首页> 外文期刊>The Journal of Nuclear Medicine >Pretreatment F-18-FDG PET/CT Radiomics Predict Local Recurrence in Patients Treated with Stereotactic Body Radiotherapy for Early-Stage Non-Small Cell Lung Cancer: A Multicentric Study
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Pretreatment F-18-FDG PET/CT Radiomics Predict Local Recurrence in Patients Treated with Stereotactic Body Radiotherapy for Early-Stage Non-Small Cell Lung Cancer: A Multicentric Study

机译:预处理F-18-FDG PET / CT辐射瘤预测患者对患者的局部复发,用于早期非小细胞肺癌治疗的型态体放射治疗:多中心研究

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The aim of this retrospective multicentric study was to develop and evaluate a prognostic F-18-FDG PET/CT radiomic signature in early-stage non-small cell lung cancer patients treated with stereotactic body radiotherapy (SBRT). Methods: Patients from 3 different centers (n 5 27, 29, and 8) were pooled to constitute the training set, whereas the patients from a fourth center (n 5 23) were used as the testing set. The primary endpoint was local control. The primary tumor was semiautomatically delineated in the PET images using the fuzzy locally adaptive Bayesian algorithm, and manually in the low-dose CT images. In total, 184 Image Biomarkers Standardization Initiative-compliant radiomic features were extracted. Seven clinical and treatment parameters were included. We used ComBat to harmonize radiomic features extracted from the 4 institutions relying on different PET/ CT scanners. In the training set, variables found significant in the univariate analysis were fed into a multivariate regression model, and models were built by combining independent prognostic factors. Results: Median follow-up was 21.1 mo (range, 1.7-63.4 mo) and 25.5 mo (range, 7.7-57.8 mo) in training and testing sets, respectively. In univariate analysis, none of the clinical variables, 2 PET features, and 2 CT features were significantly predictive of local control. The best predictive models in the training set were obtained by combining one feature from PET (Information Correlation 2) and one feature from CT (flatness), reaching a sensitivity of 100% and a specificity of 96%. Another model combining 2 PET features (Information Correlation 2 and strength) reached sensitivity of 100% and specificity of 88%, both with an undefined hazard ratio (P < 0.001). The latter model obtained an accuracy of 0.91 (sensitivity, 100%; specificity, 81%), with a hazard ratio undefined (P = 0.023) in the testing set; however, other models relying on CT radiomic features only or the combination of PET and CT features failed to validate in the testing set. Conclusion: We showed that 2 radiomic features derived from F-18-FDG PET were independently associated with local control in patients with non-small cell lung cancer undergoing SBRT and could be combined in an accurate predictive model. This model could provide local relapse-related information and could be helpful in clinical decision making.
机译:该回顾性的多中心研究的目的是在用立体定向体放射治疗(SBRT)治疗的早期非小细胞肺癌患者的预后F-18-FDG PET / CT射频签名。方法:合并3种不同中心(N 5 27,29和8)的患者构成训练集,而来自第四中心(N 5 23)的患者用作测试组。主要端点是局部控制。使用模糊局部适应性贝叶斯算法在PET图像中半仿制肿瘤,并在低剂量CT图像中手动地描绘。总共提取184个图像生物标志物标准化柔顺典予的含射射射瘤特征。包括七个临床和治疗参数。我们使用战斗来协调依靠不同PET / CT扫描仪提取的4所机构中提取的射线组件。在训练集中,在单变量分析中发现显着的变量被送入多元回归模型,并且通过组合独立的预后因素来构建模型。结果:中位随访分别为21.1莫(范围,1.7-63.4 MO)和25.5莫(范围,7.7-57.8 Mo),分别在培训和检测集中。在单变量分析中,临床变量,2个宠物特征和2个CT特征都没有显着预测局部控制。通过将来自PET(信息相关2)的一个特征与CT(平坦度)的一个特征组合来获得训练集中的最佳预测模型,达到100%的灵敏度和96%的特异性。组合2个PET特征(信息相关2和强度)的另一种模型达到了100%和特异性的灵敏度,88%,均具有未定义的危险比(P <0.001)。后一种模型获得0.91的精度(灵敏度,100%;特异性,81%),试验组中的危险比未定义(P = 0.023);然而,依赖于CT辐射族特征的其他模型或PET和CT功能的组合未能在测试集中验证。结论:我们表明,衍生自F-18-FDG PET的2个射致特征与患有SBRT的非小细胞肺癌患者的局部对照相关,并且可以在准确的预测模型中组合。该模型可以提供与当地复发相关的信息,并且可以有助于临床决策。

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