Post-hoc improvement after the pre-registered v1 recovery test failed. Two changes, diagnosing v1's failure: - score on the full 12,328-gene LINCS space (week2_lincs_extract.py), lifting signature overlap from 12% to 85% (brings erythroid markers in) - src/scoring.py: KS connectivity + per-drug specificity z-score (spec_z = SDs below a 1,000 random-query null). Primary ranking is now spec_z. (Textbook tau saturated at +/-100 for a coherent query — documented; needs a reference-signature library, a v2 item.) - week3_scoring.py: spec_z primary + WTCS reference + prior-blended - tests: tau/spec_z calibration test; 19 passing - scripts/exp_genespace.py: the BING vs all-12,328 comparison Result: hydroxyurea recovers (rank 40 -> 18, top 6%, passes top-10%), confirming the v1 failure was the landmark bottleneck not the algorithm. Overall STILL FAILS: L-glutamine does not reverse (rank 213, metabolite), and negative controls (norethindrone, ciprofloxacin) rank top-3 — connectivity != therapeutic relatedness. v1.1 is post-hoc/exploratory, not a confirmatory test; reported as such in recovery_test_report.md. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
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Sickle Cell Repurposing — Recovery Test Report
Status: COMPLETE (v1 confirmatory + v1.1 exploratory). Reproduce with
scripts/week1_*→week2_*→week3_scoring.py→week4_recovery_test.py. ~2 pages, for a sceptical pharma scientist.
Pre-registered success criteria
The MVP passes if:
- Hydroxyurea ranks in the top 10% (top 30 of 300), AND
- L-glutamine ranks in the top 25% (top 75) OR is documented as unscorable due to a missing LINCS signature, AND
- At least 4 of 5 negative-control drugs rank in the bottom half.
Pre-registered in the scaffold commit (b731478) before any scoring. Primary (confirmatory)
analysis = v1: 978 landmark genes, weighted connectivity score (WTCS). The 5 negative controls
were pre-specified by category rule without inspecting ranks.
Section 1 — Methodology
A sickle cell disease signature was built from two whole-blood microarray studies (GSE35007 Illumina SS-vs-AA; GSE16728 Affymetrix patient-vs-control), keeping the 671 genes concordant across both (q<0.05, same direction) → a cross-platform Tier-A signature (250 up / 227 down). Profiles were built for 300 small molecules (2 ground-truth; 32 related-mechanism; 26 negative controls; 240 random), each with a LINCS L1000 consensus signature (mean Level-5 MODZ across cell lines, both CMap phases). Drugs were ranked by CMap connectivity scoring (Kolmogorov-Smirnov, Lamb 2006 / Subramanian 2017): negative = reversal = candidate.
v1 (pre-registered/confirmatory): scored on the 978 landmark genes with WTCS.
v1.1 (post-hoc/exploratory): after v1 failed, two changes were made to diagnose why — (a)
score on the full 12,328-gene space (landmark overlap 12% → 85%, bringing the erythroid
markers in); (b) add a per-drug specificity z-score (spec_z): how many SDs the real
connectivity is below a null of 1,000 random queries of the same size against that drug. Because
these changes followed inspection of the v1 result, v1.1 is exploratory, not a confirmatory
test of the pre-registered hypothesis.
Section 2 — Recovery test result
| Criterion | v1 (confirmatory) | v1.1 (exploratory) |
|---|---|---|
| Hydroxyurea top-10% (≤30) | rank 40 (13.3%) ❌ | rank 18 (6.0%) ✅ |
| L-glutamine top-25% (≤75) | rank 100, WTCS=0 ❌ | rank 213, spec_z=+0.98 ❌ |
| ≥4/5 neg controls bottom-half | 1/5 ❌ | 2/5 ❌ |
| Overall | FAIL | FAIL (but hydroxyurea recovered) |
v1.1 negative controls: clotrimazole 258 ✅, astemizole 211 ✅, azithromycin 142 ❌, ethinyl-estradiol 114 ❌, caffeine 77 ❌.
Honest reading. The pre-registered test FAILED (v1). The post-hoc v1.1 changes recover hydroxyurea (rank 40 → 18, passing top-10%) — strong evidence that the v1 failure was driven by the 978-landmark bottleneck, not the algorithm. But two failures survive into v1.1, and both are now precisely diagnosed:
- L-glutamine does not reverse the signature (positive connectivity, spec_z=+0.98). This is intrinsic to its LINCS data — a metabolite with no reversal signal — not a coverage gap. More genes cannot fix it.
- The negative-control criterion is arguably invalid for connectivity scoring. Two "negative controls" (norethindrone, ciprofloxacin) rank in the top 3 by spec_z. Connectivity measures expression reversal, not therapeutic relatedness — an antibiotic or contraceptive can still down-regulate the inflammation genes that dominate the scorable signature. The test design conflates the two.
A note on the calibration: textbook CMap tau (percentile vs a reference population) was
implemented but saturated at ±100 here, because a coherent real query always out-connects
random gene sets — proper tau needs a library of real reference signatures, which this MVP
lacks. The continuous spec_z is the workable substitute.
Section 3 — Top 10 candidates (v1.1 spec_z)
| Rank | Drug | spec_z | Inclusion | Read |
|---|---|---|---|---|
| 1 | reserpic-acid | −3.80 | random | reserpine metabolite; non-obvious |
| 2 | norethindrone | −3.78 | negative control | false positive (see §2) |
| 3 | ciprofloxacin | −3.61 | negative control | false positive |
| 4 | resveratrol | −3.46 | related-mechanism | antioxidant studied in SCD — coherent |
| 5 | BRD-K57490754 | −3.37 | random | tool compound |
| 6 | anastrozole | −3.27 | random | aromatase inhibitor |
| 7–10 | BRD-* / palmitoylethanolamide | ~−3.1 | random | mostly tool compounds |
That two negative controls outrank hydroxyurea is the single most informative result here — see §4.
Section 4 — One non-obvious result worth investigating
The most useful finding is not a candidate drug but the negative-control failure: unrelated drugs (norethindrone, ciprofloxacin) score as strong specific reversers. This is a real, generalizable lesson — for a signature whose scorable portion is generic inflammation/metabolic genes, connectivity rewards any broad transcriptional perturbation that touches those genes. The honest implication: this signature is not specific enough to discriminate true repurposing candidates from incidental expression reversers. Of the plausibly-real hits, resveratrol (rank 4) — an antioxidant with prior sickle cell literature — is the most defensible, but it is a hypothesis, not a discovery.
Section 5 — Honest limitations
- Pre-registered test failed; the pass is post-hoc. v1.1's hydroxyurea recovery is exploratory and must be re-validated on a held-out disease before any claim is made.
- Missing HbF axis — HBG1/HBG2 are absent from LINCS entirely (not just landmarks), so the pathway hydroxyurea acts on can never be scored by this method.
- Signature specificity — scorable genes are inflammation/metabolic; negative controls reverse them too. Connectivity ≠ therapeutic relatedness.
- Cell-composition confound — the whole-blood signature is reticulocyte-dominated.
- LINCS cancer-cell-line bias, and no reference-signature library for proper tau.
- No mechanistic validation — all hits are computational hypotheses.
Section 6 — What v2 would fix
- A reference-signature library to make tau (proper specificity calibration) work — the single biggest fix to the negative-control problem, and a direct use of the curated-data moat.
- Cell-type deconvolution + a non-globin-depleted RNA-seq study to recover a more specific, HbF-containing signature.
- Signature prediction / mechanism graph to score genes with no LINCS measurement.
- A second disease to test generalization and to honestly re-validate the v1.1 method (PLAN §9.5).
Bottom line
The pre-registered recovery test failed. Post-hoc diagnosis shows the dominant cause was a fixable gene-space bottleneck — correcting it recovers hydroxyurea — but also surfaces a deeper, genuine limitation: this whole-blood signature is not specific enough for connectivity scoring to separate real candidates from incidental reversers (negative controls rank at the top). The MVP's real deliverable is a precise, honest map of what it takes to make this method work: a more specific (deconvolved, HbF-containing) signature and a reference library for calibration — exactly the curated-data investments the platform thesis is built on.