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Direct parametric reconstruction from undersampled (k, t)-space data in dynamic contrast enhanced MRI.STIR: software for tomographic image reconstruction release 2.Logistic regression model for diagnosis of transition zone prostate cancer on multi-parametric MRI.Respiratory motion correction in dynamic MRI using robust data decomposition registration - application to DCE-MRI.Changes in dynamic contrast-enhanced pharmacokinetic and diffusion-weighted imaging parameters reflect response to anti-TNF therapy in Crohn's disease.Evolution of multi-parametric MRI quantitative parameters following transrectal ultrasound-guided biopsy of the prostate.Whole body magnetic resonance imaging in newly diagnosed multiple myeloma: early changes in lesional signal fat fraction predict disease responseMultiparametric MRI for detection of radiorecurrent prostate cancer: added value of apparent diffusion coefficient maps and dynamic contrast-enhanced images.A comparison of Bayesian and non-linear regression methods for robust estimation of pharmacokinetics in DCE-MRI and how it affects cancer diagnosis.Zone-specific logistic regression models improve classification of prostate cancer on multi-parametric MRI.Noise estimation from averaged diffusion weighted images: Can unbiased quantitative decay parameters assist cancer evaluation?Dynamic MR image reconstruction-separation from undersampled (k,t)-space via low-rank plus sparse prior.Microstructural characterization of normal and malignant human prostate tissue with vascular, extracellular, and restricted diffusion for cytometry in tumours magnetic resonance imaging.Prediction of Pediatric Percutaneous Nephrolithotomy Outcomes Using Contemporary Scoring Systems.Whole-body MRI quantitative biomarkers are associated significantly with treatment response in patients with newly diagnosed symptomatic multiple myeloma following bortezomib induction.Characterizing indeterminate (Likert-score 3/5) peripheral zone prostate lesions with PSA density, PI-RADS scoring and qualitative descriptors on multiparametric MRI.Acceleration of motion-compensated PET reconstruction: ordered subsets-gates EM algorithms and a priori reference gate information.Comparative evaluation of two commercial PET scanners, ECAT EXACT HR+ and Biograph 2, using GATEScatter Simulation Including Double ScatterEvaluation of Crohn's disease activity: initial validation of a magnetic resonance enterography global score (MEGS) against faecal calprotectinMultiparametric whole-body 3.0-T MRI in newly diagnosed intermediate- and high-risk prostate cancer: diagnostic accuracy and interobserver agreement for nodal and metastatic staging.Correction to: Machine learning classifiers can predict Gleason pattern 4 prostate cancer with greater accuracy than experienced radiologistsStochastic Gradient Langevin dynamics for joint parameterization of tracer kinetic models, input functions, and T1 relaxation-times from undersampled k-space DCE-MRIMachine learning classifiers can predict Gleason pattern 4 prostate cancer with greater accuracy than experienced radiologistsMulti-parametric MRI zone-specific diagnostic model performance compared with experienced radiologists for detection of prostate cancerMolière maximum likelihood proton path estimation approximated by cubic Bézier curve for scatter corrected proton CT reconstructionPredictive mathematical models for the number of individuals infected with COVID-19COVID-19: Predictive Mathematical Models for the Number of Deaths in South Korea, Italy, Spain, France, UK, Germany, and USA
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description
researcher
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wetenschapper
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հետազոտող
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name
Nikolaos Dikaios
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Nikolaos Dikaios
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Nikolaos Dikaios
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Nikolaos Dikaios
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type
label
Nikolaos Dikaios
@ast
Nikolaos Dikaios
@en
Nikolaos Dikaios
@es
Nikolaos Dikaios
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prefLabel
Nikolaos Dikaios
@ast
Nikolaos Dikaios
@en
Nikolaos Dikaios
@es
Nikolaos Dikaios
@nl
P108
P106
P1153
15076612600
P2456
P31
P496
0000-0001-9865-0260