A Transfer-Learning Approach for Accelerated MRI Using Deep Neural Networks

被引:128
作者
Dar, Salman Ul Hassan [1 ,2 ]
Ozbey, Muzaffer [1 ,2 ]
Catli, Ahmet Burak [1 ,2 ]
Cukur, Tolga [1 ,2 ,3 ]
机构
[1] Bilkent Univ, Dept Elect & Elect Engn, Room 304, TR-06800 Ankara, Turkey
[2] Bilkent Univ, Natl Magnet Resonance Res Ctr UMRAM, Ankara, Turkey
[3] Bilkent Univ, Neurosci Program, Sabuncu Brain Res Ctr, Ankara, Turkey
关键词
accelerated MRI; compressive sensing; deep learning; image reconstruction; transfer learning; IMAGE-RECONSTRUCTION;
D O I
10.1002/mrm.28148
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 Neural networks have received recent interest for reconstruction of undersampled MR acquisitions. Ideally, network performance should be optimized by drawing the training and testing data from the same domain. In practice, however, large datasets comprising hundreds of subjects scanned under a common protocol are rare. The goal of this study is to introduce a transfer-learning approach to address the problem of data scarcity in training deep networks for accelerated MRI. Methods Neural networks were trained on thousands (upto 4 thousand) of samples from public datasets of either natural images or brain MR images. The networks were then fine-tuned using only tens of brain MR images in a distinct testing domain. Domain-transferred networks were compared to networks trained directly in the testing domain. Network performance was evaluated for varying acceleration factors (4-10), number of training samples (0.5-4k), and number of fine-tuning samples (0-100). Results The proposed approach achieves successful domain transfer between MR images acquired with different contrasts (T-1- and T-2-weighted images) and between natural and MR images (ImageNet and T-1- or T-2-weighted images). Networks obtained via transfer learning using only tens of images in the testing domain achieve nearly identical performance to networks trained directly in the testing domain using thousands (upto 4 thousand) of images. Conclusion The proposed approach might facilitate the use of neural networks for MRI reconstruction without the need for collection of extensive imaging datasets.
引用
收藏
页码:663 / 685
页数:23
相关论文
共 62 条
[1]  
Abadi M, 2016, PROCEEDINGS OF OSDI'16: 12TH USENIX SYMPOSIUM ON OPERATING SYSTEMS DESIGN AND IMPLEMENTATION, P265
[2]  
AKCAKAYA M, 2018, P 26 ANN M ISMRM PAR
[3]   Scan-specific robust artificial-neural-networks for k-space interpolation (RAKI) reconstruction: Database-free deep learning for fast imaging [J].
Akcakaya, Mehmet ;
Moeller, Steen ;
Weingaertner, Sebastian ;
Ugurbil, Kamil .
MAGNETIC RESONANCE IN MEDICINE, 2019, 81 (01) :439-453
[4]  
[Anonymous], 2016, C NEUR INF PROC SYST
[5]   Projection algorithms for solving convex feasibility problems [J].
Bauschke, HH ;
Borwein, JM .
SIAM REVIEW, 1996, 38 (03) :367-426
[6]   Undersampled radial MRI with multiple coils. Iterative image reconstruction using a total variation constraint [J].
Block, Kai Tobias ;
Uecker, Martin ;
Frahm, Jens .
MAGNETIC RESONANCE IN MEDICINE, 2007, 57 (06) :1086-1098
[7]   Vessel tortuosity and brain tumor malignancy: A blinded study [J].
Bullitt, E ;
Zeng, DL ;
Gerig, G ;
Aylward, S ;
Joshi, S ;
Smith, JK ;
Lin, WL ;
Ewend, MG .
ACADEMIC RADIOLOGY, 2005, 12 (10) :1232-1240
[8]   COLOR AND SPATIAL STRUCTURE IN NATURAL SCENES [J].
BURTON, GJ ;
MOORHEAD, IR .
APPLIED OPTICS, 1987, 26 (01) :157-170
[9]  
CHANG P, 2018, P 26 ANN M ISMRM PAR
[10]   Variable-Density Single-Shot Fast Spin-Echo MRI with Deep Learning Reconstruction by Using Variational Networks [J].
Chen, Feiyu ;
Taviani, Valentina ;
Malkiel, Itzik ;
Cheng, Joseph Y. ;
Tamir, Jonathan I. ;
Shaikh, Jamil ;
Chang, Stephanie T. ;
Hardy, Christopher J. ;
Pauly, John M. ;
Vasanawala, Shreyas S. .
RADIOLOGY, 2018, 289 (02) :366-373