Radiomic analysis

放射组学分析
  • 文章类型: Journal Article
    背景:肝细胞癌(HCC)预后不良,通常以微血管侵犯(MVI)为特征。影像组学和栖息地成像为术前MVI评估提供了潜力。
    目的:通过栖息地成像识别HCC中的MVI,肿瘤放射组学分析,和基于肿瘤生境的放射学分析。
    方法:回顾性。
    方法:三百十八例(53±11.42岁;男性=276)病理证实为HCC(训练:测试=224:94)。
    1.5T,T2WI(自旋回波),预对比和动态T1WI使用三维梯度回波序列。
    结果:临床模型,栖息地模型,单序列放射学模型,基于栖息地的放射学模型,并构建了用于评估MVI的组合模型。通过回顾病历或电话访谈获得随访临床数据。
    方法:单变量和多变量逻辑回归,接收机工作特性(ROC)曲线,校准,决策曲线,德隆测试,K-M曲线,对数秩检验。P值小于0.05(两侧)被认为指示统计学显著性。
    结果:生境成像显示亚区域数量与MVI概率呈正相关。Radiomic-Pre模型显示,在训练和测试队列中检测MVI的AUC为0.815(95%CI:0.752-0.878)和0.708(95%CI:0.599-0.817),分别。同样,使用Radiomic-HBP进行MVI检测的AUC对于训练队列为0.790(95%CI:0.724-0.855),对于测试队列为0.712(95%CI:0.604-0.820).组合模型表现出改进的性能,影像组学+生境+扩张+生境2+临床模型(模型7)实现比模型1-4和6更高的AUC(0.825vs.在测试队列中分别为0.688、0.726、0.785、0.757、0.804,P=0.013、0.048、0.035、0.041、0.039)。通过该模型鉴定的高风险患者(截止值>0.11)显示出较短的无复发生存期。
    结论:组合模型包括肿瘤大小,栖息地成像,影像组学分析在预测MVI方面表现最佳,同时还评估预后风险。
    方法:3技术效果:阶段2。
    BACKGROUND: Hepatocellular carcinoma (HCC) has a poor prognosis, often characterized by microvascular invasion (MVI). Radiomics and habitat imaging offer potential for preoperative MVI assessment.
    OBJECTIVE: To identify MVI in HCC by habitat imaging, tumor radiomic analysis, and peritumor habitat-derived radiomic analysis.
    METHODS: Retrospective.
    METHODS: Three hundred eighteen patients (53 ± 11.42 years old; male = 276) with pathologically confirmed HCC (training:testing = 224:94).
    UNASSIGNED: 1.5 T, T2WI (spin echo), and precontrast and dynamic T1WI using three-dimensional gradient echo sequence.
    RESULTS: Clinical model, habitat model, single sequence radiomic models, the peritumor habitat-derived radiomic model, and the combined models were constructed for evaluating MVI. Follow-up clinical data were obtained by a review of medical records or telephone interviews.
    METHODS: Univariable and multivariable logistic regression, receiver operating characteristic (ROC) curve, calibration, decision curve, Delong test, K-M curves, log rank test. A P-value less than 0.05 (two sides) was considered to indicate statistical significance.
    RESULTS: Habitat imaging revealed a positive correlation between the number of subregions and MVI probability. The Radiomic-Pre model demonstrated AUCs of 0.815 (95% CI: 0.752-0.878) and 0.708 (95% CI: 0.599-0.817) for detecting MVI in the training and testing cohorts, respectively. Similarly, the AUCs for MVI detection using Radiomic-HBP were 0.790 (95% CI: 0.724-0.855) for the training cohort and 0.712 (95% CI: 0.604-0.820) for the test cohort. Combination models exhibited improved performance, with the Radiomics + Habitat + Dilation + Habitat 2 + Clinical Model (Model 7) achieving the higher AUC than Model 1-4 and 6 (0.825 vs. 0.688, 0.726, 0.785, 0.757, 0.804, P = 0.013, 0.048, 0.035, 0.041, 0.039, respectively) in the testing cohort. High-risk patients (cutoff value >0.11) identified by this model showed shorter recurrence-free survival.
    CONCLUSIONS: The combined model including tumor size, habitat imaging, radiomic analysis exhibited the best performance in predicting MVI, while also assessing prognostic risk.
    METHODS: 3 TECHNICAL EFFICACY: Stage 2.
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  • 文章类型: Journal Article
    目的:探讨冠状动脉CT血管造影获得的冠状动脉周围脂肪组织(PCAT)影像特征对预测冠状动脉快速斑块进展(RPP)的价值。
    方法:这项多中心回顾性研究纳入了来自两个中心的1233例患者。参与者分为培训,内部验证,和外部验证队列。提取并分析PCAT的常规斑块特征和影像组学特征。随机森林用于构建五个模型。模型1:临床模型。模型2:斑块特征模型。模型3:PCAT影像组学模型。模型4:临床+影像组学模型。模型5:斑块特征+影像组学模型。对模型的评估包括识别准确性,校准精度,和临床适用性。采用Delong检验比较不同模型的曲线下面积(AUC)。
    结果:七个放射学特征,包括两个形状特征,三个一阶特征,和两个纹理特征,选择建立PCAT影像组学模型。与临床模型和斑块特征模型相比,PCAT影像组学模型(AUC0.85用于培训,0.84用于内部验证,外部验证为0.81;p<0.05)在预测RPP方面实现了显着更高的诊断性能。影像组学与临床和斑块特征模型的单独组合在统计学上没有进一步提高诊断效能(p>0.05)。
    结论:与临床和斑块特征相比,来自PCAT的放射学特征分析显著改善了RPP的预测。随着时间的推移,PCAT的放射学分析可以改善对RPP的监测。
    我们的研究结果表明,PCAT影像组学模型在RPP的预测中表现出良好的性能,具有潜在的临床价值。
    结论:冠状动脉周围脂肪组织的影像组学可预测快速斑块进展。纤维性斑块体积,直径狭窄,和脂肪衰减指数被确定为预测快速斑块进展的危险因素。冠状动脉周围脂肪组织的影像组学特征可以提高快速斑块进展的预测能力。
    OBJECTIVE: To explore the value of radiomic features derived from pericoronary adipose tissue (PCAT) obtained by coronary computed tomography angiography for prediction of coronary rapid plaque progression (RPP).
    METHODS: A total of 1233 patients from two centers were included in this multicenter retrospective study. The participants were divided into training, internal validation, and external validation cohorts. Conventional plaque characteristics and radiomic features of PCAT were extracted and analyzed. Random Forest was used to construct five models. Model 1: clinical model. Model 2: plaque characteristics model. Model 3: PCAT radiomics model. Model 4: clinical + radiomics model. Model 5: plaque characteristics + radiomics model. The evaluation of the models encompassed identification accuracy, calibration precision, and clinical applicability. Delong\' test was employed to compare the area under the curve (AUC) of different models.
    RESULTS: Seven radiomic features, including two shape features, three first-order features, and two textural features, were selected to build the PCAT radiomics model. In contrast to the clinical model and plaque characteristics model, the PCAT radiomics model (AUC 0.85 for training, 0.84 for internal validation, and 0.81 for external validation; p < 0.05) achieved significantly higher diagnostic performance in predicting RPP. The separate combination of radiomics with clinical and plaque characteristics model did not further improve diagnostic efficacy statistically (p > 0.05).
    CONCLUSIONS: Radiomic feature analysis derived from PCAT significantly improves the prediction of RPP as compared to clinical and plaque characteristics. Radiomic analysis of PCAT may improve monitoring RPP over time.
    UNASSIGNED: Our findings demonstrate PCAT radiomics model exhibited good performance in the prediction of RPP, with potential clinical value.
    CONCLUSIONS: Rapid plaque progression may be predictable with radiomics from pericoronary adipose tissue. Fibrous plaque volume, diameter stenosis, and fat attenuation index were identified as risk factors for predicting rapid plaque progression. Radiomics features of pericoronary adipose tissue can improve the predictive ability of rapid plaque progression.
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  • 文章类型: Journal Article
    目的:我们研究的目的是验证2-脱氧-2-[18F]氟-D-葡萄糖(18F-FDG)PET影像特征的一致性轮廓的稳健性和准确性。
    方法:纳入225例鼻咽癌(NPC)和13例扩展心肺(XCAT)模拟数据。所有分割均在两种不同的初始掩模下使用四种分割方法进行,分别。然后,使用多数票规则制定了共识等高线(ConSeg)。通过基于分割的Pyradiomics提取了107个影像组学特征,并为掩模之间或分割之间的每个特征计算了类内相关系数(ICC)。分别。在XCAT中,还计算了分段和模拟地面实况之间的ICC以访问准确性。
    结果:ICC随数据集的不同而变化,分割方法,初始遮罩和特征类型。ConSeg在稳健性测试中提出了更高的放射学特征ICC,在准确性测试中提出了类似的ICC,与四个分割结果的平均值进行比较。在鲁棒性和准确性测试中,与矩形掩模相比,在不规则初始掩模中通常也观察到更高的ICC。此外,对于任何分割方法或初始掩模,有19个特征(17.76%)在鲁棒性和准确性测试中的ICC≥0.75。观察到数据集对放射学特征之间的相关关系有很大影响,但不是分割方法或初始掩码。
    结论:共识轮廓结合不规则初始掩模可以在一定程度上提高影像组学分析的鲁棒性和准确性。影像组学特征和特征簇之间的相关关系在很大程度上取决于数据集,但不是分割方法或初始掩模。
    OBJECTIVE: The purpose of our study is to validate the robustness and accuracy of consensus contour in 2-deoxy-2-[ 18 F]fluoro-D-glucose ( 18 F-FDG) PET radiomic features.
    METHODS: 225 nasopharyngeal carcinoma (NPC) and 13 extended cardio-torso (XCAT) simulated data were enrolled. All segmentation were performed with four segmentation methods under two different initial masks, respectively. Consensus contour (ConSeg) was then developed using the majority vote rule. 107 radiomic features were extracted by Pyradiomics based on segmentation and the intraclass correlation coefficient (ICC) was calculated for each feature between masks or among segmentation, respectively. In XCAT ICC between segmentation and simulated ground truth were also calculated to access the accuracy.
    RESULTS: ICC varied with the dataset, segmentation method, initial mask and feature type. ConSeg presented higher ICC for radiomic features in robustness tests and similar ICC in accuracy tests, compared with the average of four segmentation results. Higher ICC were also generally observed in irregular initial masks compared with rectangular masks in both robustness and accuracy tests. Furthermore, 19 features (17.76%) had ICC ≥ 0.75 in both robustness and accuracy tests for any of the segmentation methods or initial masks. The dataset was observed to have a large impact on the correlation relationships between radiomic features, but not the segmentation method or initial mask.
    CONCLUSIONS: The consensus contour combined with irregular initial mask could improve the robustness and accuracy in radiomic analysis to some extent. The correlation relationships between radiomic features and feature clusters largely depended on the dataset, but not segmentation method or initial mask.
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  • 文章类型: Journal Article
    目的:评估机器学习和影像组学分析在术前环境中的疗效,预测结直肠癌肝转移的RAS突变状态。
    方法:回顾性研究中的患者选择于2018年1月至2021年5月进行,考虑以下纳入标准:接受肝转移手术切除的患者;经证实的病理性肝转移;在术前环境中接受增强CT检查的患者具有良好的图像质量;RAS评估作为标准参考。使用PyRadiomicsPython软件包从Slicer3D图像计算平台中提取了851个影像组学特征,然后由两名专家放射科医生在CT门户阶段进行逐片分割,每个肝转移首先由个人读者独立执行,然后达成共识。进行了平衡技术,计算组间和组内相关系数以评估特征的观察者间和观察者内再现性.接收器工作特征(ROC)分析,计算ROC曲线下面积(AUC),灵敏度(SENS),特异性(SPEC),阳性预测值(PPV),评估每个参数的阴性预测值(NPV)和准确度(ACC).考虑了线性和非逻辑回归模型(LRM和NLRM)以及基于机器学习的不同分类器。此外,使用两种不同方法(3-sigma和z-score)在标准化手术前后进行特征选择.
    结果:分析了28例平均年龄60岁(范围40-80岁)患者的77例肝转移。最好的预测因子,在对这两个标准化程序的单变量分析中,是原始的_shape_Maximum2DDiameter和小波_HLL_glcm_InverseVariance,其精度达到80%,AUC≥0.75,敏感性≥80%,特异性≥70%(p值<<0.01)。然而,当使用线性回归模型(LRM)时,多变量分析显著提高了RAS预测的准确性.在z分数归一化程序后,使用线性结合12个鲁棒特征的LRM获得最佳性能:AUC为0.953,准确率为98%,灵敏度96%,100%的特异性,PPV100%和NPV96%(p值<<0.01)。考虑到没有归一化和归一化方法的测试机器学习,没有获得统计学上的显着增加。
    结论:CT影像组学分析中的标准化方法可以预测结直肠癌肝转移患者的RAS突变状态。
    OBJECTIVE: To assess the efficacy of machine learning and radiomics analysis by computed tomography (CT) in presurgical setting, to predict RAS mutational status in colorectal liver metastases.
    METHODS: Patient selection in a retrospective study was carried out from January 2018 to May 2021 considering the following inclusion criteria: patients subjected to surgical resection for liver metastases; proven pathological liver metastases; patients subjected to enhanced CT examination in the presurgical setting with a good quality of images; and RAS assessment as standard reference. A total of 851 radiomics features were extracted using the PyRadiomics Python package from the Slicer 3D image computing platform after slice-by-slice segmentation on CT portal phase by two expert radiologists of each individual liver metastasis performed first independently by the individual reader and then in consensus. Balancing technique was performed, and inter- and intraclass correlation coefficients were calculated to assess the between-observer and within-observer reproducibility of features. Receiver operating characteristics (ROC) analysis with the calculation of area under the ROC curve (AUC), sensitivity (SENS), specificity (SPEC), positive predictive value (PPV), negative predictive value (NPV) and accuracy (ACC) were assessed for each parameter. Linear and non-logistic regression model (LRM and NLRM) and different machine learning-based classifiers were considered. Moreover, features selection was performed before and after a normalized procedure using two different methods (3-sigma and z-score).
    RESULTS: Seventy-seven liver metastases in 28 patients with a mean age of 60 years (range 40-80 years) were analyzed. The best predictors, at univariate analysis for both normalized procedures, were original_shape_Maximum2DDiameter and wavelet_HLL_glcm_InverseVariance that reached an accuracy of 80%, an AUC ≥ 0.75, a sensitivity ≥ 80% and a specificity ≥ 70% (p value <  < 0.01). However, a multivariate analysis significantly increased the accuracy in RAS prediction when a linear regression model (LRM) was used. The best performance was obtained using a LRM combining linearly 12 robust features after a z-score normalization procedure: AUC of 0.953, accuracy 98%, sensitivity 96%, specificity of 100%, PPV 100% and NPV 96% (p value <  < 0.01). No statistically significant increase was obtained considering the tested machine learning both without normalization and with normalization methods.
    CONCLUSIONS: Normalized approach in CT radiomics analysis allows to predict RAS mutational status in colorectal liver metastases patients.
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  • 文章类型: Journal Article
    目的:为了评估影像组学特征的功效,通过磁共振成像(MRI)与肝特异性造影剂获得,在手术前设置,预测肝转移的RAS突变状态。
    方法:在一项回顾性研究中纳入了术前MRI患者。通过3D切片器图像计算进行手动分割,使用PyRadiomicsPython软件包将851个影像组学特征提取为中值。考虑到与成像生物标志物标准化倡议(IBSI)的协议,提取特征。使用自适应合成过采样(SASYNO)方法,通过合成代表不足的类别的样本来进行平衡。计算组内和组内相关系数(ICC)以评估所有影像组学特征的观察者之间和观察者之间的可重复性。对于连续变量,采用非参数Wilcoxon-Mann-Whitney检验。使用Benjamini和Hochberg的错误发现率(FDR)调整进行多次测试。接收器工作特征(ROC)分析,计算ROC曲线下面积(AUC),灵敏度(SENS),特异性(SPEC),阳性预测值(PPV),评估每个参数的阴性预测值(NPV)和准确度(ACC).线性和非逻辑回归模型(LRM和NLRM)以及基于机器学习的不同分类器,包括决策树(DT),考虑了k最近邻(KNN)和支持向量机(SVM)。此外,使用两种不同方法(3-sigma和z-score)在标准化手术前后进行特征选择.McNemar检验用于评估二分表之间的统计学差异。所有统计程序都是使用MATLABR2021b统计和机器工具箱(MathWorks,纳蒂克,MA,美国)。
    结果:七个标准化的影像组学特征,从动脉相提取,11个标准化的影像组学特征,从门户阶段,来自肝胆阶段的12个标准化的影像组学特征和来自T2-WSPACE序列的12个标准化的特征是RAS突变状态的可靠预测因子。当使用LRM时,多变量分析显著提高了RAS预测的准确性,结合通过VIBE肝胆相提取的12个鲁棒归一化特征,达到99%的精度,97%的敏感度,100%的特异性,PPV为100%,净现值为98%。没有获得统计学上显著的增加,考虑到测试的分类器DT,KNN和SVM,既没有归一化,也没有归一化方法。
    结论:MRI影像组学分析中的标准化方法可以预测RAS突变状态。
    OBJECTIVE: To assess the efficacy of radiomics features, obtained by magnetic resonance imaging (MRI) with hepatospecific contrast agent, in pre-surgical setting, to predict RAS mutational status in liver metastases.
    METHODS: Patients with MRI in pre-surgical setting were enrolled in a retrospective study. Manual segmentation was made by means 3D Slicer image computing, and 851 radiomics features were extracted as median values using the PyRadiomics Python package. The features were extracted considering the agreement with the Imaging Biomarker Standardization Initiative (IBSI). Balancing was performed through synthesis of samples for the underrepresented classes using the self-adaptive synthetic oversampling (SASYNO) approach. Inter- and intraclass correlation coefficients (ICC) were calculated to assess the between-observer and within-observer reproducibility of all radiomics characteristics. For continuous variables, nonparametric Wilcoxon-Mann-Whitney test was utilized. Benjamini and Hochberg\'s false discovery rate (FDR) adjustment for multiple testing was used. Receiver operating characteristics (ROC) analysis with the calculation of area under the ROC curve (AUC), sensitivity (SENS), specificity (SPEC), positive predictive value (PPV), negative predictive value (NPV) and accuracy (ACC) were assessed for each parameter. Linear and non-logistic regression model (LRM and NLRM) and different machine learning-based classifiers including decision tree (DT), k-nearest neighbor (KNN) and support vector machine (SVM) were considered. Moreover, features selection were performed before and after a normalized procedure using two different methods (3-sigma and z-score). McNemar test was used to assess differences statistically significant between dichotomic tables. All statistical procedures were done using MATLAB R2021b Statistics and Machine Toolbox (MathWorks, Natick, MA, USA).
    RESULTS: Seven normalized radiomics features, extracted from arterial phase, 11 normalized radiomics features, from portal phase, 12 normalized radiomics features from hepatobiliary phase and 12 normalized features from T2-W SPACE sequence were robust predictors of RAS mutational status. The multivariate analysis increased significantly the accuracy in RAS prediction when a LRM was used, combining 12 robust normalized features extracted by VIBE hepatobiliary phase reaching an accuracy of 99%, a sensitivity 97%, a specificity of 100%, a PPV of 100% and a NPV of 98%. No statistically significant increase was obtained, considering the tested classifiers DT, KNN and SVM, both without normalization and with normalization methods.
    CONCLUSIONS: Normalized approach in MRI radiomics analysis allows to predict RAS mutational status.
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  • 文章类型: Journal Article
    目的:我们旨在评估使用磁共振成像(MRI)与肝脏特异性造影剂的机器学习和影像组学分析的功效,在手术前的环境中,预测肝转移中的肿瘤出芽。
    方法:回顾性纳入术前MRI患者。通过3D切片器图像计算进行手动分割,使用PyRadiomicsPython软件包将851个影像组学特征提取为中值。进行了平衡,并计算了组内和组内相关系数,以评估所有影像组学提取特征的观察者之间和观察者内的再现性。进行了Wilcoxon-Mann-Whitney非参数检验和接收器工作特性(ROC)分析。进行了平衡和特征选择程序。线性和非逻辑回归模型(LRM和NLRM)以及基于机器学习的不同分类器,包括决策树(DT),考虑了k最近邻(KNN)和支持向量机(SVM)。
    结果:内部训练集包括49例患者和119例肝转移。验证队列由总共28名单病变患者组成。对肿瘤出芽进行分类的最佳单一预测因子是在T1-WVIBE序列动脉期中获得的原始_glcm_Idn,准确率为84%;在T1-WVIBE序列门静脉期中获得了小波_LLH_firstorder_10百分位,准确率为92%;在T1-WVIBLE序列中获得了小波_HHL_glcm_MaximumProbability考虑到线性回归分析,使用从T1-WVIBE序列动脉期提取的13个影像学特征的线性加权组合,获得了统计学上显著的准确度提高至96%.此外,最好的分类器是用从T1-WVIBE序列的动脉期提取的13个放射学特征训练的KNN,获得95%的准确度和0.96的AUC。验证集达到94%的准确性,灵敏度为86%,特异性为95%。
    结论:机器学习和影像组学分析是预测肿瘤出芽的有前景的工具。考虑到线性回归分析,与单个影像组学特征相比,使用从动脉期提取的13个影像组学特征的加权线性组合,准确度在统计学上显著提高至96%.
    OBJECTIVE: We aimed to assess the efficacy of machine learning and radiomics analysis using magnetic resonance imaging (MRI) with a hepatospecific contrast agent, in a pre-surgical setting, to predict tumor budding in liver metastases.
    METHODS: Patients with MRI in a pre-surgical setting were retrospectively enrolled. Manual segmentation was made by means 3D Slicer image computing, and 851 radiomics features were extracted as median values using the PyRadiomics Python package. Balancing was performed and inter- and intraclass correlation coefficients were calculated to assess the between observer and within observer reproducibility of all radiomics extracted features. A Wilcoxon-Mann-Whitney nonparametric test and receiver operating characteristics (ROC) analysis were carried out. Balancing and feature selection procedures were performed. Linear and non-logistic regression models (LRM and NLRM) and different machine learning-based classifiers including decision tree (DT), k-nearest neighbor (KNN) and support vector machine (SVM) were considered.
    RESULTS: The internal training set included 49 patients and 119 liver metastases. The validation cohort consisted of a total of 28 single lesion patients. The best single predictor to classify tumor budding was original_glcm_Idn obtained in the T1-W VIBE sequence arterial phase with an accuracy of 84%; wavelet_LLH_firstorder_10Percentile was obtained in the T1-W VIBE sequence portal phase with an accuracy of 92%; wavelet_HHL_glcm_MaximumProbability was obtained in the T1-W VIBE sequence hepatobiliary excretion phase with an accuracy of 88%; and wavelet_LLH_glcm_Imc1 was obtained in T2-W SPACE sequences with an accuracy of 88%. Considering the linear regression analysis, a statistically significant increase in accuracy to 96% was obtained using a linear weighted combination of 13 radiomic features extracted from the T1-W VIBE sequence arterial phase. Moreover, the best classifier was a KNN trained with the 13 radiomic features extracted from the arterial phase of the T1-W VIBE sequence, obtaining an accuracy of 95% and an AUC of 0.96. The validation set reached an accuracy of 94%, a sensitivity of 86% and a specificity of 95%.
    CONCLUSIONS: Machine learning and radiomics analysis are promising tools in predicting tumor budding. Considering the linear regression analysis, there was a statistically significant increase in accuracy to 96% using a weighted linear combination of 13 radiomics features extracted from the arterial phase compared to a single radiomics feature.
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  • 文章类型: Journal Article
    UNASSIGNED: Osteoporosis (OP) results in weak bone and can ultimately lead to fracture. MRI assessment of bone structure and microarchitecture has been proposed as method to assess bone quality and fracture risk in vivo. Radiomics provides a framework to analyze the textural information of MR images. The purpose of this study was to analyze the radiomic features and its abilityto differentiate between subjects with and without prior fragility fracture.
    UNASSIGNED: MRI acquisition was performed on n = 45 female OP subjects: 15 with fracture history (Fx) and 30 without fracture history (nFx) using a high-resolution 3D Fast Low Angle Shot (FLASH) sequence at 3T. Second and first order radiomic features were calculated in the trabecular region of the proximal femur on T1-weighted MRI signal of a matched dataset. Significance of the feature\'s predictive ability was measured using Wilcoxon test and Area Under the ROC (AUROC) curve analysis. The features were correlated DXA and FRAX score.
    UNASSIGNED: A set of three independent radiomic features (Dependence Non-Uniformity (DNU), Low Gray Level Emphasis (LGLE) and Kurtosis) showed significant ability to predict fragility fracture (AUROC DNU = 0.751, p < 0.05; AUROC LGLE = 0.729, p < 0.05; AUROC Kurtosis = 0.718, p < 0.05) with low to moderate correlation with FRAX and DXA.
    UNASSIGNED: Radiomic features can measure bone health in MRI of proximal femur and has the potential to predict fracture.
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  • 文章类型: Journal Article
    目的:探讨[18F]FDG和[18F]FLTPET影像分析在鉴别[18F]FDG阳性和恶性肺结节(PNs)中的临床价值。
    方法:本研究回顾性分析了113例术前[18F]FDGPET/CT不确定的PNs患者的数据,这些患者在一周内接受了额外的[18F]FLTPET/CT扫描。三种分析方法,包括视觉分析,仅基于[18F]FDGPET/CT图像的影像组学分析,评价基于双示踪PET/CT图像的影像组学分析对良恶性PNs的鉴别诊断价值。
    结果:从123个PN的感兴趣体积(VOI)中提取了总共678个放射学特征。此后选择了十四个有价值的特征。基于[18F]FDGPET/CT图像的可视化分析,诊断的准确性,灵敏度,特异性为61.6%,90%,和28.8%,分别。对于测试集,曲线下面积(AUC),灵敏度,基于[18F]FDGPET/CT加[18F]FLT特征的影像组学模型的特异性等于或优于仅基于[18F]FDGPET/CT的影像组学(分别为0.838vs0.810、0.778vs0.778、0.750vs0.688)。
    结论:基于双示踪剂PET/CT图像的放射组学分析对于鉴别良性和恶性PNs具有临床前景和可行性。
    结论:影像组学分析将增加良性和恶性肺结节的鉴别诊断价值:基于[18F]FDG和[18F]FLTPET/CT的混合成像研究。
    结论:•影像组学为鉴别良性和恶性肺结节带来了超越肉眼的新见解。•双示踪剂成像从不同方面显示癌细胞的生物学行为。•Radiomics帮助我们以非侵入性方法获得组织学观点。
    OBJECTIVE: To investigate the clinical value of radiomic analysis on [18F]FDG and [18F]FLT PET on the differentiation of [18F]FDG-avid benign and malignant pulmonary nodules (PNs).
    METHODS: Data of 113 patients with inconclusive PNs based on preoperative [18F]FDG PET/CT who underwent additional [18F]FLT PET/CT scans within a week were retrospectively analyzed in the present study. Three methods of analysis including visual analysis, radiomic analysis based on [18F]FDG PET/CT images alone, and radiomic analysis based on dual-tracer PET/CT images were evaluated for differential diagnostic value of benign and malignant PNs.
    RESULTS: A total of 678 radiomic features were extracted from volumes of interest (VOIs) of 123 PNs. Fourteen valuable features were thereafter selected. Based on a visual analysis of [18F]FDG PET/CT images, the diagnostic accuracy, sensitivity, and specificity were 61.6%, 90%, and 28.8%, respectively. For the test set, the area under the curve (AUC), sensitivity, and specificity of the radiomic models based on [18F]FDG PET/CT plus [18F]FLT signature were equal or better than radiomics based on [18F]FDG PET/CT only (0.838 vs 0.810, 0.778 vs 0.778, 0.750 vs 0.688, respectively).
    CONCLUSIONS: Radiomic analysis based on dual-tracer PET/CT images is clinically promising and feasible for the differentiation between benign and malignant PNs.
    CONCLUSIONS: Radiomic analysis will add differential diagnostic value of benign and malignant pulmonary nodules: a hybrid imaging study based on [18F]FDG and [18F]FLT PET/CT.
    CONCLUSIONS: • Radiomics brings new insights into the differentiation of benign and malignant pulmonary nodules beyond the naked eyes. • Dual-tracer imaging shows the biological behaviors of cancerous cells from different aspects. • Radiomics helps us get to the histological view in a non-invasive approach.
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  • 文章类型: Journal Article
    早期预测三阴性乳腺癌(TNBC)患者的新辅助系统治疗(NAST)反应可以帮助肿瘤学家选择个体化治疗,并避免在不太可能达到病理完全缓解(pCR)的患者中与无效治疗相关的毒性作用。这项研究的目的是评估在NASH的不同时间点获得的动态对比增强磁共振成像(DCE-MRI)的肿瘤周围和肿瘤区域的影像学特征,以预测TNBC的早期治疗反应。这项研究包括163名接受NAST的I-III期TNBC患者,作为前瞻性临床试验的一部分(NCT02276443)。在基线(BL)和两个(C2)和四个(C4)NAST周期后,在DCE图像上分割肿瘤周围和感兴趣的肿瘤区域。计算了10个一阶(FO)放射学特征和300个灰度共生矩阵(GLCM)特征。使用受试者工作特征曲线下面积(AUC)和Wilcoxon秩和检验来确定最具预测性的特征。多因素logistic回归模型用于绩效评估。皮尔逊相关性用于评估读写器内和读写器间的变异性。78名患者(48%)有pCR(52名培训,26项测试),和85(52%)有非pCR(57培训,28测试)。对于训练和测试集,46个影像组学特征的AUC至少为0.70,而13个多变量模型的AUC至少为0.75。Pearson相关显示读者之间显著相关。总之,DCE-MRI的影像学特征可用于区分pCR和非pCR。同样,基于这些特征的预测影像组学模型可以改善接受NAST的TNBC患者的早期无创治疗反应预测.
    Early prediction of neoadjuvant systemic therapy (NAST) response for triple-negative breast cancer (TNBC) patients could help oncologists select individualized treatment and avoid toxic effects associated with ineffective therapy in patients unlikely to achieve pathologic complete response (pCR). The objective of this study is to evaluate the performance of radiomic features of the peritumoral and tumoral regions from dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) acquired at different time points of NAST for early treatment response prediction in TNBC. This study included 163 Stage I-III patients with TNBC undergoing NAST as part of a prospective clinical trial (NCT02276443). Peritumoral and tumoral regions of interest were segmented on DCE images at baseline (BL) and after two (C2) and four (C4) cycles of NAST. Ten first-order (FO) radiomic features and 300 gray-level-co-occurrence matrix (GLCM) features were calculated. Area under the receiver operating characteristic curve (AUC) and Wilcoxon rank sum test were used to determine the most predictive features. Multivariate logistic regression models were used for performance assessment. Pearson correlation was used to assess intrareader and interreader variability. Seventy-eight patients (48%) had pCR (52 training, 26 testing), and 85 (52%) had non-pCR (57 training, 28 testing). Forty-six radiomic features had AUC at least 0.70, and 13 multivariate models had AUC at least 0.75 for training and testing sets. The Pearson correlation showed significant correlation between readers. In conclusion, Radiomic features from DCE-MRI are useful for differentiating pCR and non-pCR. Similarly, predictive radiomic models based on these features can improve early noninvasive treatment response prediction in TNBC patients undergoing NAST.
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  • 文章类型: Journal Article
    技术和研究的最新发展为医学领域的图像和数据分析提供了各种各样的新技术。医学研究不仅可以帮助医生和研究人员获得有关健康和新疾病的知识,还有预防和治疗的技术。特别是,影像组学分析主要用于从医学图像中提取定量数据,并建立足够强大的模型来诊断局灶性疾病。然而,找到一个能够适合所有患者情况的模型并不是一件容易的事。本文报告了框架预测模型和分类模型,以预测给定数据序列的演变并确定是否存在异常。本文还展示了如何构建和利用基于卷积神经网络的架构,旨在完成医学图像的预测任务,不仅使用普通的计算机断层扫描,还有3D体积。
    Recent developments in technology and research have offered a wide variety of new techniques for image and data analysis within the medical field. Medical research helps doctors and researchers acquire not only knowledge about health and new diseases, but also techniques of prevention and treatment. In particular, radiomic analysis is mainly used to extract quantitative data from medical images and to build a model strong enough to diagnose focal diseases. However, finding a model capable to fit all patient situations is not an easy task. In this paper frame prediction models and classification models are reported in order to predict the evolution of a given data series and determine whether an anomaly exists or not. This article also shows how to build and make use of a convolutional neural network-based architecture aiming to accomplish prediction task for medical images, not only using common computer tomography scans, but also 3D volumes.
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