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首页> 外文期刊>Frontiers in Plant Science >Precision Automation of Cell Type Classification and Sub-Cellular Fluorescence Quantification from Laser Scanning Confocal Images
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Precision Automation of Cell Type Classification and Sub-Cellular Fluorescence Quantification from Laser Scanning Confocal Images

机译:激光扫描共聚焦图像的细胞类型分类和亚细胞荧光定量的精确自动化

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While novel whole-plant phenotyping technologies have been successfully implemented into functional genomics and breeding programs, the potential of automated phenotyping with cellular resolution is largely unexploited. Laser scanning confocal microscopy has the potential to close this gap by providing spatially highly resolved images containing anatomic as well as chemical information on a subcellular basis. However, in the absence of automated methods, the assessment of the spatial patterns and abundance of fluorescent markers with subcellular resolution is still largely qualitative and time-consuming. Recent advances in image acquisition and analysis, coupled with improvements in microprocessor performance, have brought such automated methods within reach, so that information from thousands of cells per image for hundreds of images may be derived in an experimentally convenient time-frame. Here, we present a MATLAB-based analytical pipeline to (1) segment radial plant organs into individual cells, (2) classify cells into cell type categories based upon Random Forest classification, (3) divide each cell into sub-regions, and (4) quantify fluorescence intensity to a subcellular degree of precision for a separate fluorescence channel. In this research advance, we demonstrate the precision of this analytical process for the relatively complex tissues of Arabidopsis hypocotyls at various stages of development. High speed and robustness make our approach suitable for phenotyping of large collections of stem-like material and other tissue types.
机译:虽然新颖的全植物表型技术已成功地应用于功能基因组学和育种程序,但具有细胞分辨率的自动表型技术的潜力仍未得到开发。激光扫描共聚焦显微镜有潜力通过提供空间上高度分辨的图像(包含亚细胞基础上的解剖学信息和化学信息)来缩小这一差距。但是,在缺乏自动化方法的情况下,利用亚细胞分辨率评估荧光标记物的空间模式和丰度仍然在很大程度上是定性和费时的。图像采集和分析的最新进展,以及微处理器性能的提高,已使此类自动化方法触手可及,因此可以在实验方便的时间范围内得出数百张图像中每张图像数千个单元的信息。在这里,我们介绍了一个基于MATLAB的分析管道,该过程将(1)将径向植物器官分割成单个细胞,(2)基于随机森林分类将细胞分类为细胞类型类别,(3)将每个细胞划分为子区域,然后( 4)将荧光强度量化为一个单独的荧光通道的亚细胞精确度。在这项研究进展中,我们证明了拟南芥胚轴相对较复杂组织在各个开发阶段的分析过程的精度。高速和鲁棒性使我们的方法适合于大量茎状材料和其他组织类型的表型分析。

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