基于深度学习的MRI到CT和MRI到PET图像合成综述

M.S. Meharban, M.K. Sabu, T. Santhanakrishnan
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引用次数: 0

摘要

图像合成是生成具有所需质量的合成图像的过程。虽然CT和PET图像受到电离辐射的影响,但MRI图像没有这种辐射。因此,我们需要一个系统来从MRI图像生成合成的CT和PET图像。该系统将有助于避免来自CT和PET的电离辐射,并使患者的治疗工作流程更好。本文综述了各种深度学习合成CT和合成PET生成方法。2017年至2021年,从PubMed和ScienceDirect数据库中选择了超过75篇论文。最近,CycleGAN变体在不需要配对数据的情况下产生了更好的结果。然而,没有一个有效的评估措施来评估拟议工程的效果。需要由放射科医生进行额外的盲测,以评估合成图像的视觉质量。
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A comprehensive review on MRI to CT and MRI to PET image synthesis using deep learning
Image synthesis is the process of generating a synthetic image with desired qualities. Although CT and PET images are suffering from ionising radiation, MRI images are free from such radiation. Due to this fact, we need a system to generate synthetic CT and PET images from MRI images. The system will be helpful to avoid such ionising radiation from CT and PET and makes a better patient treatment workflow. This work reviewed various deep learning synthetic CT and synthetic PET generation methods. More than 75 papers were selected from PubMed and ScienceDirect databases from 2017 to 2021. Recently, CycleGAN variants have produced better results with no need for paired data. However, an effective evaluation measure was not available to evaluate the efficacy of the proposed works. Additional blind tests involving radiologists are required to evaluate the visual quality of the synthesised image.
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CiteScore
1.60
自引率
0.00%
发文量
73
期刊介绍: IJBET addresses cutting-edge research in the multi-disciplinary area of biomedical engineering and technology. Medical science incorporates scientific/technological advances combining to produce more accurate diagnoses, effective treatments with fewer side effects, and improved ability to prevent disease and provide superior-quality healthcare. A key field here is biomedical engineering/technology, offering a synthesis of physical, chemical, mathematical and computational sciences combined with engineering principles to enhance R&D in biology, medicine, behaviour, and health. Topics covered include Artificial organs Automated patient monitoring Advanced therapeutic and surgical devices Application of expert systems and AI to clinical decision making Biomaterials design Biomechanics of injury and wound healing Blood chemistry sensors Computer modelling of physiologic systems Design of optimal clinical laboratories Medical imaging systems Sports medicine.
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