We present a deep learning-aided imaging system for early detection and classification of live bacterial colonies by capturing time-lapse holographic images of an agar plate and analyzing these images using deep neural networks. We blindly tested our system by identifying Escherichia coli and total coliform bacteria in spiked water samples and successfully detected 90% of the bacterial colonies within 7-10 h, while keeping 99.2~100% precision. We further classified the corresponding species within 7.6-12 h of incubation with 80% accuracy, which represents >12 h time-savings. Our system also achieved a limit-of-detection of ~1 CFU/L within 9 h of total test time.
We report a highly-sensitive, high-throughput, and cost-effective bacteria identification system which continuously captures and reconstructs holographic images of an agar-plate and analyzes the time-lapsed images with deep learning models for early detection of colonies. The performance of our system was confirmed by detection and classification of Escherichia coli, Enterobacter aerogenes, and Klebsiella pneumoniae in water samples. We detected 90% of the bacterial colonies and their growth within 7-10h (>95% within 12h) with ~100% precision, and correctly identified the corresponding species within 7.6-12h with 80% accuracy, and achieved time savings of >12h as compared to the gold-standard EPA-approved methods.
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