In 2024, 79% of FDA Warning Letters
cited data integrity failures
85%
of safety and efficacy issues in Complete Response Letters
are never disclosed by companies.
With AI making more decisions, the audit trail matters more than ever.
Why this keeps happening
- Your data warehouse stores the current answer. Sources disagree.
- When a study is retracted, which decisions did it affect?
- AI recommended X. Can you reconstruct why?
"Black box" is a documented rejection reason. Traditional databases overwrite history.
StemeDB
A knowledge graph that stores claims, not facts.
Append-only. Auditable. Built for regulated industries.
Every claim has a source
StemeDB stores assertions with provenance, not overwritten facts.
- When sources disagree, you see the disagreement
- When a source is retracted, you know what's affected in seconds
- History is preserved. Nothing gets silently overwritten.
What this enables
Conflict Visibility
See when sources disagree. Confidence scores show you how much.
Cascade Invalidation
Retract a source. See every downstream decision affected.
Complete Audit Trail
Every query logged with provenance. Export for regulators.
Time-travel queries: "What did we believe on January 1st?"
Here's what it looks like
FDA guidance now requires audit trails for all AI-enabled devices. This is what compliance looks like.
Query:
subject: semaglutide:gastroparesis_risk
predicate: risk_level
FDA labels say low incidence. Patient reports say otherwise.
Watch how StemeDB surfaces that conflict.
Questions
What you saw:
- Conflict visibility — FDA vs patient reports, with confidence scores
- Cascade invalidation — Source retraction, instant impact assessment
- Audit trail — Every query logged, export-ready
- Time-travel — Point-in-time queries
- Trust & Safety — Quarantine queue, circuit breakers