Computational modelling and data analysis on the virulence of influenza viruses

Influenza virus, a rapidly evolving contagious virus causing seasonal flu, has been circulating globally for centuries. The first recorded influenza pandemic was in 1918, claiming at least 50 million lives. Until 1933, influenza viruses were isolated from human for the first time, proving that influ...

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Main Author: Zhou, Xinrui
Other Authors: Kwoh Chee Keong
Format: Thesis-Doctor of Philosophy
Language:English
Published: Nanyang Technological University 2020
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Online Access:https://hdl.handle.net/10356/137781
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spelling sg-ntu-dr.10356-1377812020-10-28T08:41:05Z Computational modelling and data analysis on the virulence of influenza viruses Zhou, Xinrui Kwoh Chee Keong School of Computer Science and Engineering Bioinformatics Research Centre asckkwoh@ntu.edu.sg Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence Science::Biological sciences::Microbiology::Virology Influenza virus, a rapidly evolving contagious virus causing seasonal flu, has been circulating globally for centuries. The first recorded influenza pandemic was in 1918, claiming at least 50 million lives. Until 1933, influenza viruses were isolated from human for the first time, proving that influenza is caused by a virus rather than a bacterium. Seasonal influenza has caused substantial social and economic burden worldwide, affecting school attendance, work absenteeism, industrial productivity, etc. It mainly infects the respiratory system and can cause pneumonia, severe complications, or deaths, especially among people at high risks. Flu vaccines have been designed as primary prevention to help defense viral infection in advance. However, the rapid and continuous evolution of influenza raises the challenge to prepare vaccine candidates matching the antigenicity of dominant circulating influenza viruses for the next season. Therefore, it is in urgent demand to characterize and predict the antigenicity of influenza in advance. Given the feasibility of high throughput sequencing techniques and enriched protein structure database, lots of computational models have been proposed to characterize antigenic properties of influenza. There have been many studies working on evolutionary models for tracing back the genomic variations and predicting the antigenic variants of influenza. However, current models for predicting the antigenicity are only applicable to one pre-defined subtype of influenza virus. The universal models for multiple-subtypes are still lacking. When it comes to virulence, the ability of the virus to cause disease among humans, it is a more complex problem involving the interaction with the immune system. From the medical perspective, the virulence level of influenza viruses is measured with the severity of an infection, the capability of drug resistance and transmission among hosts. There are still no consistent measurements for quantifying the virulence level of an influenza viral strain. The objective of this dissertation is to construct computational models for profiling the virulence of influenza viruses. In this dissertation, the virulence level is quantified from the virus perspective only, including the sequence analyses on the genomic variation, and structural analyses on the receptor binding. The proposed sequence models for genomic variation include a phylogenetic-tree based method for pairwise co-mutations of influenza intra-proteins, and a sequential rule mining based approach for co-occurring mutations at multiple sites, even on different proteins. For profiling the receptor binding specificity, a structure-based model was proposed to characterize the binding modes between the influenza viral membrane protein (HA) and the human receptors. Both sequence models and structural models are integrated into a pipeline to quickly profile the virulence of influenza viral strains. Results of this proposed pipeline on our newly sampled influenza viral strains among outpatients and inpatients in Singapore highlighted viral subtypes and strains that are more infectious or pathogenic, which are consistent with the local observations. Doctor of Philosophy 2020-04-14T09:25:19Z 2020-04-14T09:25:19Z 2019 Thesis-Doctor of Philosophy Zhou, X. (2019). Computational modelling and data analysis on the virulence of influenza viruses. Doctoral thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/137781 10.32657/10356/137781 en This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License (CC BY-NC 4.0). application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence
Science::Biological sciences::Microbiology::Virology
spellingShingle Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence
Science::Biological sciences::Microbiology::Virology
Zhou, Xinrui
Computational modelling and data analysis on the virulence of influenza viruses
description Influenza virus, a rapidly evolving contagious virus causing seasonal flu, has been circulating globally for centuries. The first recorded influenza pandemic was in 1918, claiming at least 50 million lives. Until 1933, influenza viruses were isolated from human for the first time, proving that influenza is caused by a virus rather than a bacterium. Seasonal influenza has caused substantial social and economic burden worldwide, affecting school attendance, work absenteeism, industrial productivity, etc. It mainly infects the respiratory system and can cause pneumonia, severe complications, or deaths, especially among people at high risks. Flu vaccines have been designed as primary prevention to help defense viral infection in advance. However, the rapid and continuous evolution of influenza raises the challenge to prepare vaccine candidates matching the antigenicity of dominant circulating influenza viruses for the next season. Therefore, it is in urgent demand to characterize and predict the antigenicity of influenza in advance. Given the feasibility of high throughput sequencing techniques and enriched protein structure database, lots of computational models have been proposed to characterize antigenic properties of influenza. There have been many studies working on evolutionary models for tracing back the genomic variations and predicting the antigenic variants of influenza. However, current models for predicting the antigenicity are only applicable to one pre-defined subtype of influenza virus. The universal models for multiple-subtypes are still lacking. When it comes to virulence, the ability of the virus to cause disease among humans, it is a more complex problem involving the interaction with the immune system. From the medical perspective, the virulence level of influenza viruses is measured with the severity of an infection, the capability of drug resistance and transmission among hosts. There are still no consistent measurements for quantifying the virulence level of an influenza viral strain. The objective of this dissertation is to construct computational models for profiling the virulence of influenza viruses. In this dissertation, the virulence level is quantified from the virus perspective only, including the sequence analyses on the genomic variation, and structural analyses on the receptor binding. The proposed sequence models for genomic variation include a phylogenetic-tree based method for pairwise co-mutations of influenza intra-proteins, and a sequential rule mining based approach for co-occurring mutations at multiple sites, even on different proteins. For profiling the receptor binding specificity, a structure-based model was proposed to characterize the binding modes between the influenza viral membrane protein (HA) and the human receptors. Both sequence models and structural models are integrated into a pipeline to quickly profile the virulence of influenza viral strains. Results of this proposed pipeline on our newly sampled influenza viral strains among outpatients and inpatients in Singapore highlighted viral subtypes and strains that are more infectious or pathogenic, which are consistent with the local observations.
author2 Kwoh Chee Keong
author_facet Kwoh Chee Keong
Zhou, Xinrui
format Thesis-Doctor of Philosophy
author Zhou, Xinrui
author_sort Zhou, Xinrui
title Computational modelling and data analysis on the virulence of influenza viruses
title_short Computational modelling and data analysis on the virulence of influenza viruses
title_full Computational modelling and data analysis on the virulence of influenza viruses
title_fullStr Computational modelling and data analysis on the virulence of influenza viruses
title_full_unstemmed Computational modelling and data analysis on the virulence of influenza viruses
title_sort computational modelling and data analysis on the virulence of influenza viruses
publisher Nanyang Technological University
publishDate 2020
url https://hdl.handle.net/10356/137781
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