News | September 21, 2009

Siemens to Debut Multimodality Workflow with Structured Case Navigation

September 21, 2009 - At this the 95th Scientific Assembly and Annual Meeting McCormick Place, Chicago, Ill., Nov. 29 – Dec. 4, 2009, Siemens Healthcare said it will present its new solutions for advanced reading of clinical images, placing special focus on automated case preparation and structured case navigation for multimodality images based on computed tomography (CT), magnetic resonance (MR), molecular imaging (MI), X-ray, and ultrasound.

The solutions are designed to help efficiently execute routine and challenging cases across specialties such as cardiology, oncology, and neurology, and also support quantitative reading in radiology.

Additionally, Siemens will demonstrate the benefits of offering integration of image acquisition modalities and image reading software in one complete solution, showcasing the company’s distinct advantage as an integrated healthcare provider. That means acquired images are rapidly accessible within the network, and that images created with the newest modality functionalities, such as CT Dual Energy, can be utilized within that network.

Siemens will highlight a new development in picture archiving and communications systems (PACS) with a new PACS that complements and integrates Siemens advanced imaging offering. This solution combines 2D, 3D, and 4D reading – allowing fast reading in any dimension – together in one place.

Siemens will be displaying its latest enhancements to PACS, computer-aided detection (CAD) in the PACS workflow, radiology information System (RIS), and the newest features to its OB/Ultrasound and cardiology IT system.

In support of these innovative technologies and to complement ever-advancing products and solutions, Siemens will highlight its continued comprehensive technical and clinical service offerings.

For more information: www.usa.siemens.com

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