A systematic literature review: deep learning techniques for synthetic medical image generation and their applications in radiotherapy

Moiz Khan Sherwani, Shyam Gopalakrishnan
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Abstract

The aim of this systematic review is to determine whether Deep Learning (DL) algorithms can provide a clinically feasible alternative to classic algorithms for synthetic Computer Tomography (sCT). The following categories are presented in this study: ∙ MR-based treatment planning and synthetic CT generation techniques. ∙ Generation of synthetic CT images based on Cone Beam CT images. ∙ Low-dose CT to High-dose CT generation. ∙ Attenuation correction for PET images. To perform appropriate database searches, we reviewed journal articles published between January 2018 and June 2023. Current methodology, study strategies, and results with relevant clinical applications were analyzed as we outlined the state-of-the-art of deep learning based approaches to inter-modality and intra-modality image synthesis. This was accomplished by contrasting the provided methodologies with traditional research approaches. The key contributions of each category were highlighted, specific challenges were identified, and accomplishments were summarized. As a final step, the statistics of all the cited works from various aspects were analyzed, which revealed that DL-based sCTs have achieved considerable popularity, while also showing the potential of this technology. In order to assess the clinical readiness of the presented methods, we examined the current status of DL-based sCT generation.
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系统性文献综述:合成医学图像生成的深度学习技术及其在放射治疗中的应用
本系统性综述旨在确定深度学习(DL)算法是否能在临床上替代合成计算机断层扫描(sCT)的传统算法。本研究分为以下几类:∙ 基于 MR 的治疗规划和合成 CT 生成技术。∙ 基于锥束 CT 图像生成合成 CT 图像。∙ 从低剂量 CT 到高剂量 CT 的生成。∙ PET 图像的衰减校正。为了进行适当的数据库搜索,我们查阅了2018年1月至2023年6月期间发表的期刊文章。我们分析了当前的方法、研究策略和相关临床应用结果,并概述了基于深度学习的跨模态和模态内图像合成方法的最新进展。为此,我们将所提供的方法与传统研究方法进行了对比。重点强调了每个类别的主要贡献,确定了具体挑战,并总结了取得的成就。最后,从各个方面分析了所有被引用作品的统计数据,结果表明,基于 DL 的 sCT 已经获得了相当大的普及,同时也显示了这项技术的潜力。为了评估所介绍方法的临床准备情况,我们考察了基于 DL 的 sCT 生成的现状。
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