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Transfer learning efficiently maps bone marrow cell types from mouse to human using single-cell RNA sequencing

Authors :
Mahesan Niranjan
Jonathan West
Matthew Rose-Zerili
Fumio Arai
Yuya Kunisaki
Rosanna C.G. Smith
Xin Du
Yuichiro Semba
Koichi Akashi
Timothy J. Noble
Ben D. MacArthur
Katayoun Farrahi
Patrick S. Stumpf
Richard O.C. Oreffo
Haruka Imanishi
Source :
Communications Biology
Publication Year :
2020
Publisher :
Springer Science and Business Media LLC, 2020.

Abstract

Biomedical research often involves conducting experiments on model organisms in the anticipation that the biology learnt will transfer to humans. Previous comparative studies of mouse and human tissues were limited by the use of bulk-cell material. Here we show that transfer learning—the branch of machine learning that concerns passing information from one domain to another—can be used to efficiently map bone marrow biology between species, using data obtained from single-cell RNA sequencing. We first trained a multiclass logistic regression model to recognize different cell types in mouse bone marrow achieving equivalent performance to more complex artificial neural networks. Furthermore, it was able to identify individual human bone marrow cells with 83% overall accuracy. However, some human cell types were not easily identified, indicating important differences in biology. When re-training the mouse classifier using data from human, less than 10 human cells of a given type were needed to accurately learn its representation. In some cases, human cell identities could be inferred directly from the mouse classifier via zero-shot learning. These results show how simple machine learning models can be used to reconstruct complex biology from limited data, with broad implications for biomedical research.<br />Patrick Stumpf et al. use a machine learning technique called transfer learning to compare bone marrow cell-type information between mice and humans, based on single-cell RNA-seq data. Using their model, they identify aspects of cellular expression profiles that transfer and those that don’t, which can be used to understand when mouse models of human disease are appropriate.

Details

ISSN :
23993642
Volume :
3
Database :
OpenAIRE
Journal :
Communications Biology
Accession number :
edsair.doi.dedup.....6b63be6da6c9a595280e6fb8d35459ad
Full Text :
https://doi.org/10.1038/s42003-020-01463-6