Retinal fundus images can be an invaluable diagnosis tool for screening epidemic diseases like hypertension or diabetes. And they become especially useful when the arterioles and venules they depict are clearly identified and annotated. However, manual annotation of these vessels is extremely time demanding and taxing, which calls for automatic segmentation. Although convolutional neural networks can achieve high overlap between predictions and expert annotations, they often fail to produce topologically correct predictions of tubular structures. This situation is exacerbated by the bifurcation versus crossing ambiguity which causes classification mistakes. This paper shows that including a topology preserving term in the loss function improves the continuity of the segmented vessels, although at the expense of artery-vein misclassification and overall lower overlap metrics. However, we show that by including an orientation score guided convolutional module, based on the anisotropic single sided cake wavelet, we reduce such misclassification and further increase the topology correctness of the results. We evaluate our model on public datasets with conveniently chosen metrics to assess both overlap and topology correctness, showing that our model is able to produce results on par with state-of-the-art from the point of view of overlap, while increasing topological accuracy.
翻译:视网膜眼底图像可作为高血压或糖尿病筛查的宝贵诊断工具。分割视网膜眼底图像中的动脉和静脉为自动化分割的焦点。尽管卷积神经网络可以实现预测和专家注释之间高重叠度,但它们通常不能产生拓扑正确的管状结构预测。这种情况由于并行(bifurcation)和交叉(crossing)歧义而更加严重,这导致分类错误。本文表明,将保持拓扑性的项包含在损失函数中可以改善分割的连续性,但会以动脉-静脉误分类和总体较低的重叠度指标为代价。然而,本文提出的面向方向(orientation)的卷积模型, 基于各向异性单面蛋糕小波, 可以减少这种误分类并进一步提高结果的拓扑正确性。我们在公共数据集上评估了我们的模型,并选择了适当的指标来评估重叠度和拓扑正确性,结果显示我们的模型能够产生与最先进技术相媲美的重叠度结果,同时提高了拓扑准确性。