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Severity Assessment of Psoriatic Plaques Using Deep CNN Based Ordinal Classification

机译:基于深度CNN的序数分类对银屑病斑块的严重性评估

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摘要

Development of computer-aided diagnosis (CAD) tool for severity assessment of psoriatic plaques is important to assist the dermatologists to overcome the human limitation. In this paper, a pioneering attempt is made to build a Convolutional Neural Network (CNN) model to classify a skin image with respect to its severity class. However, the commonly used loss functions like categorical cross entropy and mean square error ignores the underlying ordinal class relationships (distance between predicted and actual class) which are important for the present problem. In this paper, the Earth Mover's Distance based loss function is proposed for training CNN since it takes into account the corresponding ordinal class relationships. Separate CNNs are trained for severity scoring corresponding to three plaque chairacteristics- erythema (redness), scaling (silveryness) and induration (elevation). Mean accuracy (MA), mean absolute error (MAE) and Kendall's T_b are used for performance evaluation. The experimental result shows that the proposed ordinal classification technique outperforms the traditional approaches.
机译:开发用于牛皮癣斑块严重程度评估的计算机辅助诊断(CAD)工具对于协助皮肤科医生克服人类的局限性很重要。在本文中,做出了开创性的尝试来建立卷积神经网络(CNN)模型,以根据其严重性等级对皮肤图像进行分类。但是,常用的损失函数(如分类交叉熵和均方误差)忽略了对当前问题很重要的基本序类关系(预测类和实际类之间的距离)。在本文中,由于考虑了相应的序数类关系,因此提出了基于土行基于距离的损失函数来训练CNN。分别训练CNN的严重程度评分与三种斑块特征性红斑(红色),结垢(银色)和硬结(升高)相对应。平均准确度(MA),平均绝对误差(MAE)和Kendall的T_b用于性能评估。实验结果表明,所提出的序数分类技术优于传统方法。

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