X-ray computed

X 线计算
  • 文章类型: Journal Article
    背景:在促成医疗保健提供者与移动应用程序互动的众多因素中,包括用户特征(例如,灵巧,解剖学,和态度)和移动功能(例如,屏幕和按钮大小),应用程序的可用性和质量被认为是最有影响力的因素。
    目的:本研究旨在调查医生的头部计算机断层扫描扫描适宜性标准(HAC)移动应用程序的可用性和质量。
    方法:我们的研究设计主要基于方法学三角剖分,使用涉及定量和定性思考可用性测试的混合方法研究,用于质量评估的移动应用程序评级量表(MARS)的定量分析,和三个阶段的汇报。总的来说,16名医学实习生参加了质量评估和可用性特征测试,包括效率,有效性,可学习性,错误,以及对HAC应用程序的满意度。
    结果:HAC应用程序的效率和有效性被认为令人满意,评分分别为97.8%和96.9%,分别。MARS评估量表显示了HAC应用程序的总体良好质量评分(100分中的82分)。评分4个MARS分量表,信息(100人中有73.37分)和参与度(100人中有73.48分)得分最低,而美学得分最高(100分中有87.86分)。对每个MARS子量表中项目的分析显示,在参与子量表中,HAC应用程序的最低得分是“定制”(100分中的63.6分)。在功能子刻度中,HAC应用程序的最低值是“性能”(100个中的67.4个)。HAC应用程序的定性思考可用性测试发现了值得注意的可用性问题,分为8个主要类别:缺乏手指友好的触摸目标,搜索能力差,输入问题,低效的数据表示和信息控制,不明确的控制和确认,缺乏预测能力,援助和支持不力,导航逻辑不清楚。
    结论:使用混合方法方法评估移动应用程序的质量和可用性提供了有关其功能和缺点的有价值的信息。强烈建议在评估移动应用程序时采用更全面和混合的方法策略,因为单一方法的结果不完全反映了有关应用程序可用性和质量的可信和可靠的信息。
    BACKGROUND: Among the numerous factors contributing to health care providers\' engagement with mobile apps, including user characteristics (eg, dexterity, anatomy, and attitude) and mobile features (eg, screen and button size), usability and quality of apps have been introduced as the most influential factors.
    OBJECTIVE: This study aims to investigate the usability and quality of the Head Computed Tomography Scan Appropriateness Criteria (HAC) mobile app for physicians\' computed tomography scan ordering.
    METHODS: Our study design was primarily based on methodological triangulation by using mixed methods research involving quantitative and qualitative think-aloud usability testing, quantitative analysis of the Mobile Apps Rating Scale (MARS) for quality assessment, and debriefing across 3 phases. In total, 16 medical interns participated in quality assessment and testing usability characteristics, including efficiency, effectiveness, learnability, errors, and satisfaction with the HAC app.
    RESULTS: The efficiency and effectiveness of the HAC app were deemed satisfactory, with ratings of 97.8% and 96.9%, respectively. MARS assessment scale indicated the overall favorable quality score of the HAC app (82 out of 100). Scoring 4 MARS subscales, Information (73.37 out of 100) and Engagement (73.48 out of 100) had the lowest scores, while Aesthetics had the highest score (87.86 out of 100). Analysis of the items in each MARS subscale revealed that in the Engagement subscale, the lowest score of the HAC app was \"customization\" (63.6 out of 100). In the Functionality subscale, the HAC app\'s lowest value was \"performance\" (67.4 out of 100). Qualitative think-aloud usability testing of the HAC app found notable usability issues grouped into 8 main categories: lack of finger-friendly touch targets, poor search capabilities, input problems, inefficient data presentation and information control, unclear control and confirmation, lack of predictive capabilities, poor assistance and support, and unclear navigation logic.
    CONCLUSIONS: Evaluating the quality and usability of mobile apps using a mixed methods approach provides valuable information about their functionality and disadvantages. It is highly recommended to embrace a more holistic and mixed methods strategy when evaluating mobile apps, because results from a single method imperfectly reflect trustworthy and reliable information regarding the usability and quality of apps.
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  • 文章类型: Journal Article
    影像学的发展积极塑造了该领域的临床管理。超声检查(美国),计算机断层扫描血管造影(CTA),磁共振血管造影(MRA)是研究最广泛的ABR成像方式。正在进行的进步包括“实时”血管造影和三维(3D)表面成像,未来的前景包括增强或虚拟现实(AR/VR)和人工智能(AI)。这些技术可以进一步提高围手术期的效率,减少供体部位的发病率,并改善ABR的手术结局。
    The evolution of imaging actively shapes clinical management in the field. Ultrasonography (US), computed tomography angiography (CTA), and magnetic resonance angiography (MRA) stand out as the most extensively researched imaging modalities for ABR. Ongoing advancements include \"real-time\" angiography and three-dimensional (3D) surface imaging, and future prospects incorporate augmented or virtual reality (AR/VR) and artificial intelligence (AI). These technologies may further enhance perioperative efficiency, reduce donor-site morbidity, and improve surgical outcomes in ABR.
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  • 文章类型: Journal Article
    目的:评估基于双能CT尿路造影(DECTU)多像的肿瘤内和瘤周影像技术预测膀胱癌(BCa)肌层浸润状态的预测价值。
    方法:本回顾性分析包括202例接受DECTU的BCa患者。通过逐步回归分析将DECTU衍生的定量参数确定为危险因素,以构建DECT模型。肿瘤内和3mm外瘤周区域的影像组学特征是从120kVp样提取的,40keV,100keV,和静脉期碘基物质分解(IMD)图像,并使用Mann-WhitneyU检验进行筛选,Spearman相关分析,还有LASSO.使用多层感知器开发了影像组学模型,肿瘤周围、肿瘤内和肿瘤周围(IntraPeri)区域。随后,通过整合多图像IntraPeri影像组学和DECT模型创建列线图.使用曲线下面积(AUC)评估模型性能,准确度,灵敏度,和特异性。
    结果:标准化碘浓度(NIC)被确定为DECT模型的独立预测因子。与肿瘤内和瘤周模型相比,IntraPeri模型在40keV(0.830vs.0.766vs.0.763)和IMD图像(0.881vs.0.840vs.0.821)在测试队列中。在测试队列中,列线图显示出最佳的可预测性(AUC=0.886,准确度=0.836,灵敏度=0.737,特异度=0.881),在预测BCa的肌肉浸润状态方面优于DECT模型(AUC=0.763,准确性=0.754,敏感性=0.632,特异性=0.810),差异有统计学意义(p<0.05)。
    结论:列线图,合并IntraPeri影像组学和NIC,作为术前评估BCa肌肉侵袭状态的有价值的非侵入性工具。
    OBJECTIVE: To assess the predictive value of intratumoral and peritumoral radiomics based on Dual-energy CT urography (DECTU) multi-images for preoperatively predicting the muscle invasion status of bladder cancer (BCa).
    METHODS: This retrospective analysis involved 202 BCa patients who underwent DECTU. DECTU-derived quantitative parameters were identified as risk factors through stepwise regression analysis to construct a DECT model. The radiomic features from the intratumoral and 3 mm outward peritumoral regions were extracted from the 120 kVp-like, 40 keV, 100 keV, and iodine-based material-decomposition (IMD) images in the venous-phase and were screened using Mann-Whitney U test, Spearman correlation analysis, and LASSO. Radiomics models were developed using the Multilayer Perceptron for the intratumoral, peritumoral and intra- and peritumoral (IntraPeri) regions. Subsequently, a nomogram was created by integrating the multi-image IntraPeri radiomics and DECT model. Model performance was evaluated using area-under-the-curve (AUC), accuracy, sensitivity, and specificity.
    RESULTS: Normalized iodine concentration (NIC) was identified as an independent predictor for the DECT model. The IntraPeri model demonstrated superior performance compared to the intratumoral and peritumoral models both in 40 keV (0.830 vs. 0.766 vs. 0.763) and IMD images (0.881 vs. 0.840 vs. 0.821) in the test cohort. In the test cohort, the nomogram exhibited the best predictability (AUC=0.886, accuracy=0.836, sensitivity=0.737, and specificity=0.881), outperformed the DECT model (AUC=0.763, accuracy=0.754, sensitivity=0.632, and specificity=0.810) in predicting muscle invasion status of BCa with a statistically significant difference (p < 0.05).
    CONCLUSIONS: The nomogram, incorporating IntraPeri radiomics and NIC, serves as a valuable and non-invasive tool for preoperatively assessing the muscle invasion status of BCa.
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  • 文章类型: Journal Article
    目的:使用Dense-UNet架构评估基于深度学习的管道,以评估创伤性脑损伤(TBI)后的非对比计算机断层扫描(NCCT)头部扫描的急性颅内出血(ICH)。
    方法:这项回顾性研究是使用原型算法进行的,该算法在TBI背景下评估了502例ICH的NCCT头部扫描。四名委员会认证的放射科医师一致评估了CT扫描,以建立出血存在和ICH类型的参考标准。因此,所有CT扫描由算法和董事会认证的放射科医师独立分析,以评估ICH的存在和类型.此外,对两种方法的诊断时间进行了测定.
    结果:共有405/502例患者出现ICH,分为以下类型:实质内(n=172);脑室内(n=26);蛛网膜下(n=163);硬膜下(n=178);和硬膜外(n=15)。该算法对ICH的评估显示出较高的诊断准确性(91.24%),敏感性为90.37%,特异性为94.85%。为了区分不同的ICH类型,该算法的灵敏度为93.47%,特异性为99.79%,准确率为98.54%。要检测中线偏移,该算法的灵敏度为100%。在处理时间上,与放射科医生的首次诊断时间相比,该算法明显更快(15.37±1.85vs277±14s,p<0.001)。
    结论:一种新颖的深度学习算法可以为未增强CT扫描对ICH的识别和分类提供很高的诊断准确性,结合短处理时间。这有可能帮助和改善放射科医师在NCCT扫描中的ICH评估,尤其是在紧急情况下,当需要时间效率时。
    OBJECTIVE: To evaluate a deep learning-based pipeline using a Dense-UNet architecture for the assessment of acute intracranial hemorrhage (ICH) on non-contrast computed tomography (NCCT) head scans after traumatic brain injury (TBI).
    METHODS: This retrospective study was conducted using a prototype algorithm that evaluated 502 NCCT head scans with ICH in context of TBI. Four board-certified radiologists evaluated in consensus the CT scans to establish the standard of reference for hemorrhage presence and type of ICH. Consequently, all CT scans were independently analyzed by the algorithm and a board-certified radiologist to assess the presence and type of ICH. Additionally, the time to diagnosis was measured for both methods.
    RESULTS: A total of 405/502 patients presented ICH classified in the following types: intraparenchymal (n = 172); intraventricular (n = 26); subarachnoid (n = 163); subdural (n = 178); and epidural (n = 15). The algorithm showed high diagnostic accuracy (91.24%) for the assessment of ICH with a sensitivity of 90.37% and specificity of 94.85%. To distinguish the different ICH types, the algorithm had a sensitivity of 93.47% and a specificity of 99.79%, with an accuracy of 98.54%. To detect midline shift, the algorithm had a sensitivity of 100%. In terms of processing time, the algorithm was significantly faster compared to the radiologist\'s time to first diagnosis (15.37 ± 1.85 vs 277 ± 14 s, p < 0.001).
    CONCLUSIONS: A novel deep learning algorithm can provide high diagnostic accuracy for the identification and classification of ICH from unenhanced CT scans, combined with short processing times. This has the potential to assist and improve radiologists\' ICH assessment in NCCT scans, especially in emergency scenarios, when time efficiency is needed.
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  • 文章类型: Journal Article
    近年来胸外科手术越来越多,有不同类型的肺切除。手术后并发症因切除类型和经过的时间而异,成像技术是术后随访的关键。在整个围手术期,对这些患者进行多学科管理对于确保最佳手术结果至关重要。这篇图片综述将回顾不同的胸外科技术,正常的术后发现和术后并发症。
    Thoracic surgical procedures are increasing in recent years, and there are different types of lung resections. Postsurgical complications vary depending on the type of resection and the time elapsed, with imaging techniques being key in the postoperative follow-up. Multidisciplinary management of these patients throughout the perioperative period is essential to ensure an optimal surgical outcome. This pictorial review will review the different thoracic surgical techniques, normal postoperative findings and postsurgical complications.
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  • 文章类型: Journal Article
    要确定成像模式/对比度的组合,影像组学模型,以及使用影像组学方法,有多少特征为区分低度和高度软组织肉瘤(STS)提供了最佳诊断性能。
    对39例经组织学证实的STS患者的MRI和CT进行前瞻性分析。通过影像组学模型对图像进行定量评估,并通过视觉评估(用作参考)对图像进行定性评估,以进行分级(低级vs高级)。在影像组学分析中,提取了120个放射学特征,并将其贡献到三个模型中:带逻辑回归的最小绝对收缩和选择算子(LASSO-LR),递归特征消除和交叉验证(RFECV-SVC)以及与SVC的方差分析(ANOVA-SVC)。这些被应用于不同的成像方式采集组合,有或没有造影剂给药,以及选定的功能数量。
    使用涉及五个特征的RFECV-SVC放射组学模型的脂肪饱和T2w(FS-T2w)MR图像产生了具有平均灵敏度的最佳结果,特异性,准确率为92%±10%,78%±30%,89%±12%,分别。对于STS分级,影像组学的性能优于常规分析(67%的准确性)。多种对比或成像方式的组合并没有增加诊断性能。
    FS-T2wMR图像与使用REFCV-SVC模型的五特征影像组学分析相比于传统的多重MRI造影和CT成像视觉评估,可能能够提供足够的诊断性能。
    UNASSIGNED: To determine which combination of imaging modalities/contrast, radiomics models, and how many features provides the best diagnostic performance for the differentiation between low- and high-grade soft tissue sarcomas (STS) using a radiomics approach.
    UNASSIGNED: MRI and CT from 39 patients with a histologically confirmed STS were prospectively analyzed. Images were evaluated both quantitatively by radiomics models and qualitatively by visual evaluation (used as reference) for grading (low-grade vs high-grade). In radiomics analysis, 120 radiomic features were extracted and contributed into three models: least absolute shrinkage and selection operator with logistic regression(LASSO-LR), recursive feature elimination and cross-validation (RFECV-SVC) and analysis of variance with SVC (ANOVA-SVC). Those were applied to different combinations of imaging modalities acquisition, with and without contrast medium administration, as well as selected number of features.
    UNASSIGNED: Fat-saturated T2w (FS-T2w) MR images using RFECV-SVC radiomic models involving five features yielded the best results with mean sensitivity, specificity, and accuracy of 92% ± 10%, 78% ± 30%, and 89% ± 12%, respectively. The performance of radiomics was better than that of conventional analysis (67% accuracy) for STS grading. Combination of multiple contrast or imaging modalities did not increase the diagnostic performance.
    UNASSIGNED: FS-T2w MR images alone with a five-feature radiomics analysis usingh REFCV-SVC model may be able to provide sufficient diagnositic performance compared to conventional visual evaluation with multiple MRI contrast and CT imaging.
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  • 文章类型: Journal Article
    结直肠癌肝转移灶(CRLM)周围组织的影像组学分析提高了病理数据和生存率的预测准确性。我们探索了随着与CRLM的距离增加,肿瘤周围组织中纹理特征的变化。我们考虑了低密度CRLM>10mm和高质量计算机断层扫描(CT)的患者。在门户阶段,我们分割(1)肿瘤,(2)与CRLM的距离逐渐增加(从1毫米到10毫米)的一系列同心轮辋,和(3)正常实质的圆柱体(肝脏-VOI)。分析了51例患者的63例CRLM。腔周HU中位数与肝脏VOI相似,除了CRLM周围的第一个毫米。熵逐渐降低(从CRLM的3.11到肝脏VOI的2.54),而均匀度增加(从0.135增加到0.199,p<0.001)。距离CRLM10毫米处,在62%的病例中,熵与肝脏-VOI相似,在46%的病例中,熵与肝脏-VOI相似。在小CRLM(≤30mm)和化疗应答者中,熵值和均匀度值的归一化发生在较高比例的情况下,并且距离较短。尽管放射学方面正常,但对CRLM周围薄壁组织的放射学分析揭示了熵逐渐降低和均匀性增加的广泛光环。应调查基础病理数据。
    The radiomic analysis of the tissue surrounding colorectal liver metastases (CRLM) enhances the prediction accuracy of pathology data and survival. We explored the variation of the textural features in the peritumoural tissue as the distance from CRLM increases. We considered patients with hypodense CRLMs >10 mm and high-quality computed tomography (CT). In the portal phase, we segmented (1) the tumour, (2) a series of concentric rims at a progressively increasing distance from CRLM (from one to ten millimetres), and (3) a cylinder of normal parenchyma (Liver-VOI). Sixty-three CRLMs in 51 patients were analysed. Median peritumoural HU values were similar to Liver-VOI, except for the first millimetre around the CRLM. Entropy progressively decreased (from 3.11 of CRLM to 2.54 of Liver-VOI), while uniformity increased (from 0.135 to 0.199, p < 0.001). At 10 mm from CRLM, entropy was similar to the Liver-VOI in 62% of cases and uniformity in 46%. In small CRLMs (≤30 mm) and responders to chemotherapy, normalisation of entropy and uniformity values occurred in a higher proportion of cases and at a shorter distance. The radiomic analysis of the parenchyma surrounding CRLMs unveiled a wide halo of progressively decreasing entropy and increasing uniformity despite a normal radiological aspect. Underlying pathology data should be investigated.
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  • 文章类型: Journal Article
    标准化的基于共识的肩部不稳定放射学报告可能会提高临床质量,减少异质性,减少工作量。因此,这项研究的目的是确定X射线的重要元素,磁共振成像(MRI)关节造影(MRA),和计算机断层扫描(CT)报告,变异性的程度,和重要的MRI视图和设置。
    一个由肌肉骨骼放射科医生和骨科医生组成的专家小组在一个三轮德尔福设计中被招募。确定了X射线的重要元素,MRA,和CT报告和重要的MRI视图和设置。这些以0-9李克特量表进行评级。高变异性定义为1-3和7-9之间的至少一个分数。当≥80%得分为1-3或7-9时,达成共识。
    专家小组由21名肌肉骨骼放射科医师和15名骨科医生组成。第一轮x光报告中确定的元素数量为17个,52用于MRA,21为CT,和23用于MRI方案。达成共识的元素数量是X射线的五个,MRA的二十个,九为CT,和两个用于MRI协议。在76.5%(n=13)的X射线元素中观察到高变异性,85.0%(n=45)MRA,76.2%(n=16)CT,85.7%(n=18)的MRI方案。
    在评估肩前不稳定的放射学重要元素的评分中观察到了很大的变异性,不管模态。就X射线报告中的五个要素达成了共识,MRA报告中的20个,CT报告中有9个.最后,就关于MRA观点和设置的两个要素达成共识.
    UNASSIGNED: Standardized consensus-based radiological reports for shoulder instability may improve clinical quality, reduce heterogeneity, and reduce workload. Therefore, the aim of this study was to determine important elements for the x-ray, magnetic resonance imaging (MRI) arthrography (MRA), and computed tomography (CT) report, the extent of variability, and important MRI views and settings.
    UNASSIGNED: An expert panel of musculoskeletal radiologists and orthopedic surgeons was recruited in a three-round Delphi design. Important elements were identified for the x-ray, MRA, and CT report and important MRI views and setting. These were rated on a 0-9 Likert scale. High variability was defined as at least one score between 1-3 and 7-9. Consensus was reached when ≥80% scored an element 1-3 or 7-9.
    UNASSIGNED: The expert panel consisted of 21 musculoskeletal radiologists and 15 orthopedic surgeons. The number of elements identified in the first round was seventeen for the x-ray report, 52 for MRA, 21 for CT, and 23 for the MRI protocol. The number of elements that reached consensus was five for x-ray, twenty for MRA, nine for CT, and two for the MRI protocol. High variability was observed in 76.5% (n = 13) x-ray elements, 85.0% (n = 45) MRA, 76.2% (n = 16) CT, and 85.7% (n = 18) MRI protocol.
    UNASSIGNED: Substantial variability was observed in the scoring of important elements in the radiological for the evaluation of anterior shoulder instability, regardless of modality. Consensus was reached for five elements in the x-ray report, twenty in the MRA report, and nine in the CT report. Finally, consensus was reached on two elements regarding MRA views and settings.
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  • 文章类型: Journal Article
    目的:建立基于能谱计算机断层扫描(CT)的预测模型,以评估临床T1/2N0浸润性乳腺癌中腋窝淋巴结(ALN)的大转移。
    方法:回顾性纳入217例接受能谱CT扫描的T1/2N0浸润性乳腺癌临床患者,并分为训练组(n=151)和验证组(n=66)。这些患者分为ALN非大转移(pN0期或pN0[i]或pN1mi)和ALN大转移(pN1-3期)亚组。测量并比较了最可疑的ALN的形态学标准和定量能谱CT参数。使用最小绝对收缩和选择算子(Lasso)筛选预测指标以建立逻辑模型。采用受试者工作特征(ROC)曲线和决策曲线分析(DCA)对模型进行评价。
    结果:动静脉期能谱CT联合模型在ALN非大转移和ALN大转移的鉴别中产生了最好的诊断性能,AUC最高(训练组0.963和验证组0.945)。在单相光谱CT模型中,静脉相谱CT模型表现最佳(训练队列AUC=0.960,验证队列AUC=0.940).3个模型的AUC无显著差异(DeLong检验,每次比较P>0.05)。
    结论:Lasso-logistic模型结合了形态学特征和基于对比增强能谱成像的定量能谱CT参数,有可能用作非侵入性工具,用于临床T1/2N0浸润性乳腺癌的个体术前ALN状态预测。
    OBJECTIVE: To develop a prediction model based on spectral computed tomography (CT) to evaluate axillary lymph node (ALN) with macrometastases in clinical T1/2N0 invasive breast cancer.
    METHODS: A total of 217 clinical T1/2N0 invasive breast cancer patients who underwent spectral CT scans were retrospectively enrolled and categorized into a training cohort (n = 151) and validation cohort (n = 66). These patients were classified into ALN nonmacrometastases (stage pN0 or pN0 [i+] or pN1mi) and ALN macrometastases (stage pN1-3) subgroups. The morphologic criteria and quantitative spectral CT parameters of the most suspicious ALN were measured and compared. Least absolute shrinkage and selection operator (Lasso) was used to screen predictive indicators to build a logistic model. The receiver operating characteristic (ROC) curve and decision curve analysis (DCA) were used to evaluate the models.
    RESULTS: The combined arterial-venous phase spectral CT model yielded the best diagnostic performance in discrimination of ALN nonmacrometastases and ALN macrometastases with the highest AUC (0.963 in the training cohort and 0.945 in validation cohorts). Among single phase spectral CT models, the venous phase spectral CT model showed the best performance (AUC = 0.960 in the training cohort and 0.940 in validation cohorts). There was no significant difference in AUCs among the 3 models (DeLong test, P > .05 for each comparison).
    CONCLUSIONS: A Lasso-logistic model that combined morphologic features and quantitative spectral CT parameters based on contrast-enhanced spectral imaging potentially be used as a noninvasive tool for individual preoperative prediction of ALN status in clinical T1/2N0 invasive breast cancers.
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  • 文章类型: Journal Article
    去除金属引起的射束硬化伪影的常用方法通常依赖于在双能量计算机断层扫描(CT)中使用具有高管电压或高能量虚拟单能量图像的高能光子,辐射剂量通常相对较高,以产生足够的信号。这项回顾性研究旨在评估金属伪影减少(MAR)算法在减少术后小儿低辐射剂量脊柱CT图像中椎弓根螺钉金属引起的射束硬化伪影中的应用。
    纳入77名接受140或100kV低剂量CT检查的儿童(3-15岁)。3-8岁儿童的辐射剂量为1.40mGy,9-15岁儿童的辐射剂量为2.61mGy。评估了116枚椎弓根螺钉。原始数据用自适应统计迭代重建-V(ASIR-V)在50%强度下重建,ASIR-V与MAR(AV-MAR),高强度深度学习图像重建(DLIR)和带MAR的DLIR(DL-MAR)。根据射束硬化伪影(LHA)的长度和伪影指数(AI)客观地评估了椎弓根螺钉的图像质量。主观上使用4点量表(4点:最好,3分:可接受)。
    AV-MAR和DL-MAR均显着减少了具有较小LHA(15.76±10.12mm,减少57.24%和15.66±10.49毫米,减少了57.40%,分别),和AI值(62.50±33.51,减少64.65%和61.03±32.61,减少65.01%,分别)与ASIR-V和DLIR相比(均P<0.01),使用AV-MAR和DL-MAR,有关螺钉的主观图像质量评分分别为3.37±0.49和3.47±0.50,分别,高于无MAR的1.73±0.44和1.76±0.43(均P<0.01)。
    MAR显着减少了手术后儿科低剂量脊柱CT图像中金属螺钉引起的低密度伪影,跨不同的管电压,辐射剂量水平和重建算法。结合DL-MAR进一步提高了低辐射剂量条件下的整体图像质量。
    UNASSIGNED: The commonly used methods for removing metal-induced beam hardening artifacts often rely on the use of high energy photons with either high tube voltage or high energy virtual monoenergetic images in dual-energy computed tomography (CT), the radiation dose was usually relatively high in order to generate adequate signals. This retrospective study is designed to evaluate the application of a metal artifact reduction (MAR) algorithm in reducing pedicle screw metal-caused beam hardening artifacts in post-surgery pediatric low radiation dose spine CT images.
    UNASSIGNED: Seventy-seven children (3-15 years) who had undergone a low dose CT with 140 or 100 kV were enrolled. The radiation dose was 1.40 mGy for the 3-8 years old and 2.61 mGy for 9-15 years old children. There were 116 pedicle screws evaluated. The raw data were reconstructed with adaptive statistical iterative reconstruction-V (ASIR-V) at 50% strength, ASIR-V with MAR (AV-MAR), deep learning image reconstruction (DLIR) at high strength and DLIR with MAR (DL-MAR). The image quality concerning pedicle screws was evaluated objectively in terms of the length of beam-hardening artifact (LHA) and artifact index (AI), and subjectively using a 4-point scale (4 points: best, 3 points: acceptable).
    UNASSIGNED: Both AV-MAR and DL-MAR significantly reduced metal-induced beam hardening artifacts with smaller LHA (15.76±10.12 mm, a reduction of 57.24% and 15.66±10.49 mm, a reduction of 57.40%, respectively), and AI value (62.50±33.51, a reduction of 64.65% and 61.03±32.61, a reduction of 65.01%, respectively) compared to ASIR-V and DLIR (all P<0.01), The subjective image quality scores concerning the screws were 3.37±0.49 and 3.47±0.50 with AV-MAR and DL-MAR, respectively, higher than the respective value of 1.73±0.44 and 1.76±0.43 without MAR (all P<0.01).
    UNASSIGNED: MAR significantly reduces the low-density artifacts caused by metal screws in post-surgery pediatric low-dose spine CT images, across different tube voltages, radiation dose levels and reconstruction algorithms. Combining DL-MAR further improves the overall image quality under low radiation dose conditions.
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