4.7 Article

Accuracy and reliability of diffusion imaging models

Journal

NEUROIMAGE
Volume 254, Issue -, Pages -

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2022.119138

Keywords

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Funding

  1. NIH [T32MH100019, NS088590, MH96773, MH122066, MH124567, MH121276, HD087011, NS115672, NS110332, MH1000872, MH112473, NS090978, MH121518, MH104592, HD094381, AG053548, NS098577]
  2. US Department of Veterans Affairs Clinical Sciences Research and Development Service [1IK2CX001680]
  3. Kiwanis Neuroscience Research Foundation
  4. Jacobs Foundation [2016121703]
  5. Child Neurology Foundation
  6. McDonnell Center for Systems Neuroscience
  7. McDonnell Foundation
  8. Mallinckrodt Institute of Radiology [14-011]
  9. Hope Center for Neurological Disorders
  10. Intellectual and Developmental Disabilities Research Center at Washington University
  11. Bright-Focus Foundation [A2017330S]
  12. March of Dimes

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This study evaluated the accuracy and reliability of diffusion imaging methods in relation to data quantity and analysis method. A novel Bayesian Multi-tensor Model-selection (BaMM) method was developed to address overfitting and showed high reliability and improved accuracy with increasing amounts of diffusion data.
Diffusion imaging aims to non-invasively characterize the anatomy and integrity of the brain's white matter fibers. We evaluated the accuracy and reliability of commonly used diffusion imaging methods as a function of data quantity and analysis method, using both simulations and highly sampled individual-specific data (927-1442 diffusion weighted images [DWIs] per individual). Diffusion imaging methods that allow for crossing fibers (FSL's BedpostX [BPX], DSI Studio's Constant Solid Angle Q-Ball Imaging [CSA-QBI], MRtrix3's Constrained Spherical Deconvolution [CSD]) estimated excess fibers when insufficient data were present and/or when the data did not match the model priors. To reduce such overfitting, we developed a novel Bayesian Multi-tensor Model-selection (BaMM) method and applied it to the popular ball-and-stick model used in BedpostX within the FSL software package. BaMM was robust to overfitting and showed high reliability and the relatively best crossing-fiber accuracy with increasing amounts of diffusion data. Thus, sufficient data and an overfitting resistant analysis method enhance precision diffusion imaging. For potential clinical applications of diffusion imaging, such as neurosurgical planning and deep brain stimulation (DBS), the quantities of data required to achieve diffusion imaging reliability are lower than those needed for functional MRI.

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