Zhou Qiaoer, He Tingting, Zou Yuanwen
College of Biomedical Engineering, Sichuan University, Chengdu 610065, China.
Diagnostics (Basel). 2022 Apr 9;12(4):938. doi: 10.3390/diagnostics12040938.
Lesion segmentation is a critical task in skin cancer analysis and detection. When developing deep learning-based segmentation methods, we need a large number of human-annotated labels to serve as ground truth for model-supervised learning. Due to the complexity of dermatological images and the subjective differences of different dermatologists in decision-making, the labels in the segmentation target boundary region are prone to produce uncertain labels or error labels. These labels may lead to unsatisfactory performance of dermoscopy segmentation. In addition, the model trained by the errored one-hot label may be overconfident, which can lead to arbitrary prediction and model overfitting. In this paper, a superpixel-oriented label distribution learning method is proposed. The superpixels formed by the simple linear iterative cluster (SLIC) algorithm combine one-hot labels constraint and define a distance function to convert it into a soft probability distribution. Referring to the model structure of knowledge distillation, after Superpixel-oriented label distribution learning, we get soft labels with structural prior information. Then the soft labels are transferred as new knowledge to the lesion segmentation network for training. Ours method on ISIC 2018 datasets achieves an Dice coefficient reaching 84%, sensitivity 79.6%, precision 80.4%, improved by 19.3%, 8.6% and 2.5% respectively in comparison with the results of U-Net. We also evaluate our method on the tasks of skin lesion segmentation via several general neural network architectures. The experiments show that ours method improves the performance of network image segmentation and can be easily integrated into most existing deep learning architectures.
病变分割是皮肤癌分析与检测中的一项关键任务。在开发基于深度学习的分割方法时,我们需要大量人工标注的标签作为模型监督学习的基准真值。由于皮肤病图像的复杂性以及不同皮肤科医生在决策上的主观差异,分割目标边界区域的标签容易产生不确定标签或错误标签。这些标签可能导致皮肤镜分割性能不尽人意。此外,由错误的独热标签训练的模型可能会过度自信,这可能导致任意预测和模型过拟合。本文提出了一种面向超像素的标签分布学习方法。由简单线性迭代聚类(SLIC)算法形成的超像素结合了独热标签约束,并定义了一个距离函数将其转换为软概率分布。参照知识蒸馏的模型结构,经过面向超像素的标签分布学习后,我们得到了具有结构先验信息的软标签。然后将软标签作为新知识传递给病变分割网络进行训练。我们的方法在ISIC 2018数据集上的Dice系数达到84%,灵敏度为79.6%,精度为80.4%,与U-Net的结果相比分别提高了19.3%、8.6%和2.5%。我们还通过几种通用神经网络架构在皮肤病变分割任务上评估了我们的方法。实验表明,我们的方法提高了网络图像分割的性能,并且可以轻松集成到大多数现有的深度学习架构中。