--- name: bio-experimental-design-batch-design description: Designs experiments to minimize and account for batch effects using balanced layouts and blocking strategies. Use when planning multi-batch experiments, assigning samples to sequencing lanes, or designing studies where technical variation could confound biological signals. tool_type: r primary_tool: sva --- # Batch Design and Mitigation ## Core Principle Batch effects are unavoidable. Good design makes them correctable. ## Design Rules 1. **Never confound batch with condition** - Each batch must contain all conditions 2. **Balance samples across batches** - Equal numbers per condition per batch 3. **Randomize within constraints** - Avoid systematic patterns 4. **Include controls** - Same samples across batches if possible ## Balanced Design Example ```r # BAD: Confounded design # Batch 1: All treated samples # Batch 2: All control samples # -> Cannot separate batch from treatment # GOOD: Balanced design # Batch 1: 3 treated, 3 control # Batch 2: 3 treated, 3 control # -> Batch effect can be estimated and removed ``` ## Sample Assignment ```r library(designit) # Create balanced assignment samples <- data.frame( sample_id = paste0('S', 1:24), condition = rep(c('ctrl', 'treat'), each = 12), sex = rep(c('M', 'F'), 12) ) # Optimize batch assignment batch_design <- osat(samples, batch_size = 8, balance_cols = c('condition', 'sex')) ``` ## Detecting Batch Effects ```r library(sva) # From count matrix mod <- model.matrix(~condition, colData) mod0 <- model.matrix(~1, colData) # Estimate number of surrogate variables (hidden batches) n_sv <- num.sv(counts_normalized, mod) # Estimate surrogate variables svobj <- sva(counts_normalized, mod, mod0, n.sv = n_sv) ``` ## Correction Methods | Method | When to Use | |--------|-------------| | ComBat | Known batches, moderate effects | | SVA | Unknown batches, exploratory | | RUVseq | Using control genes | | limma::removeBatchEffect | Visualization only | ## Documenting Design Always record: - Date of sample processing - Reagent lot numbers - Operator - Equipment/lane assignments - Any deviations from protocol ## Related Skills - experimental-design/power-analysis - Account for batch in power calculations - differential-expression/batch-correction - Correcting batch effects in analysis - single-cell/batch-integration - scRNA-seq batch correction