4.7 Article

Learning to estimate the fiber orientation distribution function from diffusion-weighted MRI

期刊

NEUROIMAGE
卷 239, 期 -, 页码 -

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2021.118316

关键词

Diffusion-weighted MRI; Diffusion tensor imaging; fiber orientation distribution; Machine learning; Deep learning

资金

  1. National Institute of Neurological Disorders and Stroke
  2. National Institute of Biomedical Imaging and Bioengineering
  3. National Library of Medicine of the National Institutes of Health (NIH) [R01NS106030, R01EB031849, R01EB019483, R01LM013608]
  4. Office of the Director of the NIH [S10OD0250111]
  5. Technological Innovations in Neuroscience Award from the McKnight Foundation
  6. Ralph Schlager Fellowship of Harvard University
  7. American Roentgen Ray Society

向作者/读者索取更多资源

This study proposed a data-driven method to improve the accuracy and robustness of white matter fiber orientation distribution function (fODF) estimation, demonstrating effectiveness through training with simulated and real data. In phantom and real data experiments, the method showed higher accuracy compared to other competing methods, particularly in under sampled diffusion measurements. Additionally, expert ratings indicated significantly better reconstruction of various brain tracts using the proposed method.
Estimation of white matter fiber orientation distribution function (fODF) is the essential first step for reliable brain tractography and connectivity analysis. Most of the existing fODF estimation methods rely on sub-optimal physical models of the diffusion signal or mathematical simplifications, which can impact the estimation accuracy. In this paper, we propose a data-driven method that avoids some of these pitfalls. Our proposed method is based on a multilayer perceptron that learns to map the diffusion-weighted measurements, interpolated onto a fixed spherical grid in the q space, to the target fODF. Importantly, we also propose methods for synthesizing reliable simulated training data. We show that the model can be effectively trained with simulated or real training data. Our phantom experiments show that the proposed method results in more accurate fODF estimation and tractography than several competing methods including the multi-tensor model, Bayesian estimation, spherical deconvolution, and two other machine learning techniques. On real data, we compare our method with other techniques in terms of accuracy of estimating the ground-truth fODF. The results show that our method is more accurate than other methods, and that it performs better than the competing methods when applied to under sampled diffusion measurements. We also compare our method with the Sparse Fascicle Model in terms of expert ratings of the accuracy of reconstruction of several commissural, projection, association, and cerebellar tracts. The results show that the tracts reconstructed with the proposed method are rated significantly higher by three independent experts. Our study demonstrates the potential of data-driven methods for improving the accuracy and robustness of fODF estimation.

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