Model-based prediction of spatial gene expression via generative linear mapping
Single cell RNA-seq loses spatial information of gene expression in multicellular systems because tissue must be dissociated. Here, the authors show the spatial gene expression profiles can be both accurately and robustly reconstructed by a new computational method using a generative linear mapping,...
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Nature Portfolio
2021
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oai:doaj.org-article:abbd231b7f69497dae153503ce587d0f2021-12-02T16:04:25ZModel-based prediction of spatial gene expression via generative linear mapping10.1038/s41467-021-24014-x2041-1723https://doaj.org/article/abbd231b7f69497dae153503ce587d0f2021-06-01T00:00:00Zhttps://doi.org/10.1038/s41467-021-24014-xhttps://doaj.org/toc/2041-1723Single cell RNA-seq loses spatial information of gene expression in multicellular systems because tissue must be dissociated. Here, the authors show the spatial gene expression profiles can be both accurately and robustly reconstructed by a new computational method using a generative linear mapping, Perler.Yasushi OkochiShunta SakaguchiKen NakaeTakefumi KondoHonda NaokiNature PortfolioarticleScienceQENNature Communications, Vol 12, Iss 1, Pp 1-13 (2021) |
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Science Q Yasushi Okochi Shunta Sakaguchi Ken Nakae Takefumi Kondo Honda Naoki Model-based prediction of spatial gene expression via generative linear mapping |
description |
Single cell RNA-seq loses spatial information of gene expression in multicellular systems because tissue must be dissociated. Here, the authors show the spatial gene expression profiles can be both accurately and robustly reconstructed by a new computational method using a generative linear mapping, Perler. |
format |
article |
author |
Yasushi Okochi Shunta Sakaguchi Ken Nakae Takefumi Kondo Honda Naoki |
author_facet |
Yasushi Okochi Shunta Sakaguchi Ken Nakae Takefumi Kondo Honda Naoki |
author_sort |
Yasushi Okochi |
title |
Model-based prediction of spatial gene expression via generative linear mapping |
title_short |
Model-based prediction of spatial gene expression via generative linear mapping |
title_full |
Model-based prediction of spatial gene expression via generative linear mapping |
title_fullStr |
Model-based prediction of spatial gene expression via generative linear mapping |
title_full_unstemmed |
Model-based prediction of spatial gene expression via generative linear mapping |
title_sort |
model-based prediction of spatial gene expression via generative linear mapping |
publisher |
Nature Portfolio |
publishDate |
2021 |
url |
https://doaj.org/article/abbd231b7f69497dae153503ce587d0f |
work_keys_str_mv |
AT yasushiokochi modelbasedpredictionofspatialgeneexpressionviagenerativelinearmapping AT shuntasakaguchi modelbasedpredictionofspatialgeneexpressionviagenerativelinearmapping AT kennakae modelbasedpredictionofspatialgeneexpressionviagenerativelinearmapping AT takefumikondo modelbasedpredictionofspatialgeneexpressionviagenerativelinearmapping AT hondanaoki modelbasedpredictionofspatialgeneexpressionviagenerativelinearmapping |
_version_ |
1718385226402496512 |