Parameter estimation for WMTI-Watson model of white matter using encoder-decoder recurrent neural network

被引:9
作者
Diao, Yujian [1 ,2 ]
Jelescu, Ileana [3 ]
机构
[1] Ecole Polytech Federale Lausanne, Lab Funct & Metab Imaging, Lausanne, Switzerland
[2] CIBM Ctr Biomed Imaging, Lausanne, Switzerland
[3] Univ Lausanne Hosp, Dept Radiol, Lausanne, Switzerland
基金
瑞士国家科学基金会;
关键词
deep learning; diffusion MRI; model fitting; recurrent neural network; white matter; DIFFUSION MRI; DEEP NETWORK;
D O I
10.1002/mrm.29495
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose Biophysical modeling of the diffusion MRI (dMRI) signal provides estimates of specific microstructural tissue properties. Although non-linear least squares (NLLS) is the most widespread fitting method, it suffers from local minima and high computational cost. Deep learning approaches are steadily replacing NLLS, but come with the limitation that the model needs to be retrained for each acquisition protocol and noise level. In this study, a novel fitting approach was proposed based on the encoder-decoder recurrent neural network (RNN) to accelerate model estimation with good generalization to various datasets. Methods The white matter tract integrity (WMTI)-Watson model as an implementation of the Standard Model of diffusion in white matter derives its parameters indirectly from the diffusion and kurtosis tensors (DKI). The RNN-based solver, which estimates the WMTI-Watson model from DKI, is therefore more readily translatable to various data, irrespective of acquisition protocols as long as the DKI was pre-computed from the signal. An embedding approach was also used to render the model insensitive to potential differences in distributions between training data and experimental data. The analytical solution, NLLS, RNN-, and a multilayer perceptron (MLP)-based methods were evaluated on synthetic and in vivo datasets of rat and human brain. Results The proposed RNN solver showed highly reduced computation time over the analytical solution and NLLS, with similar accuracy but improved robustness, and superior generalizability over MLP. Conclusion The RNN estimator can be easily applied to various datasets without retraining, which shows great potential for a widespread use.
引用
收藏
页码:1193 / 1206
页数:14
相关论文
共 47 条
  • [1] Evaluation of the accuracy and precision of the diffusion parameter EStImation with Gibbs and NoisE removal pipeline
    Ades-Aron, Benjamin
    Veraart, Jelle
    Kochunov, Peter
    McGuire, Stephen
    Sherman, Paul
    Kellner, Elias
    Novikov, Dmitry S.
    Fieremans, Els
    [J]. NEUROIMAGE, 2018, 183 : 532 - 543
  • [2] Afzali M, 2019, I S BIOMED IMAGING, P1471, DOI [10.1109/isbi.2019.8759100, 10.1109/ISBI.2019.8759100]
  • [3] An integrated approach to correction for off-resonance effects and subject movement in diffusion MR imaging
    Andersson, Jesper L. R.
    Sotiropoulos, Stamatios N.
    [J]. NEUROIMAGE, 2016, 125 : 1063 - 1078
  • [4] Bahdanau D, 2016, Arxiv, DOI [arXiv:1409.0473, DOI 10.48550/ARXIV.1409.0473]
  • [5] Transfer learning on fused multiparametric MR images for classifying histopathological subtypes of rhabdomyosarcoma
    Banerjee, Imon
    Crawley, Alexis
    Bhethanabotla, Mythili
    Daldrup-Link, Heike E.
    Rubin, Daniel L.
    [J]. COMPUTERIZED MEDICAL IMAGING AND GRAPHICS, 2018, 65 : 167 - 175
  • [6] Deep learning how to fit an intravoxel incoherent motion model to diffusion-weighted MRI
    Barbieri, Sebastiano
    Gurney-Champion, Oliver J.
    Klaassen, Remy
    Thoeny, Harriet C.
    [J]. MAGNETIC RESONANCE IN MEDICINE, 2020, 83 (01) : 312 - 321
  • [7] Diffusion parameter mapping with the combined intravoxel incoherent motion and kurtosis model using artificial neural networks at 3 T
    Bertleff, Marco
    Domsch, Sebastian
    Weingaertner, Sebastian
    Zapp, Jascha
    O'Brien, Kieran
    Barth, Markus
    Schad, Lothar R.
    [J]. NMR IN BIOMEDICINE, 2017, 30 (12)
  • [8] Generalization of diffusion magnetic resonance imaging ?based brain age prediction model through transfer learning
    Chen, Chang-Le
    Hsu, Yung-Chin
    Yang, Li-Ying
    Tung, Yu-Hung
    Luo, Wen-Bin
    Liu, Chih-Min
    Hwang, Tzung-Jeng
    Hwu, Hai-Gwo
    Tseng, Wen-Yih Isaac
    [J]. NEUROIMAGE, 2020, 217
  • [9] Cho K, 2014, ARXIV14061078, V1, P1724, DOI [10.3115/v1/D14-1179, DOI 10.3115/V1/D14-1179]
  • [10] Coelho S., 2022, ARXIV