Single-cell transcriptomics in cancer: computational challenges and opportunities

Cancer: analyzing the RNA of single cells By analyzing gene expression patterns in individual tumor cells, researchers can gain patient-specific insights that might inform more effective cancer treatment. Tumors are highly dynamic and heterogeneous collections of cells. Single-cell transcriptomics t...

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Main Authors: Jean Fan, Kamil Slowikowski, Fan Zhang
Format: Article
Language:English
Published: Nature Publishing Group 2020-09-01
Series:Experimental and Molecular Medicine
Online Access:https://doi.org/10.1038/s12276-020-0422-0
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spelling doaj-4fc938ab89fd4687afb48f26f083691c2021-09-19T11:55:32ZengNature Publishing GroupExperimental and Molecular Medicine1226-36132092-64132020-09-015291452146510.1038/s12276-020-0422-0Single-cell transcriptomics in cancer: computational challenges and opportunitiesJean Fan0Kamil Slowikowski1Fan Zhang2Department of Biomedical Engineering, Johns Hopkins UniversityCenter for Immunology and Inflammatory Diseases, Massachusetts General HospitalCenter for Data Sciences, Brigham and Women’s HospitalCancer: analyzing the RNA of single cells By analyzing gene expression patterns in individual tumor cells, researchers can gain patient-specific insights that might inform more effective cancer treatment. Tumors are highly dynamic and heterogeneous collections of cells. Single-cell transcriptomics techniques can offer a valuable window into that complexity but only if the appropriate computational tools are used to analyze the data. Jean Fan of Harvard University, Cambridge, USA, and colleagues have reviewed some of these computational strategies and how they can be employed in cancer research. Single-cell analysis algorithms, for example, can reveal characteristics that distinguish healthy cells from cancerous cells, or indicate how the cells within the tumor may be communicating with each other to promote malignant growth. These are still new technologies, however, and the authors highlight the limitations of the conclusions that can currently be drawn from such analyses.https://doi.org/10.1038/s12276-020-0422-0
collection DOAJ
language English
format Article
sources DOAJ
author Jean Fan
Kamil Slowikowski
Fan Zhang
spellingShingle Jean Fan
Kamil Slowikowski
Fan Zhang
Single-cell transcriptomics in cancer: computational challenges and opportunities
Experimental and Molecular Medicine
author_facet Jean Fan
Kamil Slowikowski
Fan Zhang
author_sort Jean Fan
title Single-cell transcriptomics in cancer: computational challenges and opportunities
title_short Single-cell transcriptomics in cancer: computational challenges and opportunities
title_full Single-cell transcriptomics in cancer: computational challenges and opportunities
title_fullStr Single-cell transcriptomics in cancer: computational challenges and opportunities
title_full_unstemmed Single-cell transcriptomics in cancer: computational challenges and opportunities
title_sort single-cell transcriptomics in cancer: computational challenges and opportunities
publisher Nature Publishing Group
series Experimental and Molecular Medicine
issn 1226-3613
2092-6413
publishDate 2020-09-01
description Cancer: analyzing the RNA of single cells By analyzing gene expression patterns in individual tumor cells, researchers can gain patient-specific insights that might inform more effective cancer treatment. Tumors are highly dynamic and heterogeneous collections of cells. Single-cell transcriptomics techniques can offer a valuable window into that complexity but only if the appropriate computational tools are used to analyze the data. Jean Fan of Harvard University, Cambridge, USA, and colleagues have reviewed some of these computational strategies and how they can be employed in cancer research. Single-cell analysis algorithms, for example, can reveal characteristics that distinguish healthy cells from cancerous cells, or indicate how the cells within the tumor may be communicating with each other to promote malignant growth. These are still new technologies, however, and the authors highlight the limitations of the conclusions that can currently be drawn from such analyses.
url https://doi.org/10.1038/s12276-020-0422-0
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AT kamilslowikowski singlecelltranscriptomicsincancercomputationalchallengesandopportunities
AT fanzhang singlecelltranscriptomicsincancercomputationalchallengesandopportunities
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