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Leon C. ter Beek

Researcher at Netherlands Cancer Institute

Publications -  33
Citations -  2230

Leon C. ter Beek is an academic researcher from Netherlands Cancer Institute. The author has contributed to research in topics: Magnetic resonance imaging & Liquid crystal. The author has an hindex of 17, co-authored 29 publications receiving 2084 citations. Previous affiliations of Leon C. ter Beek include University of British Columbia & Philips.

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Magnetic Resonance Elastography for the Noninvasive Staging of Liver Fibrosis

TL;DR: Magnetic resonance elastography has a higher technical success rate than ultrasoundElastography and a better diagnostic accuracy than ultrasound elastsography and APRI for staging liver fibrosis.
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Liver fibrosis: non‐invasive assessment with MR elastography

TL;DR: It is concluded that non‐invasive MR elastography is a feasible method to assess the stage of liver fibrosis.
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Liver fibrosis: noninvasive assessment with MR elastography versus aspartate aminotransferase-to-platelet ratio index.

TL;DR: Large A(z) values for elasticity show that MR elastography was accurate in liver fibrosis staging and superior to biochemical testing with APRIs.
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Hepatic viscoelastic parameters measured with MR elastography: correlations with quantitative analysis of liver fibrosis in the rat

TL;DR: To determine the correlations between the viscoelastic parameters of the liver measured with in vivo MR elastography and quantitative analysis of liver fibrosis, the objective was to establish an apples-to- apples correlations between these parameters.
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Rapid acquisition of multifrequency, multislice and multidirectional MR elastography data with a fractionally encoded gradient echo sequence.

TL;DR: A rapid multislice pulse sequence capable of three‐dimensional motion encoding that is also suitable for simultaneously encoding motion with multiple frequency components is introduced based on a gradient‐recalled echo (GRE) sequence and exploits the principles of fractional encoding.