Dimension-agnostic and granularity-based spatially variable gene identification using BSP.
Juexin WangJinpu LiSkyler T KramerLi SuYuzhou ChangChunhui XuMichael T EadonKrzysztof KirylukQin MaDong XuPublished in: Nature communications (2023)
Identifying spatially variable genes (SVGs) is critical in linking molecular cell functions with tissue phenotypes. Spatially resolved transcriptomics captures cellular-level gene expression with corresponding spatial coordinates in two or three dimensions and can be used to infer SVGs effectively. However, current computational methods may not achieve reliable results and often cannot handle three-dimensional spatial transcriptomic data. Here we introduce BSP (big-small patch), a non-parametric model by comparing gene expression pattens at two spatial granularities to identify SVGs from two or three-dimensional spatial transcriptomics data in a fast and robust manner. This method has been extensively tested in simulations, demonstrating superior accuracy, robustness, and high efficiency. BSP is further validated by substantiated biological discoveries in cancer, neural science, rheumatoid arthritis, and kidney studies with various types of spatial transcriptomics technologies.
Keyphrases
- single cell
- gene expression
- rheumatoid arthritis
- high efficiency
- dna methylation
- rna seq
- big data
- genome wide
- electronic health record
- public health
- stem cells
- squamous cell carcinoma
- cell therapy
- molecular dynamics
- copy number
- disease activity
- papillary thyroid
- machine learning
- artificial intelligence
- systemic sclerosis
- bone marrow
- single molecule
- data analysis
- case control
- genome wide identification