IEEE Trans Biomed Eng. 2018 Sep;65(9):1912-1923. doi: 10.1109/TBME.2018.2828137. Epub 2018 Apr 19.
Deep learning based methods for retinal vessel segmentation are usually trained based on pixel-wise losses, which treat all vessel pixels with equal importance in pixel-to-pixel matching between a predicted probability map and the corresponding manually annotated segmentation. However, due to the highly imbalanced pixel ratio between thick and thin vessels in fundus images, a pixel-wise loss would limit deep learning models to learn features for accurate segmentation of thin vessels, which is an important task for clinical diagnosis of eye-related diseases.
In this paper, we propose a new segment-level loss which emphasizes more on the thickness consistency of thin vessels in the training process. By jointly adopting both the segment-level and the pixel-wise losses, the importance between thick and thin vessels in the loss calculation would be more balanced. As a result, more effective features can be learned for vessel segmentation without increasing the overall model complexity.
Experimental results on public data sets demonstrate that the model trained by the joint losses outperforms the current state-of-the-art methods in both separate-training and cross-training evaluations.
Compared to the pixel-wise loss, utilizing the proposed joint-loss framework is able to learn more distinguishable features for vessel segmentation. In addition, the segment-level loss can bring consistent performance improvement for both deep and shallow network architectures.
The findings from this study of using joint losses can be applied to other deep learning models for performance improvement without significantly changing the network architectures.
基于深度学习的视网膜血管分割方法通常基于像素级损失进行训练,在预测概率图与相应的手动标注分割之间的像素到像素匹配中,对所有血管像素一视同仁。然而,由于眼底图像中粗细血管的像素比例极不平衡,像素级损失会限制深度学习模型学习用于准确分割细血管的特征,这对于眼部相关疾病的临床诊断至关重要。
本文提出了一种新的基于分段的损失函数,该损失函数在训练过程中更加强调细血管的厚度一致性。通过联合采用分段和像素级损失,可以更平衡地计算损失中的粗细血管之间的重要性。因此,在不增加整体模型复杂度的情况下,可以学习到更有效的血管分割特征。
在公共数据集上的实验结果表明,联合损失训练的模型在单独训练和交叉训练评估中均优于当前最先进的方法。
与像素级损失相比,利用所提出的联合损失框架可以学习到更具区分性的血管分割特征。此外,分段损失可以为深度和浅层网络结构带来一致的性能提升。
本研究中使用联合损失的结果可以应用于其他深度学习模型,以提高性能,而无需显著改变网络结构。