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2017 | OriginalPaper | Chapter

Estimation of Tissue Microstructure Using a Deep Network Inspired by a Sparse Reconstruction Framework

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Abstract

Diffusion magnetic resonance imaging (dMRI) provides a unique tool for noninvasively probing the microstructure of the neuronal tissue. The NODDI model has been a popular approach to the estimation of tissue microstructure in many neuroscience studies. It represents the diffusion signals with three types of diffusion in tissue: intra-cellular, extra-cellular, and cerebrospinal fluid compartments. However, the original NODDI method uses a computationally expensive procedure to fit the model and could require a large number of diffusion gradients for accurate microstructure estimation, which may be impractical for clinical use. Therefore, efforts have been devoted to efficient and accurate NODDI microstructure estimation with a reduced number of diffusion gradients. In this work, we propose a deep network based approach to the NODDI microstructure estimation, which is named Microstructure Estimation using a Deep Network (MEDN). Motivated by the AMICO algorithm which accelerates the computation of NODDI parameters, we formulate the microstructure estimation problem in a dictionary-based framework. The proposed network comprises two cascaded stages. The first stage resembles the solution to a dictionary-based sparse reconstruction problem and the second stage computes the final microstructure using the output of the first stage. The weights in the two stages are jointly learned from training data, which is obtained from training dMRI scans with diffusion gradients that densely sample the q-space. The proposed method was applied to brain dMRI scans, where two shells each with 30 gradient directions (60 diffusion gradients in total) were used. Estimation accuracy with respect to the gold standard was measured and the results demonstrate that MEDN outperforms the competing algorithms.

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Literature
1.
go back to reference Alexander, D.C., Hubbard, P.L., Hall, M.G., Moore, E.A., Ptito, M., Parker, G.J., Dyrby, T.B.: Orientationally invariant indices of axon diameter and density from diffusion MRI. NeuroImage 52(4), 1374–1389 (2010)CrossRef Alexander, D.C., Hubbard, P.L., Hall, M.G., Moore, E.A., Ptito, M., Parker, G.J., Dyrby, T.B.: Orientationally invariant indices of axon diameter and density from diffusion MRI. NeuroImage 52(4), 1374–1389 (2010)CrossRef
2.
go back to reference Assaf, Y., Basser, P.J.: Composite hindered and restricted model of diffusion (CHARMED) MR imaging of the human brain. NeuroImage 27(1), 48–58 (2005)CrossRef Assaf, Y., Basser, P.J.: Composite hindered and restricted model of diffusion (CHARMED) MR imaging of the human brain. NeuroImage 27(1), 48–58 (2005)CrossRef
3.
go back to reference Auría, A., Romascano, D.P.R., Canales-Rodriguez, E., Wiaux, Y., Dirby, T.B., Alexander, D., Thiran, J.P., Daducci, A.: Accelerated microstructure imaging via convex optimisation for regions with multiple fibres (AMICOx). In: IEEE International Conference on Image Processing 2015, pp. 1673–1676. IEEE (2015) Auría, A., Romascano, D.P.R., Canales-Rodriguez, E., Wiaux, Y., Dirby, T.B., Alexander, D., Thiran, J.P., Daducci, A.: Accelerated microstructure imaging via convex optimisation for regions with multiple fibres (AMICOx). In: IEEE International Conference on Image Processing 2015, pp. 1673–1676. IEEE (2015)
4.
5.
go back to reference Daducci, A., Canales-Rodríguez, E.J., Zhang, H., Dyrby, T.B., Alexander, D.C., Thiran, J.P.: Accelerated Microstructure Imaging via Convex Optimization (AMICO) from diffusion MRI data. NeuroImage 105, 32–44 (2015)CrossRef Daducci, A., Canales-Rodríguez, E.J., Zhang, H., Dyrby, T.B., Alexander, D.C., Thiran, J.P.: Accelerated Microstructure Imaging via Convex Optimization (AMICO) from diffusion MRI data. NeuroImage 105, 32–44 (2015)CrossRef
6.
go back to reference Golkov, V., Dosovitskiy, A., Sperl, J.I., Menzel, M.I., Czisch, M., Sämann, P., Brox, T., Cremers, D.: q-space deep learning: twelve-fold shorter and model-free diffusion MRI scans. IEEE Trans. Med. Imaging 35(5), 1344–1351 (2016)CrossRef Golkov, V., Dosovitskiy, A., Sperl, J.I., Menzel, M.I., Czisch, M., Sämann, P., Brox, T., Cremers, D.: q-space deep learning: twelve-fold shorter and model-free diffusion MRI scans. IEEE Trans. Med. Imaging 35(5), 1344–1351 (2016)CrossRef
7.
go back to reference Gregor, K., LeCun, Y.: Learning fast approximations of sparse coding. In: International Conference on Machine Learning, pp. 399–406 (2010) Gregor, K., LeCun, Y.: Learning fast approximations of sparse coding. In: International Conference on Machine Learning, pp. 399–406 (2010)
8.
go back to reference Johansen-Berg, H., Behrens, T.E.J.: Diffusion MRI: From Quantitative Measurement to in Vivo Neuroanatomy. Academic Press, Waltham (2013) Johansen-Berg, H., Behrens, T.E.J.: Diffusion MRI: From Quantitative Measurement to in Vivo Neuroanatomy. Academic Press, Waltham (2013)
9.
go back to reference Kamagata, K., Hatano, T., Okuzumi, A., Motoi, Y., Abe, O., Shimoji, K., Kamiya, K., Suzuki, M., Hori, M., Kumamaru, K.K., Hattori, N., Aoki, S.: Neurite orientation dispersion and density imaging in the substantia nigra in idiopathic Parkinson disease. Eur. Radiol. 26(8), 2567–2577 (2016)CrossRef Kamagata, K., Hatano, T., Okuzumi, A., Motoi, Y., Abe, O., Shimoji, K., Kamiya, K., Suzuki, M., Hori, M., Kumamaru, K.K., Hattori, N., Aoki, S.: Neurite orientation dispersion and density imaging in the substantia nigra in idiopathic Parkinson disease. Eur. Radiol. 26(8), 2567–2577 (2016)CrossRef
10.
go back to reference Kelly, C.E., Thompson, D.K., Chen, J., Leemans, A., Adamson, C.L., Inder, T.E., Cheong, J.L., Doyle, L.W., Anderson, P.J.: Axon density and axon orientation dispersion in children born preterm. Hum. Brain Mapp. 37(9), 3080–3102 (2016)CrossRef Kelly, C.E., Thompson, D.K., Chen, J., Leemans, A., Adamson, C.L., Inder, T.E., Cheong, J.L., Doyle, L.W., Anderson, P.J.: Axon density and axon orientation dispersion in children born preterm. Hum. Brain Mapp. 37(9), 3080–3102 (2016)CrossRef
12.
go back to reference Konda, K., Memisevic, R., Krueger, D.: Zero-bias autoencoders and the benefits of co-adapting features. arXiv preprint arXiv:1402.3337 (2014) Konda, K., Memisevic, R., Krueger, D.: Zero-bias autoencoders and the benefits of co-adapting features. arXiv preprint arXiv:​1402.​3337 (2014)
13.
go back to reference Krizhevsky, A., Sutskever, I., Hinton, G.E.: ImageNet classification with deep convolutional neural networks. In: Advances in Neural Information Processing Systems, pp. 1097–1105 (2012) Krizhevsky, A., Sutskever, I., Hinton, G.E.: ImageNet classification with deep convolutional neural networks. In: Advances in Neural Information Processing Systems, pp. 1097–1105 (2012)
14.
go back to reference Landman, B.A., Bogovic, J.A., Wan, H., ElShahaby, F.E.Z., Bazin, P.L., Prince, J.L.: Resolution of crossing fibers with constrained compressed sensing using diffusion tensor MRI. NeuroImage 59(3), 2175–2186 (2012)CrossRef Landman, B.A., Bogovic, J.A., Wan, H., ElShahaby, F.E.Z., Bazin, P.L., Prince, J.L.: Resolution of crossing fibers with constrained compressed sensing using diffusion tensor MRI. NeuroImage 59(3), 2175–2186 (2012)CrossRef
15.
go back to reference LeCun, Y., Bengio, Y., Hinton, G.: Deep learning. Nature 521(7553), 436–444 (2015)CrossRef LeCun, Y., Bengio, Y., Hinton, G.: Deep learning. Nature 521(7553), 436–444 (2015)CrossRef
16.
go back to reference Nair, V., Hinton, G.E.: Rectified linear units improve restricted Boltzmann machines. In: Proceedings of the 27th International Conference on Machine Learning, pp. 807–814 (2010) Nair, V., Hinton, G.E.: Rectified linear units improve restricted Boltzmann machines. In: Proceedings of the 27th International Conference on Machine Learning, pp. 807–814 (2010)
17.
go back to reference Sprechmann, P., Bronstein, A.M., Sapiro, G.: Learning efficient sparse and low rank models. IEEE Trans. Pattern Anal. Mach. Intell. 37(9), 1821–1833 (2015)CrossRef Sprechmann, P., Bronstein, A.M., Sapiro, G.: Learning efficient sparse and low rank models. IEEE Trans. Pattern Anal. Mach. Intell. 37(9), 1821–1833 (2015)CrossRef
18.
go back to reference Tariq, M., Schneider, T., Alexander, D.C., Wheeler-Kingshott, C.A.G., Zhang, H.: Bingham-NODDI: mapping anisotropic orientation dispersion of neurites using diffusion MRI. NeuroImage 133, 207–223 (2016)CrossRef Tariq, M., Schneider, T., Alexander, D.C., Wheeler-Kingshott, C.A.G., Zhang, H.: Bingham-NODDI: mapping anisotropic orientation dispersion of neurites using diffusion MRI. NeuroImage 133, 207–223 (2016)CrossRef
19.
go back to reference Van Essen, D.C., Smith, S.M., Barch, D.M., Behrens, T.E.J., Yacoub, E., Ugurbil, K.: The WU-Minn human connectome project: an overview. NeuroImage 80, 62–79 (2013)CrossRef Van Essen, D.C., Smith, S.M., Barch, D.M., Behrens, T.E.J., Yacoub, E., Ugurbil, K.: The WU-Minn human connectome project: an overview. NeuroImage 80, 62–79 (2013)CrossRef
20.
go back to reference Wang, Z., Ling, Q., Huang, T.S.: Learning deep \(\ell _0\) encoders. In: AAAI Conference on Artificial Intelligence, pp. 2194–2200 (2016) Wang, Z., Ling, Q., Huang, T.S.: Learning deep \(\ell _0\) encoders. In: AAAI Conference on Artificial Intelligence, pp. 2194–2200 (2016)
22.
go back to reference Ye, C., Zhuo, J., Gullapalli, R.P., Prince, J.L.: Estimation of fiber orientations using neighborhood information. Med. Image Anal. 32, 243–256 (2016)CrossRef Ye, C., Zhuo, J., Gullapalli, R.P., Prince, J.L.: Estimation of fiber orientations using neighborhood information. Med. Image Anal. 32, 243–256 (2016)CrossRef
23.
go back to reference Zhang, H., Schneider, T., Wheeler-Kingshott, C.A., Alexander, D.C.: NODDI: practical in vivo neurite orientation dispersion and density imaging of the human brain. NeuroImage 61(4), 1000–1016 (2012)CrossRef Zhang, H., Schneider, T., Wheeler-Kingshott, C.A., Alexander, D.C.: NODDI: practical in vivo neurite orientation dispersion and density imaging of the human brain. NeuroImage 61(4), 1000–1016 (2012)CrossRef
Metadata
Title
Estimation of Tissue Microstructure Using a Deep Network Inspired by a Sparse Reconstruction Framework
Author
Chuyang Ye
Copyright Year
2017
DOI
https://doi.org/10.1007/978-3-319-59050-9_37

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