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http://hdl.handle.net/123456789/1939
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Title: | Using Biological Networks to Improve our Understanding of Infectious Diseases |
Authors: | Mulder, Nicola J. Akinola, Richard O. Mazandu, Gaston K. Rapanoel, Holifidy |
Keywords: | Tuberculosis Pathogen Evolution Protein–protein interaction |
Issue Date: | 2014 |
Publisher: | Computational and Structural Biotechnology Journal |
Series/Report no.: | Vol. 11;Pp 1–10 |
Abstract: | Infectious diseases are the leading cause of death, particularly in developing countries. Although many drugs are
available for treating themost common infectious diseases, inmany cases themechanismof action of these drugs
or even their targets in the pathogen remain unknown. In addition, the key factors or processes in pathogens that
facilitate infection and disease progression are often notwell understood. Since proteins do notwork in isolation,
understanding biological systems requires a better understanding of the interconnectivity between proteins in
different pathways and processes,which includes both physical and other functional interactions. Such biological
networks can be generated within organisms or between organisms sharing a common environment using experimental
data and computational predictions. Though different data sources provide different levels of accuracy,
confidence in interactions can be measured using interaction scores. Connections between interacting proteins in biological
networks can be represented as graphs and edges, and thus studied using existing algorithms and tools from
graph theory. There are many different applications of biological networks, and here we discuss three such applications,
specifically applied to the infectious disease tuberculosis, with its causative agent Mycobacterium tuberculosis
and host, Homo sapiens. The applications include the use of the networks for function prediction, comparison of networks
for evolutionary studies, and the generation and use of host–pathogen interaction networks. |
URI: | http://hdl.handle.net/123456789/1939 |
Appears in Collections: | Mathematics
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