Automatic lesion incidence estimation and detection in multiple sclerosis using multisequence longitudinal MRI
about
brainR: Interactive 3 and 4D Images of High Resolution Neuroimage Data.Health effects of lesion localization in multiple sclerosis: spatial registration and confounding adjustmentStatistical normalization techniques for magnetic resonance imaging.Scan-stratified case-control sampling for modeling blood-brain barrier integrity in multiple sclerosis.Sample-size calculations for short-term proof-of-concept studies of tissue protection and repair in multiple sclerosis lesions via conventional clinical imaging.fslr: Connecting the FSL Software with RRelating multi-sequence longitudinal intensity profiles and clinical covariates in incident multiple sclerosis lesions.OASIS is Automated Statistical Inference for Segmentation, with applications to multiple sclerosis lesion segmentation in MRI.Longitudinal multiple sclerosis lesion segmentation: Resource and challenge.A supervised framework with intensity subtraction and deformation field features for the detection of new T2-w lesions in multiple sclerosis.Diagnostic accuracy of semiautomatic lesion detection plus quantitative susceptibility mapping in the identification of new and enhancing multiple sclerosis lesions.Improved Automatic Detection of New T2 Lesions in Multiple Sclerosis Using Deformation Fields.A novel imaging technique for better detecting new lesions in multiple sclerosis.Automated identification of brain new lesions in multiple sclerosis using subtraction images.Validation of White-Matter Lesion Change Detection Methods on a Novel Publicly Available MRI Image Database.A subtraction pipeline for automatic detection of new appearing multiple sclerosis lesions in longitudinal studies.An Automated Statistical Technique for Counting Distinct Multiple Sclerosis Lesions.
P2860
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P2860
Automatic lesion incidence estimation and detection in multiple sclerosis using multisequence longitudinal MRI
description
2012 nî lūn-bûn
@nan
2012年の論文
@ja
2012年論文
@yue
2012年論文
@zh-hant
2012年論文
@zh-hk
2012年論文
@zh-mo
2012年論文
@zh-tw
2012年论文
@wuu
2012年论文
@zh
2012年论文
@zh-cn
name
Automatic lesion incidence est ...... multisequence longitudinal MRI
@ast
Automatic lesion incidence est ...... multisequence longitudinal MRI
@en
type
label
Automatic lesion incidence est ...... multisequence longitudinal MRI
@ast
Automatic lesion incidence est ...... multisequence longitudinal MRI
@en
prefLabel
Automatic lesion incidence est ...... multisequence longitudinal MRI
@ast
Automatic lesion incidence est ...... multisequence longitudinal MRI
@en
P2093
P2860
P356
P1476
Automatic lesion incidence est ...... multisequence longitudinal MRI
@en
P2093
C M Crainiceanu
E M Sweeney
R T Shinohara
P2860
P356
10.3174/AJNR.A3172
P577
2012-07-05T00:00:00Z