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      Radiomics and machine learning may accurately predict the grade and histological subtype in meningiomas using conventional and diffusion tensor imaging

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          Textural Features for Image Classification

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            Multimodality image registration by maximization of mutual information.

            A new approach to the problem of multimodality medical image registration is proposed, using a basic concept from information theory, mutual information (MI), or relative entropy, as a new matching criterion. The method presented in this paper applies MI to measure the statistical dependence or information redundancy between the image intensities of corresponding voxels in both images, which is assumed to be maximal if the images are geometrically aligned. Maximization of MI is a very general and powerful criterion, because no assumptions are made regarding the nature of this dependence and no limiting constraints are imposed on the image content of the modalities involved. The accuracy of the MI criterion is validated for rigid body registration of computed tomography (CT), magnetic resonance (MR), and photon emission tomography (PET) images by comparison with the stereotactic registration solution, while robustness is evaluated with respect to implementation issues, such as interpolation and optimization, and image content, including partial overlap and image degradation. Our results demonstrate that subvoxel accuracy with respect to the stereotactic reference solution can be achieved completely automatically and without any prior segmentation, feature extraction, or other preprocessing steps which makes this method very well suited for clinical applications.
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              Training and assessing classification rules with imbalanced data

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                Author and article information

                Contributors
                Journal
                European Radiology
                Eur Radiol
                Springer Science and Business Media LLC
                0938-7994
                1432-1084
                August 2019
                November 15 2018
                August 2019
                : 29
                : 8
                : 4068-4076
                Article
                10.1007/s00330-018-5830-3
                30443758
                5ada836e-ef67-4270-b86d-cc1c41af8263
                © 2019

                http://www.springer.com/tdm

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