T/B cell receptor sequencing analysis notes
Please check awesome vdj too!
- review Adaptive immune receptor repertoire analysis
- Single-cell immune repertoire analysis | Nature Methods
- A clonotype nomenclature for T cell receptors
- T Cell Clonal Analysis Using Single-cell RNA Sequencing and Reference Maps
- biostar post on integration scTCR with Seurat
- https://repseq-tutorial.readthedocs.io/en/latest/prerequisites.html
- Welcome to the Immcantation Portal Use the docker version of Immcantation if you have installation problems. 10x scBCR tutorial using Immcantation https://immcantation.readthedocs.io/en/stable/tutorials/10x_tutorial.html
- scirpy "getting started" tutorial and case study reanalysing 140k T-cells from Wu et al. (2020).
- Tutorial: a statistical genetics guide to identifying HLA alleles driving complex disease
- Can we predict T cell specificity with digital biology and machine learning?
- review High-throughput and single-cell T cell receptor sequencing technologies
- Disease diagnostics using machine learning of immune receptors
- Rep-Seq: uncovering the immunological repertoire through next-generation sequencing
- Single Cell T Cell Receptor Sequencing: Techniques and Future Challenges
- T-cell repertoire analysis and metrics of diversity and clonality
- TCR-Vγδ usage distinguishes protumor from antitumor intestinal γδ T cell subsets
- De novo prediction of cancer-associated T cell receptors for noninvasive cancer detection
- TCR-engineered T cell therapy in solid tumors: State of the art and perspectives
Echidna: Integrated simulations of single-cell immune receptor repertoires and transcriptomes
"Cool! I would start with immunarch, VDJTools, and the new scRepertoire package" -- Wʏᴀᴛᴛ MᴄDᴏɴɴᴇʟʟ from 10x genomcis
-
dandelion python package for analyzing single cell BCR/TCR data from 10x Genomics 5’ solution!
-
TRUST4 developed in Shirley Liu's group. Use it to extract TCR/BCR information from bulk RNAseq or 5' scRNAseq data.
-
Benchmarking computational methods for B-cell receptor reconstruction from single-cell RNA-seq data
-
We are happy to report a dramatic speedup for one of the core computations for adaptive immune receptor repertoire (AIRR) analysis - the discovery and counting of receptors that overlap between repertoires! Check out our CompAIRR. With 10^4 repertoires of 10^5 sequences each, CompAIRR ran in 17 minutes while the fastest existing tool took 10 days, amounting to a ~1000x speedup
-
ClusTCR: a Python interface for rapid clustering of large sets of CDR3 sequences with unknown antigen specificity
-
Pyrepseq: the immune repertoire analysis toolkit has a function to cluster TCR superfast: Lightning-fast adaptive immune receptor similarity search by symmetric deletion lookup clustering 10^6 TCR sequences in one second? Or 10^7 TCRs in 10 seconds
-
tcrdist3 is a python API-enabled toolkit for analyzing T-cell receptor repertoires
-
TCRex: a web tool for the prediction of TCR–epitope recognition
-
ImRex TCR-epitope recognition prediction using combined sequence input represention for convolutional neural networks.
-
NetTCR - 2.0 Sequence-based prediction of peptide-TCR binding
-
GraphMHC: neoantigen prediction model applying the graph neural network to molecular structure" A hybrid graph attention network + CNN to predict peptides that bind MHC proteins
-
enclone from 10x. we should give this a try if we want to cluster TCR and BCR clonotypes.
-
migec:A RepSeq processing swiss-knife.
-
MiXCR is a universal software for fast and accurate analysis of T- and B- cell receptor repertoire sequencing data.
-
tcR: an R package for T cell receptor repertoire advanced data analysis
-
ImReP is a computational method for rapid and accurate profiling of the adaptive immune repertoire from regular RNA-Seq data.
-
Grouping of Lymphocyte Interactions by Paratope Hotspots paper: https://www.nature.com/nature/journal/v547/n7661/full/nature22976.html
-
TcellMatch: Predicting T-cell to epitope specificity. cellMatch is a collection of models to predict antigen specificity of single T cells based on CDR3 sequences and other single cell modalities, such as RNA counts and surface protein counts
-
scirpy: A scanpy extension for single-cell TCR analysis.
-
Tessa is a Bayesian model to integrate T cell receptor (TCR) sequence profiling with transcriptomes of T cells. Enabled by the recently developed single cell sequencing techniques, which provide both TCR sequences and RNA sequences of each T cell concurrently, Tessa maps the functional landscape of the TCR repertoire, and generates insights into understanding human immune response to diseases.
-
DeepTCR Deep Learning Methods for Parsing T-Cell Receptor Sequencing (TCRSeq) Data https://twitter.com/John_Will_I_Am/status/1570837756787691527 https://www.science.org/doi/10.1126/sciadv.abq5089
-
T1K Efficient and accurate KIR and HLA genotyping with massively parallel sequencing data
-
Full resolution HLA and KIR genes annotation for human genome assemblies
-
Design of high specificity binders for peptide-MHC-I complexes https://www.biorxiv.org/content/10.1101/2024.11.28.625793v1
-
Why do TCR analysis tools (tcrdist, nettcr, etc) rely on substitution matrices made for evolution, like blosum? And could we improve them with a dedicated substitution matrix tcrBLOSUM: an amino acid substitution matrix for sensitive alignment of distant epitope-specific TCRs https://academic.oup.com/bib/article/26/1/bbae602/7906917?login=false
-
Structure-based prediction of T cell receptor recognition of unseen epitopes using TCRen https://www.nature.com/articles/s43588-024-00653-0
-
TAPIR: a T-cell receptor language model for predicting rare and novel targets
-
STAPLER: Efficient learning of TCR-peptide specificity prediction from full-length TCR-peptide data
-
Structure-based prediction of T cell receptor:peptide-MHC interactions Preprint from Philip Bradley where he creates a version of AlphaFold to model TCR:peptide-MHC interactions. Benchmark is far from perfect, but the paper shows that deep learning-based structural modelling is a possible strategy to predict TCR specificity.
-
Uni-Fold: an open-source platform for developing protein models beyond AlphaFold. https://github.com/dptech-corp/Uni-Fold
-
Equidock: docking protein receptor and ligand https://github.com/octavian-ganea/equidock_public news https://news.mit.edu/2022/ai-predicts-protein-docking-0201
-
AlphaFill: enriching AlphaFold models with ligands and cofactors
-
DeepMind AlphaFold for antibody discovery: What's the status?
-
Why AlphaFold won’t revolutionise drug discovery We made AlphaFold dream of new protein assemblies, used #ProteinMPNN to bring it back to reality. https://twitter.com/BasileWicky/status/1570564831522213888
-
Here, we introduce OmegaFold, the first computational method to successfully predict high-resolution protein structure from a single primary sequence alone. Using a new combination of a protein language model that allows us to make predictions from single sequences and a geometry-inspired transformer model trained on protein structures, OmegaFold outperforms RoseTTAFold and achieves similar prediction accuracy to AlphaFold2 on recently released structures.
-
Learning inverse folding from millions of predicted structures https://twitter.com/alexrives/status/1513603415959556096
-
[PSP: Million-level Protein Sequence Dataset for Protein Structure Prediction}(https://arxiv.org/abs/2206.12240)
-
Fast, accurate ranking of engineered proteins by receptor binding propensity using structural modeling https://twitter.com/DingXiaozhe/status/1618257727515676672
- Stitchr: stitching coding TCR nucleotide sequences from V/J/CDR3 information
- The IPD-IMGT/HLA Database provides a specialist database for sequences of the human major histocompatibility complex (MHC) and includes the official sequences named by the WHO Nomenclature Committee For Factors of the HLA System. The IPD-IMGT/HLA Database is part of the international ImMunoGeneTics project (IMGT).
- hlabud provides methods to retrieve sequence alignment data from IMGTHLA and convert the data into convenient R matrices ready for downstream analysis.
- 7 million pairs! A great resource for TCR-antigen interaction.TRAIT: A Comprehensive Database for T-cell Receptor-Antigen Interactions https://www.biorxiv.org/content/10.1101/2024.11.20.624436v1
- TCRdb A comprehensive database of human T-cell receptor (TCR) sequences
- Immuno-Navigator A database for gene coexpression in the immune system
- McPAS-TCR A manually curated catalogue of pathology associated T-cell receptor sequences
- Vdjdb
- @OPIGlets has built lots of lovely stuff including SAbPred, OAS, TAP http://opig.stats.ox.ac.uk/resources
- Observed TCR space. 5.33M redundant/1.63M non-redundant alpha/beta TCR sequences deriving from 50 separate studies. https://opig.stats.ox.ac.uk/webapps/ots/
- The Observed Antibody Space database (OAS) https://opig.stats.ox.ac.uk/webapps/oas/documentation/
- SAbDab is a database containing all the antibody structures available in the PDB, annotated and presented in a consistent fashion. https://opig.stats.ox.ac.uk/webapps/sabdab-sabpred/sabdab
- A science gateway that enables the discovery, analysis, and download of AIRR-seq data (antibody/B-cell and T-cell receptor repertoires) from the 10 remote repositories in the AIRR Data Commons (ADC) https://gateway.ireceptor.org/login