Corkidi G, Diaz-Uribe R, Folch-Mallol J L, Nieto-Sotelo J
Laboratorio de Procesamiento de Imágenes, Centro de Instrumentos, UNAM, México Distrito Federal, Mexico.
Appl Environ Microbiol. 1998 Apr;64(4):1400-4. doi: 10.1128/AEM.64.4.1400-1404.1998.
In this work we introduce the confluent and various sizes image analysis method (COVASIAM), an automated colony count technique that uses digital imaging technology for detection and separation of confluent microbial colonies and colonies of various sizes growing on petri dishes. The proposed method takes advantage of the optical properties of the surfaces of most microbial colonies. Colonies in the petri dish are epi-illuminated in order to direct the reflection of concentrated light coming from a halogen lamp towards an image-sensing device. In conjunction, a multilevel threshold algorithm is proposed for colony separation and counting. These procedures improved the quantification of colonies showing confluence or differences in size. We tested COVASIAM with a sample set of microorganisms that form colonies with contrasting physical properties: Saccharomyces cerevisiae, Aspergillus nidulans, Escherichia coli, Azotobacter vinelandii, Pseudomonas aeruginosa, and Rhizobium etli. These physical properties range from smooth to hairy, from bright to opaque, and from high to low convexities. COVASIAM estimated an average of 95.47% (sigma = 8.55%) of the manually counted colonies, while an automated method based on a single-threshold segmentation procedure estimated an average of 76% (sigma = 16.27) of the manually counted colonies. This method can be easily transposed to almost every image-processing analyzer since the procedures to compile it are generically standard.
在这项工作中,我们介绍了融合及多种尺寸图像分析方法(COVASIAM),这是一种自动菌落计数技术,它利用数字成像技术来检测和分离培养皿上生长的融合微生物菌落及各种尺寸的菌落。所提出的方法利用了大多数微生物菌落表面的光学特性。培养皿中的菌落采用落射照明,以便将来自卤素灯的集中光反射导向图像传感设备。同时,提出了一种多级阈值算法用于菌落分离和计数。这些程序改进了对显示融合或尺寸差异的菌落的定量分析。我们用一组形成具有对比物理特性菌落的微生物样本对COVASIAM进行了测试:酿酒酵母、构巢曲霉、大肠杆菌、棕色固氮菌、铜绿假单胞菌和菜豆根瘤菌。这些物理特性范围从光滑到多毛、从明亮到不透明、从高凸度到低凸度。COVASIAM估计的菌落数量平均为人工计数菌落数量的95.47%(标准差 = 8.55%),而基于单阈值分割程序的自动方法估计的菌落数量平均为人工计数菌落数量的76%(标准差 = 16.27)。由于编译该方法的程序一般是标准的,所以这种方法可以很容易地移植到几乎每一种图像处理分析仪上。