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Investigating the Impact of the Bit Depth of Fluorescence-Stained Images on the Performance of Deep Learning-Based Nuclei Instance Segmentation

机译:调查荧光染色图像比特深度对基于深度学习的核实例分割性能的影响

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摘要

Nuclei instance segmentation can be considered as a key point in the computer-mediated analysis of histological fluorescence-stained (FS) images. Many computer-assisted approaches have been proposed for this task, and among them, supervised deep learning (DL) methods deliver the best performances. An important criterion that can affect the DL-based nuclei instance segmentation performance of FS images is the utilised image bit depth, but to our knowledge, no study has been conducted so far to investigate this impact. In this work, we released a fully annotated FS histological image dataset of nuclei at different image magnifications and from five different mouse organs. Moreover, by different pre-processing techniques and using one of the state-of-the-art DL-based methods, we investigated the impact of image bit depth (i.e., eight bits vs. sixteen bits) on the nuclei instance segmentation performance. The results obtained from our dataset and another publicly available dataset showed very competitive nuclei instance segmentation performances for the models trained with 8 bit and 16 bit images. This suggested that processing 8 bit images is sufficient for nuclei instance segmentation of FS images in most cases. The dataset including the raw image patches, as well as the corresponding segmentation masks is publicly available in the published GitHub repository.
机译:核实例分割可以被认为是计算机介导的组织学荧光染色(FS)图像的分析中的关键点。已经提出了许多计算机辅助方法,为此任务,以及监督深度学习(DL)方法提供最佳表现。一个重要的标准,可以影响FS图像的DL的核实例分割性能是利用的图像比特深度,但对于我们的知识,迄今未进行任何研究以调查这种影响。在这项工作中,我们在不同的图像放大倍数和五种不同的小鼠器官处释放了核的完全注释的FS组织学图像数据集。此外,通过不同的预处理技术和基于最先进的DL的方法之一,我们研究了图像比特深度(即,8位与十六位)对核实例分割性能的影响。从我们的数据集和另一个公开的数据集获得的结果显示出具有8位和16位图像的模型的型号非常竞争力的核细胞实例分段性能。这表明在大多数情况下,处理8位图像足以用于FS图像的核实例分段。包括原始图像修补程序的数据集以及相应的分段掩码在发布的GitHub存储库中公开可用。

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