Role of AI in Theranostics: Towards Routine Personalized Radiopharmaceutical Therapies
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Baltimore | Qc | Vancouver | Arman Rahmim | USA | Computer Engineering | University of British Columbia | Babak Saboury | Vincent Gaudet | Jean-Mathieu Beauregard | Department of Radiology | National Institute of Mental Health | Department of Electrical | Electrical Engineering | Department of Materials Science | Katherine Zukotynski | Philadelphia | Fereshteh Yousefirizi | Department of Computer Science | MD | Department of Preventive Medicine | QC | National Institutes of Health | Bethesda | Canada | Department of Medicine | Julia Brosch-Lenz | Carlos Uribe Department of Integrative Oncology | BC Cancer Research Institute | BC | Radiology | McMaster University | Hamilton | ON | Nuclear Medicine | Cancer Research Centre | Universit'e Laval | Qu'ebec City | Department of Medical Imaging | Research Center | CHU de Qu'ebec - Universit'e Laval | University of Waterloo | Waterloo | Imaging Sciences | Clinical Center | University of Maryland Baltimore County | Hospital of the University of Pennsylvania | PA | Department Physics | Department of Functional Imaging | BC Cancer | Vincent C. Gaudet | A. Rahmim | Philadelphia. | Baltimore. | on | D. Electrical | Computer Engineering | Electrical Engineering | U. Waterloo | D. Radiology | Md. | Québec City | B. Saboury | U. Columbia | K. Zukotynski | McMaster University | J. Beauregard | Vancouver. | Usa | Bc | Pa | F. Yousefirizi | J. Brosch-Lenz | Universit'e Laval | Nuclear Medicine | Bc Cancer | C. Centre | Research Center | C. Laval | Imaging Sciences | C. Center | D. Physics | U. M. County | N. Health | Mcmaster University | Julia Brosch-Lenz | Bethesda. | Md | Cancer Centre
[1] S. De Buck,et al. SCreg: a registration-based platform to compare unicondylar knee arthroplasty SPECT/CT scans , 2019, BMC Musculoskeletal Disorders.
[2] Yu-Dong Yao,et al. Unsupervised 3D PET-CT Image Registration Method Using a Metabolic Constraint Function and a Multi-Domain Similarity Measure , 2020, IEEE Access.
[3] H. Song,et al. A nephron-based model of the kidneys for macro-to-micro α-particle dosimetry , 2012, Physics in medicine and biology.
[4] Hongwei Li,et al. Coarse-to-Fine Adversarial Networks and Zone-Based Uncertainty Analysis for NK/T-Cell Lymphoma Segmentation in CT/PET Images , 2020, IEEE Journal of Biomedical and Health Informatics.
[5] Yongyi Yang,et al. Deep learning with noise-to-noise training for denoising in SPECT myocardial perfusion imaging. , 2020, Medical physics.
[6] Bjoern H Menze,et al. Deep neural network for automatic characterization of lesions on 68Ga-PSMA-11 PET/CT , 2019, European Journal of Nuclear Medicine and Molecular Imaging.
[7] Yang Lei,et al. Machine learning in quantitative PET: A review of attenuation correction and low-count image reconstruction methods. , 2020, 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.
[8] Arman Rahmim,et al. Use of Generative Disease Models for Analysis and Selection of Radiomic Features in PET , 2019, IEEE Transactions on Radiation and Plasma Medical Sciences.
[9] Yu Zhao,et al. Automated Whole-Body Bone Lesion Detection for Multiple Myeloma on 68Ga-Pentixafor PET/CT Imaging Using Deep Learning Methods , 2018, Contrast media & molecular imaging.
[10] Qianjin Feng,et al. Radiomics Analysis of PET and CT Components of PET/CT Imaging Integrated with Clinical Parameters: Application to Prognosis for Nasopharyngeal Carcinoma , 2019, Molecular Imaging and Biology.
[11] Praveen Gulaka,et al. Effect of PET Scan with Count Reduction Using AI-Based Processing Techniques on Image Quality , 2020 .
[12] Nassir Navab,et al. Novel Low-Dose CT based Automatic Segmentation and Registration Framework for Liver Radioembolization Planning , 2021 .
[13] Guobao Wang,et al. PET Parametric Imaging: Past, Present, and Future , 2020, IEEE Transactions on Radiation and Plasma Medical Sciences.
[14] Tobias Rydén,et al. Deep-Learning Generation of Synthetic Intermediate Projections Improves 177Lu SPECT Images Reconstructed with Sparsely Acquired Projections , 2020, The Journal of Nuclear Medicine.
[15] Tomas Kron,et al. Deep Learning Renal Segmentation for Fully Automated Radiation Dose Estimation in Unsealed Source Therapy , 2018, Front. Oncol..
[16] A. Rahmim,et al. Deep-JASC: joint attenuation and scatter correction in whole-body 18F-FDG PET using a deep residual network , 2020, European Journal of Nuclear Medicine and Molecular Imaging.
[17] T. Kuwert,et al. Dose voxel kernel prediction with neural networks for radiation dose estimation , 2020, Zeitschrift fur medizinische Physik.
[18] K. Brock,et al. Use of image registration and fusion algorithms and techniques in radiotherapy: Report of the AAPM Radiation Therapy Committee Task Group No. 132 , 2017, Medical physics.
[19] H. Zaidi,et al. Standard SPECT myocardial perfusion estimation from half-time acquisitions using deep convolutional residual neural networks , 2020, Journal of Nuclear Cardiology.
[20] V. Goh,et al. Predicting Response to Neoadjuvant Chemotherapy with PET Imaging Using Convolutional Neural Networks , 2015, PloS one.
[21] Dinggang Shen,et al. 3D conditional generative adversarial networks for high-quality PET image estimation at low dose , 2018, NeuroImage.
[22] D. Hörsch,et al. The joint IAEA, EANM, and SNMMI practical guidance on peptide receptor radionuclide therapy (PRRNT) in neuroendocrine tumours , 2013, European Journal of Nuclear Medicine and Molecular Imaging.
[23] Torsten Kuwert,et al. A deep learning approach to radiation dose estimation , 2019, Physics in medicine and biology.
[24] Influence of dosimetry method on bone lesion absorbed dose estimates in PSMA therapy: application to mCRPC patients receiving Lu-177-PSMA-I&T , 2021, EJNMMI Physics.
[25] David J. Thomas,et al. ICRU report 85: fundamental quantities and units for ionizing radiation , 2012 .
[27] J. Fessler,et al. A deep neural network for fast and accurate scatter estimation in quantitative SPECT/CT under challenging scatter conditions , 2020, European Journal of Nuclear Medicine and Molecular Imaging.
[28] Hao Chen,et al. Unsupervised Cross-Modality Domain Adaptation of ConvNets for Biomedical Image Segmentations with Adversarial Loss , 2018, IJCAI.
[29] H. Kestler,et al. Molecular radiotherapy: the NUKFIT software for calculating the time-integrated activity coefficient. , 2013, Medical physics.
[30] Yuni K. Dewaraja,et al. MIRD Pamphlet No. 23: Quantitative SPECT for Patient-Specific 3-Dimensional Dosimetry in Internal Radionuclide Therapy , 2012, The Journal of Nuclear Medicine.
[31] Wen Yan,et al. Unsupervised End-to-end Learning for Deformable Medical Image Registration , 2017, ArXiv.
[32] N. Obuchowski,et al. Incorporating radiomics into clinical trials: expert consensus endorsed by the European Society of Radiology on considerations for data-driven compared to biologically driven quantitative biomarkers , 2021, European Radiology.
[33] Michael Ljungberg,et al. MIRD Pamphlet No. 24: Guidelines for Quantitative 131I SPECT in Dosimetry Applications , 2013, The Journal of Nuclear Medicine.
[34] David Sarrut,et al. Voxel‐based multimodel fitting method for modeling time activity curves in SPECT images , 2017, Medical physics.
[35] George Loudos,et al. A review of the use and potential of the GATE Monte Carlo simulation code for radiation therapy and dosimetry applications. , 2014, Medical physics.
[36] Dinggang Shen,et al. Deep auto-context convolutional neural networks for standard-dose PET image estimation from low-dose PET/MRI , 2017, Neurocomputing.
[37] B. McNeil,et al. Radiotheranostics: a roadmap for future development. , 2020, The Lancet. Oncology.
[38] R. Abramson,et al. VIDA: a voxel-based dosimetry method for targeted radionuclide therapy using Geant4. , 2015, Cancer biotherapy & radiopharmaceuticals.
[39] Rachida Lebtahi,et al. Study of the Impact of Tissue Density Heterogeneities on 3-Dimensional Abdominal Dosimetry: Comparison Between Dose Kernel Convolution and Direct Monte Carlo Methods , 2013, The Journal of Nuclear Medicine.
[40] D. Murphy,et al. Dosimetry of 177Lu-PSMA-617 in Metastatic Castration-Resistant Prostate Cancer: Correlations Between Pretherapeutic Imaging and Whole-Body Tumor Dosimetry with Treatment Outcomes , 2018, The Journal of Nuclear Medicine.
[41] U. Haberkorn,et al. Preclinical Evaluation of a Tailor-Made DOTA-Conjugated PSMA Inhibitor with Optimized Linker Moiety for Imaging and Endoradiotherapy of Prostate Cancer , 2015, The Journal of Nuclear Medicine.
[42] H. Zaidi,et al. Whole-body voxel-based internal dosimetry using deep learning , 2020, European Journal of Nuclear Medicine and Molecular Imaging.
[43] Uri Shaham,et al. DeepSurv: personalized treatment recommender system using a Cox proportional hazards deep neural network , 2016, BMC Medical Research Methodology.
[44] G. Böning,et al. Image-based dosimetry for 225Ac-PSMA-I&T therapy using quantitative SPECT , 2020, European Journal of Nuclear Medicine and Molecular Imaging.
[45] B. Wessels,et al. MIRD pamphlet no. 16: Techniques for quantitative radiopharmaceutical biodistribution data acquisition and analysis for use in human radiation dose estimates. , 1999, Journal of nuclear medicine : official publication, Society of Nuclear Medicine.
[46] 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.
[47] Su Ruan,et al. 3D Lymphoma Segmentation in PET/CT Images Based on Fully Connected CRFs , 2017, CMMI/RAMBO/SWITCH@MICCAI.
[48] Jesse Tanguay,et al. Accuracy of 177Lu activity quantification in SPECT imaging: a phantom study , 2017, EJNMMI Physics.
[49] J. Berlin,et al. Phase 3 Trial of 177Lu‐Dotatate for Midgut Neuroendocrine Tumors , 2017, The New England journal of medicine.
[50] Min Sun Lee,et al. Whole-Body Voxel-Based Personalized Dosimetry: The Multiple Voxel S-Value Approach for Heterogeneous Media with Nonuniform Activity Distributions , 2017, The Journal of Nuclear Medicine.
[51] Stefan Klein,et al. Radiomics: Data mining using quantitative medical image features , 2020 .
[52] Manuel Bardiès,et al. Comparison of commercial dosimetric software platforms in patients treated with 177Lu‐DOTATATE for peptide receptor radionuclide therapy , 2020, Medical physics.
[53] Georg Langs,et al. Segmentation of Skeleton and Organs in Whole-Body CT Images via Iterative Trilateration , 2017, IEEE Transactions on Medical Imaging.
[54] T. Gupta,et al. Interobserver Variability in the Delineation of Gross Tumour Volume and Specified Organs-at-risk During IMRT for Head and Neck Cancers and the Impact of FDG-PET/CT on Such Variability at the Primary Site. , 2017, Journal of medical imaging and radiation sciences.
[55] L. Holloway,et al. Uncertainties in volume delineation in radiation oncology: A systematic review and recommendations for future studies. , 2016, Radiotherapy and oncology : journal of the European Society for Therapeutic Radiology and Oncology.
[56] Max A. Viergever,et al. End-to-End Unsupervised Deformable Image Registration with a Convolutional Neural Network , 2017, DLMIA/ML-CDS@MICCAI.
[57] W. Oyen,et al. EANM procedure guidelines for radionuclide therapy with 177Lu-labelled PSMA-ligands (177Lu-PSMA-RLT) , 2019, European Journal of Nuclear Medicine and Molecular Imaging.
[58] Elin Trägårdh,et al. Denoising of Scintillation Camera Images Using a Deep Convolutional Neural Network: A Monte Carlo Simulation Approach , 2019, The Journal of Nuclear Medicine.
[59] Mauro Iori,et al. Effect of image registration on 3D absorbed dose calculations in 177Lu-DOTATOC peptide receptor radionuclide therapy. , 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.
[60] S. Schulz,et al. Molecular imaging with 68Ga-SSTR PET/CT and correlation to immunohistochemistry of somatostatin receptors in neuroendocrine tumours , 2011, European Journal of Nuclear Medicine and Molecular Imaging.
[61] Giovanni Paganelli,et al. Long-term evaluation of renal toxicity after peptide receptor radionuclide therapy with 90Y-DOTATOC and 177Lu-DOTATATE: the role of associated risk factors , 2008, European Journal of Nuclear Medicine and Molecular Imaging.
[62] W E Bolch,et al. MIRD pamphlet No. 17: the dosimetry of nonuniform activity distributions--radionuclide S values at the voxel level. Medical Internal Radiation Dose Committee. , 1999, Journal of nuclear medicine : official publication, Society of Nuclear Medicine.
[63] Michael Lassmann,et al. The evidence base for the use of internal dosimetry in the clinical practice of molecular radiotherapy , 2014, European Journal of Nuclear Medicine and Molecular Imaging.
[64] Artificial intelligence for reduced dose 18F-FDG PET examinations: a real-world deployment through a standardized framework and business case assessment , 2021, EJNMMI Physics.
[65] Stephen Baek,et al. Deep segmentation networks predict survival of non-small cell lung cancer , 2019, Scientific Reports.
[66] S. Vandenberghe,et al. Quantitative Imaging for Targeted Radionuclide Therapy Dosimetry - Technical Review , 2017, Theranostics.
[67] Sébastien Incerti,et al. Mechanistic DNA damage simulations in Geant4-DNA part 1: A parameter study in a simplified geometry. , 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.
[68] Joel S. Karp,et al. State of the art in total body PET , 2020, EJNMMI Physics.
[69] Jianhua Ma,et al. Multi-Level Multi-Modality Fusion Radiomics: Application to PET and CT Imaging for Prognostication of Head and Neck Cancer , 2019, IEEE Journal of Biomedical and Health Informatics.
[70] Hui Liu,et al. Deep learning-based attenuation map generation for myocardial perfusion SPECT , 2020, European Journal of Nuclear Medicine and Molecular Imaging.
[71] Min Sun Lee,et al. Deep-dose: a voxel dose estimation method using deep convolutional neural network for personalized internal dosimetry , 2019, Scientific Reports.
[72] Dwarikanath Mahapatra,et al. Deformable medical image registration using generative adversarial networks , 2018, 2018 IEEE 15th International Symposium on Biomedical Imaging (ISBI 2018).
[73] W. Moses,et al. Total-Body PET: Maximizing Sensitivity to Create New Opportunities for Clinical Research and Patient Care , 2018, The Journal of Nuclear Medicine.
[74] Reid F Thompson,et al. Artificial Intelligence in Radiation Oncology. , 2019, Hematology/oncology clinics of North America.
[75] G. Feldmann,et al. Theranostics in nuclear medicine practice , 2017, OncoTargets and therapy.
[76] E. Hindié,et al. Radiation doses from 161Tb and 177Lu in single tumour cells and micrometastases , 2020, EJNMMI Physics.
[77] Jeroen Bertels,et al. Whole liver segmentation based on deep learning and manual adjustment for clinical use in SIRT , 2020, European Journal of Nuclear Medicine and Molecular Imaging.
[78] A. Dhawan,et al. MIRD Pamphlet No. 25: MIRDcell V2.0 Software Tool for Dosimetric Analysis of Biologic Response of Multicellular Populations , 2014, The Journal of Nuclear Medicine.
[79] Dinggang Shen,et al. Scalable High-Performance Image Registration Framework by Unsupervised Deep Feature Representations Learning , 2016, IEEE Transactions on Biomedical Engineering.
[80] Dorin Comaniciu,et al. An Artificial Agent for Robust Image Registration , 2016, AAAI.
[81] Hugo W A M de Jong,et al. Accelerated SPECT image reconstruction with FBP and an image enhancement convolutional neural network , 2019, EJNMMI Physics.
[82] Xiao Jin,et al. Quantitative comparison of OSEM and penalized likelihood image reconstruction using relative difference penalties for clinical PET , 2015, Physics in medicine and biology.
[83] A. Amyar,et al. 3-D RPET-NET: Development of a 3-D PET Imaging Convolutional Neural Network for Radiomics Analysis and Outcome Prediction , 2019, IEEE Transactions on Radiation and Plasma Medical Sciences.
[84] Martin G. Pomper,et al. A Learned Reconstruction Network for SPECT Imaging , 2021, IEEE Transactions on Radiation and Plasma Medical Sciences.
[85] A. Hogg,et al. An automated voxelized dosimetry tool for radionuclide therapy based on serial quantitative SPECT/CT imaging. , 2013, Medical physics.
[86] M. McDevitt,et al. Radiopharmaceutical therapy in cancer: clinical advances and challenges , 2020, Nature Reviews Drug Discovery.
[87] A. Seth,et al. Efficacy and safety of 225Ac-PSMA-617 targeted alpha therapy in metastatic castration-resistant Prostate Cancer patients , 2020, Theranostics.
[88] Pengcheng Hu,et al. First Human Imaging Studies with the EXPLORER Total-Body PET Scanner* , 2019, The Journal of Nuclear Medicine.
[89] Gilmer Valdes,et al. An unsupervised convolutional neural network-based algorithm for deformable image registration , 2018, Physics in medicine and biology.
[90] T. Kuwert,et al. Particle filter de-noising of voxel-specific time-activity-curves in personalized 177Lu therapy. , 2019, Zeitschrift fur medizinische Physik.
[91] J Li,et al. Total-Body PET Images Reconstruction Optimization Using Deep Learning , 2021 .