Domain adaptation for supervised integration of scRNA-seq data

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作者
Yutong Sun
Peng Qiu
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[1] Georgia Institute of Technology,School of Electrical and Computer Engineering
[2] Georgia Institute of Technology and Emory University,Department of Biomedical Engineering
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Large-scale scRNA-seq studies typically generate data in batches, which often induce nontrivial batch effects that need to be corrected. Given the global efforts for building cell atlases and the increasing number of annotated scRNA-seq datasets accumulated, we propose a supervised strategy for scRNA-seq data integration called SIDA (Supervised Integration using Domain Adaptation), which uses the cell type annotations to guide the integration of diverse batches. The supervised strategy is based on domain adaptation that was initially proposed in the computer vision field. We demonstrate that SIDA is able to generate comprehensive reference datasets that lead to improved accuracy in automated cell type mapping analyses.
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