Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Scalable Condition-relevant Cell Niche Analysis of Spatial Omics Data with Taichi

View through CrossRef
AbstractTissues are composed of heterogeneous cell niches, which can be investigated using spatial omics technologies. Large consortia have accumulated vast amounts of spatially resolved data, which typically assign slice-level condition labels without considering intra-slice heterogeneity, particularly differential cell niches that respond to certain perturbations. Here, we present Taichi, an efficient and scalable method for condition-relevant cell niche analysis that does not rely on pre-defined discrete spatial clustering. Taichi utilizes a scalable spatial co-embedding approach that effectively accounts for batch effects, incorporating advanced label refinement and graph heat diffusion techniques to explore condition-relevant cell niches across extensive multi-slice and multi-condition spatial omics datasets. Comprehensive benchmarks demonstrate Taichi’s ability to precisely identify condition-relevant niches under various levels of perturbations. We showcase Taichi’s effectiveness in accurately delineating major shifts in cell niches in a mouse model of diabetic kidney disease compared to a normal group, revealing disease-specific cell-cell interactions and spatial gene expression patterns. Furthermore, Taichi can identify key subtype-relevant niches between colorectal cancer patient groups with significantly different survival outcomes. Moreover, we demonstrate that Taichi can help discover more fine-grained clinical properties within the originally coarse-defined patient groups in large-scale tumor spatial atlases, reflecting intra-group heterogeneity obscured previously. Additionally, we combine Taichi and tensor decomposition to discover higher-order biomarkers relevant to the immunotherapy response of triple-negative breast cancer. Finally, we highlight Taichi’s speed and scalability by confirming its unique applicability in large-scale scenarios containing up to 16 million cells in ∼ 12 minutes. Taichi provides a powerful tool for mining disease-relevant spatially resolved insights in the era of big data in spatial biology.
Cold Spring Harbor Laboratory
Title: Scalable Condition-relevant Cell Niche Analysis of Spatial Omics Data with Taichi
Description:
AbstractTissues are composed of heterogeneous cell niches, which can be investigated using spatial omics technologies.
Large consortia have accumulated vast amounts of spatially resolved data, which typically assign slice-level condition labels without considering intra-slice heterogeneity, particularly differential cell niches that respond to certain perturbations.
Here, we present Taichi, an efficient and scalable method for condition-relevant cell niche analysis that does not rely on pre-defined discrete spatial clustering.
Taichi utilizes a scalable spatial co-embedding approach that effectively accounts for batch effects, incorporating advanced label refinement and graph heat diffusion techniques to explore condition-relevant cell niches across extensive multi-slice and multi-condition spatial omics datasets.
Comprehensive benchmarks demonstrate Taichi’s ability to precisely identify condition-relevant niches under various levels of perturbations.
We showcase Taichi’s effectiveness in accurately delineating major shifts in cell niches in a mouse model of diabetic kidney disease compared to a normal group, revealing disease-specific cell-cell interactions and spatial gene expression patterns.
Furthermore, Taichi can identify key subtype-relevant niches between colorectal cancer patient groups with significantly different survival outcomes.
Moreover, we demonstrate that Taichi can help discover more fine-grained clinical properties within the originally coarse-defined patient groups in large-scale tumor spatial atlases, reflecting intra-group heterogeneity obscured previously.
Additionally, we combine Taichi and tensor decomposition to discover higher-order biomarkers relevant to the immunotherapy response of triple-negative breast cancer.
Finally, we highlight Taichi’s speed and scalability by confirming its unique applicability in large-scale scenarios containing up to 16 million cells in ∼ 12 minutes.
Taichi provides a powerful tool for mining disease-relevant spatially resolved insights in the era of big data in spatial biology.

Related Results

Efficiency Evaluation Model of Students' Outdoor Taichi Training Based on Supervised Learning
Efficiency Evaluation Model of Students' Outdoor Taichi Training Based on Supervised Learning
Taichi has a long history and spread widely in China. It has played an important role in maintaining human health. This paper studies the efficiency evaluation model of students' o...
MARS-seq2.0: an experimental and analytical pipeline for indexed sorting combined with single-cell RNA sequencing v1
MARS-seq2.0: an experimental and analytical pipeline for indexed sorting combined with single-cell RNA sequencing v1
Human tissues comprise trillions of cells that populate a complex space of molecular phenotypes and functions and that vary in abundance by 4–9 orders of magnitude. Relying solely ...
Exploring the classification of cancer cell lines from multiple omic views
Exploring the classification of cancer cell lines from multiple omic views
Background Cancer classification is of great importance to understanding its pathogenesis, making diagnosis and developing treatment. The accumulation of extensive o...
Benchmarking multi-omics integrative clustering methods for subtype identification in colorectal cancer
Benchmarking multi-omics integrative clustering methods for subtype identification in colorectal cancer
Abstract Background and objectives Colorectal cancer (CRC) represents a heterogeneous malignancy that has concerned global burden of incidence and mortality. The tradition...
Optimal structure of heterogeneous stem cell niche: The importance of cell migration in delaying tumorigenesis
Optimal structure of heterogeneous stem cell niche: The importance of cell migration in delaying tumorigenesis
AbstractStudying the stem cell niche architecture is a crucial step for investigating the process of oncogenesis and obtaining an effective stem cell therapy for various cancers. R...

Back to Top