Title of article :
Multi-component fiber track modelling of diffusion-weighted magnetic resonance imaging data
Author/Authors :
Kadah, Yasser M. Cairo University - Biomedical Engineering Department, Egypt , Yassine, Inas A. West Virginia University - Lane Department of Computer Science and Electrical Engineering, USA
From page :
39
To page :
51
Abstract :
In conventional diffusion tensor imaging (DTI) based on magnetic resonance data, each voxel is assumed to contain a single component having diffusion properties that can be fully represented by a single tensor. Even though this assumption can be valid in some cases, the general case involves the mixing of components, resulting in significant deviation from the single tensor model. Hence, a strategy that allows the decomposition of data based on a mixture model has the potential of enhancing the diagnostic value of DTI. This project aims to work towards the development and experimental verification of a robust method for solving the problem of multi-component modelling of diffusion tensor imaging data. The new method demonstrates significant error reduction from the single-component model while maintaining practicality for clinical applications, obtaining more accurate Fiber tracking results.
Keywords :
Diffusion imaging , Magnetic resonance imaging , Multi , tensor estimation , Brain imaging
Journal title :
Journal of Advanced Research
Journal title :
Journal of Advanced Research
Record number :
2572059
Link To Document :
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