Machine learning in quantitative PET: A review of attenuation correction and low-count image reconstruction methods.
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Yang Lei | Tian Liu | Xiaofeng Yang | Yabo Fu | Tonghe Wang | Walter J Curran | Jonathon A Nye | J. Nye | W. Curran | Xiaofeng Yang | Tian Liu | Y. Lei | Tonghe Wang | Yabo Fu
[1] A. Vandenbroucke,et al. Performance characterization of a new high resolution PET scintillation detector , 2008, 2008 IEEE Nuclear Science Symposium Conference Record.
[2] H. Zaidi,et al. Magnetic resonance imaging-guided attenuation and scatter corrections in three-dimensional brain positron emission tomography. , 2003, Medical physics.
[3] David Schuster,et al. Comparison of CT- and FDG-PET-defined gross tumor volume in intensity-modulated radiotherapy for head-and-neck cancer. , 2005, International journal of radiation oncology, biology, physics.
[4] Quanzheng Li,et al. Attenuation correction for brain PET imaging using deep neural network based on Dixon and ZTE MR images , 2017, Physics in medicine and biology.
[5] Yang Lei,et al. Pseudo CT Estimation using Patch-based Joint Dictionary Learning , 2018, 2018 40th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC).
[6] Alan C. Evans,et al. Surface-based partial-volume correction for high-resolution PET , 2014, NeuroImage.
[7] Yang Lei,et al. Image quality improvement in cone-beam CT using deep learning , 2019, Medical Imaging.
[8] Richard M. Leahy,et al. A theoretical study of the contrast recovery and variance of MAP reconstructions from PET data , 1999, IEEE Transactions on Medical Imaging.
[9] Tianyu Ma,et al. An investigation of quantitative accuracy for deep learning based denoising in oncological PET , 2019, Physics in medicine and biology.
[10] Thorsten Heußer,et al. Improved clinical workflow for simultaneous whole-body PET/MRI using high-resolution CAIPIRINHA-accelerated MR-based attenuation correction. , 2017, European journal of radiology.
[11] Sibylle Ziegler,et al. PET/CT: challenge for nuclear cardiology. , 2005, Journal of nuclear medicine : official publication, Society of Nuclear Medicine.
[12] Jun Zhou,et al. Learning-based automatic segmentation of arteriovenous malformations on contrast CT images in brain stereotactic radiosurgery. , 2019, Medical physics.
[13] Yang Lei,et al. Synthetic CT generation from non-attenuation corrected PET images for whole-body PET imaging , 2019, Physics in medicine and biology.
[14] Yang Lei,et al. Automatic multi-organ segmentation in thorax CT images using U-Net-GAN , 2019, Medical Imaging.
[15] S. Yasuda,et al. Whole body PET for the evaluation of bony metastases in patients with breast cancer: comparison with 99Tcm-MDP bone scintigraphy , 2001, Nuclear medicine communications.
[16] G. Delso,et al. Zero TE MR bone imaging in the head , 2016, Magnetic resonance in medicine.
[17] Bernhard Schölkopf,et al. MRI-Based Attenuation Correction for PET/MRI: A Novel Approach Combining Pattern Recognition and Atlas Registration , 2008, Journal of Nuclear Medicine.
[18] Yang Lei,et al. Automatic MRI prostate segmentation using 3D deeply supervised FCN with concatenated atrous convolution , 2019, Medical Imaging.
[19] Jonathan M. Links,et al. MR-Based Correction of Brain PET Measurements for Heterogeneous Gray Matter Radioactivity Distribution , 1996, Journal of cerebral blood flow and metabolism : official journal of the International Society of Cerebral Blood Flow and Metabolism.
[20] Dinggang Shen,et al. 3D conditional generative adversarial networks for high-quality PET image estimation at low dose , 2018, NeuroImage.
[21] Ian Poon,et al. Symmetric geometric transfer matrix partial volume correction for PET imaging: principle, validation and robustness , 2012, Physics in medicine and biology.
[22] Suleman Surti,et al. Benefit of Time-of-Flight in PET: Experimental and Clinical Results , 2008, Journal of Nuclear Medicine.
[23] Jae Sung Lee,et al. Generation of PET Attenuation Map for Whole-Body Time-of-Flight 18F-FDG PET/MRI Using a Deep Neural Network Trained with Simultaneously Reconstructed Activity and Attenuation Maps , 2019, The Journal of Nuclear Medicine.
[24] Kevin T. Chen,et al. An SPM8-Based Approach for Attenuation Correction Combining Segmentation and Nonrigid Template Formation: Application to Simultaneous PET/MR Brain Imaging , 2014, The Journal of Nuclear Medicine.
[25] L. Adler,et al. Axillary lymph node metastases: screening with [F-18]2-deoxy-2-fluoro-D-glucose (FDG) PET. , 1997, Radiology.
[26] Alessandro Foi,et al. Image Denoising by Sparse 3-D Transform-Domain Collaborative Filtering , 2007, IEEE Transactions on Image Processing.
[27] Yan Wang,et al. Predicting standard-dose PET image from low-dose PET and multimodal MR images using mapping-based sparse representation , 2015, MLMI.
[28] Chung Chan,et al. Postreconstruction Nonlocal Means Filtering of Whole-Body PET With an Anatomical Prior , 2014, IEEE Transactions on Medical Imaging.
[29] Yang Lei,et al. Deep learning-based image quality improvement for low-dose computed tomography simulation in radiation therapy , 2019, Journal of medical imaging.
[30] Tian Liu,et al. A denoising algorithm for CT image using low-rank sparse coding , 2018, Medical Imaging.
[31] Yang Lei,et al. Male pelvic multi-organ segmentation aided by CBCT-based synthetic MRI , 2019, Physics in medicine and biology.
[32] Adam Johansson,et al. Evaluation of an attenuation correction method for PET/MR imaging of the head based on substitute CT images , 2013, Magnetic Resonance Materials in Physics, Biology and Medicine.
[33] C. C. Watson. New, faster, image-based scatter correction for 3D PET , 1999 .
[34] S. Ben-Haim,et al. 18F-FDG PET and PET/CT in the Evaluation of Cancer Treatment Response* , 2008, Journal of Nuclear Medicine.
[35] Tian Liu,et al. MRI-based treatment planning for brain stereotactic radiosurgery: Dosimetric validation of a learning-based pseudo-CT generation method. , 2019, Medical dosimetry : official journal of the American Association of Medical Dosimetrists.
[36] Greg Zaharchuk,et al. Ultra-low-dose PET reconstruction using generative adversarial network with feature matching and task-specific perceptual loss. , 2019, Medical physics.
[37] Yang Lei,et al. Deep learning-based attenuation correction in the absence of structural information for whole-body positron emission tomography imaging , 2019, Physics in medicine and biology.
[38] Guoyan Zheng,et al. Novel adversarial semantic structure deep learning for MRI-guided attenuation correction in brain PET/MRI , 2019, European Journal of Nuclear Medicine and Molecular Imaging.
[39] Yang Lei,et al. Dose evaluation of MRI-based synthetic CT generated using a machine learning method for prostate cancer radiotherapy. , 2019, Medical dosimetry : official journal of the American Association of Medical Dosimetrists.
[40] Abdus Sattar,et al. Image Quality and Diagnostic Performance of a Digital PET Prototype in Patients with Oncologic Diseases: Initial Experience and Comparison with Analog PET , 2015, The Journal of Nuclear Medicine.
[41] Konstantin Nikolaou,et al. Independent brain 18F-FDG PET attenuation correction using a deep learning approach with Generative Adversarial Networks. , 2019, Hellenic journal of nuclear medicine.
[42] Jinyi Qi. Theoretical Evaluation of the Detectability of Random Lesions in Bayesian Emission Reconstruction , 2003, IPMI.
[43] Thomas J. Fuchs,et al. DeepPET: A deep encoder–decoder network for directly solving the PET image reconstruction inverse problem , 2018, Medical Image Anal..
[44] John M Pauly,et al. Ultra-Low-Dose 18F-Florbetaben Amyloid PET Imaging Using Deep Learning with Multi-Contrast MRI Inputs. , 2019, Radiology.
[45] Simon R. Cherry,et al. Machine Learning in PET: From Photon Detection to Quantitative Image Reconstruction , 2020, Proceedings of the IEEE.
[46] R. Boellaard. Standards for PET Image Acquisition and Quantitative Data Analysis , 2009, Journal of Nuclear Medicine.
[47] R. Wahl,et al. From RECIST to PERCIST: Evolving Considerations for PET Response Criteria in Solid Tumors , 2009, Journal of Nuclear Medicine.
[48] Baowei Fei,et al. Research and applications: Multiscale segmentation of the skull in MR images for MRI-based attenuation correction of combined MR/PET , 2013, J. Am. Medical Informatics Assoc..
[49] Ge Cui,et al. Machine-learning-based classification of Glioblastoma using MRI-based radiomic features , 2019, Medical Imaging.
[50] Dinggang Shen,et al. Deep auto-context convolutional neural networks for standard-dose PET image estimation from low-dose PET/MRI , 2017, Neurocomputing.
[51] Eleanor Stride,et al. Applications and limitations of machine learning in radiation oncology , 2019, The British journal of radiology.
[52] Yang Lei,et al. MRI-based attenuation correction for brain PET/MRI based on anatomic signature and machine learning , 2019, Physics in medicine and biology.
[53] Thomas F Hany,et al. High-risk melanoma: accuracy of FDG PET/CT with added CT morphologic information for detection of metastases. , 2007, Radiology.
[54] Tian Liu,et al. Paired cycle-GAN based image correction for quantitative cone-beam CT. , 2019, Medical physics.
[55] H. Herzog,et al. Alternative methods for attenuation correction for PET images in MR-PET scanners , 2007, 2007 IEEE Nuclear Science Symposium Conference Record.
[56] Martin A Lodge,et al. Noise Considerations for PET Quantification Using Maximum and Peak Standardized Uptake Value , 2012, The Journal of Nuclear Medicine.
[57] Z. Jane Wang,et al. Joint correction of attenuation and scatter in image space using deep convolutional neural networks for dedicated brain 18F-FDG PET , 2018, Physics in medicine and biology.
[58] D. Georg,et al. Attenuation correction of a flat table top for radiation therapy in hybrid PET/MR using CT- and 68Ge/68Ga transmission scan-based μ-maps. , 2019, Physica medica : PM : an international journal devoted to the applications of physics to medicine and biology : official journal of the Italian Association of Biomedical Physics.
[59] Timothy D. Solberg,et al. Machine Learning in Radiation Oncology: Opportunities, Requirements, and Needs , 2018, Front. Oncol..
[60] Jae Sung Lee,et al. Improving the Accuracy of Simultaneously Reconstructed Activity and Attenuation Maps Using Deep Learning , 2018, The Journal of Nuclear Medicine.
[61] Heinrich R Schelbert,et al. Improvements in cancer staging with PET/CT: literature-based evidence as of September 2006. , 2007, Journal of nuclear medicine : official publication, Society of Nuclear Medicine.
[62] I. Naqa. The role of quantitative PET in predicting cancer treatment outcomes , 2014, Clinical and Translational Imaging.
[63] Ronald Boellaard,et al. Noise-Induced Variability of Immuno-PET with Zirconium-89-Labeled Antibodies: an Analysis Based on Count-Reduced Clinical Images , 2018, Molecular Imaging and Biology.
[64] Yang Lei,et al. MRI-Based Proton Treatment Planning for Base of Skull Tumors. , 2019, International journal of particle therapy.
[65] Ronald Boellaard,et al. Radiation Dosimetry of 89Zr-Labeled Chimeric Monoclonal Antibody U36 as Used for Immuno-PET in Head and Neck Cancer Patients , 2009, Journal of Nuclear Medicine.
[66] Yang Lei,et al. A learning-based automatic segmentation and quantification method on left ventricle in gated myocardial perfusion SPECT imaging: A feasibility study , 2019, Journal of Nuclear Cardiology.
[67] D. Wolski,et al. YSO, LSO, CSO and LGSO. A study of energy resolution and nonproportionality , 1999 .
[68] Lei Zhu,et al. Noise suppression for dual-energy CT via penalized weighted least-square optimization with similarity-based regularization. , 2016, Medical physics.
[69] A. Evans,et al. Correction for partial volume effects in PET: principle and validation. , 1998, Journal of nuclear medicine : official publication, Society of Nuclear Medicine.
[70] I. Buvat,et al. Partial-Volume Effect in PET Tumor Imaging* , 2007, Journal of Nuclear Medicine.
[71] H. Quick,et al. Magnetic Resonance–Based Attenuation Correction for PET/MR Hybrid Imaging Using Continuous Valued Attenuation Maps , 2013, Investigative radiology.
[72] Tian Liu,et al. Improving image quality of cone-beam CT using alternating regression forest , 2018, Medical Imaging.
[73] Yaozong Gao,et al. Prediction of standard-dose brain PET image by using MRI and low-dose brain [18F]FDG PET images. , 2015, Medical physics.
[74] Chih-Chieh Liu,et al. PET Image Denoising Using a Deep Neural Network Through Fine Tuning , 2019, IEEE Transactions on Radiation and Plasma Medical Sciences.
[75] A. Soricelli,et al. Dixon-VIBE Deep Learning (DIVIDE) Pseudo-CT Synthesis for Pelvis PET/MR Attenuation Correction , 2018, The Journal of Nuclear Medicine.
[76] Lei Zhu,et al. Pixel‐wise estimation of noise statistics on iterative CT reconstruction from a single scan , 2017, Medical physics.
[77] Tian Liu,et al. Automatic multiorgan segmentation in thorax CT images using U-net-GAN. , 2019, Medical physics.
[78] C. Rübe,et al. Comparison of different methods for delineation of 18F-FDG PET-positive tissue for target volume definition in radiotherapy of patients with non-Small cell lung cancer. , 2005, Journal of nuclear medicine : official publication, Society of Nuclear Medicine.
[79] Christine DeLorenzo,et al. Synthesis of Patient-Specific Transmission Data for PET Attenuation Correction for PET/MRI Neuroimaging Using a Convolutional Neural Network , 2018, The Journal of Nuclear Medicine.
[80] Marios Politis,et al. Positron emission tomography imaging in neurological disorders , 2012, Journal of Neurology.
[81] Yang Lei,et al. Synthetic MRI-aided multi-organ segmentation on male pelvic CT using cycle consistent deep attention network. , 2019, Radiotherapy and oncology : journal of the European Society for Therapeutic Radiology and Oncology.
[82] Yang Lei,et al. Learning‐based CBCT correction using alternating random forest based on auto‐context model , 2018, Medical physics.
[83] Yang Lei,et al. Ultrasound prostate segmentation based on multidirectional deeply supervised V-Net. , 2019, Medical physics.
[84] David W Townsend,et al. PET/CT artifacts. , 2011, Clinical imaging.
[85] Tian Liu,et al. Magnetic resonance imaging-based pseudo computed tomography using anatomic signature and joint dictionary learning , 2018, Journal of medical imaging.
[86] M Slifstein,et al. Effects of statistical noise on graphic analysis of PET neuroreceptor studies. , 2000, Journal of nuclear medicine : official publication, Society of Nuclear Medicine.
[87] Toshihiko Kanno,et al. 18F-FDG PET in the detection of extrahepatic metastases from hepatocellular carcinoma , 2004, Journal of Gastroenterology.
[88] Kevin H. Leung,et al. Direct attenuation correction of brain PET images using only emission data via a deep convolutional encoder-decoder (Deep-DAC) , 2019, European Radiology.
[89] Yang Lei,et al. Automated prostate segmentation of volumetric CT images using 3D deeply supervised dilated FCN , 2019, Medical Imaging: Image Processing.
[90] Craig I. Coleman,et al. Diagnostic Accuracy of Cardiac Positron Emission Tomography Versus Single Photon Emission Computed Tomography for Coronary Artery Disease: A Bivariate Meta-Analysis , 2012, Circulation. Cardiovascular imaging.
[91] Tian Liu,et al. MRI-based Treatment Planning for Proton Radiotherapy: Dosimetric Validation of a Deep Learning-based Liver Synthetic CT Generation Method , 2019, Physics in medicine and biology.
[92] Yang Lei,et al. MRI-based treatment planning for liver stereotactic body radiotherapy: validation of a deep learning-based synthetic CT generation method. , 2019, The British journal of radiology.
[93] Ciprian Catana,et al. PET Image Reconstruction Using Deep Image Prior , 2019, IEEE Transactions on Medical Imaging.
[94] S. Cherry,et al. High-resolution PET detector design: modelling components of intrinsic spatial resolution , 2005, Physics in medicine and biology.
[95] Thomas E. Nichols,et al. Comparative evaluation of MR-based partial-volume correction schemes for PET. , 1999, Journal of nuclear medicine : official publication, Society of Nuclear Medicine.
[96] Andrew P. Leynes,et al. Zero-Echo-Time and Dixon Deep Pseudo-CT (ZeDD CT): Direct Generation of Pseudo-CT Images for Pelvic PET/MRI Attenuation Correction Using Deep Convolutional Neural Networks with Multiparametric MRI , 2017, The Journal of Nuclear Medicine.
[97] Lei Zhu,et al. Dual energy CT with one full scan and a second sparse-view scan using structure preserving iterative reconstruction (SPIR). , 2016 .
[98] Maryellen L Giger,et al. Machine Learning in Medical Imaging. , 2018, Journal of the American College of Radiology : JACR.
[99] Yan Wang,et al. Multi-Level Canonical Correlation Analysis for Standard-Dose PET Image Estimation , 2016, IEEE Transactions on Image Processing.
[100] Osama Mawlawi,et al. PET/CT imaging artifacts. , 2005, Journal of nuclear medicine technology.
[101] Yang Lei,et al. Dosimetric study on learning-based cone-beam CT correction in adaptive radiation therapy. , 2019, Medical dosimetry : official journal of the American Association of Medical Dosimetrists.
[102] Jian Zhou,et al. A Prototype High-Resolution Small-Animal PET Scanner Dedicated to Mouse Brain Imaging , 2016, The Journal of Nuclear Medicine.
[103] H. Zaidi,et al. Scatter Compensation Techniques in PET. , 2007, PET clinics.
[104] A. McMillan,et al. Deep learning Mr imaging–based attenuation correction for PeT/Mr imaging 1 , 2017 .
[105] Florian Wiesinger,et al. Attenuation correction using 3D deep convolutional neural network for brain 18F-FDG PET/MR: Comparison with Atlas, ZTE and CT based attenuation correction , 2019, PloS one.
[106] Tian Liu,et al. Deeply supervised 3D fully convolutional networks with group dilated convolution for automatic MRI prostate segmentation , 2019, Medical physics.
[107] Yang Lei,et al. Ultrasound prostate segmentation based on 3D V-Net with deep supervision , 2019, Medical Imaging.
[108] Dinggang Shen,et al. 3D Auto-Context-Based Locality Adaptive Multi-Modality GANs for PET Synthesis , 2019, IEEE Transactions on Medical Imaging.
[109] Yang Lei,et al. MRI-only based synthetic CT generation using dense cycle consistent generative adversarial networks. , 2019, Medical physics.
[110] Yannick Berker,et al. MLAA-based attenuation correction of flexible hardware components in hybrid PET/MR imaging , 2017, EJNMMI Physics.
[111] Lei Xing,et al. Task Group 174 Report: Utilization of [18 F]Fluorodeoxyglucose Positron Emission Tomography ([18 F]FDG-PET) in Radiation Therapy. , 2019, Medical physics.
[112] Pierrick Coupé,et al. An Optimized Blockwise Nonlocal Means Denoising Filter for 3-D Magnetic Resonance Images , 2008, IEEE Transactions on Medical Imaging.
[113] Fumio Hashimoto,et al. Dynamic PET Image Denoising Using Deep Convolutional Neural Networks Without Prior Training Datasets , 2019, IEEE Access.
[114] Shih-Ya Ma,et al. Delayed 18F-FDG PET for Detection of Paraaortic Lymph Node Metastases in Cervical Cancer Patients , 2003 .
[115] Tian Liu,et al. MRI-based pseudo CT synthesis using anatomical signature and alternating random forest with iterative refinement model , 2018, Journal of medical imaging.
[116] Sasa Mutic,et al. 18F-FDG PET definition of gross tumor volume for radiotherapy of non-small cell lung cancer: is a single standardized uptake value threshold approach appropriate? , 2006, Journal of nuclear medicine : official publication, Society of Nuclear Medicine.
[117] John L. Humm,et al. Use of PET to monitor the response of lung cancer to radiation treatment , 2000, European Journal of Nuclear Medicine.
[118] Robert J Herfkens,et al. Detection of bone metastases: assessment of integrated FDG PET/CT imaging. , 2007, Radiology.
[119] Cheng Wang,et al. A learning-based automatic segmentation method on left ventricle in SPECT imaging , 2019, Medical Imaging.
[120] Joel Karp,et al. Consensus recommendations for the use of 18F-FDG PET as an indicator of therapeutic response in patients in National Cancer Institute Trials. , 2006, Journal of nuclear medicine : official publication, Society of Nuclear Medicine.
[121] Quanzheng Li,et al. Iterative PET Image Reconstruction Using Convolutional Neural Network Representation , 2017, IEEE Transactions on Medical Imaging.
[122] Yang Lei,et al. Learning-based automatic segmentation on arteriovenous malformations from contract-enhanced CT images , 2019, Medical Imaging.
[123] Yang Lei,et al. MRI-based pseudo CT generation using classification and regression random forest , 2019, Medical Imaging.
[124] Ciprian Catana,et al. The Dawn of a New Era in Low-Dose PET Imaging. , 2019, Radiology.
[125] Habib Zaidi,et al. Dynamic whole-body PET imaging: principles, potentials and applications , 2018, European Journal of Nuclear Medicine and Molecular Imaging.
[126] Noriaki Miyaji,et al. Multicenter study of quantitative PET system harmonization using NIST-traceable 68Ge/68Ga cross-calibration kit. , 2018, Physica medica : PM : an international journal devoted to the applications of physics to medicine and biology : official journal of the Italian Association of Biomedical Physics.
[127] W. Curran,et al. Evaluation of a deep learning-based pelvic synthetic CT generation technique for MRI-based prostate proton treatment planning , 2019, Physics in medicine and biology.
[128] Fabio Morsani,et al. The Silicon Photomultiplier for application to high-resolution Positron Emission Tomography , 2007 .
[129] Lei Zhu,et al. Noise suppression for energy-resolved CT using similarity-based non-local filtration , 2016, SPIE Medical Imaging.
[130] I. Buvat,et al. A review of partial volume correction techniques for emission tomography and their applications in neurology, cardiology and oncology , 2012, Physics in medicine and biology.
[131] Paul Kinahan,et al. Attenuation correction for a combined 3D PET/CT scanner. , 1998, Medical physics.
[132] Jeffrey A. Fessler,et al. Image Reconstruction: From Sparsity to Data-Adaptive Methods and Machine Learning , 2019, Proceedings of the IEEE.
[133] Johan Vansteenkiste,et al. The role of PET scan in diagnosis, staging, and management of non-small cell lung cancer. , 2004, The oncologist.
[134] Richard Kijowski,et al. A deep learning approach for 18F-FDG PET attenuation correction , 2018, EJNMMI Physics.
[135] Christian Barillot,et al. The first MICCAI challenge on PET tumor segmentation , 2018, Medical Image Anal..
[136] Keith A. Johnson,et al. MRI-guided SPECT perfusion measures and volumetric MRI in prodromal Alzheimer disease. , 2003, Archives of neurology.
[137] Dinggang Shen,et al. Semisupervised Tripled Dictionary Learning for Standard-Dose PET Image Prediction Using Low-Dose PET and Multimodal MRI , 2017, IEEE Transactions on Biomedical Engineering.
[138] B. Erickson,et al. Machine Learning for Medical Imaging. , 2017, Radiographics : a review publication of the Radiological Society of North America, Inc.
[139] Xiaofeng Yang,et al. MR∕PET quantification tools: registration, segmentation, classification, and MR-based attenuation correction. , 2012, Medical physics.
[140] Guobao Wang,et al. Analysis of Penalized Likelihood Image Reconstruction for Dynamic PET Quantification , 2009, IEEE Transactions on Medical Imaging.
[141] Yang Lei,et al. Whole-body PET estimation from low count statistics using cycle-consistent generative adversarial networks , 2019, Physics in medicine and biology.
[142] Yabo Fu,et al. Deep Learning in Medical Image Registration: A Review , 2020, Physics in medicine and biology.
[143] B. Schölkopf,et al. Towards quantitative PET/MRI: a review of MR-based attenuation correction techniques , 2009, European Journal of Nuclear Medicine and Molecular Imaging.
[144] Berkman Sahiner,et al. Deep learning in medical imaging and radiation therapy. , 2018, Medical physics.
[145] H. Abdel-Nabi,et al. Staging of primary colorectal carcinomas with fluorine-18 fluorodeoxyglucose whole-body PET: correlation with histopathologic and CT findings. , 1998, Radiology.
[146] Yang Lei,et al. MRI-based synthetic CT generation using deep convolutional neural network , 2019, Medical Imaging: Image Processing.
[147] Paul E Kinahan,et al. Evaluation of lesion detectability in positron emission tomography when using a convergent penalized likelihood image reconstruction method , 2016, Journal of medical imaging.
[148] Charles A Mistretta,et al. Dynamic PET Denoising with HYPR Processing , 2010, Journal of Nuclear Medicine.
[149] Andrew Scarsbrook,et al. Radiotherapy response evaluation using FDG PET-CT-established and emerging applications. , 2017, The British journal of radiology.
[150] Jong Hoon Kim,et al. Penalized PET Reconstruction Using Deep Learning Prior and Local Linear Fitting , 2018, IEEE Transactions on Medical Imaging.
[151] L. Marner,et al. Deep Learning Based Attenuation Correction of PET/MRI in Pediatric Brain Tumor Patients: Evaluation in a Clinical Setting , 2019, Front. Neurosci..
[152] Tian Liu,et al. MRI-based synthetic CT generation using semantic random forest with iterative refinement , 2019, Physics in medicine and biology.
[153] Steve B. Jiang,et al. MRI-only brain radiotherapy: Assessing the dosimetric accuracy of synthetic CT images generated using a deep learning approach. , 2019, Radiotherapy and oncology : journal of the European Society for Therapeutic Radiology and Oncology.
[154] Yang Lei,et al. CT Prostate Segmentation Based on Synthetic MRI-aided Deep Attention Fully Convolution Network. , 2019, Medical physics.
[155] A. Buck,et al. PET attenuation coefficients from CT images: experimental evaluation of the transformation of CT into PET 511-keV attenuation coefficients , 2002, European Journal of Nuclear Medicine and Molecular Imaging.