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首页> 外文期刊>Microbial Ecology >CMEIAS Color Segmentation: An Improved Computing Technology to Process Color Images for Quantitative Microbial Ecology Studies at Single-Cell Resolution
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CMEIAS Color Segmentation: An Improved Computing Technology to Process Color Images for Quantitative Microbial Ecology Studies at Single-Cell Resolution

机译:CMEIAS颜色分割:一种改进的计算技术,用于处理彩色图像,用于单细胞分辨率的定量微生物生态研究

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Quantitative microscopy and digital image analysis are underutilized in microbial ecology largely because of the laborious task to segment foreground object pixels from background, especially in complex color micrographs of environmental samples. In this paper, we describe an improved computing technology developed to alleviate this limitation. The system’s uniqueness is its ability to edit digital images accurately when presented with the difficult yet commonplace challenge of removing background pixels whose three-dimensional color space overlaps the range that defines foreground objects. Image segmentation is accomplished by utilizing algorithms that address color and spatial relationships of user-selected foreground object pixels. Performance of the color segmentation algorithm evaluated on 26 complex micrographs at single pixel resolution had an overall pixel classification accuracy of 99+%. Several applications illustrate how this improved computing technology can successfully resolve numerous challenges of complex color segmentation in order to produce images from which quantitative information can be accurately extracted, thereby gain new perspectives on the in situ ecology of microorganisms. Examples include improvements in the quantitative analysis of (1) microbial abundance and phylotype diversity of single cells classified by their discriminating color within heterogeneous communities, (2) cell viability, (3) spatial relationships and intensity of bacterial gene expression involved in cellular communication between individual cells within rhizoplane biofilms, and (4) biofilm ecophysiology based on ribotype-differentiated radioactive substrate utilization. The stand-alone executable file plus user manual and tutorial images for this color segmentation computing application are freely available at http://cme.msu.edu/cmeias/. This improved computing technology opens new opportunities of imaging applications where discriminating colors really matter most, thereby strengthening quantitative microscopy-based approaches to advance microbial ecology in situ at individual single-cell resolution.
机译:定量显微镜和数字图像分析在微生物生态学中未得到充分利用,这主要是因为要从背景中分割前景物体像素这一艰巨的任务,尤其是在环境样品的复杂彩色显微照片中。在本文中,我们描述了一种为减轻这种限制而开发的改进的计算技术。该系统的独特之处在于,当面临去除三维彩色空间与定义前景对象的范围重叠的背景像素这一困难而又普遍的挑战时,它能够准确地编辑数字图像。通过利用解决用户选择的前景对象像素的颜色和空间关系的算法来完成图像分割。在26个复杂的显微照片上以单个像素分辨率评估的颜色分割算法的性能具有99 +%的整体像素分类精度。几个应用程序说明了这种改进的计算技术如何能够成功解决复杂的颜色分割的众多挑战,以产生可从中准确提取定量信息的图像,从而获得微生物原位生态学的新观点。例如,在定量分析方面的改进包括:(1)通过区分异质群落内的颜色将其分类的单细胞的微生物丰度和系统型多样性;(2)细胞活力;(3)参与细胞之间的细胞通讯的细菌基因表达的空间关系和强度根际生物膜内的单个细胞,以及(4)基于核糖型-分化的放射性底物利用的生物膜生态生理学。可从http://cme.msu.edu/cmeias/免费获得该颜色分割计算应用程序的独立可执行文件以及用户手册和教程图像。这项经过改进的计算技术为区分颜色最重要的成像应用提供了新的机遇,从而加强了基于定量显微镜的方法,以单个单细胞分辨率就地推进微生物生态学。

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