validate-statistical-output
About
This skill validates statistical analysis outputs through double programming and independent verification for regulated environments like pharmaceutical submissions. It provides methodologies for comparing results across implementations (e.g., R vs. SAS), defining tolerances, and handling deviations. Use it to verify primary endpoint analyses, check code correctness, or re-validate after changes.
Quick Install
Claude Code
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Documentation
Validate Statistical Output
Verify stat analysis results via independent calc + systematic comparison.
Use When
- Validate primary|secondary endpoint analyses → regulatory submissions
- Double programming (R vs SAS, or independent R impls)
- Verify analysis code produces correct results
- Re-validate after code|env changes
In
- Required: Primary analysis code + results
- Required: Reference results (independent calc, published vals, known test data)
- Required: Tolerance criteria for numeric comparisons
- Optional: Regulatory submission ctx
Do
Step 1: Define Comparison Framework
# Define tolerance levels for different statistics
tolerances <- list(
counts = 0, # Exact match for integers
proportions = 1e-4, # 0.01% for proportions
means = 1e-6, # Numeric precision for means
p_values = 1e-4, # 4 decimal places for p-values
confidence_limits = 1e-3 # 3 decimal places for CIs
)
Got: Tolerance levels per stat category, stricter for int counts (exact), looser for floating-pt (p-vals, CIs).
If err: Tolerances disputed → doc rationale per threshold + sign-off from stat lead before proceed. Refer ICH E9 for regulatory.
Step 2: Comparison Fn
#' Compare two result sets with tolerance-based matching
#'
#' @param primary Results from the primary analysis
#' @param reference Results from the independent calculation
#' @param tolerances Named list of tolerance values
#' @return Data frame with comparison results
compare_results <- function(primary, reference, tolerances) {
stopifnot(names(primary) == names(reference))
comparison <- data.frame(
statistic = names(primary),
primary_value = unlist(primary),
reference_value = unlist(reference),
stringsAsFactors = FALSE
)
comparison$absolute_diff <- abs(comparison$primary_value - comparison$reference_value)
comparison$tolerance <- sapply(comparison$statistic, function(s) {
# Match to tolerance category or use default
tol <- tolerances[[s]]
if (is.null(tol)) tolerances$means # default tolerance
else tol
})
comparison$pass <- comparison$absolute_diff <= comparison$tolerance
comparison
}
Got: compare_results() returns df w/ stat name, primary, reference, abs diff, tolerance, pass/fail.
If err: Errors on mismatched names → verify both lists use identical names. Tolerance map fails → add default for unrecognized.
Step 3: Double Programming
Independent impl reaches same results via different code:
# PRIMARY ANALYSIS (in R/primary_analysis.R)
primary_analysis <- function(data) {
model <- lm(endpoint ~ treatment + baseline + sex, data = data)
coefs <- summary(model)$coefficients
list(
treatment_estimate = coefs["treatmentActive", "Estimate"],
treatment_se = coefs["treatmentActive", "Std. Error"],
treatment_p = coefs["treatmentActive", "Pr(>|t|)"],
n_subjects = nobs(model),
r_squared = summary(model)$r.squared
)
}
# INDEPENDENT VERIFICATION (in validation/independent_analysis.R)
# Written by a different analyst or using different methodology
independent_analysis <- function(data) {
# Using matrix algebra instead of lm()
X <- model.matrix(~ treatment + baseline + sex, data = data)
y <- data$endpoint
beta <- solve(t(X) %*% X) %*% t(X) %*% y
residuals <- y - X %*% beta
sigma2 <- sum(residuals^2) / (nrow(X) - ncol(X))
var_beta <- sigma2 * solve(t(X) %*% X)
se <- sqrt(diag(var_beta))
t_stat <- beta["treatmentActive"] / se["treatmentActive"]
p_value <- 2 * pt(-abs(t_stat), df = nrow(X) - ncol(X))
list(
treatment_estimate = as.numeric(beta["treatmentActive"]),
treatment_se = se["treatmentActive"],
treatment_p = as.numeric(p_value),
n_subjects = nrow(data),
r_squared = 1 - sum(residuals^2) / sum((y - mean(y))^2)
)
}
Got: 2 independent impls via different code paths (lm() vs matrix algebra) reach same stat results. Different analysts or fundamentally different methods.
If err: Independent impl produces different results → verify both use same input (digest::digest(data)). Check NA handling, contrast coding, df calc.
Step 4: Run Comparison
# Execute both analyses
primary_results <- primary_analysis(study_data)
independent_results <- independent_analysis(study_data)
# Compare
comparison <- compare_results(primary_results, independent_results, tolerances)
# Report
cat("Validation Comparison Report\n")
cat("============================\n")
cat(sprintf("Date: %s\n", Sys.time()))
cat(sprintf("Overall: %s\n\n",
ifelse(all(comparison$pass), "ALL PASS", "DISCREPANCIES FOUND")))
print(comparison)
Got: Comparison report → all stats within tolerance. Overall reads "ALL PASS."
If err: Discrepancies → don't immediately assume primary wrong. Investigate both: intermediate calcs, identical input data, missing val handling, edge cases.
Step 5: External Reference (SAS)
R vs SAS:
# Load SAS results (exported as CSV or from .sas7bdat)
sas_results <- list(
treatment_estimate = 1.2345, # From SAS PROC GLM output
treatment_se = 0.3456,
treatment_p = 0.0004,
n_subjects = 200,
r_squared = 0.4567
)
comparison <- compare_results(primary_results, sas_results, tolerances)
# Known sources of difference between R and SAS:
# - Default contrasts (R: treatment, SAS: GLM parameterization)
# - Rounding of intermediate calculations
# - Handling of missing values (na.rm vs listwise deletion)
Got: R vs SAS within tolerance, known systematic diffs (contrast coding, rounding) documented + explained.
If err: R + SAS differ beyond tolerance → check 3 most common sources of divergence: default contrast coding (R: treatment, SAS: GLM param), missing val handling, rounding of intermediates. Doc each w/ root cause.
Step 6: Doc Results
Validation report:
# validation/output_comparison_report.R
sink("validation/output_comparison_report.txt")
cat("OUTPUT VALIDATION REPORT\n")
cat("========================\n")
cat(sprintf("Project: %s\n", project_name))
cat(sprintf("Date: %s\n", format(Sys.time())))
cat(sprintf("Primary Analyst: %s\n", primary_analyst))
cat(sprintf("Independent Analyst: %s\n", independent_analyst))
cat(sprintf("R Version: %s\n\n", R.version.string))
cat("COMPARISON RESULTS\n")
cat("------------------\n")
print(comparison, row.names = FALSE)
cat(sprintf("\nOVERALL VERDICT: %s\n",
ifelse(all(comparison$pass), "VALIDATED", "DISCREPANCIES - INVESTIGATION REQUIRED")))
cat("\nSESSION INFO\n")
print(sessionInfo())
sink()
Got: Complete validation report at validation/output_comparison_report.txt w/ project meta, comparison, verdict, session info.
If err: sink() fails or empty file → check out dir exists (dir.create("validation", showWarnings = FALSE)) + no prior sink() still active (sink.number()).
Step 7: Handle Discrepancies
When results don't match:
- Verify both impls use same input (hash compare)
- Check NA handling diffs
- Compare intermediate calcs step by step
- Doc root cause
- Determine: acceptable (within tolerance) or requires correction
Got: All discrepancies investigated, root causes ID'd, classified as acceptable (documented) or requiring correction.
If err: Discrepancy can't be explained → escalate to stat lead. Don't dismiss unexplained → may indicate genuine err in one impl.
Check
- Independent analysis produces results within tolerance
- All comparison stats documented
- Discrepancies (if any) investigated + resolved
- Input data integrity verified (hash match)
- Tolerance criteria pre-specified + justified
- Validation report complete + signed
Traps
- Same analyst writing both impls: Double programming requires independent analysts for true validation
- Sharing code between impls: Independent ver must not copy from primary
- Inappropriate tolerance: Too loose hides real errs; too strict flags floating-pt noise
- Ignore systematic diffs: Small consistent biases may indicate real err even within tolerance
- No validate validation: Verify comparison code itself works correctly w/ known inputs
→
setup-gxp-r-project— project structure for validated workwrite-validation-documentation— protocol + report templatesimplement-audit-trail— track validation process itselfwrite-testthat-tests— automated test suites for ongoing validation
GitHub Repository
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