GW RhythmX Launches RhythmX Pulse on Microsoft Marketplace
GW RhythmX has made its clinical AI product, RhythmX Pulse, available on the Microsoft Marketplace, announced in a press release. The listing allows Microsoft customers to discover and deploy the solution across Microsoft Azure and other Microsoft platforms.
RhythmX Pulse expands the existing Dragon Copilot system by converting captured clinical encounters into personalized recommendations. The system analyzes patient information, including medical history, medications, guidelines, payer rules, and social context, to surface actionable insights during the visit.
Clinicians can use these real-time suggestions for care-gap alerts, documentation updates, and medication alternatives. Each recommendation includes supporting evidence and can be accepted, edited, or dismissed. Institutions already using Dragon Copilot can add RhythmX Pulse directly from the marketplace without separate implementation.
The release marks the first stage of a collaboration between GW RhythmX and Microsoft Corporation. Future updates are expected to extend guidance into pre-visit planning, care coordination, and ongoing patient management.
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