The School of Electronic Information Engineering, Hebei University, Hebei, 071002, China.
Affiliated Hospital of Hebei University, Hebei, 071030, China.
Comput Biol Med. 2022 Sep;148:105942. doi: 10.1016/j.compbiomed.2022.105942. Epub 2022 Aug 10.
Automatic segmentation of skin lesions is beneficial for improving the accuracy and efficiency of melanoma diagnosis. However, due to variation in the size and shape of the lesion areas and the low contrast between the edges of the lesion and the normal skin tissue, this task is very challenging. The traditional convolutional neural network based on codec structure lacks the capability of multi-scale context information modeling and cannot realize information interaction of skip connections at the various levels, which limits the segmentation performance. Therefore, a new codec structure of skin lesion Transformer network (SLT-Net) was proposed and applied to skin lesion segmentation in this study. Specifically, SLT-Net used CSwinUnet as the codec to model the long-distance dependence between features and used the multi-scale context Transformer (MCT) as the skip connection to realize information interaction between skip connections across levels in the channel dimension. We have performed extensive experiments to verify the effectiveness and superiority of our proposed method on three public skin lesion datasets, including the ISIC-2016, ISIC-2017, and ISIC-2018. The DSC values on the three data sets reached 90.45%, 79.87% and 82.85% respectively, higher than most of the state-of-the-art methods. The excellent performance of SLT-Net on these three datasets proved that it could improve the accuracy of skin lesion segmentation, providing a new benchmark reference for skin lesion segmentation tasks. The code is available at https://github.com/FengKaili-fkl/SLT-Net.git.
皮肤病变的自动分割有利于提高黑色素瘤诊断的准确性和效率。然而,由于病变区域的大小和形状的变化以及病变边缘与正常皮肤组织之间的对比度低,这项任务极具挑战性。基于编解码器结构的传统卷积神经网络缺乏多尺度上下文信息建模的能力,并且无法实现各级别跳过连接的信息交互,从而限制了分割性能。因此,本研究提出了一种新的皮肤病变 Transformer 网络 (SLT-Net) 的编解码器结构,并将其应用于皮肤病变分割。具体来说,SLT-Net 使用 CSwinUnet 作为编解码器来对特征之间的长距离依赖关系进行建模,并使用多尺度上下文 Transformer (MCT) 作为跳过连接,在通道维度上实现各级别跳过连接之间的信息交互。我们在三个公共皮肤病变数据集上进行了广泛的实验,验证了我们提出的方法的有效性和优越性,包括 ISIC-2016、ISIC-2017 和 ISIC-2018。在这三个数据集上的 DSC 值分别达到了 90.45%、79.87%和 82.85%,高于大多数最先进的方法。SLT-Net 在这三个数据集上的优异性能证明了它可以提高皮肤病变分割的准确性,为皮肤病变分割任务提供了新的基准参考。代码可在 https://github.com/FengKaili-fkl/SLT-Net.git 获得。