From Experimentation to Clinical-grade AI in Healthcare
From Experimentation to Clinical-grade AI in Healthcare
https://emerj.com/from-experimentation-to-clinical-grade-ai-in-healthcare/
Publish Date: 2026-06-29 10:48:00
Source Domain: emerj.com
- The article highlights that while model capability for enterprise AI has reached a high level, the necessary enterprise readiness in infrastructure, security, and workflow is lagging.
- The federal government’s reaction to a Request for Information on AI agent security shows a pressing need for stronger safety frameworks, signaling a gap between model capability and operational deployment.
- Security concerns, such as identity management and access control, are major infrastructural issues that prevent autonomous systems from operating safely.
- Healthcare specifically outlines the issues related to data readiness, interoperability, and auditability for ensuring AI systems operate within regulated workflows.
- Enterprise readiness is emphasized as a bottleneck to the adoption of agentic AI, focusing mainly on three key areas:
- Infrastructure readiness must adapt from human-based to machine-based execution.
- Domain-adapted reasoning and fine-tuning are critical for reliable agentic performance.
- An autonomous security posture is necessary to manage the expanded attack surface and compliance needs due to machine-driven actions.