Related references
Note: Only part of the references are listed.Automated brain extraction of multisequence MRI using artificial neural networks
Fabian Isensee et al.
HUMAN BRAIN MAPPING (2019)
Cerebral microbleed detection using Susceptibility Weighted Imaging and deep learning
Saifeng Liu et al.
NEUROIMAGE (2019)
Microbleeds and cavernomas after radiotherapy for paediatric primary brain tumours
Joao Passos et al.
JOURNAL OF THE NEUROLOGICAL SCIENCES (2017)
Traumatic brain injury: integrated approaches to improve prevention, clinical care, and research
Andrew I. R. Maas et al.
LANCET NEUROLOGY (2017)
A survey on deep learning in medical image analysis
Geert Litjens et al.
MEDICAL IMAGE ANALYSIS (2017)
Revisiting Grade 3 Diffuse Axonal Injury: Not All Brainstem Microbleeds are Prognostically Equal
Saef Izzy et al.
NEUROCRITICAL CARE (2017)
Automatic Detection of Cerebral Microbleeds From MR Images via 3D Convolutional Neural Networks
Qi Dou et al.
IEEE TRANSACTIONS ON MEDICAL IMAGING (2016)
Traumatic Axonal Injury: Mechanisms and Translational Opportunities
Ciaran S. Hill et al.
TRENDS IN NEUROSCIENCES (2016)
Automated detection of cerebral microbleeds in patients with traumatic brain injury
T. L. A. van den Heuvel et al.
NEUROIMAGE-CLINICAL (2016)
Diffuse axonal injury after traumatic cerebral microbleeds: an evaluation of imaging techniques
Jun Liu et al.
NEURAL REGENERATION RESEARCH (2014)
Cerebral Microbleeds and Recurrent Stroke Risk Systematic Review and Meta-Analysis of Prospective Ischemic Stroke and Transient Ischemic Attack Cohorts
Andreas Charidimou et al.
STROKE (2013)
Cerebral microbleeds and cognition in cerebrovascular disease: An update
Andreas Charidimou et al.
JOURNAL OF THE NEUROLOGICAL SCIENCES (2012)
Efficient detection of cerebral microbleeds on 7.0 T MR images using the radial symmetry transform
Hugo J. Kuijf et al.
NEUROIMAGE (2012)
Diffuse vascular injury: convergent-type hemorrhage in the supratentorial white matter on susceptibility-weighted image in cases of severe traumatic brain damage
Asami Iwamura et al.
NEURORADIOLOGY (2012)
Semiautomated detection of cerebral microbleeds in magnetic resonance images
Samuel R. S. Barnes et al.
MAGNETIC RESONANCE IMAGING (2011)
N4ITK: Improved N3 Bias Correction
Nicholas J. Tustison et al.
IEEE TRANSACTIONS ON MEDICAL IMAGING (2010)
MR Imaging Detection of Cerebral Microbleeds: Effect of Susceptibility-Weighted Imaging, Section Thickness, and Field Strength
R. N. K. Nandigam et al.
AMERICAN JOURNAL OF NEURORADIOLOGY (2009)
Susceptibility-Weighted Imaging: Technical Aspects and Clinical Applications, Part 1
E. M. Haacke et al.
AMERICAN JOURNAL OF NEURORADIOLOGY (2009)
Cerebral microbleeds: a guide to detection and interpretation
Steven M. Greenberg et al.
LANCET NEUROLOGY (2009)
The Microbleed Anatomical Rating Scale (MARS) Reliability of a tool to map brain microbleeds
S. M. Gregoire et al.
NEUROLOGY (2009)
Improving Interrater Agreement About Brain Microbleeds Development of the Brain Observer MicroBleed Scale (BOMBS)
Charlotte Cordonnier et al.
STROKE (2009)
Incidental findings on brain MRI in the general population
Meike W. Vernooij et al.
NEW ENGLAND JOURNAL OF MEDICINE (2007)
Cerebral amyloid angiopathy: CT and MR imaging findings
Christine P. Chao et al.
RADIOGRAPHICS (2006)
Early Glasgow Outcome Scale scores predict long-term functional outcome in patients with severe traumatic brain injury
JT King et al.
JOURNAL OF NEUROTRAUMA (2005)
Susceptibility weighted imaging (SWI)
EM Haacke et al.
MAGNETIC RESONANCE IN MEDICINE (2004)
Fast radial symmetry for detecting points of interest
G Loy et al.
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE (2003)