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How Computational Models Enable Mechanistic Insights into Virus Infection

Sbalzarini, Ivo F; Greber, Urs F (2018). How Computational Models Enable Mechanistic Insights into Virus Infection. In: Yamauchi, Yohei. Influenza Virus. New York, NY: Springer, 609-631.

Abstract

An implicit aim in cellular infection biology is to understand the mechanisms how viruses, microbes, eukaryotic parasites, and fungi usurp the functions of host cells and cause disease. Mechanistic insight is a deep understanding of the biophysical and biochemical processes that give rise to an observable phenomenon. It is typically subject to falsification, that is, it is accessible to experimentation and empirical data acquisition. This is different from logic and mathematics, which are not empirical, but built on systems of inherently consistent axioms. Here, we argue that modeling and computer simulation, combined with mechanistic insights, yields unprecedented deep understanding of phenomena in biology and especially in virus infections by providing a way of showing sufficiency of a hypothetical mechanism. This ideally complements the necessity statements accessible to empirical falsification by additional positive evidence. We discuss how computational implementations of mathematical models can assist and enhance the quantitative measurements of infection dynamics of enveloped and non-enveloped viruses and thereby help generating causal insights into virus infection biology.

Additional indexing

Item Type:Book Section, refereed, original work
Communities & Collections:07 Faculty of Science > Institute of Molecular Life Sciences
Dewey Decimal Classification:570 Life sciences; biology
Scopus Subject Areas:Life Sciences > Molecular Biology
Life Sciences > Genetics
Language:English
Date:2018
Deposited On:12 Sep 2018 15:09
Last Modified:24 Aug 2024 03:42
Publisher:Springer
Series Name:Methods in Molecular Biology
Number:1836
ISSN:1064-3745
ISBN:978-1-4939-8677-4
OA Status:Green
Publisher DOI:https://doi.org/10.1007/978-1-4939-8678-1_30
Related URLs:https://doi.org/10.1007/978-1-4939-8678-1 (Publisher)
PubMed ID:30151595
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