IOBR is an R package to perform comprehensive analysis of tumor microenvironment and signatures for immuno-oncology. https://iobr.github.io/IOBR/
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Updated
Jun 17, 2026 - R
IOBR is an R package to perform comprehensive analysis of tumor microenvironment and signatures for immuno-oncology. https://iobr.github.io/IOBR/
Deciphering tumor ecosystems at super-resolution from spatial transcriptomics with TESLA
Spatial Multiomics Profiler for Spatial Characterization of Tissue Microenvironment (https://smprofiler.io)
A collection of tumour microenvironment single-cell RNA sequencing datasets for use in R and other pipelines.
Predictive models and analysis of cancer prognosis and drug response using primary tumor microbial abundances derived from WGS and RNA-seq sequencing data for 32 TCGA cancers (Poore et al. Nature 2020), including equivalent models using TCGA RNA-seq gene expression and combined microbial abundance and gene expression for comparison.
PhysiGym is a tool for applying reinforcement learning to PhysiCell
A classifier for tumor microenvironment subtype based on ensemble machine learning models
Optimized pipelines for Spatial Transcriptomics (ST) data analysis using Seurat & Giotto, designed for reproducible benchmarking and biological insight.
Analysis of treatment naive and neo-adjuvant chemotherapy treated high-grade serous ovarian cancer samples
A pan-cancer morphology atlas linking histological features to molecular and clinical outcomes
End-to-end scRNA-seq + AI pipeline for melanoma TME biomarker discovery. CD79A validated in TCGA-SKCM (n=314, Log-Rank p=0.0044, +18.1 months OS).
Distinct mesenchymal cell states mediate prostate cancer progression
End-to-end CODEX multiplex IF analysis pipeline that includes cell segmentation, phenotyping, and spatial neighborhood analysis on the Schürch/Nolan CRC dataset
When can a clinician trust a spatial immune score? A rigorous reproducibility + trust study on a real MIBI-TOF TNBC cohort: reproduce the classic mixing score, show where it breaks, and abstain on out-of-distribution patients.
Code for IN-DEPTH
An R package for modeling asymmetric spatial associations between cell types in tissue images using a multilevel Bayesian framework.
xCell framework, enabling expert-level tumor microenvironment cell-type enrichment and TME index profiling from bulk transcriptomic data.
A comprehensive multidisciplinary review by Samuelson G. exploring Glioblastoma (GBM) pathobiology, metabolic starvation strategies, novel immuno-oncology therapeutics, adaptive clinical trials, and medical ethics.
End-to-end spatial transcriptomics pipeline for 10x Genomics Visium human brain glioblastoma — cell type annotation, GBM subtype characterization, and spatial neighborhood analysis
Computational dissection of F. nucleatum-driven Wnt/Hedgehog hyperactivation in Colorectal Cancer, mapping the downstream HBEGF autocrine and GDF15 immune-tolerance networks.
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