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From Cellular Characteristics to Disease Diagnosis: Uncovering Phenotypes with Supercells

Cell heterogeneity and the inherent complexity due to the interplay of multiple molecular processes within the cell pose difficult challenges for current single-cell biology. We introduce an approach that identifies a disease phenotype from multiparameter single-cell measurements, which is based on...

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Autores principales: Candia, Julián, Maunu, Ryan, Driscoll, Meghan, Biancotto, Angélique, Dagur, Pradeep, McCoy, J. Philip, Sen, H. Nida, Wei, Lai, Maritan, Amos, Cao, Kan, Nussenblatt, Robert B., Banavar, Jayanth R., Losert, Wolfgang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3763994/
https://www.ncbi.nlm.nih.gov/pubmed/24039568
http://dx.doi.org/10.1371/journal.pcbi.1003215
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author Candia, Julián
Maunu, Ryan
Driscoll, Meghan
Biancotto, Angélique
Dagur, Pradeep
McCoy, J. Philip
Sen, H. Nida
Wei, Lai
Maritan, Amos
Cao, Kan
Nussenblatt, Robert B.
Banavar, Jayanth R.
Losert, Wolfgang
author_facet Candia, Julián
Maunu, Ryan
Driscoll, Meghan
Biancotto, Angélique
Dagur, Pradeep
McCoy, J. Philip
Sen, H. Nida
Wei, Lai
Maritan, Amos
Cao, Kan
Nussenblatt, Robert B.
Banavar, Jayanth R.
Losert, Wolfgang
author_sort Candia, Julián
collection PubMed
description Cell heterogeneity and the inherent complexity due to the interplay of multiple molecular processes within the cell pose difficult challenges for current single-cell biology. We introduce an approach that identifies a disease phenotype from multiparameter single-cell measurements, which is based on the concept of “supercell statistics”, a single-cell-based averaging procedure followed by a machine learning classification scheme. We are able to assess the optimal tradeoff between the number of single cells averaged and the number of measurements needed to capture phenotypic differences between healthy and diseased patients, as well as between different diseases that are difficult to diagnose otherwise. We apply our approach to two kinds of single-cell datasets, addressing the diagnosis of a premature aging disorder using images of cell nuclei, as well as the phenotypes of two non-infectious uveitides (the ocular manifestations of Behçet's disease and sarcoidosis) based on multicolor flow cytometry. In the former case, one nuclear shape measurement taken over a group of 30 cells is sufficient to classify samples as healthy or diseased, in agreement with usual laboratory practice. In the latter, our method is able to identify a minimal set of 5 markers that accurately predict Behçet's disease and sarcoidosis. This is the first time that a quantitative phenotypic distinction between these two diseases has been achieved. To obtain this clear phenotypic signature, about one hundred CD8(+) T cells need to be measured. Although the molecular markers identified have been reported to be important players in autoimmune disorders, this is the first report pointing out that CD8(+) T cells can be used to distinguish two systemic inflammatory diseases. Beyond these specific cases, the approach proposed here is applicable to datasets generated by other kinds of state-of-the-art and forthcoming single-cell technologies, such as multidimensional mass cytometry, single-cell gene expression, and single-cell full genome sequencing techniques.
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spelling pubmed-37639942013-09-13 From Cellular Characteristics to Disease Diagnosis: Uncovering Phenotypes with Supercells Candia, Julián Maunu, Ryan Driscoll, Meghan Biancotto, Angélique Dagur, Pradeep McCoy, J. Philip Sen, H. Nida Wei, Lai Maritan, Amos Cao, Kan Nussenblatt, Robert B. Banavar, Jayanth R. Losert, Wolfgang PLoS Comput Biol Research Article Cell heterogeneity and the inherent complexity due to the interplay of multiple molecular processes within the cell pose difficult challenges for current single-cell biology. We introduce an approach that identifies a disease phenotype from multiparameter single-cell measurements, which is based on the concept of “supercell statistics”, a single-cell-based averaging procedure followed by a machine learning classification scheme. We are able to assess the optimal tradeoff between the number of single cells averaged and the number of measurements needed to capture phenotypic differences between healthy and diseased patients, as well as between different diseases that are difficult to diagnose otherwise. We apply our approach to two kinds of single-cell datasets, addressing the diagnosis of a premature aging disorder using images of cell nuclei, as well as the phenotypes of two non-infectious uveitides (the ocular manifestations of Behçet's disease and sarcoidosis) based on multicolor flow cytometry. In the former case, one nuclear shape measurement taken over a group of 30 cells is sufficient to classify samples as healthy or diseased, in agreement with usual laboratory practice. In the latter, our method is able to identify a minimal set of 5 markers that accurately predict Behçet's disease and sarcoidosis. This is the first time that a quantitative phenotypic distinction between these two diseases has been achieved. To obtain this clear phenotypic signature, about one hundred CD8(+) T cells need to be measured. Although the molecular markers identified have been reported to be important players in autoimmune disorders, this is the first report pointing out that CD8(+) T cells can be used to distinguish two systemic inflammatory diseases. Beyond these specific cases, the approach proposed here is applicable to datasets generated by other kinds of state-of-the-art and forthcoming single-cell technologies, such as multidimensional mass cytometry, single-cell gene expression, and single-cell full genome sequencing techniques. Public Library of Science 2013-09-05 /pmc/articles/PMC3763994/ /pubmed/24039568 http://dx.doi.org/10.1371/journal.pcbi.1003215 Text en https://creativecommons.org/publicdomain/zero/1.0/ This is an open-access article distributed under the terms of the Creative Commons Public Domain declaration, which stipulates that, once placed in the public domain, this work may be freely reproduced, distributed, transmitted, modified, built upon, or otherwise used by anyone for any lawful purpose.
spellingShingle Research Article
Candia, Julián
Maunu, Ryan
Driscoll, Meghan
Biancotto, Angélique
Dagur, Pradeep
McCoy, J. Philip
Sen, H. Nida
Wei, Lai
Maritan, Amos
Cao, Kan
Nussenblatt, Robert B.
Banavar, Jayanth R.
Losert, Wolfgang
From Cellular Characteristics to Disease Diagnosis: Uncovering Phenotypes with Supercells
title From Cellular Characteristics to Disease Diagnosis: Uncovering Phenotypes with Supercells
title_full From Cellular Characteristics to Disease Diagnosis: Uncovering Phenotypes with Supercells
title_fullStr From Cellular Characteristics to Disease Diagnosis: Uncovering Phenotypes with Supercells
title_full_unstemmed From Cellular Characteristics to Disease Diagnosis: Uncovering Phenotypes with Supercells
title_short From Cellular Characteristics to Disease Diagnosis: Uncovering Phenotypes with Supercells
title_sort from cellular characteristics to disease diagnosis: uncovering phenotypes with supercells
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3763994/
https://www.ncbi.nlm.nih.gov/pubmed/24039568
http://dx.doi.org/10.1371/journal.pcbi.1003215
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