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用于环境样品定量荧光原位杂交的自动化图像分析

Automated image analysis for quantitative fluorescence in situ hybridization with environmental samples.

作者信息

Zhou Zhi, Pons Marie Noëlle, Raskin Lutgarde, Zilles Julie L

机构信息

Department of Civil and Environmental Engineering, University of Illinois at Urbana-Champaign, Urbana, IL 61801, USA.

出版信息

Appl Environ Microbiol. 2007 May;73(9):2956-62. doi: 10.1128/AEM.02954-06. Epub 2007 Mar 9.

Abstract

When fluorescence in situ hybridization (FISH) analyses are performed with complex environmental samples, difficulties related to the presence of microbial cell aggregates and nonuniform background fluorescence are often encountered. The objective of this study was to develop a robust and automated quantitative FISH method for complex environmental samples, such as manure and soil. The method and duration of sample dispersion were optimized to reduce the interference of cell aggregates. An automated image analysis program that detects cells from 4',6'-diamidino-2-phenylindole (DAPI) micrographs and extracts the maximum and mean fluorescence intensities for each cell from corresponding FISH images was developed with the software Visilog. Intensity thresholds were not consistent even for duplicate analyses, so alternative ways of classifying signals were investigated. In the resulting method, the intensity data were divided into clusters using fuzzy c-means clustering, and the resulting clusters were classified as target (positive) or nontarget (negative). A manual quality control confirmed this classification. With this method, 50.4, 72.1, and 64.9% of the cells in two swine manure samples and one soil sample, respectively, were positive as determined with a 16S rRNA-targeted bacterial probe (S-D-Bact-0338-a-A-18). Manual counting resulted in corresponding values of 52.3, 70.6, and 61.5%, respectively. In two swine manure samples and one soil sample 21.6, 12.3, and 2.5% of the cells were positive with an archaeal probe (S-D-Arch-0915-a-A-20), respectively. Manual counting resulted in corresponding values of 22.4, 14.0, and 2.9%, respectively. This automated method should facilitate quantitative analysis of FISH images for a variety of complex environmental samples.

摘要

当对复杂环境样品进行荧光原位杂交(FISH)分析时,经常会遇到与微生物细胞聚集体的存在以及背景荧光不均匀相关的困难。本研究的目的是为粪便和土壤等复杂环境样品开发一种强大且自动化的定量FISH方法。对样品分散的方法和持续时间进行了优化,以减少细胞聚集体的干扰。利用Visilog软件开发了一个自动图像分析程序,该程序可从4',6'-二脒基-2-苯基吲哚(DAPI)显微照片中检测细胞,并从相应的FISH图像中提取每个细胞的最大和平均荧光强度。即使是重复分析,强度阈值也不一致,因此研究了对信号进行分类的替代方法。在所得方法中,使用模糊c均值聚类将强度数据划分为簇,并将所得簇分类为目标(阳性)或非目标(阴性)。通过人工质量控制对该分类进行了确认。使用这种方法,用靶向16S rRNA的细菌探针(S-D-Bact-0338-a-A-18)测定,两个猪粪便样品和一个土壤样品中分别有50.4%、72.1%和64.9%的细胞为阳性。人工计数得到的相应值分别为52.3%、70.6%和61.5%。在两个猪粪便样品和一个土壤样品中,分别有21.6%、12.3%和2.5%的细胞用古菌探针(S-D-Arch-0915-a-A-20)检测为阳性。人工计数得到的相应值分别为22.4%、14.0%和2.9%。这种自动化方法应有助于对各种复杂环境样品的FISH图像进行定量分析。

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