Cross2SynNet: cross-device-cross-modal synthesis of routine brain MRI sequences from CT with brain lesion.

IF 2 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Magnetic Resonance Materials in Physics, Biology and Medicine Pub Date : 2024-04-01 Epub Date: 2024-02-05 DOI:10.1007/s10334-023-01145-4
Minbo Jiang, Shuai Wang, Zhiwei Song, Limei Song, Yi Wang, Chuanzhen Zhu, Qiang Zheng
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Abstract

Objectives: CT and MR are often needed to determine the location and extent of brain lesions collectively to improve diagnosis. However, patients with acute brain diseases cannot complete the MRI examination within a short time. The aim of the study is to devise a cross-device and cross-modal medical image synthesis (MIS) method Cross2SynNet for synthesizing routine brain MRI sequences of T1WI, T2WI, FLAIR, and DWI from CT with stroke and brain tumors.

Materials and methods: For the retrospective study, the participants covered four different diseases of cerebral ischemic stroke (CIS-cohort), cerebral hemorrhage (CH-cohort), meningioma (M-cohort), glioma (G-cohort). The MIS model Cross2SynNet was established on the basic architecture of conditional generative adversarial network (CGAN), of which, the fully convolutional Transformer (FCT) module was adopted into generator to capture the short- and long-range dependencies between healthy and pathological tissues, and the edge loss function was to minimize the difference in gradient magnitude between synthetic image and ground truth. Three metrics of mean square error (MSE), peak signal-to-noise ratio (PSNR), and structure similarity index measure (SSIM) were used for evaluation.

Results: A total of 230 participants (mean patient age, 59.77 years ± 13.63 [standard deviation]; 163 men [71%] and 67 women [29%]) were included, including CIS-cohort (95 participants between Dec 2019 and Feb 2022), CH-cohort (69 participants between Jan 2020 and Dec 2021), M-cohort (40 participants between Sep 2018 and Dec 2021), and G-cohort (26 participants between Sep 2019 and Dec 2021). The Cross2SynNet achieved averaged values of MSE = 0.008, PSNR = 21.728, and SSIM = 0.758 when synthesizing MRIs from CT, outperforming the CycleGAN, pix2pix, RegGAN, Pix2PixHD, and ResViT. The Cross2SynNet could synthesize the brain lesion on pseudo DWI even if the CT image did not exhibit clear signal in the acute ischemic stroke patients.

Conclusions: Cross2SynNet could achieve routine brain MRI synthesis of T1WI, T2WI, FLAIR, and DWI from CT with promising performance given the brain lesion of stroke and brain tumor.

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Cross2SynNet:从带有脑部病变的 CT 对常规脑部 MRI 序列进行跨设备、跨模式合成。
目的:通常需要通过 CT 和 MR 共同确定脑部病变的位置和范围,以提高诊断率。然而,急性脑部疾病患者无法在短时间内完成核磁共振检查。本研究旨在设计一种跨设备和跨模态医学影像合成(MIS)方法 Cross2SynNet,用于合成中风和脑肿瘤 CT 的 T1WI、T2WI、FLAIR 和 DWI 等常规脑部 MRI 序列:在回顾性研究中,参与者包括脑缺血中风(CIS-队列)、脑出血(CH-队列)、脑膜瘤(M-队列)和胶质瘤(G-队列)四种不同的疾病。MIS模型Cross2SynNet建立在条件生成对抗网络(CGAN)的基本架构上,其中生成器采用了全卷积变换器(FCT)模块,以捕捉健康组织和病理组织之间的短程和长程依赖关系,边缘损失函数则用于最小化合成图像与地面实况之间的梯度差异。评估采用了均方误差(MSE)、峰值信噪比(PSNR)和结构相似性指数(SSIM)三个指标:共纳入 230 名参与者(患者平均年龄为 59.77 岁 ± 13.63 [标准差];男性 163 人 [71%],女性 67 人 [29%]),包括 CIS-队列(2019 年 12 月至 2022 年 2 月期间有 95 名参与者)、CH-队列(2020 年 1 月至 2021 年 12 月期间有 69 名参与者)、M-队列(2018 年 9 月至 2021 年 12 月期间有 40 名参与者)和 G-队列(2019 年 9 月至 2021 年 12 月期间有 26 名参与者)。Cross2SynNet 从 CT 合成 MRI 时的平均值为 MSE = 0.008、PSNR = 21.728 和 SSIM = 0.758,优于 CycleGAN、pix2pix、RegGAN、Pix2PixHD 和 ResViT。在急性缺血性脑卒中患者中,即使 CT 图像未显示清晰信号,Cross2SynNet 也能在伪 DWI 上合成脑部病变:Cross2SynNet可根据CT图像实现T1WI、T2WI、FLAIR和DWI的常规脑磁共振成像合成,在脑卒中和脑肿瘤的脑部病变方面表现良好。
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来源期刊
CiteScore
4.60
自引率
0.00%
发文量
58
审稿时长
>12 weeks
期刊介绍: MAGMA is a multidisciplinary international journal devoted to the publication of articles on all aspects of magnetic resonance techniques and their applications in medicine and biology. MAGMA currently publishes research papers, reviews, letters to the editor, and commentaries, six times a year. The subject areas covered by MAGMA include: advances in materials, hardware and software in magnetic resonance technology, new developments and results in research and practical applications of magnetic resonance imaging and spectroscopy related to biology and medicine, study of animal models and intact cells using magnetic resonance, reports of clinical trials on humans and clinical validation of magnetic resonance protocols.
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