pcaReduce: hierarchical clustering of single cell transcriptional profiles
<strong>Background:</strong> Advances in single cell genomics provide a way of routinely generating transcriptomics data at the single cell level. A frequent requirement of single cell expression analysis is the identification of novel patterns of heterogeneity across single cells that m...
Үндсэн зохиолчид: | , |
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Формат: | Journal article |
Хэл сонгох: | English |
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BioMed Central
2016
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_version_ | 1826311862917005312 |
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author | Zurauskiene, J Yau, C |
author_facet | Zurauskiene, J Yau, C |
author_sort | Zurauskiene, J |
collection | OXFORD |
description | <strong>Background:</strong> Advances in single cell genomics provide a way of routinely generating transcriptomics data at the single cell level. A frequent requirement of single cell expression analysis is the identification of novel patterns of heterogeneity across single cells that might explain complex cellular states or tissue composition. To date, classical statistical analysis tools have being routinely applied, but there is considerable scope for the development of novel statistical approaches that are better adapted to the challenges of inferring cellular hierarchies. <strong>Results:</strong> We have developed a novel agglomerative clustering method that we call pcaReduce to generate a cell state hierarchy where each cluster branch is associated with a principal component of variation that can be used to differentiate two cell states. Using two real single cell datasets, we compared our approach to other commonly used statistical techniques, such as K-means and hierarchical clustering. We found that pcaReduce was able to give more consistent clustering structures when compared to broad and detailed cell type labels. <strong>Conclusions:</strong> Our novel integration of principal components analysis and hierarchical clustering establishes a connection between the representation of the expression data and the number of cell types that can be discovered. In doing so we found that pcaReduce performs better than either technique in isolation in terms of characterising putative cell states. Our methodology is complimentary to other single cell clustering techniques and adds to a growing palette of single cell bioinformatics tools for profiling heterogeneous cell populations. |
first_indexed | 2024-03-07T08:17:33Z |
format | Journal article |
id | oxford-uuid:aa2748ea-2a94-48f0-82dc-4babeb532f66 |
institution | University of Oxford |
language | English |
last_indexed | 2024-03-07T08:17:33Z |
publishDate | 2016 |
publisher | BioMed Central |
record_format | dspace |
spelling | oxford-uuid:aa2748ea-2a94-48f0-82dc-4babeb532f662024-01-10T18:22:50ZpcaReduce: hierarchical clustering of single cell transcriptional profilesJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:aa2748ea-2a94-48f0-82dc-4babeb532f66EnglishSymplectic Elements at OxfordBioMed Central2016Zurauskiene, JYau, C<strong>Background:</strong> Advances in single cell genomics provide a way of routinely generating transcriptomics data at the single cell level. A frequent requirement of single cell expression analysis is the identification of novel patterns of heterogeneity across single cells that might explain complex cellular states or tissue composition. To date, classical statistical analysis tools have being routinely applied, but there is considerable scope for the development of novel statistical approaches that are better adapted to the challenges of inferring cellular hierarchies. <strong>Results:</strong> We have developed a novel agglomerative clustering method that we call pcaReduce to generate a cell state hierarchy where each cluster branch is associated with a principal component of variation that can be used to differentiate two cell states. Using two real single cell datasets, we compared our approach to other commonly used statistical techniques, such as K-means and hierarchical clustering. We found that pcaReduce was able to give more consistent clustering structures when compared to broad and detailed cell type labels. <strong>Conclusions:</strong> Our novel integration of principal components analysis and hierarchical clustering establishes a connection between the representation of the expression data and the number of cell types that can be discovered. In doing so we found that pcaReduce performs better than either technique in isolation in terms of characterising putative cell states. Our methodology is complimentary to other single cell clustering techniques and adds to a growing palette of single cell bioinformatics tools for profiling heterogeneous cell populations. |
spellingShingle | Zurauskiene, J Yau, C pcaReduce: hierarchical clustering of single cell transcriptional profiles |
title | pcaReduce: hierarchical clustering of single cell transcriptional profiles |
title_full | pcaReduce: hierarchical clustering of single cell transcriptional profiles |
title_fullStr | pcaReduce: hierarchical clustering of single cell transcriptional profiles |
title_full_unstemmed | pcaReduce: hierarchical clustering of single cell transcriptional profiles |
title_short | pcaReduce: hierarchical clustering of single cell transcriptional profiles |
title_sort | pcareduce hierarchical clustering of single cell transcriptional profiles |
work_keys_str_mv | AT zurauskienej pcareducehierarchicalclusteringofsinglecelltranscriptionalprofiles AT yauc pcareducehierarchicalclusteringofsinglecelltranscriptionalprofiles |