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A review on Deep Learning approaches for low-dose Computed Tomography restoration

期刊

COMPLEX & INTELLIGENT SYSTEMS
卷 9, 期 3, 页码 2713-2745

出版社

SPRINGER HEIDELBERG
DOI: 10.1007/s40747-021-00405-x

关键词

Deep Learning; Generative adversarial networks; Optimization; Medical datasets; Structure preservation; Denoising

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Computed Tomography (CT) is widely used in clinical medicine for producing detailed images of the human body. Low-Dose CT (LDCT) scanning protocols are used to minimize radiation exposure to patients, but they compromise the quality of CT images. Recently, Deep Learning (DL)-based LDCT restoration has become popular for its data-driven, high-performance, and fast execution characteristics. This study aims to explore the role of DL techniques in LDCT restoration and critically review their applications. It highlights the limitations and future directions for DL-based LDCT restoration.
Computed Tomography (CT) is a widely use medical image modality in clinical medicine, because it produces excellent visualizations of fine structural details of the human body. In clinical procedures, it is desirable to acquire CT scans by minimizing the X-ray flux to prevent patients from being exposed to high radiation. However, these Low-Dose CT (LDCT) scanning protocols compromise the signal-to-noise ratio of the CT images because of noise and artifacts over the image space. Thus, various restoration methods have been published over the past 3 decades to produce high-quality CT images from these LDCT images. More recently, as opposed to conventional LDCT restoration methods, Deep Learning (DL)-based LDCT restoration approaches have been rather common due to their characteristics of being data-driven, high-performance, and fast execution. Thus, this study aims to elaborate on the role of DL techniques in LDCT restoration and critically review the applications of DL-based approaches for LDCT restoration. To achieve this aim, different aspects of DL-based LDCT restoration applications were analyzed. These include DL architectures, performance gains, functional requirements, and the diversity of objective functions. The outcome of the study highlights the existing limitations and future directions for DL-based LDCT restoration. To the best of our knowledge, there have been no previous reviews, which specifically address this topic.

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