Li Yuzhu, Li Hao, Chen Weijie, O'Riordan Keelan, Mani Neha, Qi Yuxuan, Liu Tairan, Mani Sridhar, Ozcan Aydogan
Electrical and Computer Engineering Department, University of California, Los Angeles, CA, USA.
Bioengineering Department, University of California, Los Angeles, USA.
Gut Microbes. 2025 Dec;17(1):2505115. doi: 10.1080/19490976.2025.2505115. Epub 2025 May 14.
Motility is a fundamental characteristic of bacteria. Distinguishing between swarming and swimming, the two principal forms of bacterial movement, holds significant conceptual and clinical relevance. Conventionally, the detection of bacterial swarming involves inoculating samples on an agar surface and observing colony expansion, which is qualitative, time-intensive, and requires additional testing to rule out other motility forms. A recent methodology that differentiates swarming and swimming motility in bacteria using circular confinement offers a rapid approach to detecting swarming. However, it still heavily depends on the observer's expertise, making the process labor-intensive, costly, slow, and susceptible to inevitable human bias. To address these limitations, we developed a deep learning-based swarming classifier that rapidly and autonomously predicts swarming probability using a single blurry image. Compared with traditional video-based, manually processed approaches, our method is particularly suited for high-throughput environments and provides objective, quantitative assessments of swarming probability. The swarming classifier demonstrated in our work was trained on . SM3 and showed good performance when blindly tested on new swarming (positive) and swimming (negative) test images of SM3, achieving a sensitivity of 97.44% and a specificity of 100%. Furthermore, this classifier demonstrated robust external generalization capabilities when applied to unseen bacterial species, such as DB10 and H6. This competitive performance indicates the potential to adapt our approach for diagnostic applications through portable devices, which would facilitate rapid, objective, on-site screening for bacterial swarming motility, potentially enhancing the early detection and treatment assessment of various diseases, including inflammatory bowel diseases (IBD) and urinary tract infections (UTI).
运动性是细菌的一个基本特征。区分细菌运动的两种主要形式——群体游动和游泳,具有重要的概念意义和临床意义。传统上,检测细菌群体游动需要将样本接种在琼脂表面并观察菌落扩展情况,这种方法定性、耗时,且需要额外测试以排除其他运动形式。最近一种利用圆形限制来区分细菌群体游动和游泳运动性的方法提供了一种快速检测群体游动的途径。然而,它仍然严重依赖观察者的专业知识,使得该过程劳动强度大、成本高、速度慢且容易受到不可避免的人为偏差影响。为了解决这些局限性,我们开发了一种基于深度学习的群体游动分类器,该分类器使用单个模糊图像快速自主地预测群体游动概率。与传统的基于视频的手动处理方法相比,我们的方法特别适用于高通量环境,并能对群体游动概率进行客观、定量评估。我们工作中展示的群体游动分类器在.SM3上进行了训练,在对SM3的新的群体游动(阳性)和游泳(阴性)测试图像进行盲测时表现良好,灵敏度达到97.44%,特异性达到100%。此外,当应用于未见过的细菌物种,如DB10和H( _6 )时,该分类器表现出强大的外部泛化能力。这种具有竞争力的性能表明,有可能通过便携式设备将我们的方法应用于诊断应用,这将有助于对细菌群体游动运动性进行快速、客观的现场筛查,有可能加强对包括炎症性肠病(IBD)和尿路感染(UTI)在内的各种疾病的早期检测和治疗评估。