Agent skill
bio-tcr-bcr-analysis-immcantation-analysis
Analyze BCR repertoires for somatic hypermutation, clonal lineages, and B cell phylogenetics using the Immcantation framework. Use when studying B cell affinity maturation, germinal center dynamics, or antibody evolution.
Install this agent skill to your Project
npx add-skill https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills/tree/main/skills/bio-tcr-bcr-analysis-immcantation-analysis
SKILL.md
Version Compatibility
Reference examples tested with: MiXCR 4.6+, ggplot2 3.5+
Before using code patterns, verify installed versions match. If versions differ:
- R:
packageVersion('<pkg>')then?function_nameto verify parameters
If code throws ImportError, AttributeError, or TypeError, introspect the installed package and adapt the example to match the actual API rather than retrying.
Immcantation Analysis
"Analyze B cell repertoire evolution and clonal lineages" → Study somatic hypermutation, build B cell phylogenies, and track affinity maturation using the Immcantation framework for BCR repertoire analysis.
- R:
alakazam::plotMutability(),dowser::buildPhylipLineage(),scoper::spectralClones()
Requires Immcantation suite: alakazam 1.3+, shazam 1.2+, scoper 1.3+, dowser 2.0+, tigger 1.1+.
Load and Format Data
Goal: Import AIRR-formatted repertoire data into the Immcantation framework for downstream analysis.
Approach: Read Change-O/AIRR tab-delimited files into R data frames with required V(D)J annotation columns.
library(alakazam)
library(shazam)
library(dplyr)
# Load AIRR-formatted data (from MiXCR, IMGT/HighV-QUEST, etc.)
db <- readChangeoDb('clones_airr.tsv')
# Required columns:
# sequence_id, sequence, v_call, d_call, j_call, junction, junction_aa
Clonal Clustering
Goal: Group B cell sequences into clonal lineages based on junction sequence similarity.
Approach: Apply hierarchical clustering on nucleotide distance of junction regions with a threshold-based cutoff.
library(scoper)
# Assign clones based on junction similarity
# Threshold typically 0.15-0.2 (15-20% nucleotide distance)
db <- hierarchicalClones(
db,
threshold = 0.15,
method = 'nt',
linkage = 'single'
)
# Count clones
clone_sizes <- countClones(db, groups = 'sample_id')
Somatic Hypermutation Analysis
Goal: Quantify somatic hypermutation rates across replacement and silent categories for each clone.
Approach: Compare observed sequences to germline alignments using the S5F targeting model to count and classify mutations.
# Calculate mutation frequencies
db <- observedMutations(
db,
sequenceColumn = 'sequence_alignment',
germlineColumn = 'germline_alignment_d_mask',
regionDefinition = IMGT_V,
mutationDefinition = MUTATION_SCHEMES$S5F
)
# Mutation frequency columns added:
# mu_count_seq_r, mu_count_seq_s (replacement/silent mutations)
# mu_freq_seq_r, mu_freq_seq_s (frequencies)
# Summarize by clone
mutation_summary <- db %>%
group_by(clone_id) %>%
summarize(
mean_mu = mean(mu_freq_seq_r, na.rm = TRUE),
n_sequences = n()
)
Selection Analysis
Goal: Test whether observed replacement/silent mutation ratios deviate from neutral expectation, indicating positive or negative selection.
Approach: Estimate BASELINe selection strength (sigma) by comparing observed R/S ratios to a null model of somatic hypermutation targeting.
library(shazam)
# Test for selection pressure
# Compares observed R/S ratio to expected under neutrality
baseline <- estimateBaseline(
db,
sequenceColumn = 'sequence_alignment',
germlineColumn = 'germline_alignment_d_mask',
testStatistic = 'focused',
regionDefinition = IMGT_V,
nproc = 4
)
# Summarize selection
selection <- summarizeBaseline(baseline, returnType = 'df')
# Positive sigma = positive selection (beneficial mutations retained)
# Negative sigma = negative selection (deleterious mutations removed)
Build Clonal Lineage Trees
Goal: Reconstruct phylogenetic lineage trees for each B cell clone to visualize affinity maturation pathways.
Approach: Build maximum parsimony trees from clonal sequence alignments using PHYLIP's dnapars algorithm via dowser.
library(dowser)
# Build lineage trees for each clone
# Requires multiple sequences per clone
clones_multi <- db %>%
group_by(clone_id) %>%
filter(n() >= 3) %>%
ungroup()
# Build trees using maximum parsimony
trees <- buildPhylipLineage(
clones_multi,
phylip_exec = 'dnapars',
rm_temp = TRUE
)
# Plot a tree
plotTrees(trees[[1]])
Germline Inference
Goal: Discover novel V gene alleles and correct V gene assignments using individual-level genotyping.
Approach: Infer novel alleles from mutation patterns with TIgGER, build a personalized genotype, and reassign allele calls.
library(tigger)
# Infer novel V gene alleles
novel <- findNovelAlleles(
db,
germline_db = 'IMGT_Human_IGHV.fasta',
nproc = 4
)
# Genotype the individual
genotype <- inferGenotype(db, germline_db = 'IMGT_Human_IGHV.fasta')
# Correct V gene calls
db <- reassignAlleles(db, genotype)
Visualization
Goal: Generate summary plots of mutation frequencies and V gene usage across samples.
Approach: Plot mutation frequency distributions with ggplot2 histograms and V gene usage bar charts via alakazam helpers.
# Plot mutation frequency distribution
library(ggplot2)
ggplot(db, aes(x = mu_freq_seq_r)) +
geom_histogram(bins = 50) +
facet_wrap(~ sample_id) +
labs(x = 'Replacement Mutation Frequency', y = 'Count')
# Plot V gene usage
v_usage <- countGenes(db, gene = 'v_call', groups = 'sample_id')
plotGeneUsage(v_usage, gene = 'v_call')
Related Skills
- mixcr-analysis - Generate input clonotype data
- vdjtools-analysis - Diversity metrics (TCR-focused)
- phylogenetics/tree-io - General tree concepts
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