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PsLSNet: Automated psoriasis skin lesion segmentation using modified U-Net-based fully convolutional network

机译:PsLSNet:使用经过修改的基于U-Net的全卷积网络自动进行牛皮癣皮肤病变分割

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The segmentation of psoriasis skin lesions from RGB color images is a challenging task in the computer vision, due to poor illumination conditions, the irregular shapes and sizes of psoriasis lesions, fuzzy boundaries between the lesions and the surrounding skin, and various artifacts such as skin hairs and camera reflections. The manual segmentation of lesions is very time-consuming and laborious for the dermatologist, and various automatic lesion segmentation approaches have therefore been presented by researchers in the recent past. However, these existing state-of-the-art approaches have various limitations, such as being highly dependent on feature engineering, showing poor performance in terms of accuracy and failing to consider challenging cases, as explained above. In view of this, we present an automated psoriasis lesion segmentation method based on a modified U-Net architecture, referred as PsLSNet. The architecture consists of a 29-layer deep fully convolutional network, for extracting spatial information automatically. In U-Net architecture there are two paths namely contracting and extracting, which are connected as U-shape. The proposed convolutional neural network also provides accelerated training by reducing the covariate shift through the implementation of batch normalization and is capable of segmenting the lesion even in challenging cases such as under poor acquisition conditions and in the presence of artifacts. In our experiment, we use 5241 images of psoriasis lesions collected from 1026 psoriasis patients by a dermatologist. The experimental results show effective performance metrics such as a Dice coefficient of 93.03% and an accuracy of 94.80%, with 89.60% sensitivity and 97.60% specificity, values that are significantly higher than for existing approaches. (C) 2019 Elsevier Ltd. All rights reserved.
机译:由于照明条件差,牛皮癣病变的形状和大小不规则,病变与周围皮肤之间的边界模糊以及各种伪影(例如皮肤),从RGB彩色图像中分割牛皮癣皮肤病变是计算机视觉中的一项艰巨任务。头发和相机的倒影。对于皮肤科医生来说,手动分割病变非常耗时且费力,因此研究人员最近提出了各种自动病变分割方法。然而,如上所述,这些现有的最新技术方法具有各种局限性,例如高度依赖于要素工程,在准确性方面显示出较差的性能以及无法考虑具有挑战性的情况。有鉴于此,我们提出了一种基于改进的U-Net架构(称为PsLSNet)的自动牛皮癣病变分割方法。该体系结构由29层深度的全卷积网络组成,用于自动提取空间信息。在U-Net架构中,有两条路径即收缩和提取,它们以U形连接。所提出的卷积神经网络还通过执行批量归一化来减少协变量偏移,从而提供了加速的训练,即使在挑战性情况下(例如,采集条件较差且存在伪像的情况下),也能够对病变进行分割。在我们的实验中,我们使用皮肤科医生从1026例牛皮癣患者那里收集的5241张牛皮癣病变图像。实验结果显示了有效的性能指标,例如Dice系数为93.03%,准确度为94.80%,灵敏度为89.60%,特异性为97.60%,其值明显高于现有方法。 (C)2019 Elsevier Ltd.保留所有权利。

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