DeepScribe

https://www.deepscribe.ai/

Specialty-care ambient scribe (oncology focus). Pulls forward prior notes with precise dates; synthesises interval history (what changed since last visit); auto-populates disease-status and treatment-plan context.

At a glance

Type
Longitudinal oncology pull-forward
Tier
T1
Created
2022-01
Latest release
not applicable — not OSS
License
not applicable — not OSS
GitHub
not applicable — no GitHub repo
Pricing
Enterprise only
Funding
$30M total Series A · 2022-01

Taxonomy

storage
vector
retrieval
similarity
persistence
long-term
update
extraction
unit
episode
governance
auditable
conflict
editor-in-the-loop

When to use

Optimised for: HIPAA compliance + clinical-grade provenance + EHR integration

Anti-fit: not for non-healthcare verticals; must operate under HIPAA / regional health regulation

Pros & cons

Pros

Clinical documentation platform with explicit longitudinal patient profile across visits; large enterprise health-system deployments.

Cons

Enterprise-scope only; closed product; minimal developer-API exposure.

Claims & capabilities

5M oncology visits/year. 98.8 KLAS score (A+ all six categories, 2025 Emerging Company Spotlight). 4× monthly oncology visits YoY. Randomised clinical trial published.

Technical surface

API surface
searched not found
Backend storage
searched not found
Deployment
Managed-only
Embedding model
searched not found
Multi-tenancy
BAA with each customer; PII stripped via deidentification post-encryption
MCP
no MCP support advertised — vertical product, no MCP server / client integration documented
A2A
no A2A protocol support advertised — vertical product, no A2A integration documented
OpenTelemetry
no OpenTelemetry integration advertised — vendor logs/observability not publicly documented

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Row last verified 2026-05-14. Catalog data is CC-BY-4.0 — see how to read this.