Region-specific denoising identifies spatial co-expression patterns and intra-tissue heterogeneity in spatially resolved transcriptomics data.
Linhua WangMirjana Maletic-SavaticZhandong LiuPublished in: Nature communications (2022)
Spatially resolved transcriptomics is a relatively new technique that maps transcriptional information within a tissue. Analysis of these datasets is challenging because gene expression values are highly sparse due to dropout events, and there is a lack of tools to facilitate in silico detection and annotation of regions based on their molecular content. Therefore, we develop a computational tool for detecting molecular regions and region-based Missing value Imputation for Spatially Transcriptomics (MIST). We validate MIST-identified regions across multiple datasets produced by 10x Visium Spatial Transcriptomics, using manually annotated histological images as references. We benchmark MIST against a spatial k-nearest neighboring baseline and other imputation methods designed for single-cell RNA sequencing. We use holdout experiments to demonstrate that MIST accurately recovers spatial transcriptomics missing values. MIST facilitates identifying intra-tissue heterogeneity and recovering spatial gene-gene co-expression signals. Using MIST before downstream analysis thus provides unbiased region detections to facilitate annotations with the associated functional analyses and produces accurately denoised spatial gene expression profiles.
Keyphrases
- single cell
- rna seq
- gene expression
- high throughput
- genome wide
- poor prognosis
- copy number
- dna methylation
- healthcare
- genome wide identification
- single molecule
- transcription factor
- oxidative stress
- electronic health record
- big data
- molecular docking
- loop mediated isothermal amplification
- artificial intelligence
- long non coding rna
- sensitive detection
- heat shock protein