Operational automation
Healthcare Automation
Reliable automation for the repetitive coordination work that slows care down.
Overview
Healthcare Automation takes the repetitive, rules-bound coordination work — intake, prior authorization, claims, reminders, follow-up — and runs it reliably, with auditability built in.
It's designed for the realities of healthcare: clear escalation paths, human review where it matters, and a record of every action taken.
Outcomes
- Clinician hours returned to care
- Fewer avoidable denials and reworks
- A complete, auditable action trail

Capabilities
What Healthcare Automation does.
Intake & triage
Structured capture and routing from the first point of contact.
Prior authorization
Automated assembly and submission, reconciled against the visit.
Claims processing
Coding and claims prepared and checked before they go out.
Follow-up outreach
Reminders and post-discharge monitoring that close the loop.
How it works
From integration to impact.
- STEP 01
Map
We map the workflow you want to automate and the systems it touches.
- STEP 02
Automate
The platform executes the steps reliably, escalating edge cases to a human.
- STEP 03
Audit
Every action is logged, so the workflow is transparent and reviewable end to end.
FAQ
Common questions.
- What happens when automation isn't confident?
- It escalates to a human with full context, rather than guessing. You set the confidence thresholds.
- Is every action traceable?
- Yes. Each automated step writes to an audit trail, so you can review exactly what happened and why.
- Which workflows are a good fit?
- High-volume, rules-bound tasks like intake, prior authorization, claims, and follow-up see the fastest return.
Explore the rest of the suite
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