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Multi-Scale Clustering by Building a Robust and Self Correcting Ultrametric Topology on Data Points

The advent of high-throughput technologies and the concurrent advances in information sciences have led to an explosion in size and complexity of the data sets collected in biological sciences. The biggest challenge today is to assimilate this wealth of information into a conceptual framework that w...

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Autores principales: Fushing, Hsieh, Wang, Hui, VanderWaal, Kimberly, McCowan, Brenda, Koehl, Patrice
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3570468/
https://www.ncbi.nlm.nih.gov/pubmed/23424653
http://dx.doi.org/10.1371/journal.pone.0056259
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author Fushing, Hsieh
Wang, Hui
VanderWaal, Kimberly
McCowan, Brenda
Koehl, Patrice
author_facet Fushing, Hsieh
Wang, Hui
VanderWaal, Kimberly
McCowan, Brenda
Koehl, Patrice
author_sort Fushing, Hsieh
collection PubMed
description The advent of high-throughput technologies and the concurrent advances in information sciences have led to an explosion in size and complexity of the data sets collected in biological sciences. The biggest challenge today is to assimilate this wealth of information into a conceptual framework that will help us decipher biological functions. A large and complex collection of data, usually called a data cloud, naturally embeds multi-scale characteristics and features, generically termed geometry. Understanding this geometry is the foundation for extracting knowledge from data. We have developed a new methodology, called data cloud geometry-tree (DCG-tree), to resolve this challenge. This new procedure has two main features that are keys to its success. Firstly, it derives from the empirical similarity measurements a hierarchy of clustering configurations that captures the geometric structure of the data. This hierarchy is then transformed into an ultrametric space, which is then represented via an ultrametric tree or a Parisi matrix. Secondly, it has a built-in mechanism for self-correcting clustering membership across different tree levels. We have compared the trees generated with this new algorithm to equivalent trees derived with the standard Hierarchical Clustering method on simulated as well as real data clouds from fMRI brain connectivity studies, cancer genomics, giraffe social networks, and Lewis Carroll's Doublets network. In each of these cases, we have shown that the DCG trees are more robust and less sensitive to measurement errors, and that they provide a better quantification of the multi-scale geometric structures of the data. As such, DCG-tree is an effective tool for analyzing complex biological data sets.
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spelling pubmed-35704682013-02-19 Multi-Scale Clustering by Building a Robust and Self Correcting Ultrametric Topology on Data Points Fushing, Hsieh Wang, Hui VanderWaal, Kimberly McCowan, Brenda Koehl, Patrice PLoS One Research Article The advent of high-throughput technologies and the concurrent advances in information sciences have led to an explosion in size and complexity of the data sets collected in biological sciences. The biggest challenge today is to assimilate this wealth of information into a conceptual framework that will help us decipher biological functions. A large and complex collection of data, usually called a data cloud, naturally embeds multi-scale characteristics and features, generically termed geometry. Understanding this geometry is the foundation for extracting knowledge from data. We have developed a new methodology, called data cloud geometry-tree (DCG-tree), to resolve this challenge. This new procedure has two main features that are keys to its success. Firstly, it derives from the empirical similarity measurements a hierarchy of clustering configurations that captures the geometric structure of the data. This hierarchy is then transformed into an ultrametric space, which is then represented via an ultrametric tree or a Parisi matrix. Secondly, it has a built-in mechanism for self-correcting clustering membership across different tree levels. We have compared the trees generated with this new algorithm to equivalent trees derived with the standard Hierarchical Clustering method on simulated as well as real data clouds from fMRI brain connectivity studies, cancer genomics, giraffe social networks, and Lewis Carroll's Doublets network. In each of these cases, we have shown that the DCG trees are more robust and less sensitive to measurement errors, and that they provide a better quantification of the multi-scale geometric structures of the data. As such, DCG-tree is an effective tool for analyzing complex biological data sets. Public Library of Science 2013-02-12 /pmc/articles/PMC3570468/ /pubmed/23424653 http://dx.doi.org/10.1371/journal.pone.0056259 Text en © 2013 Fushing et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Fushing, Hsieh
Wang, Hui
VanderWaal, Kimberly
McCowan, Brenda
Koehl, Patrice
Multi-Scale Clustering by Building a Robust and Self Correcting Ultrametric Topology on Data Points
title Multi-Scale Clustering by Building a Robust and Self Correcting Ultrametric Topology on Data Points
title_full Multi-Scale Clustering by Building a Robust and Self Correcting Ultrametric Topology on Data Points
title_fullStr Multi-Scale Clustering by Building a Robust and Self Correcting Ultrametric Topology on Data Points
title_full_unstemmed Multi-Scale Clustering by Building a Robust and Self Correcting Ultrametric Topology on Data Points
title_short Multi-Scale Clustering by Building a Robust and Self Correcting Ultrametric Topology on Data Points
title_sort multi-scale clustering by building a robust and self correcting ultrametric topology on data points
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3570468/
https://www.ncbi.nlm.nih.gov/pubmed/23424653
http://dx.doi.org/10.1371/journal.pone.0056259
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