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  • Machine Learning in MRI: From Methods to Clinical Translation

    Machine Learning in MRI by Kuestner, Ing Thomas; Huang, Hao; Baumgartner, Christian F;

    From Methods to Clinical Translation

    Series: Advances in Magnetic Resonance Technology and Applications; 13;

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    Product details:

    • Publisher Academic Press
    • Date of Publication 1 September 2025

    • ISBN 9780443141096
    • Binding Paperback
    • No. of pages375 pages
    • Size 234x190 mm
    • Weight 450 g
    • Language English
    • 700

    Categories

    Long description:

    Machine Learning in MRI: From Methods to Clinical Translation, Volume Thirteen in the
    Advances in Magnetic Resonance Technology and Applications series presents state-of-the-art machine learning methods in magnetic resonance imaging that can shape and impact the future of patient treatment and planning. Common methods and strategies along the processing chain of data acquisition, image reconstruction, image post-processing, and image analysis of these imaging modalities are presented and illustrated. The book focuses on applications and anatomies for which machine learning methods can bring, or have already brought. Ideas and concepts on how processing could be harmonized and used to provide deployable frameworks that integrate into the clinical workflows are also considered.

    Pitfalls and current limitations are discussed in the context of how they could be overcome to cater for clinical needs, making this an ideal reference for medical imaging researchers, industry scientists and engineers, advanced undergraduate and graduate students, and clinicians. By giving an interdisciplinary presentation and discussion on the obstacles and possible solutions for the clinical translation of machine learning methods, this book enables the evolution of machine learning in medical imaging for the next decade.

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    Table of Contents:

    Part One: Basics of Machine Learning and Magnetic Resonance Imaging
    1. The statistics behind Machine Learning
    2. The Ingredients for Machine Learning
    3. Introduction to the Physics behind MR

    Part Two: MR Image Acquisition
    4. Adjust to your imaging scenario: learning and optimizing MR sampling
    5. MR Imaging in the low field: Leveraging the power of machine learning
    6. The Smart spin: Machine learning for magnetic resonance spectroscopy

    Part Three: MR Image Reconstruction
    7. Get the Image: Machine Learning for MR image reconstruction
    8. Enhance the Image: Super resolution in MRI
    9. Freeze the motion: Machine Learning for motion correction
    10. Map the Image: Machine learning for quantitative MR Mapping
    11. Am (A)I hallucinating: Robustness of MR Image reconstruction

    Part Four: MR image Post-Processing
    12. Cut it here: Image Segmentation for MRI
    13. Quality Matters: Automated MR Image Quality control
    14. What is beyond the image? Machine Learning for MR Image Analysis
    15. Give me that other image: machine learning for image-to-image translation

    Part Five: Generalization and Fairness
    16. The cause and effect of an MR image: Robustness and generalizability
    17. Scale it up: Large-scale MR data processing
    18. Human in the loop: integration of experts to MR Data Processing

    Part Six: Clinical Application
    19. Clinical Applications of machine learning in brain, neck and spine MRI
    20. Clinical Applications of machine learning in cardiac MRI
    21. Clinical Applications of machine learning in body MRI
    22. Clinical Applications of machine learning in breast MRI
    23. Clinical Applications of Machine Learning in musculoskeletal MRI

    Part Seven: Reproducibility
    24. Let’s share: Open-Source frameworks and public databases
    25. System under test: challenges for algorithm benchmarking

    Part Eight: Conclusion
    26. Future Challenges and Directions

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