TY - JOUR A1 - Lakkis, Justin A1 - Wang, David A1 - Zhang, Yuanchao A1 - Hu, Gang A1 - Wang, Kui A1 - Pan, Huize A1 - Ungar, Lyle A1 - Reilly, Muredach A1 - Li, Xiangjie A1 - Li, Mingyao T1 - A joint deep learning model enables simultaneous batch effect correction, denoising and clustering in single-cell transcriptomics Y1 - 2021/05/25 JF - Genome Research JO - Genome Research DO - 10.1101/gr.271874.120 SP - gr.271874.120 UR - http://genome.cshlp.org/content/early/2021/05/25/gr.271874.120.abstract N2 - Recent development of single-cell RNA-seq (scRNA-seq) technologies has led to enormous biological discoveries. As the scale of scRNA-seq studies increases, a major challenge in analysis is batch effects, which are inevitable in studies involving human tissues. Most existing methods remove batch effects in a low-dimensional embedding space. Although useful for clustering, batch effects are still present in the gene expression space, leaving downstream gene-level analysis susceptible to batch effects. Recent studies have shown that batch effect correction in the gene expression space is much harder than in the embedding space. Popular methods such as Seurat3.0 rely on the mutual nearest neighbor (MNN) approach to remove batch effects in gene expression, but MNN can only analyze two batches at a time and it becomes computationally infeasible when the number of batches is large. Here we present CarDEC, a joint deep learning model that simultaneously clusters and denoises scRNA-seq data while correcting batch effects both in the embedding and the gene expression space. Comprehensive evaluations spanning different species and tissues showed that CarDEC outperforms Scanorama, DCA + Combat, scVI, and MNN. With CarDEC denoising, non-highly variable genes offer as much signal for clustering as the highly variable genes (HVGs), suggesting that CarDEC substantially boosted information content in scRNA-seq. We also showed that trajectory analysis using CarDEC's denoised and batch corrected expression as input revealed marker genes and transcription factors that are otherwise obscured in the presence of batch effects. CarDEC is computationally fast, making it a desirable tool for large-scale scRNA-seq studies. ER -