News | June 02, 2009

ContextVision Gets Positive Results in Clinical Evaluation

June 2, 2009 – Thomas Jefferson University conducted a clinical evaluation with ContextVision's GOPiCE US volumetric image enhancement and real-time ultrasound adaptive filtering for 3D ultrasound images. The study, which is not yet publicly released, concludes that GOPiCE US offers improved diagnostic value over competing image enhancement technologies.

“Having compared both unprocessed volumes and volumes processed with the current state-of-the-art image enhancement software (2D processing), the new technique represented by GOPiCE 3D performed significantly better,” said Flemming Forsberg, M.D., department of radiology, Thomas Jefferson University.

GOPiCE US offers real-time volumetric image enhancement and real-time ultrasound adaptive filtering for 3D and 4D ultrasound volumes.

Like all ContextVision products, GOPiCE US relies on an adaptive algorithm, GOP, which mimics the human eye’s method of finding information and analyzing structures. This enables the software to distinguish between true and false information (e.g. noise, artifacts) and accurately identify true structures.

GOPiCE US software easily integrates into modern software-based ultrasound systems and is available on either a GPU or CPU.

For more information: www.contextvision.co

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