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1.
Neuroimage ; 150: 119-135, 2017 04 15.
Article in English | MEDLINE | ID: mdl-28188915

ABSTRACT

Some microstructure parameters, such as permeability, remain elusive because mathematical models that express their relationship to the MR signal accurately are intractable. Here, we propose to use computational models learned from simulations to estimate these parameters. We demonstrate the approach in an example which estimates water residence time in brain white matter. The residence time τi of water inside axons is a potentially important biomarker for white matter pathologies of the human central nervous system, as myelin damage is hypothesised to affect axonal permeability, and thus τi. We construct a computational model using Monte Carlo simulations and machine learning (specifically here a random forest regressor) in order to learn a mapping between features derived from diffusion weighted MR signals and ground truth microstructure parameters, including τi. We test our numerical model using simulated and in vivo human brain data. Simulation results show that estimated parameters have strong correlations with the ground truth parameters (R2={0.88,0.95,0.82,0.99}) for volume fraction, residence time, axon radius and diffusivity respectively), and provide a marked improvement over the most widely used Kärger model (R2={0.75,0.60,0.11,0.99}). The trained model also estimates sensible microstructure parameters from in vivo human brain data acquired from healthy controls, matching values found in literature, and provides better reproducibility than the Kärger model on both the voxel and ROI level. Finally, we acquire data from two Multiple Sclerosis (MS) patients and compare to the values in healthy subjects. We find that in the splenium of corpus callosum (CC-S) the estimate of the residence time is 0.57±0.05s for the healthy subjects, while in the MS patient with a lesion in CC-S it is 0.33±0.12s in the normal appearing white matter (NAWM) and 0.19±0.11s in the lesion. In the corticospinal tracts (CST) the estimate of the residence time is 0.52±0.09s for the healthy subjects, while in the MS patient with a lesion in CST it is 0.56±0.05s in the NAWM and 0.13±0.09s in the lesion. These results agree with our expectations that the residence time in lesions would be lower than in NAWM because the loss of myelin should increase permeability. Overall, we find parameter estimates in the two MS patients consistent with expectations from the pathology of MS lesions demonstrating the clinical potential of this new technique.


Subject(s)
Brain/diagnostic imaging , Computer Simulation , Machine Learning , Models, Theoretical , White Matter/diagnostic imaging , Adult , Brain/pathology , Echo-Planar Imaging , Female , Humans , Image Interpretation, Computer-Assisted/methods , Male , Middle Aged , Monte Carlo Method , Multiple Sclerosis/diagnostic imaging , Multiple Sclerosis/pathology , Permeability , White Matter/pathology , Young Adult
3.
Med Image Comput Comput Assist Interv ; 17(Pt 3): 257-64, 2014.
Article in English | MEDLINE | ID: mdl-25320807

ABSTRACT

The residence time Ti of water inside axons is an important biomarker for white matter pathologies of the human central nervous system, as myelin damage is hypothesised to increase axonal permeability, and thus reduce Ti. Diffusion-weighted (DW) MRI is potentially able to measure Ti as it is sensitive to the average displacement of water molecules in tissue. However, previous work addressing this has been hampered by a lack of both sensitive data and accurate mathematical models. We address the latter problem by constructing a computational model using Monte Carlo simulations and machine learning in order to learn a mapping between features derived from DW MR signals and ground truth microstructure parameters. We test our method using simulated and in vivo human brain data. Simulation results show that our approach provides a marked improvement over the most widely used mathematical model. The trained model also predicts sensible microstructure parameters from in vivo human brain data, matching values of Ti found in the literature.


Subject(s)
Artificial Intelligence , Brain/cytology , Diffusion Tensor Imaging/methods , Image Interpretation, Computer-Assisted/methods , Models, Neurological , Nerve Fibers, Myelinated/ultrastructure , Pattern Recognition, Automated/methods , Adult , Algorithms , Computer Simulation , Humans , Image Enhancement/methods , Male , Models, Statistical , Permeability , Reproducibility of Results , Sensitivity and Specificity
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