Abstract
A rapid method for screening pathogens can revolutionize health care by enabling infection control through medication before symptom. Here we report on label-free single-cell identifications of clinically-important pathogenic bacteria by using a polymer-integrated low thickness-to-diameter aspect ratio pore and machine learning-driven resistive pulse analyses. A high-spatiotemporal resolution of this electrical sensor enabled to observe galvanotactic response intrinsic to the microbes during their translocation. We demonstrated discrimination of the cellular motility via signal pattern classifications in a high-dimensional feature space. As the detection-to-decision can be completed within milliseconds, the present technique may be used for real-time screening of pathogenic bacteria for environmental and medical applications.
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CITATION STYLE
Hattori, S., Sekido, R., Leong, I. W., Tsutsui, M., Arima, A., Tanaka, M., … Okochi, M. (2020). Machine learning-driven electronic identifications of single pathogenic bacteria. Scientific Reports, 10(1). https://doi.org/10.1038/s41598-020-72508-3
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