Thoeny HC, De Keyzer F, King AD (2012) Diffusion-weighted MR imaging in the head and neck. Radiology 263:19–32
Srinivasan A, Mohan S, Mukherji SK (2012) Biologic imaging of head and neck cancer: the present and the future. AJNR Am J Neuroradiol 33:586–594
Article CAS PubMed PubMed Central Google Scholar
Varoquaux A, Rager O, Dulguerov P, Burkhardt K, Ailianou A, Becker M (2015) Diffusion-weighted and PET/MR imaging after radiation therapy for malignant head and neck tumors. Radiographics 35:1502–1527
King AD, Thoeny HC (2016) Functional MRI for the prediction of treatment response in head and neck squamous cell carcinoma: potential and limitations. Cancer Imaging 16:23
Article PubMed PubMed Central Google Scholar
Kolff-Gart AS, Pouwels PJW, Noij DP, Ljumanovic R, Vandecaveye V, de Keyzer F, de Bree R, de Graaf P, Knol DL, Castelijns JA (2015) Diffusion-weighted imaging of the head and neck in healthy subjects: reproducibility of ADC values in different MRI systems and repeat sessions. AJNR Am J Neuroradiol 36:384–390
Article CAS PubMed PubMed Central Google Scholar
Verhappen MH, Pouwels PJW, Ljumanovic R, van der Putten L, Knol DL, De Bree R, Castelijns JA (2012) Diffusion-weighted MR imaging in head and neck cancer: comparison between half-Fourier acquired single-shot turbo spin-echo and EPI techniques. AJNR Am J Neuroradiol 33:1239–1246
Article CAS PubMed PubMed Central Google Scholar
Yanasak NE, Kelly MJ (2014) MR imaging artifacts and parallel imaging techniques with calibration scanning: a new twist on old problems. Radiographics 34:532–548
Shen Y-T, Chen L, Yue W-W, Xu H-X (2021) Artificial intelligence in ultrasound. Eur J Radiol 139:109717
Laino ME, Viganò L, Ammirabile A, Lofino L, Generali E, Francone M, Lleo A, Saba L, Savevski V (2022) The added value of artificial intelligence to LI-RADS categorization: A systematic review. Eur J Radiol 150:110251
Kelly BS, Judge C, Bollard SM, Clifford SM, Healy GM, Aziz A, Mathur P, Islam S, Yeom KW, Lawlor A, Killeen RP (2022) Radiology artificial intelligence: a systematic review and evaluation of methods (RAISE). Eur Radiol 32:7998–8007
Article PubMed PubMed Central Google Scholar
Barat M, Chassagnon G, Dohan A, Gaujoux S, Coriat R, Hoeffel C, Cassinotto C, Soyer P (2021) Artificial intelligence: a critical review of current applications in pancreatic imaging. Jpn J Radiol 39:514–523
Chassagnon G, De Margerie-Mellon C, Vakalopoulou M, Marini R, Hoang-Thi T-N, Revel M-P, Soyer P (2023) Artificial intelligence in lung cancer: current applications and perspectives. Jpn J Radiol 41:235–244
Mazurowski MA, Buda M, Saha A, Bashir MR (2019) Deep learning in radiology: An overview of the concepts and a survey of the state of the art with focus on MRI. J Magn Reson Imaging 49:939–954
Lin DJ, Johnson PM, Knoll F, Lui YW (2021) Artificial intelligence for MR image reconstruction: an overview for clinicians. J Magn Reson Imaging 53:1015–1028
Chaudhari AS, Sandino CM, Cole EK, Larson DB, Gold GE, Vasanawala SS, Lungren MP, Hargreaves BA, Langlotz CP (2021) Prospective deployment of deep learning in MRI: a framework for important considerations, challenges, and recommendations for best practices. J Magn Reson Imaging 54:357–371
Pezzotti N, Yousefi S, Elmahdy MS, Van Gemert JHF, Schuelke C, Doneva M, Nielsen T, Kastryulin S, Lelieveldt BPF, Van Osch MJP, De Weerdt E, Staring M (2020) An adaptive intelligence algorithm for undersampled knee MRI reconstruction. IEEE Access 8:204825–204838
Foreman SC, Neumann J, Han J, Harrasser N, Weiss K, Peeters JM, Karampinos DC, Makowski MR, Gersing AS, Woertler K (2022) Deep learning-based acceleration of compressed sense MR imaging of the ankle. Eur Radiol 32:8376–8385
Article CAS PubMed PubMed Central Google Scholar
Wu X, Tang L, Li W, He S, Yue X, Peng P, Wu T, Zhang X, Wu Z, He Y, Chen Y, Huang J, Sun J (2023) Feasibility of accelerated non-contrast-enhanced whole-heart bSSFP coronary MR angiography by deep learning-constrained compressed sensing. Eur Radiol. https://doi.org/10.1007/s00330-023-09740-8
Article PubMed PubMed Central Google Scholar
Yang F, Pan X, Zhu K, Xiao Y, Yue X, Peng P, Zhang X, Huang J, Chen J, Yuan Y, Sun J (2022) Accelerated 3D high-resolution T2-weighted breast MRI with deep learning constrained compressed sensing, comparison with conventional T2-weighted sequence on 3.0 T. Eur J Radiol 156:110562
Hirata K, Nakaura T, Okuaki T, Kidoh M, Oda S, Utsunomiya D, Namimoto T, Kitajima M, Nakayama H, Yamashita Y (2018) Comparison of the image quality of turbo spin echo- and echo-planar diffusion-weighted images of the oral cavity. Medicine 97:e0447
Article PubMed PubMed Central Google Scholar
Su T, Chen Y, Zhang Z, Zhu J, Liu W, Chen X, Zhang T, Zhu X, Qian T, Xu Z, Xue H, Jin Z (2020) Optimization of simultaneous multislice, readout-segmented echo planar imaging for accelerated diffusion-weighted imaging of the head and neck: a preliminary study. Acad Radiol 27:e245–e253
Avey G (2020) Technical improvements in head and neck mr imaging: at the cutting edge. Neuroimaging Clin N Am 30:295–309
Koyasu S, Iima M, Umeoka S, Morisawa N, Porter DA, Ito J, Le Bihan D, Togashi K (2014) The clinical utility of reduced-distortion readout-segmented echo-planar imaging in the head and neck region: initial experience. Eur Radiol 24:3088–3096
Mikayama R, Yabuuchi H, Sonoda S, Kobayashi K, Nagatomo K, Kimura M, Kawanami S, Kamitani T, Kumazawa S, Honda H (2018) Comparison of intravoxel incoherent motion diffusion-weighted imaging between turbo spin-echo and echo-planar imaging of the head and neck. Eur Radiol 28:316–324
Yoshida N, Nakaura T, Morita K, Yoneyama M, Tanoue S, Yokota Y, Uetani H, Nagayama Y, Kidoh M, Azuma M, Hirai T (2022) Echo planar imaging with compressed sensitivity encoding (EPICS): usefulness for head and neck diffusion-weighted MRI. Eur J Radiol 155:110489
Ueda T, Ohno Y, Yamamoto K, Murayama K, Ikedo M, Yui M, Hanamatsu S, Tanaka Y, Obama Y, Ikeda H, Toyama H (2022) Deep learning reconstruction of diffusion-weighted MRI improves image quality for prostatic imaging. Radiology 303:373–381
Bae SH, Hwang J, Hong SS, Lee EJ, Jeong J, Benkert T, Sung J, Arberet S (2022) Clinical feasibility of accelerated diffusion weighted imaging of the abdomen with deep learning reconstruction: comparison with conventional diffusion weighted imaging. Eur J Radiol 154:110428
Lee EJ, Chang Y-W, Sung JK, Thomas B (2022) Feasibility of deep learning k-space-to-image reconstruction for diffusion weighted imaging in patients with breast cancers: Focus on image quality and reduced scan time. Eur J Radiol 157:110608
Afat S, Herrmann J, Almansour H, Benkert T, Weiland E, Hölldobler T, Nikolaou K, Gassenmaier S (2023) Acquisition time reduction of diffusion-weighted liver imaging using deep learning image reconstruction. Diagn Interv Imaging 104:178–184
Knoll F, Murrell T, Sriram A, Yakubova N, Zbontar J, Rabbat M, Defazio A, Muckley MJ, Sodickson DK, Zitnick CL, Recht MP (2020) Advancing machine learning for MR image reconstruction with an open competition: overview of the 2019 fastMRI challenge. Magn Reson Med 84:3054–3070
Comments (0)