Literature DB >> 33058279

Deep learning-based method for reducing residual motion effects in diffusion parameter estimation.

Ting Gong1,2, Qiqi Tong1, Zhiwei Li3, Hongjian He1, Hui Zhang2, Jianhui Zhong1,4.   

Abstract

PURPOSE: Conventional motion-correction techniques for diffusion MRI can introduce motion-level-dependent bias in derived metrics. To address this challenge, a deep learning-based technique was developed to minimize such residual motion effects.
METHODS: The data-rejection approach was adopted in which motion-corrupted data are discarded before model-fitting. A deep learning-based parameter estimation algorithm, using a hierarchical convolutional neural network (H-CNN), was combined with motion assessment and corrupted volume rejection. The method was designed to overcome the limitations of existing methods of this kind that produce parameter estimations whose quality depends strongly on a proportion of the data discarded. Evaluation experiments were conducted for the estimation of diffusion kurtosis and diffusion-tensor-derived measures at both the individual and group levels. The performance was compared with the robust approach of iteratively reweighted linear least squares (IRLLS) after motion correction with and without outlier replacement.
RESULTS: Compared with IRLLS, the H-CNN-based technique is minimally sensitive to motion effects. It was tested at severe motion levels when 70% to 90% of the data are rejected and when random motion is present. The technique had a stable performance independent of the numbers and schemes of data rejection. A further test on a data set from children with attention-deficit hyperactivity disorder shows the technique can potentially ameliorate spurious group-level difference caused by head motion.
CONCLUSION: This method shows great potential for reducing residual motion effects in motion-corrupted diffusion-weighted-imaging data, bringing benefits that include reduced bias in derived metrics in individual scans and reduced motion-level-dependent bias in population studies employing diffusion MRI.
© 2020 International Society for Magnetic Resonance in Medicine.

Entities:  

Keywords:  diffusion kurtosis imaging; diffusion tensor imaging; head motion; neural network

Year:  2020        PMID: 33058279     DOI: 10.1002/mrm.28544

Source DB:  PubMed          Journal:  Magn Reson Med        ISSN: 0740-3194            Impact factor:   4.668


  2 in total

Review 1.  Recommendation for Cardiac Magnetic Resonance Imaging-Based Phenotypic Study: Imaging Part.

Authors:  Chengyan Wang; Yan Li; Jun Lv; Jianhua Jin; Xumei Hu; Xutong Kuang; Weibo Chen; He Wang
Journal:  Phenomics       Date:  2021-07-28

2.  Effect of number of diffusion-encoding directions in diffusion metrics of 5-year-olds using tract-based spatial statistical analysis.

Authors:  Venla Kumpulainen; Harri Merisaari; Anni Copeland; Eero Silver; Elmo P Pulli; John D Lewis; Ekaterina Saukko; Jani Saunavaara; Linnea Karlsson; Hasse Karlsson; Jetro J Tuulari
Journal:  Eur J Neurosci       Date:  2022-08-15       Impact factor: 3.698

  2 in total

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