Evaluating the accuracy of diffusion MRI models in white matter
Ariel Rokem, Jason D. Yeatman, Franco Pestilli, Kendrick N. Kay, Aviv, Mezer, Stefan van der Walt, and Brian A. Wandell

TL;DR
This study compares the accuracy of diffusion tensor and sparse fascicle models in white matter, showing SFM generally outperforms DTM, especially in complex fiber regions, improving fiber orientation estimation.
Contribution
First comprehensive evaluation of the model-accuracy of DTM and SFM in human white matter using cross-validation across different b-values.
Findings
SFM outperforms DTM in most white matter regions.
SFM provides more accurate fiber orientation estimates.
DTM accuracy is often below test-retest reliability.
Abstract
Models of diffusion MRI within a voxel are useful for making inferences about the properties of the tissue and inferring fiber orientation distribution used by tractography algorithms. A useful model must fit the data accurately. However, evaluations of model-accuracy of some of the models that are commonly used in analyzing human white matter have not been published before. Here, we evaluate model-accuracy of the two main classes of diffusion MRI models. The diffusion tensor model (DTM) summarizes diffusion as a 3-dimensional Gaussian distribution. Sparse fascicle models (SFM) summarize the signal as a linear sum of signals originating from a collection of fascicles oriented in different directions. We use cross-validation to assess model-accuracy at different gradient amplitudes (b-values) throughout the white matter. Specifically, we fit each model to all the white matter voxels in…
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