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Dosimetric comparison of deformable image registration and synthetic CT generation based on CBCT images for organs at risk in cervical cancer radiotherapy
Radiation Oncology,
2023
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Evaluation of Dose Calculation Based on Cone-Beam CT Using Different Measuring Correction Methods for Head and Neck Cancer Patients
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2023
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Evaluation of Dose Calculation Based on Cone-Beam CT Using Different Measuring Correction Methods for Head and Neck Cancer Patients
Technology in Cancer Research & Treatment,
2023
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Artifact removal for unpaired thorax CBCT images using a feature fusion residual network and contextual loss
Journal of Applied Clinical Medical Physics,
2023
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Effect of the Small Field of View and Imaging Parameters to Image Quality and Dose Calculation in Adaptive Radiotherapy
Polish Journal of Medical Physics and Engineering,
2023
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A projection‐domain correction method in CBCT reconstruction for head and neck radiotherapy using cycle‐GAN and nonlocal means filter
Medical Physics,
2023
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Novel Three-Dimensional and Non-Invasive Diagnostic Approach for Distinction between Odontogenic Keratocysts and Ameloblastomas
Dentistry Journal,
2023
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Generation of synthetic CT from CBCT using deep learning approaches for head and neck cancer patients
Biomedical Physics & Engineering Express,
2023
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An unsupervised dual contrastive learning framework for scatter correction in cone-beam CT image
Computers in Biology and Medicine,
2023
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A projection‐domain correction method in CBCT reconstruction for head and neck radiotherapy using cycle‐GAN and nonlocal means filter
Medical Physics,
2023
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CBCT-to-CT Synthesis for Cervical Cancer Adaptive Radiotherapy via U-Net-Based Model Hierarchically Trained with Hybrid Dataset
Cancers,
2023
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Daily dose evaluation based on corrected CBCTs for breast cancer patients: accuracy of dose and complication risk assessment
Radiation Oncology,
2022
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Daily dose evaluation based on corrected CBCTs for breast cancer patients: accuracy of dose and complication risk assessment
Radiation Oncology,
2022
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Dosimetric assessment of patient dose calculation on a deep learning‐based synthesized computed tomography image for adaptive radiotherapy
Journal of Applied Clinical Medical Physics,
2022
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Dosimetric assessment of patient dose calculation on a deep learning‐based synthesized computed tomography image for adaptive radiotherapy
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2022
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Three-Dimensional Analysis of Bone Volume Change at Donor Sites in Mandibular Body Bone Block Grafts by a Computer-Assisted Automatic Registration Method: A Retrospective Study
Applied Sciences,
2022
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Cancers,
2022
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Cone-beam CT image quality improvement using Cycle-Deblur consistent adversarial networks (Cycle-Deblur GAN) for chest CT imaging in breast cancer patients
Scientific Reports,
2021
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Cone-beam CT image quality improvement using Cycle-Deblur consistent adversarial networks (Cycle-Deblur GAN) for chest CT imaging in breast cancer patients
Scientific Reports,
2021
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Imaging Study of Pseudo-CT Synthesized From Cone-Beam CT Based on 3D CycleGAN in Radiotherapy
Frontiers in Oncology,
2021
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A Deep Unsupervised Learning Model for Artifact Correction of Pelvis Cone-Beam CT
Frontiers in Oncology,
2021
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Comparison of Supervised and Unsupervised Approaches for the Generation of Synthetic CT from Cone-Beam CT
Diagnostics,
2021
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Hyperpolarized Magnetic Resonance and Artificial Intelligence: Frontiers of Imaging in Pancreatic Cancer (Preprint)
JMIR Medical Informatics,
2020
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CBCT‐based synthetic CT generation using deep‐attention cycleGAN for pancreatic adaptive radiotherapy
Medical Physics,
2020
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CBCT‐based synthetic CT generation using deep‐attention cycleGAN for pancreatic adaptive radiotherapy
Medical Physics,
2020
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Generating synthesized computed tomography (CT) from cone-beam computed tomography (CBCT) using CycleGAN for adaptive radiation therapy
Physics in Medicine & Biology,
2019
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