| Literature DB >> 32933253 |
Akihide Arima1, Makusu Tsutsui2, Takeshi Yoshida2, Kenji Tatematsu2, Tomoko Yamazaki2, Kazumichi Yokota3, Shun'ichi Kuroda2, Takashi Washio2, Yoshinobu Baba1,4,5, Tomoji Kawai2.
Abstract
The variability of bioparticles remains a key barrier to realizing the competent potential of nanoscale detection into a digital diagnosis of an extraneous object that causes an infectious disease. Here, we report label-free virus identification based on machine-learning classification. Single virus particles were detected using nanopores, and resistive-pulse waveforms were analyzed multilaterally using artificial intelligence. In the discrimination, over 99% accuracy for five different virus species was demonstrated. This advance is accessed through the classification of virus-derived ionic current signal patterns reflecting their intrinsic physical properties in a high-dimensional feature space. Moreover, consideration of viral similarity based on the accuracies indicates the contributing factors in the recognitions. The present findings offer the prospect of a novel surveillance system applicable to detection of multiple viruses including new strains.Entities:
Keywords: ionic current; machine learning; solid-state nanopore; virus; virus identification
Mesh:
Year: 2020 PMID: 32933253 DOI: 10.1021/acssensors.0c01564
Source DB: PubMed Journal: ACS Sens ISSN: 2379-3694 Impact factor: 7.711