diagFDR: MaxQuant diagnostics from msms.txt

This vignette demonstrates how to compute diagFDR diagnostics from a MaxQuant msms.txt file.

MaxQuant reports a PSM-level score (Andromeda Score) and a decoy indicator (Reverse). diagFDR can reconstruct target–decoy counting (TDC) q-values from the score and then compute stability and calibration diagnostics on the competed PSM universe.

The typical workflow is:

  1. Export msms.txt from MaxQuant.
  2. Read msms.txt into a dfdr_tbl (PSM-level) using read_dfdr_maxquant_msms().
  3. Run dfdr_run_all() and inspect headline/stability/calibration diagnostics.
  4. Optionally export a report folder (CSV+PNG+manifest+README+summary) and/or render an HTML report.

Runnable toy example (no external files required)

We start with a simulated dataset that is similar to the dfdr_tbl returned by read_dfdr_maxquant_msms(). Any software producing outputs that can be mapped to columns id, is_decoy, q, pep, run, and score can similarly be used.

library(diagFDR)

set.seed(10)

n <- 8000
toy <- data.frame(
  id = as.character(seq_len(n)),
  is_decoy = sample(c(FALSE, TRUE), n, replace = TRUE, prob = c(0.98, 0.02)),
  run = sample(paste0("run", 1:3), n, replace = TRUE),
  score = c(rnorm(n * 0.98, mean = 7, sd = 1), rnorm(n * 0.02, mean = 5, sd = 1))[seq_len(n)],
  pep = NA_real_
)

# Reconstruct q-values by simple TDC from score (for toy data only):
# Here we mimic a typical "higher score is better" setting.
toy <- toy[order(toy$score, decreasing = TRUE), ]
toy$D_cum <- cumsum(toy$is_decoy)
toy$T_cum <- cumsum(!toy$is_decoy)
toy$FDR_hat <- (toy$D_cum + 1) / pmax(toy$T_cum, 1)
toy$q <- rev(cummin(rev(toy$FDR_hat)))
toy <- toy[, c("id","is_decoy","q","pep","run","score")]

x_toy <- as_dfdr_tbl(
  toy,
  unit = "psm",
  scope = "global",
  q_source = "toy TDC from score",
  q_max_export = 1,
  provenance = list(tool = "toy")
)

diag <- dfdr_run_all(xs = list(MaxQuant_PSM = x_toy), alpha_main = 0.01)

Headline stability at 1%

diag$tables$headline
#> # A tibble: 1 × 24
#>   alpha T_alpha D_alpha FDR_hat CV_hat FDR_minus1 FDR_plus1 FDR_minusK FDR_plusK
#>   <dbl>   <int>   <int>   <dbl>  <dbl>      <dbl>     <dbl>      <dbl>     <dbl>
#> 1  0.01       0       0      NA    Inf         NA        NA         NA        NA
#> # ℹ 15 more variables: k2sqrtD <int>, FDR_minus2sqrtD <dbl>,
#> #   FDR_plus2sqrtD <dbl>, list <chr>, D_alpha_win <int>, effect_abs <dbl>,
#> #   IPE <dbl>, flag_Dalpha <chr>, flag_CV <chr>, flag_Dwin <chr>,
#> #   flag_IPE <chr>, flag_FDR <chr>, flag_equalchance <chr>, status <chr>,
#> #   interpretation <chr>

Decoy tail support and stability proxy

diag$plots$dalpha

diag$plots$cv

Local boundary support and elasticity

diag$plots$dwin

diag$plots$elasticity
#> Warning: Removed 6 rows containing missing values or values outside the scale range
#> (`geom_line()`).
#> Warning: Removed 6 rows containing missing values or values outside the scale range
#> (`geom_point()`).

Equal-chance plausibility by q-band

diag$tables$equal_chance_pooled
#> # A tibble: 1 × 12
#>   qmax_export low_lo low_hi N_test N_D_test pi_D_hat effect_abs ci95_lo ci95_hi
#>         <dbl>  <dbl>  <dbl>  <int>    <int>    <dbl>      <dbl>   <dbl>   <dbl>
#> 1           1    0.2    0.5      0        0       NA         NA      NA      NA
#> # ℹ 3 more variables: p_value_binom <dbl>, pass_minN <lgl>, list <chr>
diag$plots$equal_chance__MaxQuant_PSM

Real MaxQuant workflow (msms.txt)

The code below shows how to run diagFDR directly from a MaxQuant msms.txt file.

library(diagFDR)

mq_path <- "path/to/msms.txt"

# Read msms.txt and reconstruct TDC q-values using MaxQuant Score and Reverse indicator.
# - Reverse == "+" is treated as a decoy indicator.
# - Score is assumed "higher is better".
# - q-values are computed using FDR(i) = (D(i)+add_decoy)/T(i) and q(i)=min_{j>=i} FDR(j).
x_mq <- read_dfdr_maxquant_msms(
  path = mq_path,
  pep_mode = "sanitize",          # or "drop" if PEP contains values >1
  exclude_contaminants = TRUE,
  add_decoy = 1L,
  unit = "psm",
  scope = "global",
  provenance = list(tool = "MaxQuant", file = basename(mq_path))
)

# Run diagnostics
diag <- dfdr_run_all(
  xs = list(MaxQuant_PSM = x_mq),
  alpha_main = 0.01,
  alphas = c(1e-4, 5e-4, 1e-3, 2e-3, 5e-3, 1e-2, 2e-2, 5e-2, 1e-1, 2e-1),
  eps = 0.2,
  win_rel = 0.2,
  truncation = "warn_drop",
  low_conf = c(0.2, 0.5)
)

# Inspect headline diagnostics
diag$tables$headline

# Export tables/plots + human-readable summary
dfdr_write_report(
  diag,
  out_dir = "diagFDR_maxquant_out",
  formats = c("csv", "png", "manifest", "readme", "summary")
)

# Optional: render a single HTML report (requires rmarkdown in Suggests)
dfdr_render_report(diag, out_dir = "diagFDR_maxquant_out")


library(diagFDR)

mq_path <- "path/to/msms.txt"

# Read msms.txt and reconstruct TDC q-values
x_mq <- read_dfdr_maxquant_msms(
  path = mq_path,
  pep_mode = "sanitize",
  exclude_contaminants = TRUE,
  add_decoy = 1L,
  unit = "psm",
  scope = "global",
  provenance = list(tool = "MaxQuant", file = basename(mq_path))
)

# Run diagnostics with automatic pseudo p-value computation
# This will use score_to_pvalue(method="decoy_ecdf") internally
diag <- dfdr_run_all(
  xs = list(MaxQuant_PSM = x_mq),
  alpha_main = 0.01,
  compute_pseudo_pvalues = TRUE,   # generates pseudo p-values from scores
  pseudo_pvalue_method = "decoy_ecdf",  # Most defensible method for arbitrary scores
  p_stratify = "run"  # Optional: stratify p-value diagnostics by run
)

# diag will contain:
# - All standard target-decoy diagnostics
# - PLUS p-value calibration plots and tables
# - PLUS Storey pi0 diagnostics
# - PLUS BH comparison diagnostics

# Inspect headline + p-value calibration
diag$tables$headline
diag$tables$p_calibration_summary

# Export everything
dfdr_write_report(
  diag,
  out_dir = "diagFDR_maxquant_out",
  formats = c("csv", "png", "manifest", "readme", "summary")
)

# Render HTML report (will include p-value diagnostics section)
dfdr_render_report(diag, out_dir = "diagFDR_maxquant_out")

##Interpretation of pseudo p-value diagnostics

When compute_pseudo_pvalues = TRUE with method = “decoy_ecdf”:

Pseudo p-values are computed as right-tail probabilities under the decoy score distribution
π₀ estimate: Estimates the proportion of true nulls; should be stable across λ
BH comparison: Compares BH-FDR to TDA-FDR; agreement supports consistent FDR control

Important: These are diagnostic pseudo p-values, not guaranteed null p-values. They provide:

✓ Additional calibration perspectives
✓ Cross-validation between BH and TDA procedures
✓ Stratified stability checks (e.g., by run)

Caveat: Pseudo p-value calibration cannot detect scoring pathologies that affect both targets and decoys equally.

Optional: other way to get p-value / pseudo-p-value diagnostics from MaxQuant scores

MaxQuant Score is not a p-value. However, you can construct pseudo-p-values to run p-value-based calibration and BH-stability diagnostics. The most defensible option for arbitrary scores is to use the empirical decoy null tail (method = "decoy_ecdf"), which maps scores to right-tail probabilities under the decoy distribution.

# Create pseudo-p-values from the decoy score tail and rerun diagnostics with p-value checks.
x_mq$p <- score_to_pvalue(
  score = x_mq$score,
  method = "decoy_ecdf",
  is_decoy = x_mq$is_decoy
)
attr(x_mq, "meta")$p_source <- "score_to_pvalue(method='decoy_ecdf' on MaxQuant Score)"

diag_p <- dfdr_run_all(
  xs = list(MaxQuant_PSM = x_mq),
  alpha_main = 0.01,
  p_stratify = "run"   # optional stratification if run column is meaningful
)

dfdr_write_report(diag_p, out_dir = "diagFDR_maxquant_out_with_p", formats = c("csv","png","manifest","readme","summary"))
dfdr_render_report(diag_p, out_dir = "diagFDR_maxquant_out_with_p")

Interpretation notes