Chen Sijie, Huang Po-Hsun, Kim Hyungseok, Cui Yuhe, Buie Cullen R
Department of Mechanical Engineering, Massachusetts Institute of Technology, Cambridge, Massachusetts, United States of America.
Institute for Data, Systems, and Society, Massachusetts Institute of Technology, Cambridge, Massachusetts, United States of America.
PLoS One. 2025 Mar 19;20(3):e0311242. doi: 10.1371/journal.pone.0311242. eCollection 2025.
Accurate colony counting is crucial for assessing microbial growth in high-throughput workflows. However, existing automated counting solutions struggle with the issue of merged colonies, a common occurrence in high-throughput plating. To overcome this limitation, we propose MCount, the only known solution that incorporates both contour information and regional algorithms for colony counting. By optimizing the pairing of contours with regional candidate circles, MCount can accurately infer the number of merged colonies. We evaluate MCount on a precisely labeled Escherichia coli dataset of 960 images (15,847 segments) and achieve an average error rate of 3.99%, significantly outperforming existing published solutions such as NICE (16.54%), AutoCellSeg (33.54%), and OpenCFU (50.31%). MCount is user-friendly as it only requires two hyperparameters. To further facilitate deployment in scenarios with limited labeled data, we propose statistical methods for selecting the hyperparameters using few labeled or even unlabeled data points, all of which guarantee consistently low error rates. MCount presents a promising solution for accurate and efficient colony counting in application workflows requiring high throughput, particularly in cases with merged colonies.
在高通量工作流程中,准确的菌落计数对于评估微生物生长至关重要。然而,现有的自动计数解决方案在处理合并菌落的问题上存在困难,而合并菌落在高通量平板接种中很常见。为了克服这一限制,我们提出了MCount,这是唯一已知的同时结合轮廓信息和区域算法进行菌落计数的解决方案。通过优化轮廓与区域候选圆的配对,MCount可以准确推断合并菌落的数量。我们在一个精确标注的包含960张图像(15847个片段)的大肠杆菌数据集上对MCount进行评估,平均错误率为3.99%,显著优于现有的已发表解决方案,如NICE(16.54%)、AutoCellSeg(33.54%)和OpenCFU(50.31%)。MCount用户友好,因为它只需要两个超参数。为了进一步便于在标记数据有限的场景中部署,我们提出了使用少量标记甚至未标记数据点来选择超参数的统计方法,所有这些方法都能保证始终保持较低的错误率。对于需要高通量的应用工作流程,特别是在存在合并菌落的情况下,MCount为准确高效的菌落计数提供了一个很有前景的解决方案。