about
A genome-wide association study identifies five loci influencing facial morphology in EuropeansChest computed tomography: a validated surrogate endpoint of cystic fibrosis lung disease?Quantification of Diaphragm Mechanics in Pompe Disease Using Dynamic 3D MRIAtherosclerotic plaque component segmentation in combined carotid MRI and CTA data incorporating class label uncertaintyDistribution, size, shape, growth potential and extent of abdominal aortic calcified deposits predict mortality in postmenopausal women.Texture-based analysis of COPD: a data-driven approach.Lung MRI and impairment of diaphragmatic function in Pompe disease.Distribution, size, and shape of abdominal aortic calcified deposits and their relationship to mortality in postmenopausal womenMRBrainS Challenge: Online Evaluation Framework for Brain Image Segmentation in 3T MRI ScansSemiautomatic segmentation of vertebrae in lateral x-rays using a conditional shape model.The development of bronchiectasis on chest computed tomography in children with cystic fibrosis: can pre-stages be identified?Cystic fibrosis: are volumetric ultra-low-dose expiratory CT scans sufficient for monitoring related lung disease?Comparison of CT and CMR for detection and quantification of carotid artery calcification: the Rotterdam Study.Three-section expiratory CT: insufficient for trapped air assessment in patients with cystic fibrosis?Diagnosis of bronchiectasis and airway wall thickening in children with cystic fibrosis: Objective airway-artery quantification.Multicentre chest computed tomography standardisation in children and adolescents with cystic fibrosis: the way forward.Visual assessment of early emphysema and interstitial abnormalities on CT is useful in lung cancer risk analysis.Toward automatic regional analysis of pulmonary function using inspiration and expiration thoracic CT.Shape-based assessment of vertebral fracture risk in postmenopausal women using discriminative shape alignment.Evaluation of registration methods on thoracic CT: the EMPIRE10 challenge.Evaluation of automated statistical shape model based knee kinematics from biplane fluoroscopy.Combining Generative and Discriminative Representation Learning for Lung CT Analysis With Convolutional Restricted Boltzmann Machines.Weighting training images by maximizing distribution similarity for supervised segmentation across scanners.High shear stress relates to intraplaque haemorrhage in asymptomatic carotid plaques.Relation between wall shear stress and carotid artery wall thickening MRI versus CFD.Multi-Center MRI Carotid Plaque Component Segmentation Using Feature Normalization and Transfer Learning.Automated segmentation of atherosclerotic histology based on pattern classification.Tree-space statistics and approximations for large-scale analysis of anatomical trees.Regression-based cardiac motion prediction from single-phase CTA.Letter by Bos et al Regarding Article, "Intracranial Carotid Calcification on Cranial Computed Tomography: Visual Scoring Methods, Semiautomated Scores, and Volume Measurements in Patients With Stroke".Maximum a posteriori estimation of linear shape variation with application to vertebra and cartilage modeling.Automated measurement of local white matter lesion volume.Localization and segmentation of aortic endografts using marker detection.Robust shape regression for supervised vessel segmentation and its application to coronary segmentation in CTA.Optimal surface segmentation using flow lines to quantify airway abnormalities in chronic obstructive pulmonary disease.Quantification of smoothing requirement for 3D optic flow calculation of volumetric images.Machine learning approaches in medical image analysis: From detection to diagnosis.Geometric tree kernels: classification of COPD from airway tree geometry.Hippocampal shape is predictive for the development of dementia in a normal, elderly population.Spirometer-controlled cine magnetic resonance imaging used to diagnose tracheobronchomalacia in paediatric patients.
P50
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