Cargando…

Interactive network-based clustering and investigation of multimorbidity association matrices with associationSubgraphs

MOTIVATION: Making sense of networked multivariate association patterns is vitally important to many areas of high-dimensional analysis. Unfortunately, as the data-space dimensions grow, the number of association pairs increases in O(n(2)); this means that traditional visualizations such as heatmaps...

Descripción completa

Detalles Bibliográficos
Autores principales: Strayer, Nick, Zhang, Siwei, Yao, Lydia, Vessels, Tess, Bejan, Cosmin A, Hsi, Ryan S, Shirey-Rice, Jana K, Balko, Justin M, Johnson, Douglas B, Phillips, Elizabeth J, Bick, Alex, Edwards, Todd L, Velez Edwards, Digna R, Pulley, Jill M, Wells, Quinn S, Savona, Michael R, Cox, Nancy J, Roden, Dan M, Ruderfer, Douglas M, Xu, Yaomin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9825768/
https://www.ncbi.nlm.nih.gov/pubmed/36472455
http://dx.doi.org/10.1093/bioinformatics/btac780
_version_ 1784866694251937792
author Strayer, Nick
Zhang, Siwei
Yao, Lydia
Vessels, Tess
Bejan, Cosmin A
Hsi, Ryan S
Shirey-Rice, Jana K
Balko, Justin M
Johnson, Douglas B
Phillips, Elizabeth J
Bick, Alex
Edwards, Todd L
Velez Edwards, Digna R
Pulley, Jill M
Wells, Quinn S
Savona, Michael R
Cox, Nancy J
Roden, Dan M
Ruderfer, Douglas M
Xu, Yaomin
author_facet Strayer, Nick
Zhang, Siwei
Yao, Lydia
Vessels, Tess
Bejan, Cosmin A
Hsi, Ryan S
Shirey-Rice, Jana K
Balko, Justin M
Johnson, Douglas B
Phillips, Elizabeth J
Bick, Alex
Edwards, Todd L
Velez Edwards, Digna R
Pulley, Jill M
Wells, Quinn S
Savona, Michael R
Cox, Nancy J
Roden, Dan M
Ruderfer, Douglas M
Xu, Yaomin
author_sort Strayer, Nick
collection PubMed
description MOTIVATION: Making sense of networked multivariate association patterns is vitally important to many areas of high-dimensional analysis. Unfortunately, as the data-space dimensions grow, the number of association pairs increases in O(n(2)); this means that traditional visualizations such as heatmaps quickly become too complicated to parse effectively. RESULTS: Here, we present associationSubgraphs: a new interactive visualization method to quickly and intuitively explore high-dimensional association datasets using network percolation and clustering. The goal is to provide an efficient investigation of association subgraphs, each containing a subset of variables with stronger and more frequent associations among themselves than the remaining variables outside the subset, by showing the entire clustering dynamics and providing subgraphs under all possible cutoff values at once. Particularly, we apply associationSubgraphs to a phenome-wide multimorbidity association matrix generated from an electronic health record and provide an online, interactive demonstration for exploring multimorbidity subgraphs. AVAILABILITY AND IMPLEMENTATION: An R package implementing both the algorithm and visualization components of associationSubgraphs is available at https://github.com/tbilab/associationsubgraphs. Online documentation is available at https://prod.tbilab.org/associationsubgraphs_info/. A demo using a multimorbidity association matrix is available at https://prod.tbilab.org/associationsubgraphs-example/.
format Online
Article
Text
id pubmed-9825768
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Oxford University Press
record_format MEDLINE/PubMed
spelling pubmed-98257682023-01-10 Interactive network-based clustering and investigation of multimorbidity association matrices with associationSubgraphs Strayer, Nick Zhang, Siwei Yao, Lydia Vessels, Tess Bejan, Cosmin A Hsi, Ryan S Shirey-Rice, Jana K Balko, Justin M Johnson, Douglas B Phillips, Elizabeth J Bick, Alex Edwards, Todd L Velez Edwards, Digna R Pulley, Jill M Wells, Quinn S Savona, Michael R Cox, Nancy J Roden, Dan M Ruderfer, Douglas M Xu, Yaomin Bioinformatics Original Paper MOTIVATION: Making sense of networked multivariate association patterns is vitally important to many areas of high-dimensional analysis. Unfortunately, as the data-space dimensions grow, the number of association pairs increases in O(n(2)); this means that traditional visualizations such as heatmaps quickly become too complicated to parse effectively. RESULTS: Here, we present associationSubgraphs: a new interactive visualization method to quickly and intuitively explore high-dimensional association datasets using network percolation and clustering. The goal is to provide an efficient investigation of association subgraphs, each containing a subset of variables with stronger and more frequent associations among themselves than the remaining variables outside the subset, by showing the entire clustering dynamics and providing subgraphs under all possible cutoff values at once. Particularly, we apply associationSubgraphs to a phenome-wide multimorbidity association matrix generated from an electronic health record and provide an online, interactive demonstration for exploring multimorbidity subgraphs. AVAILABILITY AND IMPLEMENTATION: An R package implementing both the algorithm and visualization components of associationSubgraphs is available at https://github.com/tbilab/associationsubgraphs. Online documentation is available at https://prod.tbilab.org/associationsubgraphs_info/. A demo using a multimorbidity association matrix is available at https://prod.tbilab.org/associationsubgraphs-example/. Oxford University Press 2022-12-06 /pmc/articles/PMC9825768/ /pubmed/36472455 http://dx.doi.org/10.1093/bioinformatics/btac780 Text en © The Author(s) 2022. Published by Oxford University Press. https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Paper
Strayer, Nick
Zhang, Siwei
Yao, Lydia
Vessels, Tess
Bejan, Cosmin A
Hsi, Ryan S
Shirey-Rice, Jana K
Balko, Justin M
Johnson, Douglas B
Phillips, Elizabeth J
Bick, Alex
Edwards, Todd L
Velez Edwards, Digna R
Pulley, Jill M
Wells, Quinn S
Savona, Michael R
Cox, Nancy J
Roden, Dan M
Ruderfer, Douglas M
Xu, Yaomin
Interactive network-based clustering and investigation of multimorbidity association matrices with associationSubgraphs
title Interactive network-based clustering and investigation of multimorbidity association matrices with associationSubgraphs
title_full Interactive network-based clustering and investigation of multimorbidity association matrices with associationSubgraphs
title_fullStr Interactive network-based clustering and investigation of multimorbidity association matrices with associationSubgraphs
title_full_unstemmed Interactive network-based clustering and investigation of multimorbidity association matrices with associationSubgraphs
title_short Interactive network-based clustering and investigation of multimorbidity association matrices with associationSubgraphs
title_sort interactive network-based clustering and investigation of multimorbidity association matrices with associationsubgraphs
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9825768/
https://www.ncbi.nlm.nih.gov/pubmed/36472455
http://dx.doi.org/10.1093/bioinformatics/btac780
work_keys_str_mv AT strayernick interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT zhangsiwei interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT yaolydia interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT vesselstess interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT bejancosmina interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT hsiryans interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT shireyricejanak interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT balkojustinm interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT johnsondouglasb interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT phillipselizabethj interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT bickalex interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT edwardstoddl interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT velezedwardsdignar interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT pulleyjillm interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT wellsquinns interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT savonamichaelr interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT coxnancyj interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT rodendanm interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT ruderferdouglasm interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs
AT xuyaomin interactivenetworkbasedclusteringandinvestigationofmultimorbidityassociationmatriceswithassociationsubgraphs