Model-based 3-D segmentation of multiple sclerosis lesions in magnetic resonance brain images
- 1 January 1995
- journal article
- Published by Institute of Electrical and Electronics Engineers (IEEE) in IEEE Transactions on Medical Imaging
- Vol. 14 (3), 442-453
- https://doi.org/10.1109/42.414608
Abstract
Human investigators instinctively segment medical images into their anatomical components, drawing upon prior knowledge of anatomy to overcome image artifacts, noise, and lack of tissue contrast. The authors describe: 1) the development and use of a brain tissue probability model for the segmentation of multiple sclerosis (MS) lesions in magnetic resonance (MR) brain images, and 2) an empirical comparison of the performance of statistical and decision tree classifiers, applied to MS lesion segmentation. Based on MR image data obtained from healthy volunteers, the model provides prior probabilities of brain tissue distribution per unit voxel in a standardized 3-D "brain space". In comparison to purely data-driven segmentation, the use of the model to guide the segmentation of MS lesions reduced the volume of false positive lesions by 50-80%Keywords
This publication has 34 references indexed in Scilit:
- Automating segmentation of dual-echo MR head dataPublished by Springer Nature ,2005
- Quantitative MRI studies for assessment of multiple sclerosisMagnetic Resonance in Medicine, 1992
- Three-Dimensional Segmentation of MR Images of the Head Using Probability and ConnectivityJournal of Computer Assisted Tomography, 1990
- Evaluation of Elastic Matching System for Anatomic (CT, MR) and Functional (PET) Cerebral ImagesJournal of Computer Assisted Tomography, 1989
- Anatomic segmentation and volumetric calculations in nuclear magnetic resonance imagingIEEE Transactions on Medical Imaging, 1989
- An Approach to Combining Explanation-based and Neural Learning AlgorithmsConnection Science, 1989
- A knowledge-based system for biomedical image processing and recognitionIEEE Transactions on Circuits and Systems, 1987
- Intensity correction in surface-coil MR imagingAmerican Journal of Roentgenology, 1987
- Computer-Interactive Method for Quantifying Cerebrospinal Fluid and Tissue in Brain CT Scans: Effects of AgingJournal of Computer Assisted Tomography, 1986
- The ubiquity of discoveryArtificial Intelligence, 1977