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Accurate virus identification with interpretable Raman signatures by machine learning

Rapid identification of newly emerging or circulating viruses is an important first step toward managing the public health response to potential outbreaks. A portable virus capture device, coupled with label-free Raman spectroscopy, holds the promise of fast detection by rapidly obtaining the Raman...

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Autores principales: Ye, Jiarong, Yeh, Yin-Ting, Xue, Yuan, Wang, Ziyang, Zhang, Na, Liu, He, Zhang, Kunyan, Ricker, RyeAnne, Yu, Zhuohang, Roder, Allison, Lopez, Nestor Perea, Organtini, Lindsey, Greene, Wallace, Hafenstein, Susan, Lu, Huaguang, Ghedin, Elodie, Terrones, Mauricio, Huang, Shengxi, Huang, Sharon Xiaolei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: National Academy of Sciences 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9191668/
https://www.ncbi.nlm.nih.gov/pubmed/35653572
http://dx.doi.org/10.1073/pnas.2118836119
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author Ye, Jiarong
Yeh, Yin-Ting
Xue, Yuan
Wang, Ziyang
Zhang, Na
Liu, He
Zhang, Kunyan
Ricker, RyeAnne
Yu, Zhuohang
Roder, Allison
Lopez, Nestor Perea
Organtini, Lindsey
Greene, Wallace
Hafenstein, Susan
Lu, Huaguang
Ghedin, Elodie
Terrones, Mauricio
Huang, Shengxi
Huang, Sharon Xiaolei
author_facet Ye, Jiarong
Yeh, Yin-Ting
Xue, Yuan
Wang, Ziyang
Zhang, Na
Liu, He
Zhang, Kunyan
Ricker, RyeAnne
Yu, Zhuohang
Roder, Allison
Lopez, Nestor Perea
Organtini, Lindsey
Greene, Wallace
Hafenstein, Susan
Lu, Huaguang
Ghedin, Elodie
Terrones, Mauricio
Huang, Shengxi
Huang, Sharon Xiaolei
author_sort Ye, Jiarong
collection PubMed
description Rapid identification of newly emerging or circulating viruses is an important first step toward managing the public health response to potential outbreaks. A portable virus capture device, coupled with label-free Raman spectroscopy, holds the promise of fast detection by rapidly obtaining the Raman signature of a virus followed by a machine learning (ML) approach applied to recognize the virus based on its Raman spectrum, which is used as a fingerprint. We present such an ML approach for analyzing Raman spectra of human and avian viruses. A convolutional neural network (CNN) classifier specifically designed for spectral data achieves very high accuracy for a variety of virus type or subtype identification tasks. In particular, it achieves 99% accuracy for classifying influenza virus type A versus type B, 96% accuracy for classifying four subtypes of influenza A, 95% accuracy for differentiating enveloped and nonenveloped viruses, and 99% accuracy for differentiating avian coronavirus (infectious bronchitis virus [IBV]) from other avian viruses. Furthermore, interpretation of neural net responses in the trained CNN model using a full-gradient algorithm highlights Raman spectral ranges that are most important to virus identification. By correlating ML-selected salient Raman ranges with the signature ranges of known biomolecules and chemical functional groups—for example, amide, amino acid, and carboxylic acid—we verify that our ML model effectively recognizes the Raman signatures of proteins, lipids, and other vital functional groups present in different viruses and uses a weighted combination of these signatures to identify viruses.
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spelling pubmed-91916682022-12-02 Accurate virus identification with interpretable Raman signatures by machine learning Ye, Jiarong Yeh, Yin-Ting Xue, Yuan Wang, Ziyang Zhang, Na Liu, He Zhang, Kunyan Ricker, RyeAnne Yu, Zhuohang Roder, Allison Lopez, Nestor Perea Organtini, Lindsey Greene, Wallace Hafenstein, Susan Lu, Huaguang Ghedin, Elodie Terrones, Mauricio Huang, Shengxi Huang, Sharon Xiaolei Proc Natl Acad Sci U S A Physical Sciences Rapid identification of newly emerging or circulating viruses is an important first step toward managing the public health response to potential outbreaks. A portable virus capture device, coupled with label-free Raman spectroscopy, holds the promise of fast detection by rapidly obtaining the Raman signature of a virus followed by a machine learning (ML) approach applied to recognize the virus based on its Raman spectrum, which is used as a fingerprint. We present such an ML approach for analyzing Raman spectra of human and avian viruses. A convolutional neural network (CNN) classifier specifically designed for spectral data achieves very high accuracy for a variety of virus type or subtype identification tasks. In particular, it achieves 99% accuracy for classifying influenza virus type A versus type B, 96% accuracy for classifying four subtypes of influenza A, 95% accuracy for differentiating enveloped and nonenveloped viruses, and 99% accuracy for differentiating avian coronavirus (infectious bronchitis virus [IBV]) from other avian viruses. Furthermore, interpretation of neural net responses in the trained CNN model using a full-gradient algorithm highlights Raman spectral ranges that are most important to virus identification. By correlating ML-selected salient Raman ranges with the signature ranges of known biomolecules and chemical functional groups—for example, amide, amino acid, and carboxylic acid—we verify that our ML model effectively recognizes the Raman signatures of proteins, lipids, and other vital functional groups present in different viruses and uses a weighted combination of these signatures to identify viruses. National Academy of Sciences 2022-06-02 2022-06-07 /pmc/articles/PMC9191668/ /pubmed/35653572 http://dx.doi.org/10.1073/pnas.2118836119 Text en Copyright © 2022 the Author(s). Published by PNAS https://creativecommons.org/licenses/by-nc-nd/4.0/This article is distributed under Creative Commons Attribution-NonCommercial-NoDerivatives License 4.0 (CC BY-NC-ND) (https://creativecommons.org/licenses/by-nc-nd/4.0/) .
spellingShingle Physical Sciences
Ye, Jiarong
Yeh, Yin-Ting
Xue, Yuan
Wang, Ziyang
Zhang, Na
Liu, He
Zhang, Kunyan
Ricker, RyeAnne
Yu, Zhuohang
Roder, Allison
Lopez, Nestor Perea
Organtini, Lindsey
Greene, Wallace
Hafenstein, Susan
Lu, Huaguang
Ghedin, Elodie
Terrones, Mauricio
Huang, Shengxi
Huang, Sharon Xiaolei
Accurate virus identification with interpretable Raman signatures by machine learning
title Accurate virus identification with interpretable Raman signatures by machine learning
title_full Accurate virus identification with interpretable Raman signatures by machine learning
title_fullStr Accurate virus identification with interpretable Raman signatures by machine learning
title_full_unstemmed Accurate virus identification with interpretable Raman signatures by machine learning
title_short Accurate virus identification with interpretable Raman signatures by machine learning
title_sort accurate virus identification with interpretable raman signatures by machine learning
topic Physical Sciences
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9191668/
https://www.ncbi.nlm.nih.gov/pubmed/35653572
http://dx.doi.org/10.1073/pnas.2118836119
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