Jiao Yushun, Liang Baoling, Yang Guangsheng, Xin Qiang, Hong Dengfeng
National Key Laboratory of Crop Genetic Improvement, Huazhong Agricultural University, Wuhan, China.
Hubei Hongshan Laboratory, Wuhan, China.
Plant Methods. 2022 Nov 3;18(1):117. doi: 10.1186/s13007-022-00948-1.
Researchers interested in the seed size of rapeseed need to quantify the cell size and number of cells in the seed coat, embryo and silique wall. Scanning electron microscope-based methods have been demonstrated to be feasible but laborious and costly. After image preparation, the cell parameters are generally evaluated manually, which is time consuming and a major bottleneck for large-scale analysis. Recently, two machine learning-based algorithms, Trainable Weka Segmentation (TWS) and Cellpose, were released to overcome this long-standing problem. Moreover, the MorphoLibJ and LabelsToROIs plugins in Fiji provide user-friendly tools to deal with cell segmentation files. We attempted to verify the practicability and efficiency of these advanced tools for various types of cells in rapeseed.
We simplified the current image preparation procedure by skipping the fixation step and demonstrated the feasibility of the simplified procedure. We developed three methods to automatically process multicellular images of various tissues in rapeseed. The TWS-Fiji (TF) method combines cell detection with TWS and cell measurement with Fiji, enabling the accurate quantification of seed coat cells. The Cellpose-Fiji (CF) method, based on cell segmentation with Cellpose and quantification with Fiji, achieves good performance but exhibits systematic error. By removing border labels with MorphoLibJ and detecting regions of interest (ROIs) with LabelsToROIs, the Cellpose-MorphoLibJ-LabelsToROIs (CML) method achieves human-level performance on bright-field images of seed coat cells. Intriguingly, the CML method needs very little manual calibration, a property that makes it suitable for massive-scale image processing. Through a large-scale quantitative evaluation of seed coat cells, we demonstrated the robustness and high efficiency of the CML method at both the single-cell level and the sample level. Furthermore, we extended the application of the CML method to developing seed coat, embryo and silique wall cells and acquired highly precise and reliable results, indicating the versatility of this method for use in multiple scenarios.
The CML method is highly accurate and free of the need for manual correction. Hence, it can be applied for the low-cost, high-throughput quantification of diverse cell types in rapeseed with high efficiency. We envision that this method will facilitate the functional genomics and microphenomics studies of rapeseed and other crops.
对油菜籽种子大小感兴趣的研究人员需要对种皮、胚和角果壁中的细胞大小和细胞数量进行量化。基于扫描电子显微镜的方法已被证明是可行的,但费力且成本高昂。在图像制备后,细胞参数通常通过人工评估,这既耗时,也是大规模分析的主要瓶颈。最近,发布了两种基于机器学习的算法,即可训练的Weka分割算法(TWS)和Cellpose,以克服这一长期存在的问题。此外,Fiji中的MorphoLibJ和LabelsToROIs插件提供了用户友好的工具来处理细胞分割文件。我们试图验证这些先进工具对油菜籽中各种类型细胞的实用性和效率。
我们通过跳过固定步骤简化了当前的图像制备程序,并证明了简化程序的可行性。我们开发了三种方法来自动处理油菜籽各种组织的多细胞图像。TWS-Fiji(TF)方法将细胞检测与TWS相结合,将细胞测量与Fiji相结合,能够准确量化种皮细胞。Cellpose-Fiji(CF)方法基于Cellpose进行细胞分割并通过Fiji进行量化,性能良好,但存在系统误差。通过使用MorphoLibJ去除边界标签并使用LabelsToROIs检测感兴趣区域(ROI),Cellpose-MorphoLibJ-LabelsToROIs(CML)方法在种皮细胞的明场图像上达到了人类水平的性能。有趣的是,CML方法几乎不需要人工校准,这一特性使其适用于大规模图像处理。通过对种皮细胞进行大规模定量评估,我们证明了CML方法在单细胞水平和样本水平上的稳健性和高效率。此外,我们将CML方法的应用扩展到发育中的种皮、胚和角果壁细胞,并获得了高度精确和可靠的结果,表明该方法在多种场景下的通用性。
CML方法高度准确且无需人工校正。因此,它可高效应用于油菜籽中多种细胞类型的低成本、高通量量化。我们设想该方法将促进油菜籽和其他作物的功能基因组学和微观表型组学研究。