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Deep-Learning for Tidemark Segmentation in Human Osteochondral Tissues Imaged with Micro-computed Tomography

机译:用微计算机断层扫描成像技术对人骨软骨组织中潮标分割进行深度学习。

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Three-dimensional (3D) semi-quantitative grading of pathological features in articular cartilage (AC) offers significant improvements in basic research of osteoarthritis (OA). We have earlier developed the 3D protocol for imaging of AC and its structures which includes staining of the sample with a contrast agent (phosphotungstic acid, PTA) and a consequent scanning with micro-computed tomography. Such a protocol was designed to provide X-ray attenuation contrast to visualize AC structure. However, at the same time, this protocol has one major disadvantage: the loss of contrast at the tidemark (calcified cartilage interface, CCI). An accurate segmentation of CCI can be very important for understanding the etiology of OA and ex-vivo evaluation of tidemark condition at early OA stages. In this paper, we present the first application of Deep Learning to PTA-stained osteochondral samples that allows to perform tidemark segmentation in a fully-automatic manner. Our method is based on U-Net trained using a combination of binary cross-entropy and soft-Jaccard loss. On cross-validation, this approach yielded intersection over the union of 0.59, 0.70, 0.79, 0.83 and 0.86 within 15 μm, 30 μm, 45 μm, 60 μm. and 75 μm padded zones around the tidemark, respectively. Our codes and the dataset that consisted of 35 PTA-stained human AC samples are made publicly available together with the segmentation masks to facilitate the development of biomedical image segmentation methods.
机译:关节软骨(AC)病理特征的三维(3D)半定量分级为骨关节炎(OA)的基础研究提供了重大改进。我们之前已经开发了用于AC及其结构成像的3D协议,其中包括用造影剂(磷钨酸,PTA)对样品进行染色,并随后通过微计算机断层扫描技术进行扫描。设计该协议以提供X射线衰减对比以可视化AC结构。但是,与此同时,该协议有一个主要缺点:在潮标(钙化软骨界面,CCI)处失去对比度。 CCI的准确分割对于了解OA的病因和在OA早期对潮汐状态进行离体评估可能非常重要。在本文中,我们介绍了深度学习在PTA染色的骨软骨样本中的首次应用,该样本可以以全自动方式进行潮汐标记分割。我们的方法基于结合二进制交叉熵和软杰卡德损失训练的U-Net。在交叉验证中,此方法在15μm,30μm,45μm和60μm范围内产生了0.59、0.70、0.79、0.83和0.86的并集交集。潮汐标记周围分别填充了75μm和75μm的填充区域。我们的代码和由35种PTA染色的人类AC样本组成的数据集与分割蒙版一起公开发布,以促进生物医学图像分割方法的发展。

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