iBRIDGE: A Data Integration Method to Identify Inflamed Tumors from Single-Cell RNAseq Data and Differentiate Cell Type-Specific Markers of Immune-Cell Infiltration.
Tolga TuranSarah KongpachithKyle HalliwillRobert T McLaughlinMikhail BinnewiesDhemath ReddyXi ZhaoRebecca MathewShiming YeHoward J JacobJosue SamayoaPublished in: Cancer immunology research (2023)
The development of immune checkpoint-based immunotherapies has been a major advancement in the treatment of cancer, with a subset of patients exhibiting durable clinical responses. A predictive biomarker for immunotherapy response is the pre-existing T-cell infiltration in the tumor immune microenvironment (TIME). Bulk transcriptomics-based approaches can quantify the degree of T-cell infiltration using deconvolution methods and identify additional markers of inflamed/cold cancers at the bulk level. However, bulk techniques are unable to identify biomarkers of individual cell types. Although single-cell RNA sequencing (scRNAseq) assays are now being used to profile the TIME, to our knowledge there is no method of identifying patients with a T-cell inflamed TIME from scRNAseq data. Here, we describe a method, iBRIDGE, which integrates reference bulk RNAseq data with the malignant subset of scRNAseq datasets to identify patients with a T-cell inflamed TIME. Utilizing two datasets with matched bulk data, we show iBRIDGE results correlated highly with bulk assessments (0.85 and 0.9 correlation coefficients). Using iBRIDGE, we identified markers of inflamed phenotypes in malignant cells, myeloid cells, and fibroblasts, establishing type I and type II interferon pathways as dominant signals, especially in malignant and myeloid cells, and finding the TGFβ-driven mesenchymal phenotype not only in fibroblasts but also in malignant cells. Besides relative classification, per-patient average iBRIDGE scores and independent RNAScope quantifications were utilized for threshold-based absolute classification. Moreover, iBRIDGE can be applied to in vitro grown cancer cell lines and can identify the cell lines that are adapted from inflamed/cold patient tumors.
Keyphrases
- single cell
- induced apoptosis
- rna seq
- cell cycle arrest
- electronic health record
- stem cells
- dendritic cells
- healthcare
- big data
- bone marrow
- deep learning
- end stage renal disease
- signaling pathway
- papillary thyroid
- high throughput
- epithelial mesenchymal transition
- acute myeloid leukemia
- chronic kidney disease
- squamous cell carcinoma
- ejection fraction
- immune response
- endoplasmic reticulum stress
- case report
- data analysis
- transforming growth factor
- extracellular matrix
- combination therapy
- young adults
- patient reported