Litcius/Paper detail

ADEPT: Autoencoder with differentially expressed genes and imputation for robust spatial transcriptomics clustering

Yunfei Hu, Yuying Zhao, Curtis Schunk, Yingxiang Ma, Tyler Derr, Xin Zhou

2023iScience23 citationsDOIOpen Access PDF

Abstract

Advancements in spatial transcriptomics (ST) have enabled an in-depth understanding of complex tissues by quantifying gene expression at spatially localized spots. Several notable clustering methods have been introduced to utilize both spatial and transcriptional information in the analysis of ST datasets. However, data quality across different ST sequencing techniques and types of datasets influence the performance of different methods and benchmarks. To harness spatial context and transcriptional profile in ST data, we developed a graph-based, multi-stage framework for robust clustering, called ADEPT. To control and stabilize data quality, ADEPT relies on a graph autoencoder backbone and performs an iterative clustering on imputed, differentially expressed genes-based matrices to minimize the variance of clustering results. ADEPT outperformed other popular methods on ST data generated by different platforms across analyses such as spatial domain identification, visualization, spatial trajectory inference, and data denoising.

Topics & Concepts

Cluster analysisComputer scienceInferenceSpatial analysisData miningVisualizationGraphArtificial intelligenceMathematicsStatisticsTheoretical computer scienceSingle-cell and spatial transcriptomicsGene expression and cancer classification