论文标题
VAFO-LOSS:视网膜动脉/静脉分割的血管特征优化损失功能
VAFO-Loss: VAscular Feature Optimised Loss Function for Retinal Artery/Vein Segmentation
论文作者
论文摘要
估计血管分割后临床上与临床相关的血管特征是视网膜血管分析的标准管道,它为眼科疾病和全身性疾病提供了潜在的眼类生物标志物。在这项工作中,我们将这些临床特征集成到一种新型的血管特征优化损耗函数(VAFO-LOSS)中,以便将网络正规化以产生分割图,并可以通过这些图来得出更准确的血管特征。两种常见的血管特征:血管密度和分形维度被确定为对段内的错误分类敏感,这在多级动脉/静脉分段中是一个公认的问题,尤其是阻碍了这些血管特征的估计。因此,我们将这两个功能编码为Vafo-loss。我们首先表明,将我们的端到端VAFO损失纳入标准分割网络确实可以改善血管特征估计,从而在临床下游任务中逐步改善了中风发病率预测的定量改善。我们还报告了一个有趣的发现,即训练有素的分割网络,尽管受到功能优化的损失损失偏差,但与接受过其他先进的分割损失的培训相比,分割指标的统计学显着改善。
Estimating clinically-relevant vascular features following vessel segmentation is a standard pipeline for retinal vessel analysis, which provides potential ocular biomarkers for both ophthalmic disease and systemic disease. In this work, we integrate these clinical features into a novel vascular feature optimised loss function (VAFO-Loss), in order to regularise networks to produce segmentation maps, with which more accurate vascular features can be derived. Two common vascular features, vessel density and fractal dimension, are identified to be sensitive to intra-segment misclassification, which is a well-recognised problem in multi-class artery/vein segmentation particularly hindering the estimation of these vascular features. Thus we encode these two features into VAFO-Loss. We first show that incorporating our end-to-end VAFO-Loss in standard segmentation networks indeed improves vascular feature estimation, yielding quantitative improvement in stroke incidence prediction, a clinical downstream task. We also report a technically interesting finding that the trained segmentation network, albeit biased by the feature optimised loss VAFO-Loss, shows statistically significant improvement in segmentation metrics, compared to those trained with other state-of-the-art segmentation losses.