about
Longitudinal development of cortical thickness, folding, and fiber density networks in the first 2 years of life.Automatic hippocampus segmentation of 7.0 Tesla MR images by combining multiple atlases and auto-context modelsNeonatal atlas construction using sparse representation.Simultaneous and consistent labeling of longitudinal dynamic developing cortical surfaces in infants.aBEAT: a toolbox for consistent analysis of longitudinal adult brain MRIAltered modular organization of structural cortical networks in children with autismConstruction of 4D high-definition cortical surface atlases of infants: Methods and applicationsA computational growth model for measuring dynamic cortical development in the first year of life.Measuring the dynamic longitudinal cortex development in infants by reconstruction of temporally consistent cortical surfaces.Mapping longitudinal development of local cortical gyrification in infants from birth to 2 years of ageAutomatic segmentation of neonatal images using convex optimization and coupled level sets.miR-24 regulates intrinsic apoptosis pathway in mouse cardiomyocytes.Level set segmentation of brain magnetic resonance images based on local Gaussian distribution fitting energy.Active contours driven by local and global intensity fitting energy with application to brain MR image segmentation.Automated segmentation of CBCT image using spiral CT atlases and convex optimizationLearning-based meta-algorithm for MRI brain extractionConstructing 4D infant cortical surface atlases based on dynamic developmental trajectories of the cortexDeep learning based imaging data completion for improved brain disease diagnosisEstimating anatomically-correct reference model for craniomaxillofacial deformity via sparse representationLongitudinal Guided Super-Resolution Reconstruction of Neonatal Brain MR ImagesMulti-atlas based simultaneous labeling of longitudinal dynamic cortical surfaces in infantsLow-rank total variation for image super-resolutionIntegration of sparse multi-modality representation and geometrical constraint for isointense infant brain segmentation
P50
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P50
description
researcher ORCID: 0000-0001-8927-6772
@en
name
Li Wang
@ast
Li Wang
@en
Li Wang
@es
Li Wang
@nl
type
label
Li Wang
@ast
Li Wang
@en
Li Wang
@es
Li Wang
@nl
prefLabel
Li Wang
@ast
Li Wang
@en
Li Wang
@es
Li Wang
@nl
P106
P1153
54409666400
P2456
58/6810-26
P31
P496
0000-0001-8927-6772