Huntsman Cancer Institute, University of Utah, Salt Lake City, Utah 84112, USA.
Department of Head and Neck Endocrine Oncology, Moffitt Cancer Center, Tampa, FL 33612, USA.
J Bioinform Comput Biol. 2023 Feb;21(1):2350002. doi: 10.1142/S0219720023500026. Epub 2023 Mar 11.
Nucleus segmentation represents the initial step for histopathological image analysis pipelines, and it remains a challenge in many quantitative analysis methods in terms of accuracy and speed. Recently, deep learning nucleus segmentation methods have demonstrated to outperform previous intensity- or pattern-based methods. However, the heavy computation of deep learning provides impression of lagging response in real time and hampered the adoptability of these models in routine research. We developed and implemented NuKit a deep learning platform, which accelerates nucleus segmentation and provides prompt results to the users. NuKit platform consists of two deep learning models coupled with an interactive graphical user interface (GUI) to provide fast and automatic nucleus segmentation "on the fly". Both deep learning models provide complementary tasks in nucleus segmentation. The whole image segmentation model performs whole image nucleus whereas the click segmentation model supplements the nucleus segmentation with user-driven input to edits the segmented nuclei. We trained the NuKit whole image segmentation model on a large public training data set and tested its performance in seven independent public image data sets. The whole image segmentation model achieves average [Formula: see text] and [Formula: see text]. The outputs could be exported into different file formats, as well as provides seamless integration with other image analysis tools such as QuPath. NuKit can be executed on Windows, Mac, and Linux using personal computers.
核分割是组织病理学图像分析流水线的初始步骤,在准确性和速度方面,它仍然是许多定量分析方法中的一个挑战。最近,深度学习核分割方法在性能上优于以前的基于强度或模式的方法。然而,深度学习的大量计算给人一种实时响应滞后的印象,并阻碍了这些模型在常规研究中的采用。我们开发并实现了 NuKit 深度学习平台,该平台加速了核分割,并为用户提供了即时的结果。NuKit 平台由两个深度学习模型和一个交互式图形用户界面(GUI)组成,用于快速自动进行核分割。这两个深度学习模型在核分割中提供互补的任务。整体图像分割模型执行整体图像核分割,而点击分割模型则通过用户驱动的输入补充核分割,以编辑分割的核。我们在一个大型公共训练数据集上训练了 NuKit 整体图像分割模型,并在七个独立的公共图像数据集上测试了它的性能。整体图像分割模型的平均 Dice 系数和召回率分别为[Formula: see text]和[Formula: see text]。输出结果可以导出到不同的文件格式,并与 QuPath 等其他图像分析工具无缝集成。NuKit 可以在 Windows、Mac 和 Linux 上使用个人计算机执行。