Rahimi Shadi, Lovmar Teo, Aulova Alexandra, Pandit Santosh, Lovmar Martin, Forsberg Sven, Svensson Magnus, Kádár Roland, Mijakovic Ivan
Division of Systems and Synthetic Biology, Department of Life Sciences, Chalmers University of Technology, 41296 Gothenburg, Sweden.
Division of Engineering Materials, Chalmers University of Technology, 41296 Gothenburg, Sweden.
Nanomaterials (Basel). 2023 May 10;13(10):1605. doi: 10.3390/nano13101605.
To counter the rising threat of bacterial infections in the post-antibiotic age, intensive efforts are invested in engineering new materials with antibacterial properties. The key bottleneck in this initiative is the speed of evaluation of the antibacterial potential of new materials. To overcome this, we developed an automated pipeline for the prediction of antibacterial potential based on scanning electron microscopy images of engineered surfaces. We developed polymer composites containing graphite-oriented nanoplatelets (GNPs). The key property that the algorithm needs to consider is the density of sharp exposed edges of GNPs that kill bacteria on contact. The surface area of these sharp exposed edges of GNPs, accessible to bacteria, needs to be inferior to the diameter of a typical bacterial cell. To test this assumption, we prepared several composites with variable distribution of exposed edges of GNP. For each of them, the percentage of bacterial exclusion area was predicted by our algorithm and validated experimentally by measuring the loss of viability of the opportunistic pathogen We observed a remarkable linear correlation between predicted bacterial exclusion area and measured loss of viability (R = 0.95). The algorithm parameters we used are not generally applicable to any antibacterial surface. For each surface, key mechanistic parameters must be defined for successful prediction.
为应对后抗生素时代细菌感染日益严重的威胁,人们投入大量精力研发具有抗菌性能的新型材料。该计划的关键瓶颈在于对新型材料抗菌潜力的评估速度。为克服这一问题,我们基于工程表面的扫描电子显微镜图像开发了一种用于预测抗菌潜力的自动化流程。我们制备了含有石墨取向纳米片(GNP)的聚合物复合材料。算法需要考虑的关键特性是与细菌接触时能杀死细菌的GNP尖锐暴露边缘的密度。这些GNP可被细菌接触到的尖锐暴露边缘的表面积需要小于典型细菌细胞的直径。为验证这一假设,我们制备了几种GNP暴露边缘分布不同的复合材料。对于每种复合材料,我们的算法预测了细菌排斥区域的百分比,并通过测量机会性致病菌活力的丧失进行了实验验证。我们观察到预测的细菌排斥区域与测量的活力丧失之间存在显著的线性相关性(R = 0.95)。我们使用的算法参数通常不适用于任何抗菌表面。对于每个表面,必须定义关键的机理参数才能成功进行预测。