Reconstruction of shoulder MRI using deep learning and compressed sensing: a validation study on healthy volunteers

被引:16
作者
Dratsch, Thomas [1 ,2 ]
Siedek, Florian [1 ,2 ]
Zaeske, Charlotte [1 ,2 ]
Sonnabend, Kristina [3 ]
Rauen, Philip [1 ,2 ]
Terzis, Robert [1 ,2 ]
Hahnfeldt, Robert [1 ,2 ]
Maintz, David [1 ,2 ]
Persigehl, Thorsten [1 ,2 ]
Bratke, Grischa [1 ,2 ]
Iuga, Andra [1 ,2 ]
机构
[1] Univ Cologne, Fac Med, Dept Diagnost & Intervent Radiol, Kerpener Str 62, D-50937 Cologne, Germany
[2] Univ Hosp Cologne, Kerpener Str 62, D-50937 Cologne, Germany
[3] Philips GmbH Market DACH, Roentgenstr 22, D-22335 Hamburg, Germany
关键词
Artifacts; Artificial intelligence; Deep learning; Magnetic resonance imaging; Shoulder joint; SPIN-ECHO SEQUENCE; PREVALENCE; SPACE;
D O I
10.1186/s41747-023-00377-2
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
BackgroundTo investigate the potential of combining compressed sensing (CS) and deep learning (DL) for accelerated two-dimensional (2D) and three-dimensional (3D) magnetic resonance imaging (MRI) of the shoulder.MethodsTwenty healthy volunteers were examined using at 3-T scanner with a fat-saturated, coronal, 2D proton density-weighted sequence with four acceleration levels (2.3, 4, 6, and 8) and a 3D sequence with three acceleration levels (8, 10, and 13), all accelerated with CS and reconstructed using the conventional algorithm and a new DL-based algorithm (CS-AI). Subjective image quality was evaluated by two blinded readers using 6 criteria on a 5-point Likert scale (overall impression, artifacts, and delineation of the subscapularis tendon, bone, acromioclavicular joint, and glenoid labrum). Objective image quality was measured by calculating signal-to-noise-ratio, contrast-to-noise-ratio, and a structural similarity index measure. All reconstructions were compared to the clinical standard (CS 2D acceleration factor 2.3; CS 3D acceleration factor 8). Additionally, subjective and objective image quality were compared between CS and CS-AI with the same acceleration levels.ResultsBoth 2D and 3D sequences reconstructed with CS-AI achieved on average significantly better subjective and objective image quality compared to sequences reconstructed with CS with the same acceleration factor (p <= 0.011). Comparing CS-AI to the reference sequences showed that 4-fold acceleration for 2D sequences and 13-fold acceleration for 3D sequences without significant loss of quality (p >= 0.058).ConclusionsFor MRI of the shoulder at 3 T, a DL-based algorithm allowed additional acceleration of acquisition times compared to the conventional approach.Relevance statementThe combination of deep-learning and compressed sensing hold the potential for further scan time reduction in 2D and 3D imaging of the shoulder while providing overall better objective and subjective image quality compared to the conventional approach.Trial registrationDRKS00024156.Key points center dot Combination of compressed sensing and deep learning improved image quality and allows for significant acceleration of shoulder MRI.center dot Deep learning-based algorithm achieved better subjective and objective image quality than conventional compressed sensing.center dot For shoulder MRI at 3 T, 40% faster image acquisition for 2D sequences and 38% faster image acquisition for 3D sequences may be possible.Key points center dot Combination of compressed sensing and deep learning improved image quality and allows for significant acceleration of shoulder MRI.center dot Deep learning-based algorithm achieved better subjective and objective image quality than conventional compressed sensing.center dot For shoulder MRI at 3 T, 40% faster image acquisition for 2D sequences and 38% faster image acquisition for 3D sequences may be possible.Key points center dot Combination of compressed sensing and deep learning improved image quality and allows for significant acceleration of shoulder MRI.center dot Deep learning-based algorithm achieved better subjective and objective image quality than conventional compressed sensing.center dot For shoulder MRI at 3 T, 40% faster image acquisition for 2D sequences and 38% faster image acquisition for 3D sequences may be possible.
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页数:13
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共 34 条
[1]  
Abdi H., 2007, Encyclopedia of measurement and statistics ed, V3, P103, DOI [DOI 10.4135/9781412952644, DOI 10.1007/978-1-4419-9863-7_1213]
[2]   Comparing an accelerated 3D fast spin-echo sequence (CS-SPACE) for knee 3-T magnetic resonance imaging with traditional 3D fast spin-echo (SPACE) and routine 2D sequences [J].
Altahawi, Faysal F. ;
Blount, Kevin J. ;
Morley, Nicholas P. ;
Raithel, Esther ;
Omar, Imran M. .
SKELETAL RADIOLOGY, 2017, 46 (01) :7-15
[3]   Magnetic resonance imaging of the shoulder [J].
Ashir, Aria ;
Lombardi, Alecio ;
Jerban, Saeed ;
Ma, Yajun ;
Du, Jiang ;
Chang, Eric Y. .
POLISH JOURNAL OF RADIOLOGY, 2020, 85 :E420-E439
[4]   T2 Turbo Spin Echo With Compressed Sensing and Propeller Acquisition (Sampling k-Space by Utilizing Rotating Blades) for Fast and Motion Robust Prostate MRI Comparison With Conventional Acquisition [J].
Bischoff, Leon M. ;
Katemann, Christoph ;
Isaak, Alexander ;
Mesropyan, Narine ;
Wichtmann, Barbara ;
Kravchenko, Dmitrij ;
Endler, Christoph ;
Kuetting, Daniel ;
Pieper, Claus C. ;
Ellinger, Joerg ;
Weber, Oliver ;
Attenberger, Ulrike ;
Luetkens, Julian A. .
INVESTIGATIVE RADIOLOGY, 2023, 58 (03) :209-215
[5]   Speeding up the clinical routine: Compressed sensing for 2D imaging of lumbar spine disc herniation [J].
Bratke, Grischa ;
Rau, Robert ;
Kabbasch, Christoph ;
Zaeske, Charlotte ;
Maintz, David ;
Haneder, Stefan ;
Hokamp, Nils Grosse ;
Persigehl, Thorsten ;
Siedek, Florian ;
Weiss, Kilian .
EUROPEAN JOURNAL OF RADIOLOGY, 2021, 140
[6]   Accelerated MRI of the Lumbar Spine Using Compressed Sensing: Quality and Efficiency [J].
Bratke, Grischa ;
Rau, Robert ;
Weiss, Kilian ;
Kabbasch, Christoph ;
Sircar, Krishnan ;
Morelli, John N. ;
Persigehl, Thorsten ;
Maintz, David ;
Giese, Daniel ;
Haneder, Stefan .
JOURNAL OF MAGNETIC RESONANCE IMAGING, 2019, 49 (07) :E164-E175
[7]   RESTRICTED MAXIMUM LIKELIHOOD (REML) ESTIMATION OF VARIANCE COMPONENTS IN MIXED MODEL [J].
CORBEIL, RR ;
SEARLE, SR .
TECHNOMETRICS, 1976, 18 (01) :31-38
[9]   KIKI-net: cross-domain convolutional neural networks for reconstructing undersampled magnetic resonance images [J].
Eo, Taejoon ;
Jun, Yohan ;
Kim, Taeseong ;
Jang, Jinseong ;
Lee, Ho-Joon ;
Hwang, Dosik .
MAGNETIC RESONANCE IN MEDICINE, 2018, 80 (05) :2188-2201
[10]   Conventional and Deep-Learning-Based Image Reconstructions of Undersampled K-Space Data of the Lumbar Spine Using Compressed Sensing in MRI: A Comparative Study on 20 Subjects [J].
Fervers, Philipp ;
Zaeske, Charlotte ;
Rauen, Philip ;
Iuga, Andra-Iza ;
Kottlors, Jonathan ;
Persigehl, Thorsten ;
Sonnabend, Kristina ;
Weiss, Kilian ;
Bratke, Grischa .
DIAGNOSTICS, 2023, 13 (03)