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From research-ops-skills
Use when designing a prospective clinical study before submission — selecting and classifying endpoints (primary / key-secondary / exploratory, with surrogate-endpoint flagging), estimating sample size and power for two-arm designs (means / proportions / survival), or scoring a study plan for feasibility and a GO / GO-WITH-CONDITIONS / REDESIGN / NO-GO phase-gate decision. Every output is an ESTIMATE plus a named human owner (clinician / biostatistician / regulatory owner) — never clinical fact, never a finished protocol. Distinct from ra-qm-team, which handles the regulatory/QM submission (ISO 13485, EU MDR, FDA 510(k)/PMA/QSR), not the study design.
npx claudepluginhub kruxshnx/claude-skills-devin --plugin research-ops-skillsHow this skill is triggered — by the user, by Claude, or both
Slash command
/research-ops-skills:clinical-researchThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Prospective clinical study DESIGN: endpoints, sample size / power, and phase-gate feasibility. Every output is an **estimate with stated assumptions** routed to a **named human owner**. This skill never gives clinical advice as fact and never substitutes for a biostatistician or regulatory affairs.
Guides technical evaluation of code review feedback: read fully, restate for understanding, verify against codebase, respond with reasoning or pushback before implementing.
Share bugs, ideas, or general feedback.
Prospective clinical study DESIGN: endpoints, sample size / power, and phase-gate feasibility. Every output is an estimate with stated assumptions routed to a named human owner. This skill never gives clinical advice as fact and never substitutes for a biostatistician or regulatory affairs.
R&D clinical teams, medical monitors, and biostatistics functions live at the moment between we-have-a-hypothesis and we-have-a-protocol-ready-for-submission. This skill structures three of the hardest design decisions:
Three deterministic tools:
sample_size_estimator.py — Closed-form power / sample-size for two-arm means (Cohen's d), proportions (normal approximation), and survival (Schoenfeld events). Inflates for dropout. Prints an "ESTIMATE — confirm with a biostatistician" banner.endpoint_selector.py — Scores candidate endpoints across 5 weighted dimensions (clinical relevance, measurability, regulatory acceptance, sensitivity-to-change, burden) and classifies each as PRIMARY / KEY-SECONDARY / EXPLORATORY. Penalizes unvalidated surrogate endpoints.phase_gate_scorer.py — Scores a study plan 0-100 across recruitment feasibility, endpoint readiness, statistical power, operational complexity, and budget fit; returns GO / GO-WITH-CONDITIONS / REDESIGN / NO-GO plus the named owners who must sign.Invoke this skill when:
Do NOT use this skill to: prepare a regulatory submission or clinical evaluation report (use ra-qm-team), find or position a grant (use research/grants), design a live product A/B experiment (use product-team/experiment-designer), or replace a biostatistician's final sample-size justification.
assets/protocol_synopsis_template.md (objectives, design, population, endpoints, statistical plan placeholder, owners-to-sign).endpoint_selector.py --input endpoints.json --profile {drug|device|biologic|diagnostic|digital-therapeutic}. Read the classification + surrogate flags. If >1 primary, plan multiplicity control.sample_size_estimator.py --design {means|proportions|survival} .... Trace the effect/difference/HR to a published or anchor-based source; inflate for dropout.phase_gate_scorer.py --input study.json --profile <same> --phase {1|2|3|4}. Read the verdict + blockers + named owners.| Script | Purpose | Profiles |
|---|---|---|
scripts/sample_size_estimator.py | Power / sample-size for means, proportions, survival | n/a (design-driven) |
scripts/endpoint_selector.py | 5-dimension endpoint scoring + classification + surrogate flag | drug, device, biologic, diagnostic, digital-therapeutic |
scripts/phase_gate_scorer.py | Feasibility 0-100 + GO/GO-WITH-CONDITIONS/REDESIGN/NO-GO + owners | drug, device, biologic, diagnostic, digital-therapeutic |
All three: stdlib-only, --help, --sample, --output {human,json}.
Run the onboarding questionnaire once before you start — it captures your defaults and named owners so every tool in this skill is pre-configured. Customization is the point: the answers actually change tool behavior.
python3 scripts/onboard.py # interactive (also: --defaults, --set key=value, --reset)
python3 scripts/onboard.py --show # see the questions + current effective config
Answers are saved to ~/.config/research-ops/clinical-research.json (global) or ./.research-ops/clinical-research.json (--scope project) and are read automatically by config_loader.py. They set the default development-area profile, default alpha / power / dropout, and the named biostatistician / medical monitor / regulatory owner printed on outputs. CLI flags always override saved config; RESEARCH_OPS_NO_CONFIG=1 ignores it entirely.
The seven questions: development area · alpha · power · dropout · biostatistician · medical monitor · regulatory owner.
This skill ships an isolated, opt-in bridge to engineering/autoresearch-agent. Only when you ask to "optimize" / "run a loop" does an autoresearch experiment iteratively improve a study plan against this skill's own feasibility score. scripts/ar_evaluator.py is the ground-truth evaluator; it prints feasibility_composite: <0-100> (higher is better).
/ar:setup --domain custom --name trial-feasibility \
--target study.json \
--eval "python3 ar_evaluator.py --target study.json" \
--metric feasibility_composite --direction higher
/ar:loop custom/trial-feasibility
Isolated: no hard dependency — autoresearch runs only on demand, and the loop edits study.json, never the evaluator (locked ground truth).
references/study_design_canon.md — ICH E8(R1) general considerations; ICH E9 + E9(R1) estimand addendum; CONSORT 2010; SPIRIT 2013; FDA Multiple Endpoints guidance (2022).references/endpoint_and_power.md — Cohen Statistical Power Analysis; Schoenfeld (1983) survival sample size; FDA Surrogate Endpoint Table / BEST glossary; FDA PRO guidance (2009); Chow, Shao & Wang Sample Size Calculations in Clinical Research.references/trial_operations.md — ICH E6(R2/R3) GCP; TransCelerate risk-based monitoring; FDA RBM guidance; CTTI recruitment best practices; site-feasibility scoring literature.--profile. Company- or indication-specific precedent overrides the prior.| Sibling / neighbor | Scope | Difference |
|---|---|---|
ra-qm-team | ISO 13485 QMS, ISO 14971 risk, EU MDR tech docs + clinical evaluation, FDA 510(k)/PMA/De Novo/QSR submission | That is the submission; clinical-research designs the study beforehand |
research/grants | NIH funding discovery + positioning | That finds funding; this designs the trial |
product-team/experiment-designer | Live product A/B hypothesis + sample size | That is a product experiment; this is a clinical trial |
research-finance (sibling) | R&D program budget + burn | That funds the program; this scopes the study |
python3 scripts/sample_size_estimator.py --sample
python3 scripts/sample_size_estimator.py --design proportions --p1 0.30 --p2 0.45 --dropout 0.15
python3 scripts/endpoint_selector.py --sample
python3 scripts/phase_gate_scorer.py --sample --output json
The sample correctly flags an unvalidated serum-cytokine surrogate (cannot be primary) and ranks PASI-75 as the PRIMARY endpoint; the phase-gate sample returns a verdict with a named owner chain.
Walked one at a time by /cs:grill-research-ops or the orchestrator. Recommended answer + canon citation per question. Never bundled.
"Is your primary endpoint a clinical outcome or a surrogate — and if surrogate, is it on FDA's validated table?" Recommended: clinical outcome unless the surrogate is validated for this indication. Canon: FDA Surrogate Endpoint Table; BEST (Biomarkers, EndpointS, and other Tools) glossary.
"What's the minimal clinically important difference you're powering for — and where did that number come from?" Recommended: a published or anchor-based MCID, cited; never a convenience effect size. Canon: ICH E9; Cohen Statistical Power Analysis.
"What dropout rate are you assuming, and is the sample size inflated for it?" Recommended: inflate n by 1/(1 − dropout) using a justified rate. Canon: Chow, Shao & Wang; ICH E9(R1).
"Single primary endpoint or multiple — and if multiple, what's the multiplicity control?" Recommended: pre-specify alpha allocation (hierarchical / Bonferroni). Canon: FDA Multiple Endpoints guidance (2022).
"Who is the named biostatistician / medical monitor / regulatory owner signing this synopsis?" Recommended: name them now — this output is a recommendation, not a protocol. Canon: ICH E6(R2) GCP roles & responsibilities.
Walk depth-first. Lock 1-2 before opening 3-5. After all are answered, invoke endpoint_selector.py → sample_size_estimator.py → phase_gate_scorer.py.