Technology | Archive Cloud Storage | May 19, 2017

Visage Imaging Introduces Visage 7 Open Archive

Platform provides modular archive solution within Visage 7 Enterprise Imaging Platform

May 19, 2017 — Visage Imaging Inc. announced Visage 7 Open Archive is now available in North America, comprising the latest modular solution of the Visage 7 Enterprise Imaging Platform. Visage will be exhibiting the latest release, Visage 7.1.10, at the 2017 American College of Radiology (ACR) Annual Meeting, May 22-23 in Washington, D.C.

Visage 7 enables enterprise imaging with fast, thin-client, server-side processing technology, as well as simple diagnostic mobile access via Visage Ease Pro.

Highlights of Visage 7 Open Archive include:

  • Always a native, modular capability of Visage 7, Visage 7 Open Archive is built on the same ultrafast, highly scalable enterprise imaging platform;
  • Visage 7 Open Archive enables best-in-class interoperability, according to the company, based on open standards, even in the most complex environments;
  • Visage 7 Open Archive is already in use in many large-scale implementations outside of the United States; and
  • With a focus on value, institutions are seeking the very best, high performance solutions available from vendors they trust. Deconstructed picture archiving and communication system (PACS) strategies are the enabler and continue to drive demand with hybrid, modular informatics solutions tailored to the needs of the individual institution. Visage offers customers flexibility, with the choice of deconstructed or single-vendor solutions.

Visage 7 Open Archive closely couples the storage of images to Visage 7 to provide performance and interoperability unmatched by others. The platform includes critical support of standards-based interfaces and open standards like Imaging Object Change Management (IOCM), which is fundamental to automating integration to enterprise viewing platforms. The Visage 7 Enterprise Imaging Platform's architecture makes it ideally suited for the convergence of medical imaging informatics to include medical multimedia, non-radiology and non-DICOM objects, according to the company.

For more information: www.visageimaging.com

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