基于点注释的三维心血管免疫荧光图像弱监督深度核检测

Nazanin Moradinasab, Y. Sharma, Laura S. Shankman, G. Owens, Donald E. Brown
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引用次数: 1

摘要

在美国和世界范围内,导致死亡的两大原因是中风和心肌梗塞。两者的根本原因都是由破裂或侵蚀不稳定的动脉粥样硬化斑块释放的血栓,这些斑块阻塞了心脏(心肌梗死)或大脑(中风)的血管。临床研究表明,在斑块破裂或糜烂事件中,斑块组成比斑块大小起着更重要的作用。为了确定斑块组成,对斑块病变的三维心血管免疫荧光图像中的各种细胞类型进行计数。然而,手动计算这些单元格既昂贵又耗时,而且容易出现人为错误。人工计数的这些挑战促使人们需要一种自动化的方法来定位和计数图像中的细胞。本研究的目的是开发一种自动方法,以最小的注释努力准确地检测和计数3D免疫荧光图像中的细胞。在这项研究中,我们使用弱监督学习方法来训练HoVer-Net分割模型,使用点注释来检测荧光图像中的核。使用点注释的优点是,与逐像素注释相比,它们需要的工作量更少。为了使用点标注训练HoVer-Net模型,我们采用了一种常用的聚类标记方法,将点标注转化为精确的细胞核二值掩模。传统上,这些方法从点注释生成二进制掩码,在对象周围留下未标记的区域(在模型训练期间通常会忽略这一点)。然而,这些区域可能包含有助于确定细胞之间边界的重要信息。因此,我们在这些区域中使用熵最小化损失函数来鼓励模型在未标记区域上输出更有信心的预测。我们的比较研究表明,使用我们的弱…
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weakly Supervised Deep Instance Nuclei Detection using Points Annotation in 3D Cardiovascular Immunofluorescent Images
Two major causes of death in the United States and worldwide are stroke and myocardial infarction. The underlying cause of both is thrombi released from ruptured or eroded unstable atherosclerotic plaques that occlude vessels in the heart (myocardial infarction) or the brain (stroke). Clinical studies show that plaque composition plays a more important role than lesion size in plaque rupture or erosion events. To determine the plaque composition, various cell types in 3D cardiovascular immunofluorescent images of plaque lesions are counted. However, counting these cells manually is expensive, time-consuming, and prone to human error. These challenges of manual counting motivate the need for an automated approach to localize and count the cells in images. The purpose of this study is to develop an automatic approach to accurately detect and count cells in 3D immunofluorescent images with minimal annotation effort. In this study, we used a weakly supervised learning approach to train the HoVer-Net segmentation model using point annotations to detect nuclei in fluorescent images. The advantage of using point annotations is that they require less effort as opposed to pixel-wise annotation. To train the HoVer-Net model using point annotations, we adopted a popularly used cluster labeling approach to transform point annotations into accurate binary masks of cell nuclei. Traditionally, these approaches have generated binary masks from point annotations, leaving a region around the object unlabeled (which is typically ignored during model training). However, these areas may contain important information that helps determine the boundary between cells. Therefore, we used the entropy minimization loss function in these areas to encourage the model to output more confident predictions on the unlabeled areas. Our comparison studies indicate that the HoVer-Net model trained using our weakly ...
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