Unsupervised spatially embedded deep representation of spatial transcriptomics.
Hang XuHuazhu FuYahui LongKok Siong AngRaman SethiKelvin ChongMengwei LiRom UddamvathanakHong Kai LeeJingjing LingAo ChenLing ShaoLongqi LiuJinmiao ChenPublished in: Genome medicine (2024)
Optimal integration of transcriptomics data and associated spatial information is essential towards fully exploiting spatial transcriptomics to dissect tissue heterogeneity and map out inter-cellular communications. We present SEDR, which uses a deep autoencoder coupled with a masked self-supervised learning mechanism to construct a low-dimensional latent representation of gene expression, which is then simultaneously embedded with the corresponding spatial information through a variational graph autoencoder. SEDR achieved higher clustering performance on manually annotated 10 × Visium datasets and better scalability on high-resolution spatial transcriptomics datasets than existing methods. Additionally, we show SEDR's ability to impute and denoise gene expression (URL: https://github.com/JinmiaoChenLab/SEDR/ ).