Joint Multi-Fiber NODDI Parameter Estimation and Tractography using the Unscented Information Filter
Tracing white matter fiber bundles is an integral part of analyzing brain connectivity. An accurate estimate of the underlying tissue parameters is also paramount in several neuroscience applications. In this work, we propose to use a joint fiber model estimation and tractography algorithm that uses...
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doaj-b84d718b8308405eb93dc549e9b2e30c2020-11-24T22:42:46ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2016-04-011010.3389/fnins.2016.00166174842Joint Multi-Fiber NODDI Parameter Estimation and Tractography using the Unscented Information FilterYogesh eRathi0Pradyumna eReddy1Harvard Medical SchoolWalmart IndiaTracing white matter fiber bundles is an integral part of analyzing brain connectivity. An accurate estimate of the underlying tissue parameters is also paramount in several neuroscience applications. In this work, we propose to use a joint fiber model estimation and tractography algorithm that uses the NODDI (neurite orientation dispersion diffusion imaging) model to estimate fiber orientation dispersion consistently and smoothly along the fiber tracts along with estimating the intracellular and extracellular volume fractions from the diffusion signal. While the NODDI model has been used in earlier works to estimate the microstructural parameters at each voxel independently, for the first time, we propose to integrate it into a tractography framework. We extend this framework to estimate the NODDI parameters for two crossing fibers, which is imperative to trace fiber bundles through crossings as well as to estimate the microstructural parameters for each fiber bundle separately. We propose to use the unscented information filter (UIF) to accurately estimate the model parameters and perform tractography. The proposed approach has significant computational performance improvements as well as numerical robustness over the unscented Kalman filter (UKF). Our method not only estimates the confidence in the estimated parameters via the covariance matrix, but also provides the Fisher-information matrix of the state variables (model parameters), which can be quite useful to measure model complexity. Results from in-vivo human brain data sets demonstrate the ability of our algorithm to trace through crossing fiber regions, while estimating orientation dispersion and other biophysical model parameters in a consistent manner along the tracts.http://journal.frontiersin.org/Journal/10.3389/fnins.2016.00166/fulltractographyfilteringdiffusion-weighted MRIUnscented Kalman filterUnscented Information FilterMulti-fiber |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yogesh eRathi Pradyumna eReddy |
spellingShingle |
Yogesh eRathi Pradyumna eReddy Joint Multi-Fiber NODDI Parameter Estimation and Tractography using the Unscented Information Filter Frontiers in Neuroscience tractography filtering diffusion-weighted MRI Unscented Kalman filter Unscented Information Filter Multi-fiber |
author_facet |
Yogesh eRathi Pradyumna eReddy |
author_sort |
Yogesh eRathi |
title |
Joint Multi-Fiber NODDI Parameter Estimation and Tractography using the Unscented Information Filter |
title_short |
Joint Multi-Fiber NODDI Parameter Estimation and Tractography using the Unscented Information Filter |
title_full |
Joint Multi-Fiber NODDI Parameter Estimation and Tractography using the Unscented Information Filter |
title_fullStr |
Joint Multi-Fiber NODDI Parameter Estimation and Tractography using the Unscented Information Filter |
title_full_unstemmed |
Joint Multi-Fiber NODDI Parameter Estimation and Tractography using the Unscented Information Filter |
title_sort |
joint multi-fiber noddi parameter estimation and tractography using the unscented information filter |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Neuroscience |
issn |
1662-453X |
publishDate |
2016-04-01 |
description |
Tracing white matter fiber bundles is an integral part of analyzing brain connectivity. An accurate estimate of the underlying tissue parameters is also paramount in several neuroscience applications. In this work, we propose to use a joint fiber model estimation and tractography algorithm that uses the NODDI (neurite orientation dispersion diffusion imaging) model to estimate fiber orientation dispersion consistently and smoothly along the fiber tracts along with estimating the intracellular and extracellular volume fractions from the diffusion signal. While the NODDI model has been used in earlier works to estimate the microstructural parameters at each voxel independently, for the first time, we propose to integrate it into a tractography framework. We extend this framework to estimate the NODDI parameters for two crossing fibers, which is imperative to trace fiber bundles through crossings as well as to estimate the microstructural parameters for each fiber bundle separately. We propose to use the unscented information filter (UIF) to accurately estimate the model parameters and perform tractography. The proposed approach has significant computational performance improvements as well as numerical robustness over the unscented Kalman filter (UKF). Our method not only estimates the confidence in the estimated parameters via the covariance matrix, but also provides the Fisher-information matrix of the state variables (model parameters), which can be quite useful to measure model complexity. Results from in-vivo human brain data sets demonstrate the ability of our algorithm to trace through crossing fiber regions, while estimating orientation dispersion and other biophysical model parameters in a consistent manner along the tracts. |
topic |
tractography filtering diffusion-weighted MRI Unscented Kalman filter Unscented Information Filter Multi-fiber |
url |
http://journal.frontiersin.org/Journal/10.3389/fnins.2016.00166/full |
work_keys_str_mv |
AT yogesherathi jointmultifibernoddiparameterestimationandtractographyusingtheunscentedinformationfilter AT pradyumnaereddy jointmultifibernoddiparameterestimationandtractographyusingtheunscentedinformationfilter |
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