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Visualizing Structures in Confocal Microscopy Datasets Through Clusterization: A Case Study on Bile Ducts

机译:通过聚类可视化共聚焦显微镜数据集中的结构:以胆管为例

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Three-dimensional datasets from biological tissues have increased with the evolution of confocal microscopy. Hepatology researchers have used confocal microscopy for investigating the microanatomy of bile ducts. Bile ducts are complex tubular tissues consisting of many juxtaposed microstructures with distinct characteristics. Since confocal images are difficult to segment because of the noise introduced during the specimen preparation, traditional quantitative analyses used in medical datasets are difficult to perform on confocal microscopy data and require extensive user intervention. Thus, the visual exploration and analysis of bile ducts pose a challenge in hepatology research, requiring different methods. This paper investigates the application of unsupervised machine learning to extract relevant structures from confocal microscopy datasets representing bile ducts. Our approach consists of pre-processing, clustering, and 3D visualization. For clustering, we explore the density-based spatial clustering for applications with noise (DBSCAN) algorithm, using gradient information for guiding the clustering. We obtained a better visualization of the most prominent vessels and internal structures.
机译:随着共聚焦显微镜的发展,来自生物组织的三维数据集已经增加。肝病研究人员已使用共聚焦显微镜研究胆管的显微解剖。胆管是复杂的管状组织,由许多并置的具有不同特征的微结构组成。由于共聚焦图像由于在标本制备过程中引入的噪声而难以分割,因此医学数据集中使用的传统定量分析很难在共聚焦显微镜数据上执行,并且需要大量的用户干预。因此,对胆管的视觉探索和分析在肝病学研究中提出了挑战,需要不同的方法。本文研究了无监督机器学习在从代表胆管的共聚焦显微镜数据集中提取相关结构的应用。我们的方法包括预处理,聚类和3D可视化。对于聚类,我们使用梯度信息指导聚类,探索了基于噪声的应用(DBSCAN)算法的基于密度的空间聚类。我们获得了最突出的血管和内部结构的更好的可视化效果。

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