A node-based informed modularity strategy to identify organizational modules in anatomical networks

The study of morphological modularity using anatomical networks is growing in recent years. A common strategy to find the best network partition uses community detection algorithms that optimize the modularity Q function. Because anatomical networks and their modules tend to be small, this strategy...

Full description

Bibliographic Details
Main Author: Borja Esteve-Altava
Format: Article
Language:English
Published: The Company of Biologists 2020-10-01
Series:Biology Open
Subjects:
Online Access:http://bio.biologists.org/content/9/10/bio056176
id doaj-d7c1de6f0642416fa5b8b42b5ccb43bb
record_format Article
spelling doaj-d7c1de6f0642416fa5b8b42b5ccb43bb2021-06-02T19:59:17ZengThe Company of BiologistsBiology Open2046-63902020-10-0191010.1242/bio.056176056176A node-based informed modularity strategy to identify organizational modules in anatomical networksBorja Esteve-Altava0 Institute of Evolutionary Biology (UPF-CSIC), Department of Experimental and Health Sciences, Pompeu Fabra University, Barcelona Biomedical Research Park, Doctor Aigüader 88, 08003 Barcelona, Spain The study of morphological modularity using anatomical networks is growing in recent years. A common strategy to find the best network partition uses community detection algorithms that optimize the modularity Q function. Because anatomical networks and their modules tend to be small, this strategy often produces two problems. One is that some algorithms find inexplicable different modules when one inputs slightly different networks. The other is that algorithms find asymmetric modules in otherwise symmetric networks. These problems have discouraged researchers to use anatomical network analysis and boost criticisms to this methodology. Here, I propose a node-based informed modularity strategy (NIMS) to identify modules in anatomical networks that bypass resolution and sensitivity limitations by using a bottom-up approach. Starting with the local modularity around every individual node, NIMS returns the modular organization of the network by merging non-redundant modules and assessing their intersection statistically using combinatorial theory. Instead of acting as a black box, NIMS allows researchers to make informed decisions about whether to merge non-redundant modules. NIMS returns network modules that are robust to minor variation and does not require optimization of a global modularity function. NIMS may prove useful to identify modules also in small ecological and social networks.http://bio.biologists.org/content/9/10/bio056176community detection algorithmsannacranial morphology
collection DOAJ
language English
format Article
sources DOAJ
author Borja Esteve-Altava
spellingShingle Borja Esteve-Altava
A node-based informed modularity strategy to identify organizational modules in anatomical networks
Biology Open
community detection algorithms
anna
cranial morphology
author_facet Borja Esteve-Altava
author_sort Borja Esteve-Altava
title A node-based informed modularity strategy to identify organizational modules in anatomical networks
title_short A node-based informed modularity strategy to identify organizational modules in anatomical networks
title_full A node-based informed modularity strategy to identify organizational modules in anatomical networks
title_fullStr A node-based informed modularity strategy to identify organizational modules in anatomical networks
title_full_unstemmed A node-based informed modularity strategy to identify organizational modules in anatomical networks
title_sort node-based informed modularity strategy to identify organizational modules in anatomical networks
publisher The Company of Biologists
series Biology Open
issn 2046-6390
publishDate 2020-10-01
description The study of morphological modularity using anatomical networks is growing in recent years. A common strategy to find the best network partition uses community detection algorithms that optimize the modularity Q function. Because anatomical networks and their modules tend to be small, this strategy often produces two problems. One is that some algorithms find inexplicable different modules when one inputs slightly different networks. The other is that algorithms find asymmetric modules in otherwise symmetric networks. These problems have discouraged researchers to use anatomical network analysis and boost criticisms to this methodology. Here, I propose a node-based informed modularity strategy (NIMS) to identify modules in anatomical networks that bypass resolution and sensitivity limitations by using a bottom-up approach. Starting with the local modularity around every individual node, NIMS returns the modular organization of the network by merging non-redundant modules and assessing their intersection statistically using combinatorial theory. Instead of acting as a black box, NIMS allows researchers to make informed decisions about whether to merge non-redundant modules. NIMS returns network modules that are robust to minor variation and does not require optimization of a global modularity function. NIMS may prove useful to identify modules also in small ecological and social networks.
topic community detection algorithms
anna
cranial morphology
url http://bio.biologists.org/content/9/10/bio056176
work_keys_str_mv AT borjaestevealtava anodebasedinformedmodularitystrategytoidentifyorganizationalmodulesinanatomicalnetworks
AT borjaestevealtava nodebasedinformedmodularitystrategytoidentifyorganizationalmodulesinanatomicalnetworks
_version_ 1721401319661502464