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E-book: Machine Learning in Medical Imaging: 5th International Workshop, MLMI 2014, Held in Conjunction with MICCAI 2014, Boston, MA, USA, September 14, 2014, Proceedings

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  • Series: Lecture Notes in Computer Science 8679
  • Pub. Date: 05-Sep-2014
  • Publisher: Springer International Publishing AG
  • Language: eng
  • ISBN-13: 9783319105819
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  • Format: PDF+DRM
  • Series: Lecture Notes in Computer Science 8679
  • Pub. Date: 05-Sep-2014
  • Publisher: Springer International Publishing AG
  • Language: eng
  • ISBN-13: 9783319105819
Other books in subject:

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This book constitutes the refereed proceedings of the 5th International Workshop on Machine Learning in Medical Imaging, MLMI 2014, held in conjunction with the International Conference on Medical Image Computing and Computer Assisted Intervention, MICCAI 2014, in Cambridge, MA, USA, in September 2014. The 40 contributions included in this volume were carefully reviewed and selected from 70 submissions. They focus on major trends and challenges in the area of machine learning in medical imaging and aim to identify new cutting-edge techniques and their use in medical imaging.

Sparsity-Learning-Based Longitudinal MR Image Registration for Early Brain Development.- Graph-Based Label Propagation in Fetal brain MR Images.- Deep Learning Based Automatic immune Cell Detection for Immunohistochemistry Images.- Stacked Multiscale Feature learning for Domain Independent Medical Image Segmentation.- Detection of Mammographic Masses by Content-Based Image Retrieval.- Inferring Sources of Dementia Progression with Network Diffusion Model.- 3D Intervertebral Disc Localization through Representation Learning with Knowledge Transfer.- Exploring Compact Representation of SICE Matrices for Functional Brain Network Classification.- Deep Learning for Cerebellar Ataxia Classification and Functional Score Regression.- Manifold Alignment and Transfer Learning for Classification of Alzheimer"s Disease.- Gleason Grading of Prostate Tumors with Max-Margin Conditional Random Fields.- Learning Distance Transform for Boundary Detection and Deformable Segmentation in CT Prostate I

mages.- Geodesic Geometric mean of Regional Covariance Descriptors as an Image-Level Descriptor for nuclear Atypia Grading in Breast Images.- A constrained Regression Forests Solution to 3D Fetal Ultrasound Plane Localization for Longitudinal Analysis of Brain Growth and Maturation.- Deep Learning of Image Features from Unlabeled Data for Multiple Sclerosis Lesion Segmentation.- Fetal Abdominal Standard Plane Localization through Representation Learning with Knowledge Transfer.- Searching for Structures of Interest in an Ultrasound Video Sequence.- Anatomically Constrained Weak Classifier Fusion for Early Detection of Alzheimer"s Disease.- Automatic Bone and Marrow Extraction from Dual Energy CT through SVM Margin-Based Multi-Material Decomposition Model Selection.- Sparse Discriminative Feature Selection for Multi-Class Alzheimer"s Disease Classification.- Context-aware Anatomical Landmark Detection: Application to Deformable Model Initialization in Prostate CT Images.- Optimal M

AP Parameters Estimation in STAPLE-Learning from Performance Parameters versus Image Similarity Information.- Colon Biopsy Classification Using Crypt Architecture.- Network Guided Group Feature Selection for Classification of Autism Spectrum Disorder.- Deformation Field Correction for Spatial Normalization of PET Images Using a Population-derived Partial Least Squares Model.- Novel Multi-Atlas Segmentation by Matrix Completion.- Structured Random Forest for Myocardium Delineation in 3D Echocardiography.- Improved Reproducibility of Neuroanatomical Definition through Diffeomorphometry and Complexity Reduction.- Topological Descriptors of Histology Images.- Robust Deep Learning for Improved Classification of AD/MCI Patients.- Subject Specific Sparse Dictionary Learning for Atlas Based Brain MRI Segmentation.- Online Discriminative Multi-Atlas Learning with Application to Isointense Infant Brain Segmentation.
 Sparsity-Learning-Based Longitudinal MR Image Registration for Early
Brain Development.- Graph-Based Label Propagation in Fetal brain MR Images.-
Deep Learning Based Automatic immune Cell Detection for Immunohistochemistry
Images.- Stacked Multiscale Feature learning for Domain Independent Medical
Image Segmentation.- Detection of Mammographic Masses by Content-Based Image
Retrieval.- Inferring Sources of Dementia Progression with Network Diffusion
Model.- 3D Intervertebral Disc Localization through Representation Learning
with Knowledge Transfer.- Exploring Compact Representation of SICE Matrices
for Functional Brain Network Classification.- Deep Learning for Cerebellar
Ataxia Classification and Functional Score Regression.- Manifold Alignment
and Transfer Learning for Classification of Alzheimers Disease.- Gleason
Grading of Prostate Tumors with Max-Margin Conditional Random Fields.-
Learning Distance Transform for Boundary Detection and Deformable
Segmentation in CT Prostate Images.- Geodesic Geometric mean of Regional
Covariance Descriptors as an Image-Level Descriptor for nuclear Atypia
Grading in Breast Images.- A constrained Regression Forests Solution to 3D
Fetal Ultrasound Plane Localization for Longitudinal Analysis of Brain Growth
and Maturation.- Deep Learning of Image Features from Unlabeled Data for
Multiple Sclerosis Lesion Segmentation.- Fetal Abdominal Standard Plane
Localization through Representation Learning with Knowledge Transfer.-
Searching for Structures of Interest in an Ultrasound Video Sequence.-
Anatomically Constrained Weak Classifier Fusion for Early Detection of
Alzheimers Disease.- Automatic Bone and Marrow Extraction from Dual Energy
CT through SVM Margin-Based Multi-Material Decomposition Model Selection.-
Sparse Discriminative Feature Selection for Multi-Class Alzheimers Disease
Classification.- Context-aware Anatomical Landmark Detection: Application to
Deformable Model Initialization in Prostate CT Images.-Optimal MAP Parameters
Estimation in STAPLE-Learning from Performance Parameters versus Image
Similarity Information.- Colon Biopsy Classification Using Crypt
Architecture.- Network Guided Group Feature Selection for Classification of
Autism Spectrum Disorder.- Deformation Field Correction for Spatial
Normalization of PET Images Using a Population-derived Partial Least Squares
Model.- Novel Multi-Atlas Segmentation by Matrix Completion.- Structured
Random Forest for Myocardium Delineation in 3D Echocardiography.- Improved
Reproducibility of Neuroanatomical Definition through Diffeomorphometry and
Complexity Reduction.- Topological Descriptors of Histology Images.- Robust
Deep Learning for Improved Classification of AD/MCI Patients.- Subject
Specific Sparse Dictionary Learning for Atlas Based Brain MRI Segmentation.-
Online Discriminative Multi-Atlas Learning with Application to Isointense
Infant Brain Segmentation.