Cell-cell communication network-based interpretable machine learning predicts cancer patient response to immune checkpoint inhibitors.
Juhun LeeDonghyo KimJungHo KongDoyeon HaInhae KimMinhyuk ParkKwanghwan LeeSin-Hyeog ImSanguk KimPublished in: Science advances (2024)
Immune checkpoint inhibitors (ICIs) have revolutionized cancer treatment. However, only some patients respond to ICIs, and current biomarkers for ICI efficacy have limited performance. Here, we devised an interpretable machine learning (ML) model trained using patient-specific cell-cell communication networks (CCNs) decoded from the patient's bulk tumor transcriptome. The model could (i) predict ICI efficacy for patients across four cancer types (median AUROC: 0.79) and (ii) identify key communication pathways with crucial players responsible for patient response or resistance to ICIs by analyzing more than 700 ICI-treated patient samples from 11 cohorts. The model prioritized chemotaxis communication of immune-related cells and growth factor communication of structural cells as the key biological processes underlying response and resistance to ICIs, respectively. We confirmed the key communication pathways and players at the single-cell level in patients with melanoma. Our network-based ML approach can be used to expand ICIs' clinical benefits in cancer patients.
Keyphrases
- single cell
- machine learning
- rna seq
- end stage renal disease
- growth factor
- case report
- cell therapy
- newly diagnosed
- chronic kidney disease
- induced apoptosis
- high throughput
- prognostic factors
- cell cycle arrest
- squamous cell carcinoma
- bone marrow
- cell death
- dna methylation
- genome wide
- patient reported outcomes
- high intensity
- drug induced
- childhood cancer