Synthetic imaging

合成成像
  • 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
    目的:计算机断层扫描(CT)是评估孤立性肺结节(SPN)的首选方法,但可能缺乏访问或可用性,此外,重叠的解剖结构会阻碍在胸片上检测SPN。我们开发并评估了一种深度学习算法的临床可行性,该算法可从数字重建的正面和侧面射线照片(DRR)生成胸部的数字重建断层扫描(DRT)图像,并使用它们来检测SPN。
    方法:这项单机构回顾性研究包括637例胸部非对比螺旋CT患者(平均年龄68岁,中位年龄69岁,标准偏差11.7年;355名女性)在2012年11月至2020年12月之间,SPNs测量为10-30mm。对562名患者进行了深度学习模型的训练,对60名患者进行了验证,并对其余15名患者进行了测试。平面射线照相(DRR和CT扫描图,PR)单独或与DRT一起由两名放射科医生以独立的盲法进行评估。DRTSPN图像在结节大小和位置方面的质量,形态学,并评估了不透明度,结果:DRT加PR的诊断性能高于单独的PR(受试者工作特征曲线下面积0.95-0.98vs.0.80-0.85;p<0.05)。DRT加PR使SPN的诊断比单独的PR多11例。DRT加PR的观察员间协议为0.82,仅PR的观察员间协议为0.89;以及观察员间的大小和位置协议,形态学,DRTSPN的不透明度分别为0.94、0.68和0.38。
    结论:对于SPN检测,DRT加PR显示出比单独PR更好的诊断性能。深度学习可用于生成DRT图像并改善SPN的检测。
    Computed tomography (CT) is preferred for evaluating solitary pulmonary nodules (SPNs) but access or availability may be lacking, in addition, overlapping anatomy can hinder detection of SPNs on chest radiographs. We developed and evaluated the clinical feasibility of a deep learning algorithm to generate digitally reconstructed tomography (DRT) images of the chest from digitally reconstructed frontal and lateral radiographs (DRRs) and use them to detect SPNs.
    This single-institution retrospective study included 637 patients with noncontrast helical CT of the chest (mean age 68 years, median age 69 years, standard deviation 11.7 years; 355 women) between 11/2012 and 12/2020, with SPNs measuring 10-30 mm. A deep learning model was trained on 562 patients, validated on 60 patients, and tested on the remaining 15 patients. Diagnostic performance (SPN detection) from planar radiography (DRRs and CT scanograms, PR) alone or with DRT was evaluated by two radiologists in an independent blinded fashion. The quality of the DRT SPN image in terms of nodule size and location, morphology, and opacity was also evaluated, and compared to the ground-truth CT images RESULTS: Diagnostic performance was higher from DRT plus PR than from PR alone (area under the receiver operating characteristic curve 0.95-0.98 versus 0.80-0.85; p < 0.05). DRT plus PR enabled diagnosis of SPNs in 11 more patients than PR alone. Interobserver agreement was 0.82 for DRT plus PR and 0.89 for PR alone; and interobserver agreement for size and location, morphology, and opacity of the DRT SPN was 0.94, 0.68, and 0.38, respectively.
    For SPN detection, DRT plus PR showed better diagnostic performance than PR alone. Deep learning can be used to generate DRT images and improve detection of SPNs.
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  • 文章类型: Journal Article
    背景:合成MRI是一种省时的成像技术,可同时提供定量MRI和对比加权图像。然而,相当长的单次扫描时间对儿童来说可能是具有挑战性的。
    目的:基于图像质量评估和定量数据分析,评估在儿科神经影像学中针对回波串长度和接收器带宽进行调整的节省时间的合成MRI协议的临床可行性。
    方法:总共,我们纳入了33名年龄在1.6~17.4岁的儿童,他们在3T时使用三组回波串长度和接收器带宽组合(回波串长度[E]12-带宽[BinKHz]22,E16-B22和E16-B83)进行了合成MRI检查。我们还比较了组织值(T1,T2,质子密度值)和脑容积。
    结果:对于E16-B83组合,除了15.2%的T1-W和3%的T2-W流体衰减反转恢复(FLAIR)图像外,图像质量足够,与显着的扫描时间减少(高达35%)。E16-B22组合显示出与E12-B22相当的图像质量(P>0.05),扫描时间减少高达8%。三种方案的病变显著性差异无统计学意义(P>0.05)。用E12-B22方案和调整后的方案获得的组织值测量和脑组织体积显示出极好的一致性和强相关性,除了E12-B22中的灰质体积和非白质/灰质/脑脊液体积与E16-B83.
    结论:调整后的合成方案产生了与建议方案足够或相当的图像质量,同时在减少扫描时间的情况下保持了病变的显著性。定量值与建议的MRI协议导出值基本一致,这支持调整后的方案在儿科神经影像学中的临床应用。
    BACKGROUND: Synthetic MRI is a time-efficient imaging technique that provides both quantitative MRI and contrast-weighted images simultaneously. However, a rather long single scan time can be challenging for children.
    OBJECTIVE: To evaluate the clinical feasibility of time-saving synthetic MRI protocols adjusted for echo train length and receiver bandwidth in pediatric neuroimaging based on image quality assessment and quantitative data analysis.
    METHODS: In total, we included 33 children ages 1.6-17.4 years who underwent synthetic MRI using three sets of echo train length and receiver bandwidth combinations (echo train length [E]12-bandwidth [B in KHz]22, E16-B22 and E16-B83) at 3 T. The image quality and lesion conspicuity of synthetic contrast-weighted images were compared between the suggested protocol (E12-B22) and adjusted protocols (E16-B22 and E16-B83). We also compared tissue values (T1, T2, proton-density values) and brain volumetry.
    RESULTS: For the E16-B83 combination, image quality was sufficient except for 15.2% of T1-W and 3% of T2-W fluid-attenuated inversion recovery (FLAIR) images, with remarkable scan time reduction (up to 35%). The E16-B22 combination demonstrated a comparable image quality to E12-B22 (P>0.05) with a scan time reduction of up to 8%. There were no significant differences in lesion conspicuity among the three protocols (P>0.05). Tissue value measurements and brain tissue volumes obtained with the E12-B22 protocol and adjusted protocols showed excellent agreement and strong correlations except for gray matter volume and non-white matter/gray matter/cerebrospinal fluid volume in E12-B22 vs. E16-B83.
    CONCLUSIONS: The adjusted synthetic protocols produced image quality sufficient or comparable to that of the suggested protocol while maintaining lesion conspicuity with reduced scan time. The quantitative values were generally consistent with the suggested MRI-protocol-derived values, which supports the clinical application of adjusted protocols in pediatric neuroimaging.
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  • 文章类型: Journal Article
    OBJECTIVE: To compare the imaging quality, T stage and extramural venous invasion (EMVI) evaluation between the conventional and synthetic T2-weighted imaging (T2WI), and to investigate the role of quantitative values obtained from synthetic magnetic resonance imaging (MRI) for assessing nodal staging in rectal cancer (RC).
    METHODS: Ninety-four patients with pathologically proven RC who underwent rectal MRI examinations including synthetic MRI were retrospectively recruited. The image quality of conventional and synthetic T2WI was compared regarding signal-to-noise ratio (SNR), contrast-to-noise (CNR), sharpness of the lesion edge, lesion conspicuity, absence of motion artifacts, and overall image quality. The accuracy of T stage and EMVI evaluation on conventional and synthetic T2WI were compared using the Mc-Nemar test. The quantitative T1, T2, and PD values were used to predict the nodal staging of MRI-evaluated node-negative RC.
    RESULTS: There were no statistically significant differences between conventional and synthetic T2WI in SNR, CNR, overall image quality, lesion conspicuity, and absence of motion artifacts (p = 0.058-0.978). There were no significant differences in the diagnostic accuracy of T stage and EMVI between conventional and synthetic T2WI from two observers (p = 0.375 and 0.625 for T stage; p = 0.625 and 0.219 for EMVI). The T2 value showed good diagnostic performance for predicting the nodal staging of RC with the area under the receiver operating characteristic, sensitivity, specificity, and accuracy of 0.854, 90.0%, 71.4%, and 80.3%, respectively.
    CONCLUSIONS: Synthetic MRI may facilitate preoperative staging and EMVI evaluation of RC by providing synthetic T2WI and quantitative maps in one acquisition.
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  • 文章类型: Journal Article
    For an accurate dynamic contrast-enhanced (DCE) MRI analysis, exact baseline T1 mapping is critical. The purpose of this study was to compare the pharmacokinetic parameters of DCE MRI using synthetic MRI with those using fixed baseline T1 values.
    This retrospective study included 102 patients who underwent both DCE and synthetic brain MRI. Two methods were set for the baseline T1: one using the fixed value and the other using the T1 map from synthetic MRI. The volume transfer constant (Ktrans), volume of the vascular plasma space (vp), and the volume of the extravascular extracellular space (ve) were compared between the two methods. The interclass correlation coefficients and the Bland-Altman method were used to assess the reliability.
    In normal-appearing frontal white matter (WM), the mean values of Ktrans, ve, and vp were significantly higher in the fixed value method than in the T1 map method. In the normal-appearing occipital WM, the mean values of ve and vp were significantly higher in the fixed value method. In the putamen and head of the caudate nucleus, the mean values of Ktrans, ve, and vp were significantly lower in the fixed value method. In addition, the T1 map method showed comparable interobserver agreements with the fixed baseline T1 value method.
    The T1 map method using synthetic MRI may be useful for reflecting individual differences and reliable measurements in clinical applications of DCE MRI.
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  • 文章类型: Journal Article
    脑成像检查通常需要10-20分钟,并涉及多个顺序采集。开发了一种基于低失真全脑回波平面成像(EPI)的方法,以在一次采集中有效地编码多个对比度,允许计算定量参数图和合成对比度加权图像。
    反转准备的自旋和梯度回波EPI通过跨测量的切片顺序混洗开发,以实现T1的有效采集,T2,和T2*权重。使用字典匹配方法将图像拟合到定量参数图,这反过来被用来创建合成加权图像与典型的临床对比。采用B0匀场阵列的动态切片优化多线圈匀场来减少B0的不均匀性,因此,图像失真>50%。还实现了多次发射EPI以最小化失真和模糊,同时实现高的平面内分辨率。使用低秩重建方法来减轻镜头到镜头相位变化的误差。
    切片优化的匀场方法与4倍的面内平行成像加速度相结合,以使单次发射EPI具有八倍以上的失真减少。所提出的序列以1.2×1.2×3mm的分辨率在短短1分钟内有效地在整个大脑中获得了40个对比度。序列的多次拍摄变体在4分钟内实现了1×1×4mm的更高的面内分辨率,并具有良好的图像质量。衍生的定量图显示出与常规作图方法相当的值。
    该方法允许具有定量参数图和合成加权对比的快速全脑成像。切片优化的多线圈匀场和多激发重建方法导致最小的EPI失真,赋予序列用于快速筛查应用的潜力。
    Brain imaging exams typically take 10-20 min and involve multiple sequential acquisitions. A low-distortion whole-brain echo planar imaging (EPI)-based approach was developed to efficiently encode multiple contrasts in one acquisition, allowing for calculation of quantitative parameter maps and synthetic contrast-weighted images.
    Inversion prepared spin- and gradient-echo EPI was developed with slice-order shuffling across measurements for efficient acquisition with T1 , T2 , and T2∗ weighting. A dictionary-matching approach was used to fit the images to quantitative parameter maps, which in turn were used to create synthetic weighted images with typical clinical contrasts. Dynamic slice-optimized multi-coil shimming with a B0 shim array was used to reduce B0 inhomogeneity and, therefore, image distortion by >50%. Multi-shot EPI was also implemented to minimize distortion and blurring while enabling high in-plane resolution. A low-rank reconstruction approach was used to mitigate errors from shot-to-shot phase variation.
    The slice-optimized shimming approach was combined with in-plane parallel-imaging acceleration of 4× to enable single-shot EPI with more than eight-fold distortion reduction. The proposed sequence efficiently obtained 40 contrasts across the whole-brain in just over 1 min at 1.2 × 1.2 × 3 mm resolution. The multi-shot variant of the sequence achieved higher in-plane resolution of 1 × 1 × 4 mm with good image quality in 4 min. Derived quantitative maps showed comparable values to conventional mapping methods.
    The approach allows fast whole-brain imaging with quantitative parameter maps and synthetic weighted contrasts. The slice-optimized multi-coil shimming and multi-shot reconstruction approaches result in minimal EPI distortion, giving the sequence the potential to be used in rapid screening applications.
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  • 文章类型: Journal Article
    建立基于松弛图的影像组学列线图,预测直肠癌(RC)壁外静脉侵犯(EMVI),并比较放射科医师主观评价的诊断效果。
    在94例接受直接手术切除的RC患者中,65人被随机分配到训练队列,29人被随机分配到验证队列。从合成磁共振成像中提取影像组学特征,包括T1,T2和质子密度(PD)图。最小绝对收缩和选择算子方法用于降维,特征选择,和影像组学模型构建。多变量logistic回归分析用于列线图的发展。根据其校准评估列线图的性能,接收机工作特性(ROC)曲线,和决策曲线分析。
    影像组学模型对EMVI表现出良好的预测效果,ROC曲线下面积(AUC),灵敏度,特异性为0.912(95%置信区间(CI),0.837-0.986),训练队列中的0.824和0.875,以及0.877(95%CI0.751-1.000),0.833和0.826在验证队列中。列线图具有良好的诊断性能,在训练和验证队列中,AUC分别为0.925(95%CI0.862-0.988)和0.899(95%CI0.782-1.000)。此外,与两位读者的主观评估相比,影像组学签名显示出更好的诊断效率(AUC=0.912vs.0.732和0.763,P分别=0.023和0.028)。
    建立了放射组学列线图,用于术前预测RC患者的EMVI。基于松弛图的影像组学模型的应用可以提高EMVI的诊断效能。
    To establish a radiomics nomogram based on relaxation maps for predicting the extramural venous invasion (EMVI) of rectal cancer (RC) and compare the diagnostic efficacy of the nomogram and subjective assessment by radiologists.
    Among 94 RC patients receiving direct surgical resection, 65 were randomly allocated to the training cohort and 29 to the validation cohort. Radiomics features were extracted from synthetic magnetic resonance imaging including T1, T2, and proton density (PD) maps. The least absolute shrinkage and selection operator methods were used for dimension reduction, feature selection, and radiomics model building. Multivariable logistic regression analysis was used for nomogram development. The performance of the nomogram was assessed with respect to its calibration, receiver operating characteristics (ROC) curve, and decision curve analysis.
    The radiomics model demonstrated good predictive efficacy for EMVI, with an area under the ROC curve (AUC), sensitivity, and specificity of 0.912 (95% confidence interval (CI), 0.837-0.986), 0.824, and 0.875 in the training cohort and 0.877 (95% CI 0.751-1.000), 0.833, and 0.826 in the validation cohort. The nomogram had good diagnostic performance, with AUCs of 0.925 (95% CI 0.862-0.988) and 0.899 (95% CI 0.782-1.000) in the training and validation cohort. Furthermore, the radiomics signature showed better diagnostic efficiency than the subjective assessment by both readers (AUC =0.912 vs. 0.732 and 0.763, P = 0.023 and 0.028, respectively).
    A radiomics nomogram was developed to preoperatively predict EMVI in RC patients. The application of the radiomics model based on relaxation maps could improve the diagnostic efficacy of EMVI.
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