clinical-research
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.
How do I install this agent skill?
npx skills add https://github.com/alirezarezvani/claude-skills --skill clinical-researchIs this agent skill safe to install?
- Gen Agent Trust Hubpass
This skill provides a suite of tools for clinical research study design, including sample size estimation, endpoint selection, and feasibility scoring. It uses local Python scripts and configuration files without any network operations or external dependencies.
- Socketpass
No alerts
- Snykpass
Risk: LOW · No issues
What does this agent skill do?
clinical-research
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.
Purpose
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.
When to use
Invoke this skill when:
- You are choosing a primary endpoint and need to defend it against surrogate-endpoint scrutiny.
- You need a defensible first sample-size estimate for a protocol synopsis.
- A study plan needs a feasibility read before a phase-gate review.
- You are pressure-testing whether the planned enrollment is achievable given the eligible population and sites.
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.
Workflow
- Draft the synopsis — Fill
assets/protocol_synopsis_template.md(objectives, design, population, endpoints, statistical plan placeholder, owners-to-sign). - Select the endpoint — Run
endpoint_selector.py --input endpoints.json --profile {drug|device|biologic|diagnostic|digital-therapeutic}. Read the classification + surrogate flags. If >1 primary, plan multiplicity control. - Estimate the sample size — Run
sample_size_estimator.py --design {means|proportions|survival} .... Trace the effect/difference/HR to a published or anchor-based source; inflate for dropout. - Score feasibility — Run
phase_gate_scorer.py --input study.json --profile <same> --phase {1|2|3|4}. Read the verdict + blockers + named owners. - Route for sign-off — Assemble the synopsis + estimates into the gate packet. The packet is a recommendation; a biostatistician, medical monitor, and regulatory owner sign.
Scripts
| 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}.
Onboarding & customization
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.
Optimize with autoresearch (opt-in)
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
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.
Assumptions
- Sample-size formulas use normal approximations with a built-in z-table. They are first-pass estimates; a biostatistician produces the final justification (and may use simulation, adaptive designs, or exact methods).
- The endpoint scorer applies customary regulatory priors per development area via
--profile. Company- or indication-specific precedent overrides the prior. - The phase-gate scorer bakes in a profile cost-per-patient benchmark; pass a real budget to override the default.
- An unvalidated surrogate cannot anchor a PRIMARY endpoint — the scorer enforces this with a penalty.
Anti-patterns
- Presenting a power estimate as fact. Every output is an estimate with a named owner who must sign.
- Powering for a convenience effect size. The effect must trace to a published or anchor-based MCID, not to the n you can afford.
- Anchoring a primary on an unvalidated surrogate. Surrogate endpoints need validation evidence for the indication.
- Ignoring multiplicity. More than one primary endpoint requires pre-specified alpha allocation.
- Skipping dropout inflation. Raw n undersizes the study; inflate by 1/(1 − dropout).
Distinct from
| 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 |
Quick examples
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.
Forcing-question library (Matt Pocock grill discipline)
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.
How can the creator link this skill?
Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.
<a href="https://skillzs.dev/skills/alirezarezvani/claude-skills/clinical-research">View clinical-research on skillZs</a>