2016
DOI: 10.5812/iranjradiol.22144
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Stereoscopic Display of the Peripheral Nerves at the Elbow Region Based on MR Diffusion Tensor Imaging with Multiple Post-Processing Methods

Abstract: Background:Peripheral nerves at the elbow region are prone to entrapment neuropathies and injuries. To make accurate assessment, clinicians need stereoscopic display of the nerves to observe them at all angles.Objectives:To obtain a stereoscopic display of the peripheral nerves at the elbow region based on magnetic resonance (MR) diffusion tensor imaging (DTI) data using three post-processing methods of volume rendering (VR), maximum intensity projection (MIP), and fiber tractography, and to evaluate the diffe… Show more

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“…In addition to fiber tracking, Skorpil et al (6), in 2007, used the maximum intensity projection (MIP) technique to reconstruct sciatic nerves based on magnetic resonance (MR) DTI images, both single-direction and all directions. In a recent study (7), we obtained a stereoscopic display of the peripheral nerves at the elbow region based on DTI data using post-processing methods of volume rendering (VR) and MIP. However, the noise in images was obvious in these two studies.…”
Section: Introductionmentioning
confidence: 99%
“…In addition to fiber tracking, Skorpil et al (6), in 2007, used the maximum intensity projection (MIP) technique to reconstruct sciatic nerves based on magnetic resonance (MR) DTI images, both single-direction and all directions. In a recent study (7), we obtained a stereoscopic display of the peripheral nerves at the elbow region based on DTI data using post-processing methods of volume rendering (VR) and MIP. However, the noise in images was obvious in these two studies.…”
Section: Introductionmentioning
confidence: 99%