Litcius/Paper detail

Machine learning-driven electronic identifications of single pathogenic bacteria

Shota Hattori, Rintaro Sekido, Iat Wai Leong, Makusu Tsutsui, Akihide Arima, Masayoshi Tanaka, Kazumichi Yokota, Takashi Washio, Tomoji Kawai, Mina Okochi

2020Scientific Reports20 citationsDOIOpen Access PDF

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.

Topics & Concepts

Pathogenic bacteriaResistive touchscreenComputer scienceFeature (linguistics)SIGNAL (programming language)BacteriaArtificial intelligencePattern recognition (psychology)BiologyComputer visionPhilosophyProgramming languageLinguisticsGeneticsNanopore and Nanochannel Transport StudiesMicrofluidic and Bio-sensing TechnologiesCell Image Analysis Techniques