Lale Umutlu, Felix Nensa, Aydin Demircioglu, Gerald Antoch, Ken Herrmann, Michael Forsting, Johannes Stefan Grueneisen
{"title":"多参数 PET/MRI 用于原发性宫颈癌患者 N 级和 M 级分期的放射组学分析","authors":"Lale Umutlu, Felix Nensa, Aydin Demircioglu, Gerald Antoch, Ken Herrmann, Michael Forsting, Johannes Stefan Grueneisen","doi":"10.1055/a-2157-6867","DOIUrl":null,"url":null,"abstract":"<p><strong>Purpose: </strong> The aim of this study was to investigate the potential of multiparametric <sup>18</sup>F-FDG PET/MR imaging as a platform for radiomics analysis and machine learning algorithms based on primary cervical cancers to predict N- and M-stage in patients.</p><p><strong>Materials and methods: </strong> A total of 30 patients with histopathological confirmation of primary and untreated cervical cancer were prospectively enrolled for a multiparametric <sup>18</sup>F-FDG PET/MR examination, comprising a dedicated protocol for imaging of the female pelvis. The primary tumor in the uterine cervix was manually segmented on post-contrast T1-weighted images. Quantitative features were extracted from the segmented tumors using the Radiomic Image Processing Toolbox for the R software environment for statistical computing and graphics. 45 different image features were calculated from non-enhanced as well as post-contrast T1-weighted TSE images, T2-weighted TSE images, the ADC map, the parametric Ktrans, Kep, Ve and iAUC maps and PET images, respectively. Statistical analysis and modeling was performed using Python 3.5 and the scikit-learn software machine learning library for the Python programming language.</p><p><strong>Results: </strong> Prediction of M-stage was superior when compared to N-stage. Prediction of M-stage using SVM with SVM-RFE as feature selection obtained the highest performance providing sensitivity of 91 % and specificity of 92 %. Using receiver operating characteristic (ROC) analysis of the pooled predictions, the area under the curve (AUC) was 0.97. Prediction of N-stage using RBF-SVM with MIFS as feature selection reached sensitivity of 83 %, specificity of 67 % and an AUC of 0.82.</p><p><strong>Conclusion: </strong> M- and N-stage can be predicted based on isolated radiomics analyses of the primary tumor in cervical cancers, thus serving as a template for noninvasive tumor phenotyping and patient stratification using high-dimensional feature vectors extracted from multiparametric PET/MRI data.</p><p><strong>Key points: </strong> · Radiomics analysis based on multiparametric PET/MRI enables prediction of the metastatic status of cervical cancers. · Prediction of M-stage is superior to N-stage. · Multiparametric PET/MRI displays a valuable platform for radiomics analyses .</p>","PeriodicalId":94161,"journal":{"name":"Nuklearmedizin. Nuclear medicine","volume":"63 1","pages":"34-42"},"PeriodicalIF":1.2000,"publicationDate":"2024-02-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Radiomics Analysis of Multiparametric PET/MRI for N- and M-Staging in Patients with Primary Cervical Cancer.\",\"authors\":\"Lale Umutlu, Felix Nensa, Aydin Demircioglu, Gerald Antoch, Ken Herrmann, Michael Forsting, Johannes Stefan Grueneisen\",\"doi\":\"10.1055/a-2157-6867\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Purpose: </strong> The aim of this study was to investigate the potential of multiparametric <sup>18</sup>F-FDG PET/MR imaging as a platform for radiomics analysis and machine learning algorithms based on primary cervical cancers to predict N- and M-stage in patients.</p><p><strong>Materials and methods: </strong> A total of 30 patients with histopathological confirmation of primary and untreated cervical cancer were prospectively enrolled for a multiparametric <sup>18</sup>F-FDG PET/MR examination, comprising a dedicated protocol for imaging of the female pelvis. The primary tumor in the uterine cervix was manually segmented on post-contrast T1-weighted images. Quantitative features were extracted from the segmented tumors using the Radiomic Image Processing Toolbox for the R software environment for statistical computing and graphics. 45 different image features were calculated from non-enhanced as well as post-contrast T1-weighted TSE images, T2-weighted TSE images, the ADC map, the parametric Ktrans, Kep, Ve and iAUC maps and PET images, respectively. Statistical analysis and modeling was performed using Python 3.5 and the scikit-learn software machine learning library for the Python programming language.</p><p><strong>Results: </strong> Prediction of M-stage was superior when compared to N-stage. Prediction of M-stage using SVM with SVM-RFE as feature selection obtained the highest performance providing sensitivity of 91 % and specificity of 92 %. Using receiver operating characteristic (ROC) analysis of the pooled predictions, the area under the curve (AUC) was 0.97. Prediction of N-stage using RBF-SVM with MIFS as feature selection reached sensitivity of 83 %, specificity of 67 % and an AUC of 0.82.</p><p><strong>Conclusion: </strong> M- and N-stage can be predicted based on isolated radiomics analyses of the primary tumor in cervical cancers, thus serving as a template for noninvasive tumor phenotyping and patient stratification using high-dimensional feature vectors extracted from multiparametric PET/MRI data.</p><p><strong>Key points: </strong> · Radiomics analysis based on multiparametric PET/MRI enables prediction of the metastatic status of cervical cancers. · Prediction of M-stage is superior to N-stage. · Multiparametric PET/MRI displays a valuable platform for radiomics analyses .</p>\",\"PeriodicalId\":94161,\"journal\":{\"name\":\"Nuklearmedizin. 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引用次数: 0
摘要
目的:本研究旨在探讨多参数 18F-FDG PET/MR 成像作为放射组学分析平台的潜力,以及基于原发性宫颈癌的机器学习算法预测患者 N 期和 M 期的潜力:共招募了30名组织病理学确诊为原发性且未经治疗的宫颈癌患者,对其进行多参数18F-FDG PET/MR检查,包括女性盆腔成像专用方案。在对比后 T1 加权图像上对子宫颈原发肿瘤进行人工分段。使用用于统计计算和制图的 R 软件环境的 Radiomic 图像处理工具箱从分割的肿瘤中提取定量特征。分别从非增强和对比后 T1 加权 TSE 图像、T2 加权 TSE 图像、ADC 图、参数 Ktrans、Kep、Ve 和 iAUC 图以及 PET 图像中计算出 45 种不同的图像特征。统计分析和建模使用 Python 3.5 和 Python 编程语言的 scikit-learn 软件机器学习库进行:与 N 期相比,M 期的预测效果更好。使用 SVM 和 SVM-RFE 作为特征选择对 M 阶段进行预测的性能最高,灵敏度为 91%,特异度为 92%。通过对汇总预测结果进行接收器操作特征(ROC)分析,曲线下面积(AUC)为 0.97。使用以 MIFS 作为特征选择的 RBF-SVM 预测 N 阶段的灵敏度为 83%,特异度为 67%,AUC 为 0.82:基于宫颈癌原发肿瘤的孤立放射组学分析可以预测M期和N期,从而为使用从多参数PET/MRI数据中提取的高维特征向量进行无创肿瘤表型和患者分层提供了模板:- 基于多参数 PET/MRI 的放射组学分析能够预测宫颈癌的转移状态。- 对 M 期的预测优于 N 期。- 多参数 PET/MRI 为放射组学分析提供了一个有价值的平台。
Radiomics Analysis of Multiparametric PET/MRI for N- and M-Staging in Patients with Primary Cervical Cancer.
Purpose: The aim of this study was to investigate the potential of multiparametric 18F-FDG PET/MR imaging as a platform for radiomics analysis and machine learning algorithms based on primary cervical cancers to predict N- and M-stage in patients.
Materials and methods: A total of 30 patients with histopathological confirmation of primary and untreated cervical cancer were prospectively enrolled for a multiparametric 18F-FDG PET/MR examination, comprising a dedicated protocol for imaging of the female pelvis. The primary tumor in the uterine cervix was manually segmented on post-contrast T1-weighted images. Quantitative features were extracted from the segmented tumors using the Radiomic Image Processing Toolbox for the R software environment for statistical computing and graphics. 45 different image features were calculated from non-enhanced as well as post-contrast T1-weighted TSE images, T2-weighted TSE images, the ADC map, the parametric Ktrans, Kep, Ve and iAUC maps and PET images, respectively. Statistical analysis and modeling was performed using Python 3.5 and the scikit-learn software machine learning library for the Python programming language.
Results: Prediction of M-stage was superior when compared to N-stage. Prediction of M-stage using SVM with SVM-RFE as feature selection obtained the highest performance providing sensitivity of 91 % and specificity of 92 %. Using receiver operating characteristic (ROC) analysis of the pooled predictions, the area under the curve (AUC) was 0.97. Prediction of N-stage using RBF-SVM with MIFS as feature selection reached sensitivity of 83 %, specificity of 67 % and an AUC of 0.82.
Conclusion: M- and N-stage can be predicted based on isolated radiomics analyses of the primary tumor in cervical cancers, thus serving as a template for noninvasive tumor phenotyping and patient stratification using high-dimensional feature vectors extracted from multiparametric PET/MRI data.
Key points: · Radiomics analysis based on multiparametric PET/MRI enables prediction of the metastatic status of cervical cancers. · Prediction of M-stage is superior to N-stage. · Multiparametric PET/MRI displays a valuable platform for radiomics analyses .