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Predicting Influenza A Virus Infection in the Lung from Hematological Data with Machine Learning

The tracking of pathogen burden and host responses with minimally invasive methods during respiratory infections is central for monitoring disease development and guiding treatment decisions. Utilizing a standardized murine model of respiratory influenza A virus (IAV) infection, we developed and tes...

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Autores principales: Jhutty, Suneet Singh, Boehme, Julia D., Jeron, Andreas, Volckmar, Julia, Schultz, Kristin, Schreiber, Jens, Schughart, Klaus, Zhou, Kai, Steinheimer, Jan, Stöcker, Horst, Stegemann-Koniszewski, Sabine, Bruder, Dunja, Hernandez-Vargas, Esteban A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Society for Microbiology 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9765554/
https://www.ncbi.nlm.nih.gov/pubmed/36346236
http://dx.doi.org/10.1128/msystems.00459-22
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author Jhutty, Suneet Singh
Boehme, Julia D.
Jeron, Andreas
Volckmar, Julia
Schultz, Kristin
Schreiber, Jens
Schughart, Klaus
Zhou, Kai
Steinheimer, Jan
Stöcker, Horst
Stegemann-Koniszewski, Sabine
Bruder, Dunja
Hernandez-Vargas, Esteban A.
author_facet Jhutty, Suneet Singh
Boehme, Julia D.
Jeron, Andreas
Volckmar, Julia
Schultz, Kristin
Schreiber, Jens
Schughart, Klaus
Zhou, Kai
Steinheimer, Jan
Stöcker, Horst
Stegemann-Koniszewski, Sabine
Bruder, Dunja
Hernandez-Vargas, Esteban A.
author_sort Jhutty, Suneet Singh
collection PubMed
description The tracking of pathogen burden and host responses with minimally invasive methods during respiratory infections is central for monitoring disease development and guiding treatment decisions. Utilizing a standardized murine model of respiratory influenza A virus (IAV) infection, we developed and tested different supervised machine learning models to predict viral burden and immune response markers, i.e., cytokines and leukocytes in the lung, from hematological data. We performed independently in vivo infection experiments to acquire extensive data for training and testing of the models. We show here that lung viral load, neutrophil counts, cytokines (such as gamma interferon [IFN-γ] and interleukin 6 [IL-6]), and other lung infection markers can be predicted from hematological data. Furthermore, feature analysis of the models showed that blood granulocytes and platelets play a crucial role in prediction and are highly involved in the immune response against IAV. The proposed in silico tools pave the path toward improved tracking and monitoring of influenza virus infections and possibly other respiratory infections based on minimally invasively obtained hematological parameters. IMPORTANCE During the course of respiratory infections such as influenza, we do have a very limited view of immunological indicators to objectively and quantitatively evaluate the outcome of a host. Methods for monitoring immunological markers in a host’s lungs are invasive and expensive, and some of them are not feasible to perform. Using machine learning algorithms, we show for the first time that minimally invasively acquired hematological parameters can be used to infer lung viral burden, leukocytes, and cytokines following influenza virus infection in mice. The potential of the framework proposed here consists of a new qualitative vision of the disease processes in the lung compartment as a noninvasive tool.
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spelling pubmed-97655542022-12-21 Predicting Influenza A Virus Infection in the Lung from Hematological Data with Machine Learning Jhutty, Suneet Singh Boehme, Julia D. Jeron, Andreas Volckmar, Julia Schultz, Kristin Schreiber, Jens Schughart, Klaus Zhou, Kai Steinheimer, Jan Stöcker, Horst Stegemann-Koniszewski, Sabine Bruder, Dunja Hernandez-Vargas, Esteban A. mSystems Research Article The tracking of pathogen burden and host responses with minimally invasive methods during respiratory infections is central for monitoring disease development and guiding treatment decisions. Utilizing a standardized murine model of respiratory influenza A virus (IAV) infection, we developed and tested different supervised machine learning models to predict viral burden and immune response markers, i.e., cytokines and leukocytes in the lung, from hematological data. We performed independently in vivo infection experiments to acquire extensive data for training and testing of the models. We show here that lung viral load, neutrophil counts, cytokines (such as gamma interferon [IFN-γ] and interleukin 6 [IL-6]), and other lung infection markers can be predicted from hematological data. Furthermore, feature analysis of the models showed that blood granulocytes and platelets play a crucial role in prediction and are highly involved in the immune response against IAV. The proposed in silico tools pave the path toward improved tracking and monitoring of influenza virus infections and possibly other respiratory infections based on minimally invasively obtained hematological parameters. IMPORTANCE During the course of respiratory infections such as influenza, we do have a very limited view of immunological indicators to objectively and quantitatively evaluate the outcome of a host. Methods for monitoring immunological markers in a host’s lungs are invasive and expensive, and some of them are not feasible to perform. Using machine learning algorithms, we show for the first time that minimally invasively acquired hematological parameters can be used to infer lung viral burden, leukocytes, and cytokines following influenza virus infection in mice. The potential of the framework proposed here consists of a new qualitative vision of the disease processes in the lung compartment as a noninvasive tool. American Society for Microbiology 2022-11-08 /pmc/articles/PMC9765554/ /pubmed/36346236 http://dx.doi.org/10.1128/msystems.00459-22 Text en Copyright © 2022 Jhutty et al. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution 4.0 International license (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Research Article
Jhutty, Suneet Singh
Boehme, Julia D.
Jeron, Andreas
Volckmar, Julia
Schultz, Kristin
Schreiber, Jens
Schughart, Klaus
Zhou, Kai
Steinheimer, Jan
Stöcker, Horst
Stegemann-Koniszewski, Sabine
Bruder, Dunja
Hernandez-Vargas, Esteban A.
Predicting Influenza A Virus Infection in the Lung from Hematological Data with Machine Learning
title Predicting Influenza A Virus Infection in the Lung from Hematological Data with Machine Learning
title_full Predicting Influenza A Virus Infection in the Lung from Hematological Data with Machine Learning
title_fullStr Predicting Influenza A Virus Infection in the Lung from Hematological Data with Machine Learning
title_full_unstemmed Predicting Influenza A Virus Infection in the Lung from Hematological Data with Machine Learning
title_short Predicting Influenza A Virus Infection in the Lung from Hematological Data with Machine Learning
title_sort predicting influenza a virus infection in the lung from hematological data with machine learning
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9765554/
https://www.ncbi.nlm.nih.gov/pubmed/36346236
http://dx.doi.org/10.1128/msystems.00459-22
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