Quantifying Topology In Pancreatic Tubular Networks From Live Imaging 3D Microscopy

K. Arnavaz, Oswin Krause, Kilian Zepf, J. A. Bærentzen, Jelena M. Krivokapic, Silja Heilmann, P. Nyeng, Aasa Feragen
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引用次数: 1

Abstract

Motivated by the challenging segmentation task of pancreatic tubular networks, this paper tackles two commonly encountered problems in biomedical imaging: Topological consistency of the segmentation, and expensive or difficult annotation. Our contributions are the following: a) We propose a topological score which measures both topological and geometric consistency between the predicted and ground truth segmentations, applied to model selection and validation. b) We provide a full deep-learning methodology for this difficult noisy task on time-series image data. In our method, we first use a semisupervised U-net architecture, applicable to generic segmentation tasks, which jointly trains an autoencoder and a segmentation network. We then use tracking of loops over time to further improve the predicted topology. This semi-supervised approach allows us to utilize unannotated data to learn feature representations that generalize to test data with high variability, in spite of our annotated training data having very limited variation. Our contributions are validated on a challenging segmentation task, locating tubular structures in the fetal pancreas from noisy live imaging confocal microscopy. We show that our semi-supervised model outperforms not only fully supervised and pre-trained models but also an approach which takes topological consistency into account during training. Further, our approach achieves a mean loop score of 0.808 for detecting loops in the fetal pancreas, compared to a U-net trained with clDice with mean loop score 0.762.
从实时成像3D显微镜量化胰腺小管网络的拓扑结构
针对具有挑战性的胰管网络分割任务,本文解决了生物医学成像中常见的两个问题:分割的拓扑一致性和昂贵或困难的标注。我们的贡献如下:a)我们提出了一个拓扑分数,它测量预测和地面真值分割之间的拓扑和几何一致性,应用于模型选择和验证。b)我们提供了一个完整的深度学习方法来解决这个困难的时间序列图像数据的噪声任务。在我们的方法中,我们首先使用适用于一般分割任务的半监督U-net架构,该架构联合训练自编码器和分割网络。然后,我们使用随时间的循环跟踪来进一步改进预测的拓扑结构。这种半监督方法允许我们利用未注释的数据来学习特征表示,这些特征表示可以推广到具有高可变性的测试数据,尽管我们的注释训练数据具有非常有限的变化。我们的贡献在一项具有挑战性的分割任务中得到了验证,该任务是通过嘈杂的实时成像共聚焦显微镜定位胎儿胰腺中的管状结构。我们证明了我们的半监督模型不仅优于完全监督和预训练的模型,而且在训练过程中考虑了拓扑一致性的方法。此外,我们的方法在胎儿胰腺中检测环路的平均环路得分为0.808,而使用clDice训练的U-net平均环路得分为0.762。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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