Usability of deep learning pipelines for 3D nuclei identification with Stardist and Cellpose

IF 3.9 4区 生物学 Q4 Biochemistry, Genetics and Molecular Biology Cells and Development Pub Date : 2022-12-01 DOI:10.1016/j.cdev.2022.203806
Giona Kleinberg , Sophia Wang , Ester Comellas , James R. Monaghan , Sandra J. Shefelbine
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引用次数: 4

Abstract

Segmentation of 3D images to identify cells and their molecular outputs can be difficult and tedious. Machine learning algorithms provide a promising alternative to manual analysis as emerging 3D image processing technology can save considerable time. For those unfamiliar with machine learning or 3D image analysis, the rapid advancement of the field can make navigating the newest software options confusing. In this paper, two open-source machine learning algorithms, Cellpose and Stardist, are compared in their application on a 3D light sheet dataset counting fluorescently stained proliferative cell nuclei. The effects of image tiling and background subtraction are shown through image analysis pipelines for both algorithms. Based on our analysis, the relative ease of use of Cellpose and the absence of need to train a model leaves it a strong option for 3D cell segmentation despite relatively longer processing times. When Cellpose's pretrained model yields results that are not of sufficient quality, or the analysis of a large dataset is required, Stardist may be more appropriate. Despite the time it takes to train the model, Stardist can create a model specialized to the users' dataset that can be iteratively improved until predictions are satisfactory with far lower processing time relative to other methods.

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使用Stardist和Cellpose进行三维核识别的深度学习管道的可用性
分割3D图像以识别细胞及其分子输出可能是困难和繁琐的。机器学习算法为人工分析提供了一个有前途的替代方案,因为新兴的3D图像处理技术可以节省大量的时间。对于那些不熟悉机器学习或3D图像分析的人来说,该领域的快速发展可能会使最新软件选项的导航变得混乱。在本文中,比较了两种开源机器学习算法Cellpose和Stardist在3D光片数据集上的应用,该数据集用于计数荧光染色的增殖细胞核。通过两种算法的图像分析管道,展示了图像平铺和背景减法的效果。根据我们的分析,尽管处理时间相对较长,但Cellpose的相对易用性和不需要训练模型使其成为3D细胞分割的强大选择。当Cellpose的预训练模型产生的结果质量不够好,或者需要对大型数据集进行分析时,Stardist可能更合适。尽管训练模型需要时间,但Stardist可以创建一个专门针对用户数据集的模型,该模型可以迭代改进,直到预测令人满意,并且相对于其他方法的处理时间要短得多。
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来源期刊
Cells and Development
Cells and Development Biochemistry, Genetics and Molecular Biology-Developmental Biology
CiteScore
2.90
自引率
0.00%
发文量
33
审稿时长
41 days
期刊最新文献
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