计算机断层扫描重建中的三维深度学习技术系统文献综述

IF 2.2 4区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Tomography Pub Date : 2023-12-05 DOI:10.3390/tomography9060169
Hameedur Rahman, Abdur Rehman Khan, Touseef Sadiq, A. H. Farooqi, Inam Ullah Khan, Wei Hong Lim
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引用次数: 0

摘要

计算机断层扫描(CT)广泛应用于医学影像诊断。然而,从原始投影数据重建CT图像本质上是复杂的,并且受到伪影和噪声的影响,从而影响图像质量和准确性。为了应对这些挑战,深度学习的发展有可能改善计算机断层扫描图像的重建。在这方面,我们的研究目标是确定用于CT重建中的3D深度学习的技术,并确定可访问的训练和验证数据集。这项研究是在五个数据库上进行的。在根据研究的目的和范围对每条记录进行仔细评估后,我们选择了60篇研究文章进行本综述。通过系统的文献综述,我们发现卷积神经网络(convolutional neural networks, cnn)、3D卷积神经网络(3D cnn)和深度学习重建(deep learning reconstruction, DLR)是最适合CT重建的深度学习算法。此外,确定了适合训练和开发深度学习系统的两个主要数据集:2016年NIH-AAPM-Mayo和MSCT。这些数据集是创建和评估CT重建模型的重要资源。根据研究结果,3D深度学习可以提高CT图像重建的有效性,提高图像质量,降低辐射暴露。通过使用这些深度学习方法,可以使CT图像重建更加精确和有效,从而提高患者的治疗效果、诊断准确性和医疗保健系统的生产力。
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A Systematic Literature Review of 3D Deep Learning Techniques in Computed Tomography Reconstruction
Computed tomography (CT) is used in a wide range of medical imaging diagnoses. However, the reconstruction of CT images from raw projection data is inherently complex and is subject to artifacts and noise, which compromises image quality and accuracy. In order to address these challenges, deep learning developments have the potential to improve the reconstruction of computed tomography images. In this regard, our research aim is to determine the techniques that are used for 3D deep learning in CT reconstruction and to identify the training and validation datasets that are accessible. This research was performed on five databases. After a careful assessment of each record based on the objective and scope of the study, we selected 60 research articles for this review. This systematic literature review revealed that convolutional neural networks (CNNs), 3D convolutional neural networks (3D CNNs), and deep learning reconstruction (DLR) were the most suitable deep learning algorithms for CT reconstruction. Additionally, two major datasets appropriate for training and developing deep learning systems were identified: 2016 NIH-AAPM-Mayo and MSCT. These datasets are important resources for the creation and assessment of CT reconstruction models. According to the results, 3D deep learning may increase the effectiveness of CT image reconstruction, boost image quality, and lower radiation exposure. By using these deep learning approaches, CT image reconstruction may be made more precise and effective, improving patient outcomes, diagnostic accuracy, and healthcare system productivity.
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来源期刊
Tomography
Tomography Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
2.70
自引率
10.50%
发文量
222
期刊介绍: TomographyTM publishes basic (technical and pre-clinical) and clinical scientific articles which involve the advancement of imaging technologies. Tomography encompasses studies that use single or multiple imaging modalities including for example CT, US, PET, SPECT, MR and hyperpolarization technologies, as well as optical modalities (i.e. bioluminescence, photoacoustic, endomicroscopy, fiber optic imaging and optical computed tomography) in basic sciences, engineering, preclinical and clinical medicine. Tomography also welcomes studies involving exploration and refinement of contrast mechanisms and image-derived metrics within and across modalities toward the development of novel imaging probes for image-based feedback and intervention. The use of imaging in biology and medicine provides unparalleled opportunities to noninvasively interrogate tissues to obtain real-time dynamic and quantitative information required for diagnosis and response to interventions and to follow evolving pathological conditions. As multi-modal studies and the complexities of imaging technologies themselves are ever increasing to provide advanced information to scientists and clinicians. Tomography provides a unique publication venue allowing investigators the opportunity to more precisely communicate integrated findings related to the diverse and heterogeneous features associated with underlying anatomical, physiological, functional, metabolic and molecular genetic activities of normal and diseased tissue. Thus Tomography publishes peer-reviewed articles which involve the broad use of imaging of any tissue and disease type including both preclinical and clinical investigations. In addition, hardware/software along with chemical and molecular probe advances are welcome as they are deemed to significantly contribute towards the long-term goal of improving the overall impact of imaging on scientific and clinical discovery.
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