Abstract

Rapid antimicrobial susceptibility testing (AST) is urgently needed to slow down the emergence of antibiotic-resistant bacteria and treat infections with correct antibiotics. Stimulated Raman scattering (SRS) microscopy is a technique that enables rapid chemical-bond imaging with sub-cellular resolution. It can obtain the AST results with a single bacterium resolution. Although the SRS imaging assay is relatively fast, taking less than 2 h, the calculation of single-cell metabolism inactivation concentration (SC-MIC) is performed manually and takes a long time. The bottleneck tasks that hinder the SC-MIC throughput include bacterial segmentation and intensity thresholding. To address these issues, we devised a hybrid algorithm to segment single bacteria from SRS images with automatic thresholding. Our proposed method comprises a U-Net convolutional neural network (CNN), DropBlock, and secondary segmentation post-processing. Our results show that SC-MIC calculation can be accomplished within 1 min and more accurate segmentation results using deep learning-based bacterial segmentation method, which is essential for its clinical applications.

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