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3D Cell Instance Segmentation via Point Proposals using Cellular Components

机译:3D单元实例分割通过使用蜂窝分量的点提案

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Cell instance segmentation is a critical task to perform for the quantitative analysis of 3D live-cell images. Existing studies mostly apply a region proposal-based approach to instance segmentation of microscopy images. However, they often fail to detect cells in 3D live-cell images, which have complicated and heterogeneous shapes, often closely linked to the neighborhood cells. A different approach based on point proposal methods is more robust in handling complex shapes than the box proposal. These methods take an image and a proposed point in the form of its location (x, y) as input and generate a mask for an object that includes the point. They also show that the model can improve the prediction by utilizing negative point proposals chosen from false-positive areas. In this paper, we propose a novel cell instance segmentation approach based on point proposal for 3D cell imaging. Different from existing work, however, our model utilizes the nuclei of cells as point proposal and employ them as positive and negative point proposals. We constructed the 3D NIH3T3 dataset for training and evaluation, and examine the proposed model qualitatively on three independently gathered cells; HeLa, A549, and MDA-MB-231. Our model exhibits superior quantitative results; moreover, compared to previous methods, it properly predicts cell lines, which are not even well-annotated during training.
机译:小区实例分割是执行3D实时细胞图像的定量分析的关键任务。现有研究主要适用于基于区域的基于建议的方法来实现显微镜图像的实例分割。然而,它们通常无法检测3D实时细胞图像中的细胞,其具有复杂和异质的形状,通常与邻域单元密切相关。基于点提案方法的不同方法在处理复杂形状方面比盒子建议更加强劲。这些方法以其位置(x,y)形式的图像和提出的点作为输入,为包括该点的对象生成掩码。他们还表明,该模型可以利用从假阳性区域中选择的负点提案来改善预测。在本文中,我们提出了一种基于3D细胞成像的点建议的小细胞实例分割方法。然而,与现有工作不同,我们的模型利用细胞的细胞核作为点提案,并将其雇用为积极和负点建议。我们构建了3D NIH3T3数据集进行培训和评估,并在三个独立聚集的细胞上定性地检查所提出的模型; Hela,A549和MDA-MB-231。我们的模型具有卓越的定量结果;此外,与以前的方法相比,它适当地预测细胞系,甚至在训练期间注释甚至注释。

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