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Learning-based deformable registration of MR brain images
Guorong Wu, Feihu Qi, Dinggang Shen
Research output
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Contribution to journal
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Article
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peer-review
97
Citations (Scopus)
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Keyphrases
Brain Magnetic Resonance Imaging
100%
Learning-based
100%
Brain Data
100%
Deformable Image Registration
100%
Geometric Features
100%
Training Samples
50%
Registration Algorithm
50%
Registration Accuracy
50%
Corresponding Points
50%
Brain Image Registration
50%
Hammer
50%
Registration Method
50%
Cortical Regions
50%
Energy Function
50%
Image Point
50%
Correspondence Detection
50%
Active Point
50%
Initial Registration
50%
Consistency Measure
50%
Saliency Ratio
50%
Engineering
Brain Image
100%
Registration Procedure
100%
Geometric Feature
66%
Registration Accuracy
33%
Registration Method
33%
Image Point
33%
Energy Function
33%
Initial Registration
33%
Mathematics
Magnetic Resonance
100%
Energy Function
50%
Training Sample
50%
Image Point
50%
Consistent Point
50%
Computer Science
Deformable Registration
100%
Training Sample
50%
Energy Function
50%
Cortical Region
50%
Join Point
50%