Network spectra for drug-target identification in complex diseases: new guns against old foes
Abstract The fundamental understanding of altered complex molecular interactions in a diseased condition is the key to its cure. The overall functioning of these molecules is kind of jugglers play in the cell orchestra and to anticipate these relationships among the molecules is one of the greatest...
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doaj-36ce5a51b74d4b808b9b80d8d3bc08c42020-11-25T02:33:31ZengSpringerOpenApplied Network Science2364-82282018-12-013111810.1007/s41109-018-0107-yNetwork spectra for drug-target identification in complex diseases: new guns against old foesAparna Rai0Pramod Shinde1Sarika Jalan2Aushadhi Open Innovation Programme, Indian Institute of Technology GuwahatiDiscipline of Biosciences and Biomedical Engineering, Indian Institute of Technology IndoreDiscipline of Biosciences and Biomedical Engineering, Indian Institute of Technology IndoreAbstract The fundamental understanding of altered complex molecular interactions in a diseased condition is the key to its cure. The overall functioning of these molecules is kind of jugglers play in the cell orchestra and to anticipate these relationships among the molecules is one of the greatest challenges in modern biology and medicine. Network science turned out to be providing a successful and simple platform to understand complex interactions among healthy and diseased tissues. Furthermore, much information about the structure and dynamics of a network is concealed in the eigenvalues of its adjacency matrix. In this review, we illustrate rapid advancements in the field of network science in combination with spectral graph theory that enables us to uncover the complexities of various diseases. Interpretations laid by network science approach have solicited insights into molecular relationships and have reported novel drug targets and biomarkers in various complex diseases.http://link.springer.com/article/10.1007/s41109-018-0107-yDisease networksNetwork spectraBiomarkersRandom matrix theory (RMT)Systems biology |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Aparna Rai Pramod Shinde Sarika Jalan |
spellingShingle |
Aparna Rai Pramod Shinde Sarika Jalan Network spectra for drug-target identification in complex diseases: new guns against old foes Applied Network Science Disease networks Network spectra Biomarkers Random matrix theory (RMT) Systems biology |
author_facet |
Aparna Rai Pramod Shinde Sarika Jalan |
author_sort |
Aparna Rai |
title |
Network spectra for drug-target identification in complex diseases: new guns against old foes |
title_short |
Network spectra for drug-target identification in complex diseases: new guns against old foes |
title_full |
Network spectra for drug-target identification in complex diseases: new guns against old foes |
title_fullStr |
Network spectra for drug-target identification in complex diseases: new guns against old foes |
title_full_unstemmed |
Network spectra for drug-target identification in complex diseases: new guns against old foes |
title_sort |
network spectra for drug-target identification in complex diseases: new guns against old foes |
publisher |
SpringerOpen |
series |
Applied Network Science |
issn |
2364-8228 |
publishDate |
2018-12-01 |
description |
Abstract The fundamental understanding of altered complex molecular interactions in a diseased condition is the key to its cure. The overall functioning of these molecules is kind of jugglers play in the cell orchestra and to anticipate these relationships among the molecules is one of the greatest challenges in modern biology and medicine. Network science turned out to be providing a successful and simple platform to understand complex interactions among healthy and diseased tissues. Furthermore, much information about the structure and dynamics of a network is concealed in the eigenvalues of its adjacency matrix. In this review, we illustrate rapid advancements in the field of network science in combination with spectral graph theory that enables us to uncover the complexities of various diseases. Interpretations laid by network science approach have solicited insights into molecular relationships and have reported novel drug targets and biomarkers in various complex diseases. |
topic |
Disease networks Network spectra Biomarkers Random matrix theory (RMT) Systems biology |
url |
http://link.springer.com/article/10.1007/s41109-018-0107-y |
work_keys_str_mv |
AT aparnarai networkspectrafordrugtargetidentificationincomplexdiseasesnewgunsagainstoldfoes AT pramodshinde networkspectrafordrugtargetidentificationincomplexdiseasesnewgunsagainstoldfoes AT sarikajalan networkspectrafordrugtargetidentificationincomplexdiseasesnewgunsagainstoldfoes |
_version_ |
1724813544854126592 |