about
Construction of a consistent high-definition spatio-temporal atlas of the developing brain using adaptive kernel regressionCommon genetic variants and risk of brain injury after preterm birth.Retinal blood vessels extraction using probabilistic modelling.Robust motion correction and outlier rejection of in vivo functional MR images of the fetal brain and placenta during maternal hyperoxia.Tract shape modeling detects changes associated with preterm birth and neuroprotective treatment effectsAccurate Learning with Few Atlases (ALFA): an algorithm for MRI neonatal brain extraction and comparison with 11 publicly available methodsParcellation of the Healthy Neonatal Brain into 107 Regions Using Atlas Propagation through Intermediate Time Points in Childhood.Association between preterm brain injury and exposure to chorioamnionitis during fetal lifeSEGMA: An Automatic SEGMentation Approach for Human Brain MRI Using Sliding Window and Random Forests.Brain Development in Fetuses of Mothers with Diabetes: A Case-Control MR Imaging Study.Optimized methodology for neonatal diffusion tensor imaging processing and study-specific template construction.Histograms of Oriented 3D Gradients for Fully Automated Fetal Brain Localization and Robust Motion Correction in 3 T Magnetic Resonance Images.Automatic whole brain MRI segmentation of the developing neonatal brain.Complex Trajectories of Brain Development in the Healthy Human Fetus.A dynamic 4D probabilistic atlas of the developing brain.Erratum to Construction of a consistent high-definition spatio-temporal atlas of the developing brain using adaptive kernel regression [NeuroImage 59/3(2012) 2255–2265]LISA: Longitudinal image registration via spatio-temporal atlasesUnsupervised Learning of Shape Complexity: Application to Brain DevelopmentConstruction of a 4D atlas of the developing brain using non-rigid registrationTracking developmental changes in subcortical structures of the preterm brain using multi-modal MRIA sparsity-based atlas selection technique for multiple-atlas segmentation: Application to neonatal brain labelingAutomatic fetal brain localization in 3T MR images using Histograms of Oriented 3D Gradients
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description
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researcher
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հետազոտող
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Ahmed Serag
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Ahmed Serag
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Ahmed Serag
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Ahmed Serag
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Ahmed Serag
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Ahmed Serag
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Ahmed Serag
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Ahmed Serag
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Ahmed Serag
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Ahmed Serag
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Ahmed Serag
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Ahmed Serag
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P1960
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P31
P496
0000-0002-4145-5509