Deep-learning-based reconstruction of undersampled MRI to reduce scan times: a multicentre, retrospective, cohort study

被引:7
|
作者
Rastogi, Aditya [1 ,2 ]
Brugnara, Gianluca [1 ,2 ]
Foltyn-Dumitru, Martha [1 ,2 ]
Mahmutoglu, Mustafa Ahmed [1 ,2 ]
Preetha, Chandrakanth J. [1 ,2 ]
Kobler, Erich [7 ]
Pflueger, Irada [1 ,2 ]
Schell, Marianne [1 ,2 ]
Deike-Hofmann, Katerina [7 ,29 ]
Kessler, Tobias [4 ,12 ]
van den Bent, Martin J. [8 ]
Idbaih, Ahmed [9 ]
Platten, Michael [10 ,11 ]
Brandes, Alba A. [13 ]
Nabors, Burt [14 ,15 ]
Stupp, Roger [16 ,17 ,18 ]
Bernhardt, Denise [19 ,20 ]
Debus, Juergen [3 ,5 ,6 ]
Abdollahi, Amir [3 ,5 ,6 ]
Gorlia, Thierry [21 ]
Tonn, Joerg-Christian [22 ,23 ]
Weller, Michael [24 ,25 ]
Maier-Hein, Klaus H. [26 ,28 ]
Radbruch, Alexander [7 ]
Wick, Wolfgang [4 ,12 ]
Bendszus, Martin [2 ]
Meredig, Hagen [1 ,2 ]
Kurz, Felix T. [27 ]
Vollmuth, Philipp [1 ,2 ,7 ,26 ]
机构
[1] Heidelberg Univ Hosp, Dept Neuroradiol, Div Computat Neuroimaging, D-69120 Heidelberg, Germany
[2] Heidelberg Univ Hosp, Dept Neuroradiol, Heidelberg, Germany
[3] Heidelberg Univ Hosp, Dept Radiat Oncol, Heidelberg, Germany
[4] Heidelberg Univ Hosp, Neurol Clin, Heidelberg, Germany
[5] Heidelberg Univ Hosp, Heidelberg Inst Radiat Oncol, Heidelberg, Germany
[6] Heidelberg Univ Hosp, Heidelberg Ion Beam Therapy Ctr, Heidelberg, Germany
[7] Univ Med Ctr Bonn, Rheinische Friedrich Wilhelms Univ Bonn, Dept Neuroradiol, Bonn, Germany
[8] Erasmus MC Canc Inst, Brain Tumor Ctr, Rotterdam, Netherlands
[9] Sorbonne Univ, Hop Pitie Salpetriere, Assistance Publ Hop Paris, Serv Neurol 1, Paris, France
[10] Heidelberg Univ, Med Fac Mannheim, Mannheim Ctr Translat Neurosci, Dept Neurol, Mannheim, Germany
[11] German Canc Res Ctr, Clin Cooperat Unit Neuroimmunol & Brain Tumor Immu, German Canc Consortium, Heidelberg, Germany
[12] German Canc Res Ctr, Clin Cooperat Unit Neurooncol, German Canc Consortium, Heidelberg, Germany
[13] Azienda Unita Sanit Locale Bologna, Dept Med Oncol, Bologna, Italy
[14] Univ Alabama Birmingham, Dept Neurol, Div Neurooncol, Birmingham, AL USA
[15] Univ Alabama Birmingham, ONeal Comprehens Canc Ctr, Birmingham, AL USA
[16] Northwestern Med & Northwestern Univ, Lou & Jean Malnati Brain Tumor Inst, Robert H Lurie Comprehens Canc Ctr, Chicago, IL USA
[17] Northwestern Med & Northwestern Univ, Dept Neurol Surg, Chicago, IL USA
[18] Northwestern Med & Northwestern Univ, Dept Neurol, Chicago, IL USA
[19] Tech Univ Munich, Sch Med, Dept Radiat Oncol, Munich, Germany
[20] Tech Univ Munich, Klinikum rechts Isar, Munich, Germany
[21] European Org Res Treatment Canc, Brussels, Belgium
[22] Ludwig Maximilians Univ Munchen, Dept Neurosurg, Munich, Germany
[23] German Ctr Res Ctr, partner site Munich, German Canc Consortium, Munich, Germany
[24] Univ Hosp, Dept Neurol, Zurich, Switzerland
[25] Univ Zurich, Zurich, Switzerland
[26] German Canc Res Ctr, Med Image Comp, Heidelberg, Germany
[27] German Canc Res Ctr, Dept Radiol, Heidelberg, Germany
[28] Heidelberg Univ Hosp, Dept Radiat Oncol, Pattern Anal & Learning Grp, Heidelberg, Germany
[29] German Ctr Neurodegenerat Dis, Bonn, Germany
来源
LANCET ONCOLOGY | 2024年 / 25卷 / 02期
关键词
NEWLY-DIAGNOSED GLIOBLASTOMA; STANDARD TREATMENT; OPEN-LABEL;
D O I
10.1016/S1470-2045(23)00641-1
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Background The extended acquisition times required for MRI limit its availability in resource-constrained settings. Consequently, accelerating MRI by undersampling k-space data, which is necessary to reconstruct an image, has been a long-standing but important challenge. We aimed to develop a deep convolutional neural network (dCNN) optimisation method for MRI reconstruction and to reduce scan times and evaluate its effect on image quality and accuracy of oncological imaging biomarkers. Methods In this multicentre, retrospective, cohort study, MRI data from patients with glioblastoma treated at Heidelberg University Hospital (775 patients and 775 examinations) and from the phase 2 CORE trial (260 patients, 1083 examinations, and 58 institutions) and the phase 3 CENTRIC trial (505 patients, 3147 examinations, and 139 institutions) were used to develop, train, and test dCNN for reconstructing MRI from highly undersampled single-coil k-space data with various acceleration rates (R=2, 4, 6, 8, 10, and 15). Independent testing was performed with MRIs from the phase 2/3 EORTC-26101 trial (528 patients with glioblastoma, 1974 examinations, and 32 institutions). The similarity between undersampled dCNN-reconstructed and original MRIs was quantified with various image quality metrics, including structural similarity index measure (SSIM) and the accuracy of undersampled dCNN-reconstructed MRI on downstream radiological assessment of imaging biomarkers in oncology (automated artificial intelligence-based quantification of tumour burden and treatment response) was performed in the EORTC-26101 test dataset. The public NYU Langone Health fastMRI brain test dataset (558 patients and 558 examinations) was used to validate the generalisability and robustness of the dCNN for reconstructing MRIs from available multi-coil (parallel imaging) k-space data. Findings In the EORTC-26101 test dataset, the median SSIM of undersampled dCNN-reconstructed MRI ranged from 0<middle dot>88 to 0<middle dot>99 across different acceleration rates, with 0<middle dot>92 (95% CI 0<middle dot>92-0<middle dot>93) for 10-times acceleration (R=10). The 10-times undersampled dCNN-reconstructed MRI yielded excellent agreement with original MRI when assessing volumes of contrast-enhancing tumour (median DICE for spatial agreement of 0<middle dot>89 [95% CI 0<middle dot>88 to 0<middle dot>89]; median volume difference of 0<middle dot>01 cm(3) [95% CI 0<middle dot>00 to 0<middle dot>03] equalling 0<middle dot>21%; p=0<middle dot>0036 for equivalence) or non-enhancing tumour or oedema (median DICE of 0<middle dot>94 [95% CI 0<middle dot>94 to 0<middle dot>95]; median volume difference of -0<middle dot>79 cm(3) [95% CI -0<middle dot>87 to -0<middle dot>72] equalling -1<middle dot>77%; p=0<middle dot>023 for equivalence) in the EORTC-26101 test dataset. Automated volumetric tumour response assessment in the EORTC-26101 test dataset yielded an identical median time to progression of 4<middle dot>27 months (95% CI 4<middle dot>14 to 4<middle dot>57) when using 10-times-undersampled dCNN-reconstructed or original MRI (log-rank p=0<middle dot>80) and agreement in the time to progression in 374 (95<middle dot>2%) of 393 patients with data. The dCNN generalised well to the fastMRI brain dataset, with significant improvements in the median SSIM when using multi-coil compared with single-coil k-space data (p<0<middle dot>0001). Interpretation Deep-learning-based reconstruction of undersampled MRI allows for a substantial reduction of scan times, with a 10-times acceleration demonstrating excellent image quality while preserving the accuracy of derived imaging biomarkers for the assessment of oncological treatment response. Our developments are available as open source software and hold considerable promise for increasing the accessibility to MRI, pending further prospective validation.
引用
收藏
页码:400 / 410
页数:11
相关论文
共 50 条
  • [31] Deep-Learning-Based Multi-Modal Fusion for Fast MR Reconstruction
    Xiang, Lei
    Chen, Yong
    Chang, Weitang
    Zhan, Yiqiang
    Lin, Weili
    Wang, Qian
    Shen, Dinggang
    IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING, 2019, 66 (07) : 2105 - 2114
  • [32] Deep-Learning-Based Framework for PET Image Reconstruction from Sinogram Domain
    Liu, Zhiyuan
    Ye, Huihui
    Liu, Huafeng
    APPLIED SCIENCES-BASEL, 2022, 12 (16):
  • [33] Exploring Spatial Feature Regularization in Deep-Learning-Based TomoSAR Reconstruction: A Preliminary Study and Performance Analysis
    Zeng, Tianjiao
    Zhan, Xu
    Ren, Yu
    Ma, Xiangdong
    Liu, Liang
    Shi, Jun
    Wei, Shunjun
    Wang, Mou
    Zhang, Xiaoling
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2025, 63
  • [34] Deep-Learning-Based 3-D Surface Reconstruction-A Survey
    Farshian, Anis
    Goetz, Markus
    Cavallaro, Gabriele
    Debus, Charlotte
    Niessner, Matthias
    Benediktsson, Jon Atli
    Streit, Achim
    PROCEEDINGS OF THE IEEE, 2023, 111 (11) : 1464 - 1501
  • [35] Deep-learning-based image registration for nano-resolution tomographic reconstruction
    Fu, Tianyu
    Zhang, Kai
    Wang, Yan
    Li, Jizhou
    Zhang, Jin
    Yao, Chunxia
    He, Qili
    Wang, Shanfeng
    Huang, Wanxia
    Yuan, Qingxi
    Pianetta, Piero
    Liu, Yijin
    JOURNAL OF SYNCHROTRON RADIATION, 2021, 28 : 1909 - 1915
  • [36] Deep-learning-based image reconstruction with limited data: generating synthetic raw data using deep learning
    Zijlstra, Frank
    While, Peter Thomas
    MAGNETIC RESONANCE MATERIALS IN PHYSICS BIOLOGY AND MEDICINE, 2024, 37 (06): : 1059 - 1076
  • [37] PREDICTING KNEE REPLACEMENT SURGERY USING DEEP-LEARNING-BASED RADIOMICS ANALYSIS OF PLAIN RADIOGRAPHS: INSIGHTS FROM MULTICENTRE COHORT STUDIES
    Jiang, Tianshu
    Chan, Lok-Chun
    Chan, Ping-Keung
    Wen, Chunyi
    OSTEOARTHRITIS AND CARTILAGE, 2024, 32 : S81 - S82
  • [38] A deep learning algorithm to detect anaemia with ECGs: a retrospective, multicentre study
    Kwon, Joon-myoung
    Cho, Younghoon
    Jeon, Ki-Hyun
    Cho, Soohyun
    Kim, Kyung-Hee
    Baek, Seung Don
    Jeung, Soomin
    Park, Jinsik
    Oh, Byung-Hee
    LANCET DIGITAL HEALTH, 2020, 2 (07): : E358 - E367
  • [39] A Study of Deep-Learning-based Prediction Methods for Lossless Coding
    Schiopu, Ionut
    Huang, Hongyue
    Munteanu, Adrian
    28TH EUROPEAN SIGNAL PROCESSING CONFERENCE (EUSIPCO 2020), 2021, : 521 - 525
  • [40] MRI-Based Prostate Proton Radiotherapy Using Deep-Learning-Based Synthetic CT
    Shafai-Erfani, G.
    Liu, Y.
    Lei, Y.
    Wang, Y.
    Wang, T.
    Tian, S.
    Jani, A.
    McDonald, M.
    Curran, W.
    Liu, T.
    Zhou, J.
    Yang, X.
    MEDICAL PHYSICS, 2019, 46 (06) : E476 - E477