Zhu Guozhen, Yan Bin, Xing Mengting, Tian Chunna
School of Electronic Engineering, Xidian University, Xi'an 710071, China.
College of Mechanical and Electronic Engineering, Northwest A&F University, Yangling, Shaanxi 712100, China.
J Microbiol Methods. 2018 Oct;153:66-73. doi: 10.1016/j.mimet.2018.09.004. Epub 2018 Sep 6.
Counting colonies is usually used in microbiological analysis to assess if samples meet microbiological criteria. Although manual counting remains gold standard, the process is subjective, tedious, and time-consuming. Some developed automatic counting methods could save labors and time, but their results are easily affected by uneven illumination and reflection of visible light. To offer a method which counts colonies automatically and is robust to light, we constructed a convenient and cost-effective system to obtain images of colonies at near-infrared light, and proposed an automatic method to detect and count colonies by processing images. The colonies cultured by using raw cows' milk were used as identification objects. The developed system mainly consisted of a visible/near-infrared camera and a circular near-infrared illuminator. The automatic method proposed to count colonies includes four steps, i.e., eliminating noises outside agar plate, removing plate rim and wall, identifying and separating clustered or overlapped colonies, and counting colonies by using connected region labelling, distance transform, and watershed algorithms, etc. A user-friendly graphic user interface was also developed for the proposed method. The relative error and counting time of the automatic counting method were compared with those of manual counting. The results showed that the relative error of the automatic counting method was -7.4%~ + 8.3%, with average relative error of 0.2%, and the time used for counting colonies on each agar plate was 11-21 s, which was 15-75% of the time used in manual counting, depending on the numbers of colonies on agar plates. The proposed system and automatic counting method demonstrate promising performance in terms of precision, and they are robust and efficient in terms of labor- and time-savings.
菌落计数通常用于微生物分析,以评估样品是否符合微生物标准。尽管手动计数仍是金标准,但该过程主观、繁琐且耗时。一些已开发的自动计数方法可以节省人力和时间,但其结果容易受到光照不均匀和可见光反射的影响。为了提供一种能自动计数菌落且对光照具有鲁棒性的方法,我们构建了一个便捷且经济高效的系统,用于获取近红外光下的菌落图像,并提出了一种通过处理图像来检测和计数菌落的自动方法。以生鲜牛乳培养的菌落作为识别对象。所开发的系统主要由一台可见光/近红外相机和一个圆形近红外照明器组成。所提出的菌落自动计数方法包括四个步骤,即消除琼脂平板外的噪声、去除平板边缘和壁、识别并分离聚集或重叠的菌落,以及使用连通区域标记、距离变换和分水岭算法等对菌落进行计数。还为所提出的方法开发了一个用户友好的图形用户界面。将自动计数方法的相对误差和计数时间与手动计数的进行了比较。结果表明,自动计数方法的相对误差为-7.4%至+8.3%,平均相对误差为0.2%,每个琼脂平板上计数菌落所用的时间为11 - 21秒,这是手动计数所用时间的15% - 75%,具体取决于琼脂平板上的菌落数量。所提出的系统和自动计数方法在精度方面表现出良好的性能,并且在节省人力和时间方面具有鲁棒性和高效性。