Synthetic imaging

合成成像
  • 文章类型: Journal Article
    随着计算机断层扫描和强度调制的出现,放射治疗发生了巨大变化。这增加了工作流程的复杂性,但允许更精确和可重复的治疗。因此,这些进步需要准确描绘更多的卷,提出了如何描绘它们的问题,以统一的方式跨中心。然后,随着计算能力的提高,逆向规划成为可能,并且可以生成三维剂量分布。人工智能提供了使这种工作流程更高效的机会,同时增加了实践的同质性。许多基于人工智能的工具正在日常实践中实现,以提高效率,减少工作量,提高治疗的均匀性。从该工作流程中检索到的数据可以与临床数据和组学数据相结合,以开发预测工具来支持临床决策过程。这种预测工具正处于概念验证阶段,需要具有解释性,经过前瞻性验证,并基于大型和多中心队列。然而,他们可以弥合个性化放射肿瘤学的差距,通过个性化肿瘤策略,肿瘤体积的剂量处方和对危险器官的剂量限制。
    Radiation therapy has dramatically changed with the advent of computed tomography and intensity modulation. This added complexity to the workflow but allowed for more precise and reproducible treatment. As a result, these advances required the accurate delineation of many more volumes, raising questions about how to delineate them, in a uniform manner across centers. Then, as computing power improved, reverse planning became possible and three-dimensional dose distributions could be generated. Artificial intelligence offers the opportunity to make such workflow more efficient while increasing practice homogeneity. Many artificial intelligence-based tools are being implemented in routine practice to increase efficiency, reduce workload and improve homogeneity of treatments. Data retrieved from this workflow could be combined with clinical data and omic data to develop predictive tools to support clinical decision-making process. Such predictive tools are at the stage of proof-of-concept and need to be explainatory, prospectively validated, and based on large and multicenter cohorts. Nevertheless, they could bridge the gap to personalized radiation oncology, by personalizing oncologic strategies, dose prescriptions to tumor volumes and dose constraints to organs at risk.
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  • 文章类型: Journal Article
    目的:我们旨在测试来自对比后定量瞬态成像(QTI)采集的合成T1加权成像是否能够显示颅内病变的病理对比增强。
    方法:分析包括141例接受3Tesla-MRI脑部检查并静脉注射造影剂的患者,造影后采集协议包括三维快速破坏梯度回波(FSPGR)序列和QTI采集。从QTI衍生的弛豫时间和质子密度的定量图生成合成的T1加权图像。两名神经放射科医生评估了合成和常规对比后T1加权图像,以了解颅内病变中病理对比增强的存在和模式。定量比较了增强量。
    结果:使用常规成像作为参考,合成T1加权成像对显示对比增强病变的敏感性为93%.在阅读器之间(对于常规和合成成像,k=1)和序列之间(对于两个阅读器,k=0.98),对比度增强的存在/不存在的一致性几乎是完美的。在91%的病变中,合成T1加权成像显示与常规成像中可见的对比增强模式相同.与FSPGR相比,剩余病变中的增强模式的差异可能是由于较低的空间分辨率和来自QTI的造影剂施用的较长的采集延迟。总的来说,在合成成像中增强量似乎更大.
    结论:QTI衍生的对比后合成T1加权成像在大多数颅内增强病变中捕获病理对比增强。需要采用具有更高空间分辨率的定量成像的进一步比较研究来支持我们的数据并探索在临床试验中可能的未来应用。
    OBJECTIVE: We aimed to test whether synthetic T1-weighted imaging derived from a post-contrast Quantitative Transient-state Imaging (QTI) acquisition enabled revealing pathological contrast enhancement in intracranial lesions.
    METHODS: The analysis included 141 patients who underwent a 3 Tesla-MRI brain exam with intravenous contrast media administration, with the post-contrast acquisition protocol comprising a three-dimensional fast spoiled gradient echo (FSPGR) sequence and a QTI acquisition. Synthetic T1-weighted images were generated from QTI-derived quantitative maps of relaxation times and proton density. Two neuroradiologists assessed synthetic and conventional post-contrast T1-weighted images for the presence and pattern of pathological contrast enhancement in intracranial lesions. Enhancement volumes were quantitatively compared.
    RESULTS: Using conventional imaging as a reference, synthetic T1-weighted imaging was 93% sensitive in revealing the presence of contrast enhancing lesions. The agreement for the presence/absence of contrast enhancement was almost perfect both between readers (k = 1 for both conventional and synthetic imaging) and between sequences (k = 0.98 for both readers). In 91% of lesions, synthetic T1-weighted imaging showed the same pattern of contrast enhancement visible in conventional imaging. Differences in enhancement pattern in the remaining lesions can be due to the lower spatial resolution and the longer acquisition delay from contrast media administration of QTI compared to FSPGR. Overall, enhancement volumes appeared larger in synthetic imaging.
    CONCLUSIONS: QTI-derived post-contrast synthetic T1-weighted imaging captures pathological contrast enhancement in most intracranial enhancing lesions. Further comparative studies employing quantitative imaging with higher spatial resolution is needed to support our data and explore possible future applications in clinical trials.
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  • 文章类型: Journal Article
    目的:结合肺功能影像的放疗计划有可能降低肺毒性。自由呼吸4DCT导出的通气图像(CTVI)可能有助于量化肺功能。这项研究引入了一种新颖的深度学习模型,直接将计划CT图像转换为CTVI。我们调查了生成图像的准确性以及对功能回避计划的影响。
    方法:来自48例NSCLC患者的配对计划CT和4DCT扫描被随机分配到训练(n=41)和测试(n=7)数据集。使用基于Jacobian的算法从4DCT生成通风图,以提供地面实况标签(CTVI4DCT)。训练基于3DU-Net的模型以将CT映射到合成CTVI(CTVIShn)并使用五次交叉验证进行验证。将性能最高的模型应用于测试集。Spearman相关性(rs)和Dice相似性系数(DSC)确定了CTVI4DCT和CTVIShn之间的体素和功能一致性。测试集中为每位患者设计了三个计划:一个没有CTVI的临床计划和两个结合CTVI4DCT或CTVISynn的功能回避计划。旨在保留被定义为百分位数通气范围前50%的高功能肺。记录有关计划目标体积(PTV)和风险器官(OAR)的剂量体积(DVH)参数。使用基于剂量功能(DFH)的正常组织并发症概率(NTCP)模型估计放射性肺炎(RP)风险。
    结果:与CTVI4DCT相比,CTVISynn显示平均rs值为0.65±0.04。前50%和60%通气范围内的平均DSC值分别为0.41±0.07和0.52±0.10。在测试集(n=7)中,所有患者的RP风险受益于CTVI4DCT指导计划(Riskmean_4DCT_vs_Clinical:29.24%vs.49.12%,P=0.016),六名患者受益于CTVIShn指导计划(Riskmean_Syn_vs_Clinical:31.13%vs.49.12%,P=0.022)。CTVIShn和CTVI4DCT指导计划的DVH和DFH指标差异无统计学意义(P>0.05)。
    结论:使用深度学习技术,从计划CT生成的CTVIShn与CTVI4DCT表现出中等到高度的相关性。CTVIShn指导的计划与CTVI4DCT指导的计划相当,有效降低患者的肺毒性,同时保持可接受的计划质量。需要进一步的前瞻性试验来验证这些发现。
    OBJECTIVE: Radiotherapy planning incorporating functional lung images has the potential to reduce pulmonary toxicity. Free-breathing 4DCT-derived ventilation image (CTVI) may help quantify lung function. This study introduces a novel deep-learning model directly translating planning CT images into CTVI. We investigated the accuracy of generated images and the impact on functional avoidance planning.
    METHODS: Paired planning CT and 4DCT scans from 48 patients with NSCLC were randomized to training (n = 41) and testing (n = 7) data sets. The ventilation maps were generated from 4DCT using a Jacobian-based algorithm to provide ground truth labels (CTVI4DCT). A 3D U-Net-based model was trained to map CT to synthetic CTVI (CTVISyn) and validated using fivefold cross-validation. The highest-performing model was applied to the testing set. Spearman\'s correlation (rs) and Dice similarity coefficient (DSC) determined voxel-wise and functional-wise concordance between CTVI4DCT and CTVISyn. Three plans were designed per patient in the testing set: one clinical plan without CTVI and two functional avoidance plans combined with CTVI4DCT or CTVISyn, aimed at sparing high-functional lungs defined as the top 50% of the percentile ventilation ranges. Dose-volume (DVH) parameters regarding the planning target volume (PTV) and organs at risk (OARs) were recorded. Radiation pneumonitis (RP) risk was estimated using a dose-function (DFH)-based normal tissue complication probability (NTCP) model.
    RESULTS: CTVISyn showed a mean rs value of 0.65 ± 0.04 compared to CTVI4DCT. Mean DSC values over the top 50% and 60% of ventilation ranges were 0.41 ± 0.07 and 0.52 ± 0.10, respectively. In the test set (n = 7), all patients\' RP-risk benefited from CTVI4DCT-guided plans (Riskmean_4DCT_vs_Clinical: 29.24% vs. 49.12%, P = 0.016), and six patients benefited from CTVISyn-guided plans (Riskmean_Syn_vs_Clinical: 31.13% vs. 49.12%, P = 0.022). There were no significant differences in DVH and DFH metrics between CTVISyn and CTVI4DCT-guided plan (P > 0.05).
    CONCLUSIONS: Using deep-learning techniques, CTVISyn generated from planning CT exhibited a moderate-to-high correlation with CTVI4DCT. The CTVISyn-guided plans were comparable to the CTVI4DCT-guided plans, effectively reducing pulmonary toxicity in patients while maintaining acceptable plan quality. Further prospective trials are needed to validate these findings.
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  • 文章类型: Journal Article
    晚期钆增强(LGE)MRI是用于识别心肌瘢痕和纤维化的非侵入性参考标准,但有局限性,包括难以描绘心内膜下瘢痕和操作者对图像质量的依赖。这项工作的目的是评估从使用磁共振指纹(MRF)采集的对比后T1和T2图生成多对比合成LGE图像的可行性。在2020年10月至2021年5月之间,使用常规LGE和MRF在注射钆对比剂后,在1.5T前瞻性扫描了15例有缺血性心肌病病史的连续患者(12名男性;平均年龄63±$$$\\pm$13年)。从MRF对比后T1和T2图得出三类合成LGE图像:亮血相敏反转恢复(PSIR),黑血和灰血T2制备的PSIR(T2-PSIR),以及一种新颖的“组织优化”图像,以增强疤痕之间的差异,存活心肌,还有血.由两名心脏病专家以1-5李克特量表评估图像质量,和对比度被量化为两个组织之间的像素强度的平均绝对差(MAD),与使用Kruskal-Wallis和Bonferroni事后检验的不同方法进行比较。使用常规LGE图像作为参考,评估了每位患者和每段疤痕的检出率。合成PSIR(4.0)和参考图像(3.8)的图像质量得分最高,其次是合成组织优化(3.3),灰血T2-PSIR(3.0),和黑血T2-PSIR(2.6)。在合成图像中,PSIR产生最高的心肌/瘢痕对比(MAD=0.42),但最低的血液/瘢痕对比(MAD=0.05),对于T2-PSIR,反之亦然,而组织优化的图像在所有组织之间实现了平衡(心肌/瘢痕MAD=0.16,血液/瘢痕MAD=0.26,心肌/血液MAD=0.10)。根据参考心室中段LGE扫描,13/15患者有心肌瘢痕。合成图像的每位患者灵敏度/准确度如下:PSIR,85/87%;黑血T2-PSIR,62/53%;灰血T2-PSIR,100/93%;组织优化,100/93%。可以从对比后MRF数据生成合成多对比LGE图像,而无需额外的扫描时间,在缺血性心肌病患者中具有初步可行性。
    Late gadolinium enhancement (LGE) MRI is the non-invasive reference standard for identifying myocardial scar and fibrosis but has limitations, including difficulty delineating subendocardial scar and operator dependence on image quality. The purpose of this work is to assess the feasibility of generating multi-contrast synthetic LGE images from post-contrast T1 and T2 maps acquired using magnetic resonance fingerprinting (MRF). Fifteen consecutive patients with a history of prior ischemic cardiomyopathy (12 men; mean age 63  ±  13 years) were prospectively scanned at 1.5 T between Oct 2020 and May 2021 using conventional LGE and MRF after injection of gadolinium contrast. Three classes of synthetic LGE images were derived from MRF post-contrast T1 and T2 maps: bright-blood phase-sensitive inversion recovery (PSIR), black- and gray-blood T2 -prepared PSIR (T2 -PSIR), and a novel \"tissue-optimized\" image to enhance differentiation among scar, viable myocardium, and blood. Image quality was assessed on a 1-5 Likert scale by two cardiologists, and contrast was quantified as the mean absolute difference (MAD) in pixel intensities between two tissues, with different methods compared using Kruskal-Wallis with Bonferroni post hoc tests. Per-patient and per-segment scar detection rates were evaluated using conventional LGE images as reference. Image quality scores were highest for synthetic PSIR (4.0) and reference images (3.8), followed by synthetic tissue-optimized (3.3), gray-blood T2 -PSIR (3.0), and black-blood T2 -PSIR (2.6). Among synthetic images, PSIR yielded the highest myocardium/scar contrast (MAD = 0.42) but the lowest blood/scar contrast (MAD = 0.05), and vice versa for T2 -PSIR, while tissue-optimized images achieved a balance among all tissues (myocardium/scar MAD = 0.16, blood/scar MAD = 0.26, myocardium/blood MAD = 0.10). Based on reference mid-ventricular LGE scans, 13/15 patients had myocardial scar. The per-patient sensitivity/accuracy for synthetic images were the following: PSIR, 85/87%; black-blood T2 -PSIR, 62/53%; gray-blood T2 -PSIR, 100/93%; tissue optimized, 100/93%. Synthetic multi-contrast LGE images can be generated from post-contrast MRF data without additional scan time, with initial feasibility shown in ischemic cardiomyopathy patients.
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  • 文章类型: Journal Article
    合成MR成像允许从单个采集重建不同的图像对比度,减少扫描时间。在研究中使用实施合成MRI的商业产品。它们依赖于供应商特定的采集,并且不包括使用自定义多参数成像技术的可能性。我们介绍PySynthMRI,一种具有用户友好界面的开源工具,该工具使用一组输入图像通过改变所需目标序列的代表性参数来生成具有不同放射学对比度的合成图像。包括回波时间,重复时间和反转时间(s)。PySynthMRI是用Python3.6编写的,可以在Linux下执行,Windows,或MacOS作为python脚本或可执行文件。该工具是免费且开源的,并且在考虑到最终用户进行软件定制的可能性时进行了开发。PySynthMRI通过计算作为一组输入图像(例如,T1和T2映射)和用户通过图形界面选择的模拟扫描仪参数。分布提供了一组默认的合成对比,包括T1w梯度回波,T2w自旋回波,FLAIR和双反转恢复。合成图像可以以DICOM或NiFTI格式导出。PySynthMRI允许基于定量图的不同加权MR图像的快速合成。专家可以使用提供的信号模型来回顾性地生成对比并添加自定义的对比。可以利用该工具的模块化体系结构来添加新功能,而不会影响代码库。
    Synthetic MR Imaging allows for the reconstruction of different image contrasts from a single acquisition, reducing scan times. Commercial products that implement synthetic MRI are used in research. They rely on vendor-specific acquisitions and do not include the possibility of using custom multiparametric imaging techniques. We introduce PySynthMRI, an open-source tool with a user-friendly interface that uses a set of input images to generate synthetic images with diverse radiological contrasts by varying representative parameters of the desired target sequence, including the echo time, repetition time and inversion time(s). PySynthMRI is written in Python 3.6, and it can be executed under Linux, Windows, or MacOS as a python script or an executable. The tool is free and open source and is developed while taking into consideration the possibility of software customization by the end user. PySynthMRI generates synthetic images by calculating the pixelwise signal intensity as a function of a set of input images (e.g., T1 and T2 maps) and simulated scanner parameters chosen by the user via a graphical interface. The distribution provides a set of default synthetic contrasts, including T1w gradient echo, T2w spin echo, FLAIR and Double Inversion Recovery. The synthetic images can be exported in DICOM or NiFTI format. PySynthMRI allows for the fast synthetization of differently weighted MR images based on quantitative maps. Specialists can use the provided signal models to retrospectively generate contrasts and add custom ones. The modular architecture of the tool can be exploited to add new features without impacting the codebase.
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  • 文章类型: Journal Article
    评估合成MRI对头颈部肿瘤的定量和形态学评估的可行性,并将结果与常规MRI方法进行比较。
    回顾性招募了92例头颈部肿瘤组织学不同的患者,他们接受了常规和合成MRI。定量T1,T2,质子密度(PD),测量并比较38例良性肿瘤和54例恶性肿瘤的表观扩散系数(ADC)值。通过受试者工作特征(ROC)分析和综合判别指数评估区分恶性和良性肿瘤的诊断效能。还将5级Likert量表上的常规和合成T1W/T2W图像的图像质量与Wilcoxon符号秩检验进行了比较。
    头颈部恶性肿瘤的T1,T2和ADC值均小于良性肿瘤(均p<0.05)。T2和ADC值在区分恶性肿瘤和良性肿瘤方面显示出比T1更好的诊断效力(均p<0.05)。将T2值添加到ADC中,曲线下面积从0.839增加到0.886,综合辨别指数为4.28%(p<0.05)。在整体图像质量方面,合成T2W图像与传统T2W图像相当,而合成的T1W图像劣于传统的T1W图像。
    合成MRI可以通过提供定量的松弛参数和合成的T2W图像来促进头颈部肿瘤的表征。将T2值添加到ADC值可以进一步改善肿瘤的分化。
    UNASSIGNED: To evaluate the feasibility of synthetic MRI for quantitative and morphologic assessment of head and neck tumors and compare the results with the conventional MRI approach.
    UNASSIGNED: A total of 92 patients with different head and neck tumor histology who underwent conventional and synthetic MRI were retrospectively recruited. The quantitative T1, T2, proton density (PD), and apparent diffusion coefficient (ADC) values of 38 benign and 54 malignant tumors were measured and compared. Diagnostic efficacy for differentiating malignant and benign tumors was evaluated with receiver operating characteristic (ROC) analysis and integrated discrimination index. The image quality of conventional and synthetic T1W/T2W images on a 5-level Likert scale was also compared with Wilcoxon signed rank test.
    UNASSIGNED: T1, T2 and ADC values of malignant head and neck tumors were smaller than those of benign tumors (all p < 0.05). T2 and ADC values showed better diagnostic efficacy than T1 for distinguishing malignant tumors from benign tumors (both p < 0.05). Adding the T2 value to ADC increased the area under the curve from 0.839 to 0.886, with an integrated discrimination index of 4.28% (p < 0.05). In terms of overall image quality, synthetic T2W images were comparable to conventional T2W images, while synthetic T1W images were inferior to conventional T1W images.
    UNASSIGNED: Synthetic MRI can facilitate the characterization of head and neck tumors by providing quantitative relaxation parameters and synthetic T2W images. T2 values added to ADC values may further improve the differentiation of tumors.
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  • 文章类型: Journal Article
    人工智能(AI)在心脏病学中提供了巨大的希望,和广泛的医学,因为它能够不知疲倦地集成大量数据。在医学成像中的应用特别有吸引力,因为图像是传达丰富信息的有力手段,并且在心脏病学实践中被广泛使用。与心脏病学中其他人工智能方法不同,侧重于任务自动化和模式识别,我们描述了一个数字健康平台来综合增强,然而熟悉,临床图像以增强心脏病专家的视觉临床工作流程。在这篇文章中,我们提出了框架,技术基础,以及方法论的功能应用,尤其是血管内成像。使用动脉粥样硬化病变动脉的注释图像训练条件生成对抗网络,以根据指定的斑块形态生成合成光学相干断层扫描和血管内超声图像。利用这种独特而灵活的结构的系统,一对神经网络被竞争地串联训练,可以快速生成有用的图像。这些合成图像复制了风格,在几个方面超越了内容和功能,正常采集的图像。通过使用这种技术并在此类应用程序中使用AI,可以改善图像质量方面的挑战,可解释性,连贯性,完整性,和粒度,从而加强医学教育和临床决策。
    Artificial intelligence (AI) offers great promise in cardiology, and medicine broadly, for its ability to tirelessly integrate vast amounts of data. Applications in medical imaging are particularly attractive, as images are a powerful means to convey rich information and are extensively utilized in cardiology practice. Departing from other AI approaches in cardiology focused on task automation and pattern recognition, we describe a digital health platform to synthesize enhanced, yet familiar, clinical images to augment the cardiologist\'s visual clinical workflow. In this article, we present the framework, technical fundamentals, and functional applications of the methodology, especially as it pertains to intravascular imaging. A conditional generative adversarial network was trained with annotated images of atherosclerotic diseased arteries to generate synthetic optical coherence tomography and intravascular ultrasound images on the basis of specified plaque morphology. Systems leveraging this unique and flexible construct, whereby a pair of neural networks is competitively trained in tandem, can rapidly generate useful images. These synthetic images replicate the style, and in several ways exceed the content and function, of normally acquired images. By using this technique and employing AI in such applications, one can ameliorate challenges in image quality, interpretability, coherence, completeness, and granularity, thereby enhancing medical education and clinical decision-making.
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  • 文章类型: Journal Article
    背景:在这项工作中,我们应用并验证了一种称为生成对抗网络(GAN)的人工智能(AI)技术,以创建大量高保真合成前后(AP)骨盆X射线照片,可以实现基于深度学习(DL)的图像分析。确保患者隐私。
    方法:从1998年至2018年的机构注册中收集了具有天然臀部的AP骨盆X射线照片。数据用于训练模型以创建512×512像素的合成AP骨盆图像。该网络接受了通过增强生成的2500万张图像的培训。由三名整形外科医生和两名放射科医生评估了一组100张随机图像(50/50真实/合成),以区分真实图像与合成图像。使用合成图像训练了两个模型(联合定位和分割),并在真实图像上进行了测试。
    结果:最终模型在37,640张真实X射线照片(16,782名患者)上进行了训练。在图像保真度的计算机评估中,最终模型获得了“优秀”评级。在对配对图像的盲目审查中(1真实,1合成),整形外科医生评审人员无法正确识别哪幅图像是合成的(准确率=55%,Kappa=0.11),突出显示合成图像保真度。当通过建立的DL模型评估合成图像和真实图像时,它们显示出等效的性能。
    结论:这项工作显示了使用DL技术生成大量高保真合成骨盆图像的能力,这些图像无法从计算机或专家的真实成像中辨别。这些图像可用于跨机构共享和模型预培训,进一步推进DL模型的性能,而不会对患者数据安全造成风险。
    In this work, we applied and validated an artificial intelligence technique known as generative adversarial networks (GANs) to create large volumes of high-fidelity synthetic anteroposterior (AP) pelvis radiographs that can enable deep learning (DL)-based image analyses, while ensuring patient privacy.
    AP pelvis radiographs with native hips were gathered from an institutional registry between 1998 and 2018. The data was used to train a model to create 512 × 512 pixel synthetic AP pelvis images. The network was trained on 25 million images produced through augmentation. A set of 100 random images (50/50 real/synthetic) was evaluated by 3 orthopaedic surgeons and 2 radiologists to discern real versus synthetic images. Two models (joint localization and segmentation) were trained using synthetic images and tested on real images.
    The final model was trained on 37,640 real radiographs (16,782 patients). In a computer assessment of image fidelity, the final model achieved an \"excellent\" rating. In a blinded review of paired images (1 real, 1 synthetic), orthopaedic surgeon reviewers were unable to correctly identify which image was synthetic (accuracy = 55%, Kappa = 0.11), highlighting synthetic image fidelity. The synthetic and real images showed equivalent performance when they were assessed by established DL models.
    This work shows the ability to use a DL technique to generate a large volume of high-fidelity synthetic pelvis images not discernible from real imaging by computers or experts. These images can be used for cross-institutional sharing and model pretraining, further advancing the performance of DL models without risk to patient data safety.
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  • 文章类型: Journal Article
    目的:评估合成相敏反转恢复(SyPSIR)血管的成像质量,并增加T2加权成像(T2WI)对直肠癌患者壁外静脉侵犯(EMVI)检测的价值。
    方法:这项回顾性研究的参与者在2020年10月至2022年4月期间接受了术前合成MRI检查。以10ms的单个反转时间进行SyPSIR图像重建。一名初级和高级放射科医生评估了成像质量,包括总体成像质量评分,运动伪影评分,和肿瘤和肿瘤周围血管(SItumor-vessel)之间的相对图像信号强度对比,T2WI和SyPSIR血管。使用Wilcoxon符号秩检验和双样本t检验评估两种方法之间的成像质量差异。记录T2WI和T2WI+SyPSIR血管的EMVI评分。计算受试者工作特征曲线下面积(AUC)以评价诊断性能。
    结果:共评估了106例患者(35例EMVI+和71例EMVI-)。总体图像质量评分无统计学差异,运动伪影,或T2WI和SyPSIR血管之间的SI肿瘤血管(p=0.08-0.93)。在结合T2WI和SyPSIR血管时,对于初级放射科医师,病理性EMVI+诊断的AUC从0.65增加到0.88,对于高级放射科医师,AUC从0.86增加到0.96.此外,初级和高级放射科医生分析的灵敏度分别从0.40增加到0.77和0.49增加到0.86。
    结论:SyPSIR血管可以提供更多信息,以提高病理性EMVI在直肠癌中的诊断效率,可能有利于临床个体化治疗。
    结论:•SyPSIR血管和T2WI具有相似的成像质量。•SyPSIR船上的EMVI评估具有很高的观察员之间的协议。•SyPSIR血管有可能提高直肠癌中EMVI检测的诊断效率。
    OBJECTIVE: To evaluate the imaging quality of a synthetic phase-sensitive inversion recovery (SyPSIR) vessel and to add value to T2-weighted imaging (T2WI) for extramural venous invasion (EMVI) detection in patients with rectal cancer.
    METHODS: Participants in this retrospective study underwent preoperative synthetic MRI between October 2020 and April 2022. SyPSIR image reconstruction was performed with a single inversion time of 10 ms. A junior and a senior radiologist evaluated the imaging quality, including overall imaging quality scores, motion artifact scores, and relative image signal intensity contrast between the tumor and peritumoral vessels (SItumor-vessel), of both T2WI and SyPSIR vessels. Differences in imaging quality between the two methods were assessed using the Wilcoxon signed-rank test and two-sample t-test. EMVI scores were recorded for T2WI and T2WI+SyPSIR vessel. The area under the receiver operating characteristic curve (AUC) was calculated to evaluate the diagnostic performance.
    RESULTS: A total of 106 patients (35 EMVI+ and 71 EMVI-) were evaluated. There were no statistically significant differences in the overall image quality scores, motion artifacts, or SItumor-vessel (p = 0.08-0.93) between the T2WI and SyPSIR vessels. On combining T2WI and SyPSIR vessels, the AUC for pathological EMVI+ diagnoses increased from 0.65 to 0.88 for the junior radiologist and from 0.86 to 0.96 for the senior radiologist. Furthermore, the sensitivity of the analyses by junior and senior radiologists increased from 0.40 to 0.77 and 0.49 to 0.86, respectively.
    CONCLUSIONS: A SyPSIR vessel can provide additional information to improve the diagnostic efficiency of pathological EMVI in rectal cancer, which may be beneficial for individualized clinical treatment.
    CONCLUSIONS: • SyPSIR vessel and T2WI had similar imaging quality. • EMVI evaluation in SyPSIR vessel has a high inter-observer agreement. • The SyPSIR vessel has the potential to improve the diagnostic efficiency of EMVI detection in rectal cancer.
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  • 文章类型: Journal Article
    造影剂在生物医学成像中广泛扩散,由于它们在许多疾病诊断中的相关性。然而,不良反应的风险,对敏感器官的潜在损害的关注,以及最近描述的钆盐的大脑沉积,在临床实践中限制造影剂的使用。近年来,人工智能(AI)技术在生物医学成像中的应用导致了“虚拟”和“增强”对比的发展。这些应用背后的想法是通过AI计算建模,从同一扫描期间获取的其他图像的可用信息开始,生成合成对比后图像。在这些AI模型中,非对比图像(虚拟对比)或低剂量对比后图像(增强对比)用作输入数据以生成合成对比后图像,通常与本地的无法区分。在这次审查中,我们讨论了人工智能应用于生物医学成像相对于合成造影剂的最新进展。
    Contrast media are widely diffused in biomedical imaging, due to their relevance in the diagnosis of numerous disorders. However, the risk of adverse reactions, the concern of potential damage to sensitive organs, and the recently described brain deposition of gadolinium salts, limit the use of contrast media in clinical practice. In recent years, the application of artificial intelligence (AI) techniques to biomedical imaging has led to the development of \'virtual\' and \'augmented\' contrasts. The idea behind these applications is to generate synthetic post-contrast images through AI computational modeling starting from the information available on other images acquired during the same scan. In these AI models, non-contrast images (virtual contrast) or low-dose post-contrast images (augmented contrast) are used as input data to generate synthetic post-contrast images, which are often undistinguishable from the native ones. In this review, we discuss the most recent advances of AI applications to biomedical imaging relative to synthetic contrast media.
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