TY - JOUR
T1 - Machine learning classification of quorum sensing-induced bacterial aggregation using flow rate assays on paper chips toward bacterial species identification in potable water sources
AU - Choi, Seung Ju
AU - Lee, Min Hee
AU - Liang, Yan
AU - Lin, Ethan C.
AU - Khanthaphixay, Bradley
AU - Leigh, Preston J.
AU - Hwang, Dong Soo
AU - Yoon, Jeong Yeol
N1 - Publisher Copyright:
© 2025 Elsevier B.V.
PY - 2025/9/15
Y1 - 2025/9/15
N2 - Preventing waterborne disease caused by bacteria is especially important in low-resource settings, where skilled personnel and laboratory equipment are scarce. This work reports a straightforward method for classifying bacterial species by monitoring the capillary flow rates on a multi-channel paper microfluidic chip, where quorum sensing (QS)-induced bacterial aggregation leads to measurable changes in flow rates, enabling species differentiation. It required no fluorescent molecules, microscope, particles, covalent conjugation, or surface immobilization. Five representative QS molecules and control were added to each bacterial sample, and their different extents of bacterial aggregation resulted in varied flow rates. Flow rates were collected for the duration of the flow to build the learning database, and the XGBoost machine learning algorithm predicted the accuracy for classifying ten bacterial species, including 7 gram-negative and 3 gram-positive species. Three different algorithms were developed for high, medium, and low bacterial concentration ranges, and the classification accuracies of all the algorithms exceeded 75.0 %. Using XGBoost and the previously established database, we tested bacteria in the field water samples and successfully predicted the dominant species. The technology developed in this study, using only QS molecules and a paper microfluidic chip, offers a simple system for detecting microorganisms in drinking water to help prevent waterborne diseases.
AB - Preventing waterborne disease caused by bacteria is especially important in low-resource settings, where skilled personnel and laboratory equipment are scarce. This work reports a straightforward method for classifying bacterial species by monitoring the capillary flow rates on a multi-channel paper microfluidic chip, where quorum sensing (QS)-induced bacterial aggregation leads to measurable changes in flow rates, enabling species differentiation. It required no fluorescent molecules, microscope, particles, covalent conjugation, or surface immobilization. Five representative QS molecules and control were added to each bacterial sample, and their different extents of bacterial aggregation resulted in varied flow rates. Flow rates were collected for the duration of the flow to build the learning database, and the XGBoost machine learning algorithm predicted the accuracy for classifying ten bacterial species, including 7 gram-negative and 3 gram-positive species. Three different algorithms were developed for high, medium, and low bacterial concentration ranges, and the classification accuracies of all the algorithms exceeded 75.0 %. Using XGBoost and the previously established database, we tested bacteria in the field water samples and successfully predicted the dominant species. The technology developed in this study, using only QS molecules and a paper microfluidic chip, offers a simple system for detecting microorganisms in drinking water to help prevent waterborne diseases.
KW - Bacteria identification
KW - Capillary action
KW - Extreme gradient boosting
KW - Foodborne disease
KW - Machine learning
KW - Quorum sensing
UR - https://www.scopus.com/pages/publications/105004555126
UR - https://www.scopus.com/pages/publications/105004555126#tab=citedBy
U2 - 10.1016/j.bios.2025.117563
DO - 10.1016/j.bios.2025.117563
M3 - Article
C2 - 40349566
AN - SCOPUS:105004555126
SN - 0956-5663
VL - 284
JO - Biosensors and Bioelectronics
JF - Biosensors and Bioelectronics
M1 - 117563
ER -