Thin Film Coating Facility/Materials Science and Sensor Applications, CSIR-Central Scientific Instruments Organisation (CSIR-CSIO), Sector 30-C, Chandigarh 160030, India; Academy of Scientific and Innovative Research (AcSIR), Ghaziabad 201002, India.
Academy of Scientific and Innovative Research (AcSIR), Ghaziabad 201002, India; Advanced Materials and Processes, CSIR-National Metallurgical Laboratory (CSIR-NML), Jamshedpur 831007, India.
J Microbiol Methods. 2023 Nov;214:106829. doi: 10.1016/j.mimet.2023.106829. Epub 2023 Oct 4.
Quantification of bacterial colonies on an agar plate is a daily routine for a microbiologist to determine the number of viable microorganisms in the sample. In general, microbiologists perform a visual assessment of bacterial colonies which is time-consuming (takes 2 min per plate), tedious, and subjective. Some automatic counting algorithms are developed that save labour and time, but their results are affected by the non-illumination on an agar plate. To improve this, the present manuscript aims to develop an inexpensive and efficient device to acquire S.aureus images via an automatic counting method using image processing techniques under real laboratory conditions. The proposed method (P_ColonyCount) includes the region of interest extraction and color space transformation followed by filtering, thresholding, morphological operation, distance transform, and watershed technique for the quantification of isolated and overlapping colonies. The present work also shows a comparative study on grayscale, K, and green channels by applying different filter and thresholding techniques on 42 images. The results of all channels were compared with the score provided by the expert (manual count). Out of all the proposed method (P_ColonyCount), the K channel gives the best outcome in comparison with the other two channels (grayscale and green) in terms of precision, recall, and F-measure which are 0.99, 0.99, and 0.99 (2 h), 0.98, 0.99, and 0.98 (4 h), and 0.98, 0.98, 0.98 (6 h) respectively. The execution time of the manual and the proposed method (P_ColonyCount) for 42 images ranges from 19 to 113 s and 15 to 31 s respectively. Apart from this, a user-friendly graphical user interface is also developed for the convenient enumeration of colonies without any expert knowledge/training. The developed imaging device will be useful for researchers and teaching lab settings.
在琼脂平板上对细菌菌落进行量化是微生物学家的日常工作,用于确定样本中存活微生物的数量。通常,微生物学家对细菌菌落进行目视评估,这种方法既耗时(每板需 2 分钟)又乏味且主观。一些自动计数算法虽然节省了劳动力和时间,但它们的结果受到琼脂平板非照明的影响。为了改进这一点,本手稿旨在开发一种廉价且高效的设备,以在实际实验室条件下通过图像处理技术使用自动计数方法获取金黄色葡萄球菌图像。所提出的方法(P_ColonyCount)包括感兴趣区域提取和颜色空间转换,然后进行滤波、阈值处理、形态操作、距离变换和分水岭技术,以对孤立和重叠的菌落进行量化。本工作还展示了通过在 42 张图像上应用不同的滤波和阈值技术,对灰度、K 和绿色通道进行的比较研究。所有通道的结果都与专家(手动计数)提供的分数进行了比较。在所提出的所有方法(P_ColonyCount)中,与其他两个通道(灰度和绿色通道)相比,K 通道在精度、召回率和 F 度量方面表现最佳,分别为 0.99、0.99 和 0.99(2 小时)、0.98、0.99 和 0.98(4 小时)和 0.98、0.98、0.98(6 小时)。手动和所提出的方法(P_ColonyCount)对 42 张图像的执行时间范围分别为 19 到 113 秒和 15 到 31 秒。除此之外,还开发了一个用户友好的图形用户界面,用于在无需任何专家知识/培训的情况下方便地对菌落进行计数。所开发的成像设备将对研究人员和教学实验室设置有用。