Generally, microscopy image analysis in biology relies on the segmentation of individual nuclei, using a dedicated stained image, to identify individual cells. However stained nuclei have drawbacks like the need for sample preparation, and specific equipment on the microscope but most importantly, and as it is in most cases, the nuclear stain is not relevant to the biological questions of interest but is solely used for the segmentation task. In this study, we used non-stained brightfield images for nuclei segmentation with the advantage that they can be acquired on any microscope from both live or fixed samples and do not necessitate specific sample preparation. Nuclei semantic segmentation from brightfield images was obtained, on four distinct cell lines with U-Net-based architectures. We tested systematically deep pre-trained encoders to identify the best performing in combination with the different neural network architectures used. Additionally, two distinct and effective strategies were employed for instance segmentation, followed by thorough instance evaluation. We obtained effective semantic and instance segmentation of nuclei in brightfield images from standard test sets as well as from very diverse biological contexts triggered upon treatment with various small molecule inhibitor. The code used in this study was made public to allow further use by the community.
翻译:一般来说,生物学中的显微镜图像分析依赖于单个核的分块,使用专门的有色图像来识别单个细胞。尽管有染核有缺陷,例如需要样本准备,以及显微镜上的具体设备,但最重要的是,由于在多数情况下,核污与感兴趣的生物问题无关,而只是用于分解任务。在这项研究中,我们使用非染色光场图像进行核分块,其优势是,它们可以从活的或固定的样本中的任何显微镜上获得,而不需要具体的样本准备。光场图像的内核语分块从四个不同的细胞线上获得,与U-Net基结构相连接。我们系统地测试了经过事先训练的核污块,以确定与所使用的不同神经网络结构相结合的最佳性能。此外,我们使用两种不同和有效的战略来进行分块,然后进行彻底的实例评估。我们从光场图像中的核素从标准测试组获得有效的分块的精度和实例分块,我们从光场图像中得到了有效的分块,从四个不同的细胞分块中获得了,从使用U-Net-Netstal 开始,并且从这个非常多样化的生物界开始,在公共环境中进行进一步的解,通过使用这种抑制性研究,在使用了各种生物界中进一步使用。