Construction of a Matrix Cancer-Associated Fibroblast Signature Gene-Based Risk Prognostic Signature for Directing Immunotherapy in Patients with Breast Cancer Using Single-Cell Analysis and Machine Learning.
Biaojie HuangQiurui ChenZhiyun YeLin ZengCuibing HuangYuting XieRongxin ZhangHan ShenPublished in: International journal of molecular sciences (2023)
Cancer-associated fibroblasts (CAFs) are heterogeneous constituents of the tumor microenvironment involved in the tumorigenesis, progression, and therapeutic responses of tumors. This study identified four distinct CAF subtypes of breast cancer (BRCA) using single-cell RNA sequencing (RNA-seq) data. Of these, matrix CAFs (mCAFs) were significantly associated with tumor matrix remodeling and strongly correlated with the transforming growth factor (TGF)-β signaling pathway. Consensus clustering of The Cancer Genome Atlas (TCGA) BRCA dataset using mCAF single-cell characteristic gene signatures segregated samples into high-fibrotic and low-fibrotic groups. Patients in the high-fibrotic group exhibited a significantly poor prognosis. A weighted gene co-expression network analysis and univariate Cox analysis of bulk RNA-seq data revealed 17 differential genes with prognostic values. The mCAF risk prognosis signature (mRPS) was developed using 10 machine learning algorithms. The clinical outcome predictive accuracy of the mRPS was higher than that of the conventional TNM staging system. mRPS was correlated with the infiltration level of anti-tumor effector immune cells. Based on consensus prognostic genes, BRCA samples were classified into the following two subtypes using six machine learning algorithms (accuracy > 90%): interferon (IFN)-γ-dominant (immune C2) and TGF-β-dominant (immune C6) subtypes. Patients with mRPS downregulation were associated with improved prognosis, suggesting that they can potentially benefit from immunotherapy. Thus, the mRPS model can stably predict BRCA prognosis, reflect the local immune status of the tumor, and aid clinical decisions on tumor immunotherapy.
Keyphrases
- single cell
- rna seq
- machine learning
- poor prognosis
- transforming growth factor
- genome wide
- genome wide identification
- network analysis
- big data
- epithelial mesenchymal transition
- breast cancer risk
- signaling pathway
- long non coding rna
- high throughput
- dna methylation
- artificial intelligence
- copy number
- systemic sclerosis
- idiopathic pulmonary fibrosis
- dendritic cells
- deep learning
- electronic health record
- newly diagnosed
- genome wide analysis
- ejection fraction
- transcription factor
- lymph node
- immune response
- oxidative stress
- papillary thyroid
- cell proliferation
- clinical practice
- young adults
- squamous cell carcinoma
- extracellular matrix
- pet ct
- data analysis
- lymph node metastasis
- type iii