NeuralEE: A GPU-Accelerated Elastic Embedding Dimensionality Reduction Method for Visualizing Large-Scale scRNA-Seq Data
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Title
NeuralEE: A GPU-Accelerated Elastic Embedding Dimensionality Reduction Method for Visualizing Large-Scale scRNA-Seq Data
Authors
Keywords
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Journal
Frontiers in Genetics
Volume 11, Issue -, Pages -
Publisher
Frontiers Media SA
Online
2020-10-06
DOI
10.3389/fgene.2020.00786
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