News | Enterprise Imaging | December 21, 2017

Vital Images Expands Enterprise Imaging Solution at RSNA 2017

Introducing enhancements to advanced visualization, image sharing and prescriptive analytics solutions

December 21, 2017 — Vital Images showcased enhancements to its enterprise imaging solutions at the Radiological Society of North America (RSNA) annual meeting in Chicago, Nov. 26 – Dec. 1. The company continues to expand on three product lines that make up its Vitrea Enterprise Imaging portfolio: Vitrea Vision, Vitrea Connection and Vitrea Intelligence. This year at RSNA, Vital highlighted key enhancements to their comprehensive enterprise imaging portfolio including advanced visualization, image sharing and financial analytics solutions.

The newest version of Vitrea Advanced Visualization delivers a cohesive user interface across all modalities and all deployments. With its intuitive design and applications, Vitrea software facilitates improved clinical workflows across all departments. In addition, many new application-specific enhancements have been added to the solution.

The Vitrea Connection line is showcasing an image sharing solution that automates the labor-intensive and error-prone manual processes of getting outside images, stored on physical media or within another picture archiving and communication system (PACS), vendor neutral archive (VNA) or image sharing system, into primary clinical systems and workflows.

The Vitrea Intelligence line is featuring Opportunity Navigator, a prescriptive financial analytics solution that presents users with a menu of available financial “opportunities” and continuously directs users toward specific actions to increase revenues or avoid costs. With Opportunity Navigator’s powerful recommendation engine, users will always have actionable information at their fingertips to achieve their financial objectives and organizational goals.

For more information: www.vitalimages.com

 

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