Deep Learning-enabled Detection and Classification of Bacterial Colonies using a Thin Film Transistor (TFT) Image Sensor
Yuzhu Li, Tairan Liu, Hatice Ceylan Koydemir, Hongda Wang, Keelan, O'Riordan, Bijie Bai, Yuta Haga, Junji Kobashi, Hitoshi Tanaka, Takaya, Tamaru, Kazunori Yamaguchi, Aydogan Ozcan

TL;DR
This study presents a rapid, low-cost bacterial detection system using a TFT-based image sensor and deep learning, reducing detection time by approximately 12 hours compared to traditional methods.
Contribution
The paper introduces a novel, scalable, and cost-effective bacterial detection platform combining TFT sensors with deep neural networks for rapid identification and counting of bacterial colonies.
Findings
Achieved 97.3% detection rate at 9 hours of incubation.
Recovered 91.6% of colonies at ~12 hours.
Reduced detection time by ~12 hours compared to EPA methods.
Abstract
Early detection and identification of pathogenic bacteria such as Escherichia coli (E. coli) is an essential task for public health. The conventional culture-based methods for bacterial colony detection usually take >24 hours to get the final read-out. Here, we demonstrate a bacterial colony-forming-unit (CFU) detection system exploiting a thin-film-transistor (TFT)-based image sensor array that saves ~12 hours compared to the Environmental Protection Agency (EPA)-approved methods. To demonstrate the efficacy of this CFU detection system, a lensfree imaging modality was built using the TFT image sensor with a sample field-of-view of ~10 cm^2. Time-lapse images of bacterial colonies cultured on chromogenic agar plates were automatically collected at 5-minute intervals. Two deep neural networks were used to detect and count the growing colonies and identify their species. When blindly…
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