Literature DB >> 34741576

Improving Sensitivity of Arterial Spin Labeling Perfusion MRI in Alzheimer's Disease Using Transfer Learning of Deep Learning-Based ASL Denoising.

Lei Zhang1, Danfeng Xie1, Yiran Li1, Aldo Camargo1, Donghui Song1, Tong Lu2, Jean Jeudy1, David Dreizin1, Elias R Melhem1, Ze Wang1.   

Abstract

BACKGROUND: Arterial spin labeling (ASL) perfusion magnetic resonance imaging (MRI) denoising through deep learning (DL) often faces insufficient training data from patients. One solution is to train DL models using healthy subjects' data which are more widely available and transfer them to patients' data.
PURPOSE: To evaluate the transferability of a DL-based ASL MRI denoising method (DLASL). STUDY TYPE: Retrospective.
SUBJECTS: Four hundred and twenty-eight subjects (189 females) from three cohorts. FIELD STRENGTH/SEQUENCE: 3 T two-dimensional (2D) echo-planar imaging (EPI)-based pseudo-continuous ASL (PCASL) and 2D EPI-based pulsed ASL (PASL) sequences. ASSESSMENT: DLASL was trained using young healthy adults' PCASL data (Dataset 1: 250/30 subjects as training/validation set) and was directly transferred (DTF) to PCASL data from Dataset 2 (45 subjects test set) of normal controls (NC) and Alzheimer's disease (AD) groups. DLASL was fine-tuned (DLASLFT) and tested on PASL data from Dataset 3 (103 subjects test set) of NC and AD. An existing non-DL method (NonDL) was used for comparison. Cerebral blood flow (CBF) images from ASL MRI were compared between NC and AD to assess characteristic hypoperfusion (lower CBF) patterns in AD. CBF image quality and CBF map sensitivity for detecting hypoperfusion using peak t-value and suprathreshold cluster size are outcome measures. STATISTICAL TESTS: Paired t-test, two-sample t-test, one-way analysis of variance, and Tukey honestly significant difference, and linear mixed-effects models were used. P < 0.05 was considered statistically significant.
RESULTS: Mean contrast-to-noise ratio (CNR) of Dataset 2 showed that DTF outperformed NonDL (AD: 3.38 vs. 2.64, NC: 3.80 vs. 3.36). On Dataset 3, DLASLFT outperformed NonDL measured by mean CNR (AD: 2.45 vs. 1.87, NC: 2.54 vs. 2.17) and mean radiologic score (2.86 vs. 2.44). Image quality improvement was significant on both test sets. DTF and DLASLFT improved sensitivity for detecting AD-related hypoperfusion patterns compared with NonDL. DATA
CONCLUSION: We demonstrated the DLASL's transferability across different ASL sequences and different populations. LEVEL OF EVIDENCE: 3 TECHNICAL EFFICACY: Stage 2.
© 2021 International Society for Magnetic Resonance in Medicine.

Entities:  

Keywords:  Alzheimer's disease; arterial spin labeling perfusion MRI; deep learning; denoising; transfer learning

Mesh:

Substances:

Year:  2021        PMID: 34741576      PMCID: PMC9072602          DOI: 10.1002/jmri.27984

Source DB:  PubMed          Journal:  J Magn Reson Imaging        ISSN: 1053-1807            Impact factor:   5.119


  23 in total

1.  Voxel-Wise Functional Connectomics Using Arterial Spin Labeling Functional Magnetic Resonance Imaging: The Role of Denoising.

Authors:  Xiaoyun Liang; Alan Connelly; Fernando Calamante
Journal:  Brain Connect       Date:  2015-07-29

2.  Priors-guided slice-wise adaptive outlier cleaning for arterial spin labeling perfusion MRI.

Authors:  Yiran Li; Sudipto Dolui; Dan-Feng Xie; Ze Wang
Journal:  J Neurosci Methods       Date:  2018-06-27       Impact factor: 2.390

3.  DPABI: Data Processing & Analysis for (Resting-State) Brain Imaging.

Authors:  Chao-Gan Yan; Xin-Di Wang; Xi-Nian Zuo; Yu-Feng Zang
Journal:  Neuroinformatics       Date:  2016-07

4.  Support vector machine learning-based cerebral blood flow quantification for arterial spin labeling MRI.

Authors:  Ze Wang
Journal:  Hum Brain Mapp       Date:  2014-01-17       Impact factor: 5.038

5.  A deep learning approach for magnetization transfer contrast MR fingerprinting and chemical exchange saturation transfer imaging.

Authors:  Byungjai Kim; Michael Schär; HyunWook Park; Hye-Young Heo
Journal:  Neuroimage       Date:  2020-07-15       Impact factor: 6.556

Review 6.  Deep Learning in Neuroradiology.

Authors:  G Zaharchuk; E Gong; M Wintermark; D Rubin; C P Langlotz
Journal:  AJNR Am J Neuroradiol       Date:  2018-02-01       Impact factor: 3.825

7.  Unbiased average age-appropriate atlases for pediatric studies.

Authors:  Vladimir Fonov; Alan C Evans; Kelly Botteron; C Robert Almli; Robert C McKinstry; D Louis Collins
Journal:  Neuroimage       Date:  2010-07-23       Impact factor: 6.556

8.  Perfusion imaging.

Authors:  J A Detre; J S Leigh; D S Williams; A P Koretsky
Journal:  Magn Reson Med       Date:  1992-01       Impact factor: 4.668

Review 9.  Recommended implementation of arterial spin-labeled perfusion MRI for clinical applications: A consensus of the ISMRM perfusion study group and the European consortium for ASL in dementia.

Authors:  David C Alsop; John A Detre; Xavier Golay; Matthias Günther; Jeroen Hendrikse; Luis Hernandez-Garcia; Hanzhang Lu; Bradley J MacIntosh; Laura M Parkes; Marion Smits; Matthias J P van Osch; Danny J J Wang; Eric C Wong; Greg Zaharchuk
Journal:  Magn Reson Med       Date:  2014-04-08       Impact factor: 4.668

10.  ICA-based denoising for ASL perfusion imaging.

Authors:  D Carone; G W J Harston; J Garrard; F De Angeli; L Griffanti; T W Okell; M A Chappell; J Kennedy
Journal:  Neuroimage       Date:  2019-07-02       Impact factor: 6.556

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  1 in total

Review 1.  Transfer Learning Approaches for Neuroimaging Analysis: A Scoping Review.

Authors:  Zaniar Ardalan; Vignesh Subbian
Journal:  Front Artif Intell       Date:  2022-02-21
  1 in total

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