Robust single nucleus RNA sequencing reveals depot-specific cell population dynamics in adipose tissue remodeling during obesity.
Jisun SoOlivia StrobelJamie WannKyungchan KimAvishek PaulDominic J AcriLuke C DabinJungsu KimHyun Cheol RohPublished in: bioRxiv : the preprint server for biology (2024)
Single nucleus RNA sequencing (snRNA-seq), an alternative to single cell RNA sequencing (scRNA-seq), encounters technical challenges in obtaining high-quality nuclei and RNA, persistently hindering its applications. Here, we present a robust technique for isolating nuclei across various tissue types, remarkably enhancing snRNA-seq data quality. Employing this approach, we comprehensively characterize the depot-dependent cellular dynamics of various cell types underlying adipose tissue remodeling during obesity. By integrating bulk nuclear RNA-seq from adipocyte nuclei of different sizes, we identify distinct adipocyte subpopulations categorized by size and functionality. These subpopulations follow two divergent trajectories, adaptive and pathological, with their prevalence varying by depot. Specifically, we identify a key molecular feature of dysfunctional hypertrophic adipocytes, a global shutdown in gene expression, along with elevated stress and inflammatory responses. Furthermore, our differential gene expression analysis reveals distinct contributions of adipocyte subpopulations to the overall pathophysiology of adipose tissue. Our study establishes a robust snRNA-seq method, providing novel insights into the mechanisms orchestrating adipose tissue remodeling during obesity, with broader applicability across diverse biological systems.
Keyphrases
- single cell
- adipose tissue
- rna seq
- insulin resistance
- gene expression
- high fat diet
- high fat diet induced
- high throughput
- metabolic syndrome
- weight loss
- dna methylation
- type diabetes
- weight gain
- machine learning
- skeletal muscle
- risk factors
- depressive symptoms
- stem cells
- body mass index
- deep learning
- genome wide
- electronic health record
- quality improvement
- big data
- cell therapy
- heat stress
- fatty acid