Sengupta Bidisha, Alrubayan Mousa, Wang Yibin, Mallet Esther, Torres Angel, Solis Ravyn, Wang Haifeng, Pradhan Prabhakar
Department of Chemistry & Biochemistry, Stephen F. Austin State University, Nacogdoches, TX, 75962.
These authors have equal contributions.
ArXiv. 2024 Dec 24:arXiv:2412.18205v1.
Biofilms are resistant microbial cell aggregates that pose risks to health and food industries and produce environmental contamination. Accurate and efficient detection and prevention of biofilms are challenging and demand interdisciplinary approaches. This multidisciplinary research reports the application of a deep learning-based artificial intelligence (AI) model for detecting biofilms produced by with high accuracy. Aptamer DNA templated silver nanocluster (Ag-NC) was used to prevent biofilm formation, which produced images of the planktonic states of the bacteria. Large-volume bright field images of bacterial biofilms were used to design the AI model. In particular, we used U-Net with ResNet encoder enhancement to segment biofilm images for AI analysis. Different degrees of biofilm structures can be efficiently detected using ResNet18 and ResNet34 backbones. The potential applications of this technique are also discussed.
生物膜是具有抗性的微生物细胞聚集体,对健康和食品行业构成风险并造成环境污染。准确、高效地检测和预防生物膜具有挑战性,需要跨学科方法。这项多学科研究报告了一种基于深度学习的人工智能(AI)模型在高精度检测生物膜方面的应用。适体DNA模板化银纳米簇(Ag-NC)用于防止生物膜形成,其生成了细菌浮游状态的图像。利用细菌生物膜的大量明场图像来设计AI模型。特别是,我们使用带有ResNet编码器增强的U-Net对生物膜图像进行分割以进行AI分析。使用ResNet18和ResNet34主干可以有效地检测不同程度的生物膜结构。还讨论了该技术的潜在应用。