Best fit
- Create exams and retrieve reports
- Trigger signing events
- Connect portals and internal apps
Why Laudos.AI
- REST + webhooks
- Scoped keys by environment
- Troubleshooting logs
Connection point
Integration should remove admin work, not create another screen
The API connects existing workflows instead of forcing a new interface. The first value appears when exam context arrives without copy-paste, the report returns to the right system, and errors remain visible for support.
Technical scope
Good integration starts small and auditable
API for radiology report automation should not promise to replace core systems. The API connects existing workflows instead of forcing a new interface. The first scope should prove minimum data, report return, logs, and fallback.
Input
Confirm identifiers, exam context, modality, and data limits before automating.
Output
Define whether return is text, PDF, status, event, DICOM SR, or engineer-assisted integration.
Operations
Require logs, a test environment, error handling, support ownership, and a legacy-system plan.
Decision criteria
Physician control
The radiologist reviews, edits, and signs. AI should accelerate report structure, not make the clinical decision.
Real integration
The tool should fit PACS/RIS, worklists, and exam context without forcing an infrastructure replacement.
Governance
Templates, history, permissions, and critical findings need to remain auditable as the service scales.
Measurable throughput
The improvement should show up in report time, rework, standardization, and operational safety.
Useful questions
What to confirm before moving forward
Which part of the workflow will be measured: dictation, review, signing, delivery, or rework?
Who can change templates, vocabulary, permissions, and service standards?
Which data enters the system and what stays out of pilot scope?
How are changes, access, critical findings, and integration failures audited?
Is there a test environment with synthetic or anonymized data before any real data?
What is the fallback plan if PACS/RIS, HL7, API, or worklist fails?
30-day validation
For integration, test minimum fields received, mapping errors, report return, manual fallback, and support time per incident.
Validation
Measure in 30 days. Don't buy on promise.
A serious pilot of reporting AI shouldn't only check that voice 'works.' It should measure time per report, corrections, rework, template adherence, impression consistency, return to PACS/RIS, and critical findings traceability.
FAQ
When is API for radiology report automation a good fit?
The API connects existing workflows instead of forcing a new interface. A useful pilot checks curated clinical material, review quality, template fit, and integration friction.
Does this replace the radiologist?
No. Laudos.AI structures and accelerates the report, but the physician reviews, edits, and signs.
Does it require replacing PACS/RIS?
No. The intended deployment is to connect with existing infrastructure and keep the reporting flow familiar.