Comprehensive assessment of cellular senescence in the tumor microenvironment.
Xiaoman WangLifei MaXiaoya PeiHeping WangXiaoqiang TangJian-Fei PeiYang-Nan DingSiyao QuZi-Yu WeiHui-Yu WangXiaoyue WangGong-Hong WeiDe-Pei LiuHou-Zao ChenPublished in: Briefings in bioinformatics (2022)
Cellular senescence (CS), a state of permanent growth arrest, is intertwined with tumorigenesis. Due to the absence of specific markers, characterizing senescence levels and senescence-related phenotypes across cancer types remain unexplored. Here, we defined computational metrics of senescence levels as CS scores to delineate CS landscape across 33 cancer types and 29 normal tissues and explored CS-associated phenotypes by integrating multiplatform data from ~20 000 patients and ~212 000 single-cell profiles. CS scores showed cancer type-specific associations with genomic and immune characteristics and significantly predicted immunotherapy responses and patient prognosis in multiple cancers. Single-cell CS quantification revealed intra-tumor heterogeneity and activated immune microenvironment in senescent prostate cancer. Using machine learning algorithms, we identified three CS genes as potential prognostic predictors in prostate cancer and verified them by immunohistochemical assays in 72 patients. Our study provides a comprehensive framework for evaluating senescence levels and clinical relevance, gaining insights into CS roles in cancer- and senescence-related biomarker discovery.
Keyphrases
- single cell
- prostate cancer
- papillary thyroid
- dna damage
- endothelial cells
- stress induced
- squamous cell
- end stage renal disease
- ejection fraction
- newly diagnosed
- high throughput
- rna seq
- machine learning
- gene expression
- lymph node metastasis
- radical prostatectomy
- squamous cell carcinoma
- stem cells
- prognostic factors
- cell proliferation
- small molecule
- childhood cancer
- case report
- electronic health record
- copy number
- transcription factor
- oxidative stress