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首页> 外文期刊>European radiology >Marginal radiomics features as imaging biomarkers for pathological invasion in lung adenocarcinoma
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Marginal radiomics features as imaging biomarkers for pathological invasion in lung adenocarcinoma

机译:边缘辐射瘤功能作为肺腺癌病理侵袭的成像生物标志物

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Objectives Lung adenocarcinomas which manifest as ground-glass nodules (GGNs) have different degrees of pathological invasion and differentiating among them is critical for treatment. Our goal was to evaluate the addition of marginal features to a baseline radiomics model on computed tomography (CT) images to predict the degree of pathologic invasiveness. Methods We identified 236 patients from two cohorts (training, n = 189; validation, n = 47) who underwent surgery for GGNs. All GGNs were pathologically confirmed as adenocarcinoma in situ (AIS), minimally invasive adenocarcinoma (MIA), or invasive adenocarcinoma (IA). The regions of interest were semi-automatically annotated and 40 radiomics features were computed. We selected features using L1-norm regularization to build the baseline radiomics model. Additional marginal features were developed using the cumulative distribution function (CDF) of intratumoral intensities. An improved model was built combining the baseline model with CDF features. Three classifiers were tested for both models. Results The baseline radiomics model included five features and resulted in an average area under the curve (AUC) of 0.8419 (training) and 0.9142 (validation) for the three classifiers. The second model, with the additional marginal features, resulted in AUCs of 0.8560 (training) and 0.9581 (validation). All three classifiers performed better with the added features. The support vector machine showed the most performance improvement (AUC improvement = 0.0790) and the best performance was achieved by the logistic classifier (validation AUC = 0.9825). Conclusion Our novel marginal features, when combined with a baseline radiomics model, can help differentiate IA from AIS and MIA on preoperative CT scans.
机译:目的肺腺癌作为地面玻璃结节(GGNS)具有不同程度的病理侵袭,并且在它们之间区分是关键的。我们的目标是评估在计算机断层扫描(CT)图像上的基线射频模型中添加边际特征,以预测病理侵袭程度。方法我们确定了来自两个队列的236名患者(训练,N = 189;验证,N = 47)谁接受了GGNS的手术。所有GGNS都是原位(AIS),微创腺癌(MIA)或侵袭性腺癌(IA)的腺癌病理学证实。感兴趣的区域是半自动注释的,并且计算了40个射滤功能。我们使用L1-Norm正规选择功能来构建基线辐射型模型。使用危险性强度的累积分布函数(CDF)开发了额外的边际特征。建立了一种改进的模型,将基线模型与CDF功能组成。两种模型测试了三个分类器。结果基线放射体模型包括五个特征,导致三个分类器的0.8419(训练)和0.9142(验证)的平均面积。具有额外边际特征的第二种模型导致0.8560(训练)和0.9581(验证)的AUC。所有三个分类器都以添加的功能更好地执行。支持向量机显示出最性能的改进(AUC改进= 0.0790),并通过逻辑分类器实现的最佳性能(验证AUC = 0.9825)。结论我们的新颖边际特征在于与基线放射体模型相结合,可以帮助区分IIS和MIA在术前CT扫描。

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