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Prediction of cartilage compressive modulus using multiexponential analysis of T(2) relaxation data and support vector regression.Blood flow and metabolic regulation in seal muscle during apnea.Multicomponent T2 relaxation analysis in cartilage.Improved specificity of cartilage matrix evaluation using multiexponential transverse relaxation analysis applied to pathomimetically degraded cartilage.Improved MR-based characterization of engineered cartilage using multiexponential T2 relaxation and multivariate analysis.Sensitivity and specificity of univariate MRI analysis of experimentally degraded cartilage.Magnetic resonance studies of macromolecular content in engineered cartilage treated with pulsed low-intensity ultrasoundNondestructive assessment of engineered cartilage constructs using near-infrared spectroscopy.XRCC1 haploinsufficiency in mice has little effect on aging, but adversely modifies exposure-dependent susceptibilitySensitivity and specificity of univariate MRI analysis of experimentally degraded cartilage under clinical imaging conditions.Assessment of chemical exchange in tryptophan-albumin solution through (19)F multicomponent transverse relaxation dispersion analysis.Anisotropy and temperature dependence of myoglobin translational diffusion in myocardium: implication for oxygen transport and cellular architectureCockayne syndrome group B protein prevents the accumulation of damaged mitochondria by promoting mitochondrial autophagy.Multiparametric Classification of Skin from Osteogenesis Imperfecta Patients and Controls by Quantitative Magnetic Resonance MicroimagingPredicting early symptomatic osteoarthritis in the human knee using machine learning classification of magnetic resonance images from the osteoarthritis initiative.Major Challenges and Potential Microenvironment-Targeted Therapies in Glioblastoma.Determination of myoglobin concentration in blood-perfused tissue.Classification of histologically scored human knee osteochondral plugs by quantitative analysis of magnetic resonance images at 3T.
P50
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P50
description
researcher
@en
wetenschapper
@nl
հետազոտող
@hy
name
Ping-Chang Lin
@ast
Ping-Chang Lin
@en
Ping-Chang Lin
@es
Ping-Chang Lin
@nl
Ping-Chang Lin
@sl
type
label
Ping-Chang Lin
@ast
Ping-Chang Lin
@en
Ping-Chang Lin
@es
Ping-Chang Lin
@nl
Ping-Chang Lin
@sl
prefLabel
Ping-Chang Lin
@ast
Ping-Chang Lin
@en
Ping-Chang Lin
@es
Ping-Chang Lin
@nl
Ping-Chang Lin
@sl
P106
P1153
26639567100
P31
P496
0000-0003-0918-4072