural networks approach to classify skin lesion images

机译:描绘黑色素瘤深阶级:深度卷积神经网络,分类皮肤病变图像的方法

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Melanoma results in the vast majority of skin cancer deaths during the last decades, even though this disease accounts for only one percent of all skin cancers’ instances. The survival rates of melanoma from early to terminal stages is more than fifty percent. Therefore, having the right information at the right time by early detection with monitoring skin lesions to find potential problems is essential to surviving this type of cancer. An approach to classify skin lesions using deep learning for early detection of melanoma in a case-based reasoning (CBR) system is proposed. This approach has been employed for retrieving new input images from the case base of the proposed system DePicT Melanoma Deep-CLASS to support users with more accurate recommendations relevant to their requested problem (e.g., image of affected area). The efficiency of our system has been verified by utilizing the ISIC Archive dataset in analysis of skin lesion classification as a benign and malignant melanoma. The kernel of DePicT Melanoma Deep-CLASS is built upon a convolutional neural network (CNN) composed of sixteen layers (excluding input and ouput layers), which can be recursively trained and learned. Our approach depicts an improved performance and accuracy in testing on the ISIC Archive dataset. Our methodology derived from a deep CNN, generates case representations for our case base to use in the retrieval process. Integration of this approach to DePicT Melanoma CLASS, significantly improving the efficiency of its image classification and the quality of the recommendation part of the system. The proposed method has been tested and validated on 1796 dermoscopy images. Analyzed results indicate that it is efficient on malignancy detection.
机译:黑色素瘤在过去几十年中导致绝大多数皮肤病死亡,尽管这种疾病仅占所有皮肤癌症的百分之一。黑色素瘤的存活率从早期到末端阶段的速度超过50%。因此,通过早期检测在正确的时间内具有正确的信息,并通过监测皮肤病变来寻找潜在的问题对于幸存这种类型的癌症至关重要。提出了一种在基于壳体推理(CBR)系统中使用深度学习进行分类皮肤病变的方法。这种方法已经用于从所提出的系统的案例基础检索新的输入图像,描绘了黑色素瘤的深层课程,以支持用户与其所要求的问题相关的更准确的建议(例如,受影响区域的形象)。通过利用ISIC归档数据集来验证我们的系统的效率,以分析皮肤病变分类作为良性和恶性黑色素瘤。描绘黑色素瘤的核心深刻是由十六层(不包括输入和输出层)组成的卷积神经网络(CNN),该卷积神经网络(CNN)可以经过递归培训和学习。我们的方法描绘了在ISIC归档数据集上测试的提高性能和准确性。我们的方法从深度CNN中导出,为我们的案例基础生成用于检索过程的案例表示。这种方法的整合描绘了黑色素瘤类,显着提高了其图像分类的效率和系统推荐部分的质量。在1796个DerMicopy图像上测试并验证了所提出的方法。分析结果表明它是有效的恶性肿瘤检测。

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