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Radiomics-based texture analysis of idiopathic pulmonary fibrosis for genetic and survival predictions

机译:基于放射学的特发性肺纤维化纹理分析,用于遗传和生存预测

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This study aims to combine differences in radiomic features between internal and peripheral portions of lungs diagnosed with idiopathic pulmonary fibrosis (IPF) and with TOLLIP and MUC5B genetic mutations to predict patient prognosis. A database of computed tomography (CT) scans from 169 IPF patients was selected from the INSPIRE study along with the corresponding genomic and demographic datasets. Three CT sections per patient were chosen to represent the superior, middle, and inferior portions of the lungs. Twelve regions of interest (ROIs) were placed in central and peripheral portions at each level of the lungs, and 142 radiomics features were calculated within each ROI. Based on feature reproducibility, 30 features were used with logistic regression and receiver operating characteristic (ROC) analysis to classify patients with various genetic mutations. Kaplan-Meier survival curve models quantified the ability of each feature to differentiate between survival curves based on a feature-specific threshold. Nine first-order features and one fractal feature were found to be predictive of TOLLIP-1 (rs4963062) mutation (AUC 0.54-0.74). Five Laws' filter features were predictive of TOLLIP-2 (rs5743905) mutation (AUC 0.53-0.70), while no feature was found to be predictive for MUC5B mutations. First-order and fractal features reflected the greatest discrimination between Kaplan-Meier curves. A radiogenomic approach for predicting patient genetic mutations based on radiomics features extracted from thoracic CT images of patients with IPF has potential as a biomarker. These same features can also serve as predictors of patient prognosis using a survival curve modeling approach.
机译:这项研究旨在结合被诊断为特发性肺纤维化(IPF)以及TOLLIP和MUC5B基因突变的肺部内部和周围部分的放射学特征差异,以预测患者的预后。从INSPIRE研究中选择了169位IPF患者的计算机断层扫描(CT)扫描数据库以及相应的基因组和人口统计学数据集。选择每位患者三个CT切片来代表肺的上部,中部和下部。在肺的每个水平的中央和外围部分放置了十二个感兴趣的区域(ROI),并且在每个ROI内计算了142个放射线特征。基于特征可再现性,将30个特征与Logistic回归和接收者操作特征(ROC)分析一起用于对具有各种遗传突变的患者进行分类。 Kaplan-Meier生存曲线模型基于特定于特征的阈值量化了每个特征区分生存曲线的能力。发现九个一阶特征和一个分形特征可预测TOLLIP-1(rs4963062)突变(AUC 0.54-0.74)。五个定律的过滤器特征可预测TOLLIP-2(rs5743905)突变(AUC 0.53-0.70),而未发现可预测MUC5B突变的特征。一阶和分形特征反映了Kaplan-Meier曲线之间的最大区别。一种基于从IPF患者的胸部CT图像中提取的放射学特征来预测患者遗传突变的放射基因组学方法,具有作为生物标记物的潜力。这些相同的特征还可以用作使用生存曲线建模方法的患者预后的预测指标。

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