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Enabling Comprehension of Patient Subgroups and Characteristics in Large Bipartite Networks: Implications for Precision Medicine

A primary goal of precision medicine is to identify patient subgroups based on their characteristics (e.g., comorbidities or genes) with the goal of designing more targeted interventions. While network visualization methods such as Fruchterman-Reingold have been used to successfully identify such pa...

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Autores principales: Bhavnani, Suresh K., Chen, Tianlong, Ayyaswamy, Archana, Visweswaran, Shyam, Bellala, Gowtham, Rohit, Divekar, Kevin E., Bassler
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Informatics Association 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5543384/
https://www.ncbi.nlm.nih.gov/pubmed/28815099
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author Bhavnani, Suresh K.
Chen, Tianlong
Ayyaswamy, Archana
Visweswaran, Shyam
Bellala, Gowtham
Rohit, Divekar
Kevin E., Bassler
author_facet Bhavnani, Suresh K.
Chen, Tianlong
Ayyaswamy, Archana
Visweswaran, Shyam
Bellala, Gowtham
Rohit, Divekar
Kevin E., Bassler
author_sort Bhavnani, Suresh K.
collection PubMed
description A primary goal of precision medicine is to identify patient subgroups based on their characteristics (e.g., comorbidities or genes) with the goal of designing more targeted interventions. While network visualization methods such as Fruchterman-Reingold have been used to successfully identify such patient subgroups in small to medium sized data sets, they often fail to reveal comprehensible visual patterns in large and dense networks despite having significant clustering. We therefore developed an algorithm called ExplodeLayout, which exploits the existence of significant clusters in bipartite networks to automatically “explode” a traditional network layout with the goal of separating overlapping clusters, while at the same time preserving key network topological properties that are critical for the comprehension of patient subgroups. We demonstrate the utility of ExplodeLayout by visualizing a large dataset extracted from Medicare consisting of readmitted hip-fracture patients and their comorbidities, demonstrate its statistically significant improvement over a traditional layout algorithm, and discuss how the resulting network visualization enabled clinicians to infer mechanisms precipitating hospital readmission in specific patient subgroups.
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spelling pubmed-55433842017-08-16 Enabling Comprehension of Patient Subgroups and Characteristics in Large Bipartite Networks: Implications for Precision Medicine Bhavnani, Suresh K. Chen, Tianlong Ayyaswamy, Archana Visweswaran, Shyam Bellala, Gowtham Rohit, Divekar Kevin E., Bassler AMIA Jt Summits Transl Sci Proc Articles A primary goal of precision medicine is to identify patient subgroups based on their characteristics (e.g., comorbidities or genes) with the goal of designing more targeted interventions. While network visualization methods such as Fruchterman-Reingold have been used to successfully identify such patient subgroups in small to medium sized data sets, they often fail to reveal comprehensible visual patterns in large and dense networks despite having significant clustering. We therefore developed an algorithm called ExplodeLayout, which exploits the existence of significant clusters in bipartite networks to automatically “explode” a traditional network layout with the goal of separating overlapping clusters, while at the same time preserving key network topological properties that are critical for the comprehension of patient subgroups. We demonstrate the utility of ExplodeLayout by visualizing a large dataset extracted from Medicare consisting of readmitted hip-fracture patients and their comorbidities, demonstrate its statistically significant improvement over a traditional layout algorithm, and discuss how the resulting network visualization enabled clinicians to infer mechanisms precipitating hospital readmission in specific patient subgroups. American Medical Informatics Association 2017-07-26 /pmc/articles/PMC5543384/ /pubmed/28815099 Text en ©2017 AMIA - All rights reserved. This is an Open Access article: verbatim copying and redistribution of this article are permitted in all media for any purpose
spellingShingle Articles
Bhavnani, Suresh K.
Chen, Tianlong
Ayyaswamy, Archana
Visweswaran, Shyam
Bellala, Gowtham
Rohit, Divekar
Kevin E., Bassler
Enabling Comprehension of Patient Subgroups and Characteristics in Large Bipartite Networks: Implications for Precision Medicine
title Enabling Comprehension of Patient Subgroups and Characteristics in Large Bipartite Networks: Implications for Precision Medicine
title_full Enabling Comprehension of Patient Subgroups and Characteristics in Large Bipartite Networks: Implications for Precision Medicine
title_fullStr Enabling Comprehension of Patient Subgroups and Characteristics in Large Bipartite Networks: Implications for Precision Medicine
title_full_unstemmed Enabling Comprehension of Patient Subgroups and Characteristics in Large Bipartite Networks: Implications for Precision Medicine
title_short Enabling Comprehension of Patient Subgroups and Characteristics in Large Bipartite Networks: Implications for Precision Medicine
title_sort enabling comprehension of patient subgroups and characteristics in large bipartite networks: implications for precision medicine
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5543384/
https://www.ncbi.nlm.nih.gov/pubmed/28815099
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