Chen Junhua, Chen Shenlun, Wee Leonard, Dekker Andre, Bermejo Inigo
Department of Radiation Oncology (MAASTRO), GROW School for Oncology and Developmental Biology, Maastricht University Medical Centre+, Maastricht, 6229 ET, The Netherlands.
Phys Med Biol. 2023 Feb 23;68(5). doi: 10.1088/1361-6560/acba74.
. There is a growing number of publications on the application of unpaired image-to-image (I2I) translation in medical imaging. However, a systematic review covering the current state of this topic for medical physicists is lacking. The aim of this article is to provide a comprehensive review of current challenges and opportunities for medical physicists and engineers to apply I2I translation in practice.. The PubMed electronic database was searched using terms referring to unpaired (unsupervised), I2I translation, and medical imaging. This review has been reported in compliance with the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) statement. From each full-text article, we extracted information extracted regarding technical and clinical applications of methods, Transparent Reporting for Individual Prognosis Or Diagnosis (TRIPOD) study type, performance of algorithm and accessibility of source code and pre-trained models.. Among 461 unique records, 55 full-text articles were included in the review. The major technical applications described in the selected literature are segmentation (26 studies), unpaired domain adaptation (18 studies), and denoising (8 studies). In terms of clinical applications, unpaired I2I translation has been used for automatic contouring of regions of interest in MRI, CT, x-ray and ultrasound images, fast MRI or low dose CT imaging, CT or MRI only based radiotherapy planning, etc Only 5 studies validated their models using an independent test set and none were externally validated by independent researchers. Finally, 12 articles published their source code and only one study published their pre-trained models.. I2I translation of medical images offers a range of valuable applications for medical physicists. However, the scarcity of external validation studies of I2I models and the shortage of publicly available pre-trained models limits the immediate applicability of the proposed methods in practice.
关于医学成像中未配对图像到图像(I2I)翻译应用的出版物数量日益增多。然而,目前缺乏针对医学物理学家对该主题现状的系统综述。本文旨在全面综述医学物理学家和工程师在实践中应用I2I翻译时面临的当前挑战和机遇。使用与未配对(无监督)、I2I翻译和医学成像相关的术语搜索了PubMed电子数据库。本综述已按照系统评价和Meta分析的首选报告项目(PRISMA)声明进行报告。从每篇全文文章中,我们提取了有关方法的技术和临床应用、个体预后或诊断的透明报告(TRIPOD)研究类型、算法性能以及源代码和预训练模型可获取性的信息。在461条独特记录中,有55篇全文文章纳入了本综述。所选文献中描述的主要技术应用是分割(26项研究)、未配对域适应(18项研究)和去噪(8项研究)。在临床应用方面,未配对I2I翻译已用于MRI、CT、x光和超声图像中感兴趣区域的自动轮廓绘制、快速MRI或低剂量CT成像、仅基于CT或MRI的放射治疗计划等。只有5项研究使用独立测试集验证了其模型,且没有一项由独立研究人员进行外部验证。最后,12篇文章公布了其源代码,只有一项研究公布了其预训练模型。医学图像的I2I翻译为医学物理学家提供了一系列有价值的应用。然而,I2I模型外部验证研究的稀缺以及公开可用预训练模型的短缺限制了所提出方法在实践中的直接适用性。