As more and more single-cell RNA-seq (scRNA-seq) datasets become available, carrying out compare between them is key. However, this task is challengeable due to differences caused by different experiment. We proposed a single cell alignment method using deep autoencoder followed by k-nearst-neighbor cells (scadKNN), which learns the feature representation of the data while eliminating batch effects and dropouts through deep autoencoder and uses the low-dimensional feature to align cell types, thereby reducing calculation effort and improving alignment accuracy. Experiments using different real datasets are employed to showcase the effectiveness of the proposed approach.
Xiangjie LiKui WangYafei LyuHuize PanJingxiao ZhangDwight StambolianKatalin SusztákMuredach P. ReillyGang HuMingyao Li
Yuan ZhuLitai BaiZilin NingWenfei FuJie LiuLinfeng JiangShihuang FeiShiyun GongLulu LuMinghua DengMing Yi
Songwei GeHaohan WangAmir AlaviEric P. XingZiv Bar‐Joseph
Songwei GeHaohan WangAmir AlaviEric P. XingZiv Bar‐Joseph