Publication: SCIM: universal single-cell matching with unpaired feature sets
SCIM: universal single-cell matching with unpaired feature sets
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Stark, S. G., Ficek, J., Locatello, F., Bonilla, X., Chevrier, S., Singer, F., Tumor Profiler Consortium, Rätsch, G., & Lehmann, K.-V. (2020). SCIM: universal single-cell matching with unpaired feature sets. Bioinformatics, 36(Supp.), i919–i927. https://doi.org/10.1093/bioinformatics/btaa843
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Recent technological advances have led to an increase in the production and availability of single-cell data. The ability to integrate a set of multi-technology measurements would allow the identification of biologically or clinically meaningful observations through the unification of the perspectives afforded by each technology. In most cases, however, profiling technologies consume the used cells and thus pairwise correspondences between datasets are lost. Due to the sheer size single-cell datasets can acquire, scalable
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Stark, S. G., Ficek, J., Locatello, F., Bonilla, X., Chevrier, S., Singer, F., Tumor Profiler Consortium, Rätsch, G., & Lehmann, K.-V. (2020). SCIM: universal single-cell matching with unpaired feature sets. Bioinformatics, 36(Supp.), i919–i927. https://doi.org/10.1093/bioinformatics/btaa843