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RADPAIR and Fovia AI Launch Voice-Controlled Agentic AI for Radiology Workflows

Fovia AI partners with RADPAIR to unveil voice-driven Agentic AI workflows at RSNA 2025, enhancing radiologists’ efficiency and reducing burnout.

Fovia AI, Inc., a subsidiary of Fovia, Inc., has announced a significant partnership with RADPAIR to unveil advanced voice-driven Agentic AI workflows at the 111th Scientific Assembly and Annual Meeting of the Radiological Society of North America (RSNA), taking place from November 30 to December 3, 2025, in Chicago. This collaboration aims to enhance radiologists’ reading environments by integrating dynamic voice control of workstation viewports with live updates to report content, thereby streamlining workflow and improving efficiency.

The innovative integration of RADPAIR’s PAIRsdk—a developer framework designed for Agentic AI—with Fovia AI’s comprehensive technology suite promises to create a cohesive interface for PACS imaging systems, reporting tools, and AI interactions. This partnership is set to revolutionize the radiological workflow, allowing radiologists to maintain focus while interacting with the system through natural voice commands, thereby expediting case-related tasks.

The voice-forward Agentic AI environment is designed to enhance the radiologist’s reading experience significantly. By allowing radiologists to interact with their environment seamlessly, this technology aims to increase cases processed per hour while reducing the potential for burnout, a growing concern in the radiology field. Kevin Kreeger, CTO at Fovia AI, emphasized that the PAIRsdk will provide a consistent structure and foster safe and intuitive interactions, ultimately improving performance and efficiency.

Dr. Avez Rizvi, CEO and Founder of RADPAIR, echoed this sentiment, stating that the collaboration with Fovia AI propels the vision of Agentic AI into reality. He highlighted the importance of industry alignment on standards and interoperability, which he believes is essential for meaningful innovation in daily radiology workflows. This partnership could elevate the reporting experience for radiologists worldwide, enhancing productivity and job satisfaction.

Both companies will demonstrate their technologies at their respective booths—Fovia AI at Booth #4716 and RADPAIR at Booth #4932—during the RSNA event. Attendees will have the opportunity to see firsthand how the integration of voice-driven AI can transform radiological practices.

About RADPAIR

RADPAIR is an AI-driven technology company dedicated to enhancing radiological workflows through advanced AI and seamless integration with imaging systems and reporting platforms. The company aims to empower radiologists by reducing turnaround times and improving the quality of reports. RADPAIR’s focus on collaboration and scalability positions it as a leader in modernizing radiology infrastructure and maximizing the potential of AI-driven diagnostics.

About Fovia AI

Fovia AI, Inc. stands at the forefront of advanced visualization, offering cloud-based, zero-footprint medical imaging SDKs and innovative technologies such as High Definition Volume Rendering® and XStream®HDVR®. Their flagship products facilitate efficient access to AI results directly within existing workflows across various platforms, thus enhancing the operational capabilities of radiologists and clinicians.

As the integration of AI continues to evolve in the healthcare sector, the collaboration between Fovia AI and RADPAIR may signify a pivotal shift toward more efficient radiological practices. The outcome of this partnership could redefine workflows, allowing radiologists to achieve greater efficiency while maintaining a focus on patient care.

Staff
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The AiPressa Staff team brings you comprehensive coverage of the artificial intelligence industry, including breaking news, research developments, business trends, and policy updates. Our mission is to keep you informed about the rapidly evolving world of AI technology.

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