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基于高分辨率 CT 图像的放射组学分析预测肺部纯磨玻璃结节的良恶性。

Prediction of the Benign or Malignant Nature of Pulmonary Pure Ground-Glass Nodules Based on Radiomics Analysis of High-Resolution Computed Tomography Images.

机构信息

Department of Radiology, The First Affiliated Hospital of Soochow University, No. 188, Shizi Street, Suzhou 215006, China.

出版信息

Tomography. 2024 Jul 5;10(7):1042-1053. doi: 10.3390/tomography10070078.

Abstract

To evaluate the efficacy of radiomics features extracted from preoperative high-resolution computed tomography (HRCT) scans in distinguishing benign and malignant pulmonary pure ground-glass nodules (pGGNs), a retrospective study of 395 patients from 2016 to 2020 was conducted. All nodules were randomly divided into the training and validation sets in the ratio of 7:3. Radiomics features were extracted using MaZda software (version 4.6), and the least absolute shrinkage and selection operator (LASSO) was employed for feature selection. Significant differences were observed in the training set between benign and malignant pGGNs in sex, mean CT value, margin, pleural retraction, tumor-lung interface, and internal vascular change, and then the mean CT value and the morphological features model were constructed. Fourteen radiomics features were selected by LASSO for the radiomics model. The combined model was developed by integrating all selected radiographic and radiomics features using logistic regression. The AUCs in the training set were 0.606 for the mean CT value, 0.718 for morphological features, 0.756 for radiomics features, and 0.808 for the combined model. In the validation set, AUCs were 0.601, 0.692, 0.696, and 0.738, respectively. The decision curves showed that the combined model demonstrated the highest net benefit.

摘要

为了评估从术前高分辨率计算机断层扫描(HRCT)扫描中提取的放射组学特征在区分良性和恶性肺纯磨玻璃结节(pGGN)方面的功效,对 2016 年至 2020 年的 395 例患者进行了回顾性研究。所有结节均按 7:3 的比例随机分为训练集和验证集。使用 MaZda 软件(版本 4.6)提取放射组学特征,并采用最小绝对收缩和选择算子(LASSO)进行特征选择。在训练集中,良性和恶性 pGGN 在性别、平均 CT 值、边缘、胸膜回缩、肿瘤-肺界面和内部血管变化方面存在显著差异,然后构建平均 CT 值和形态特征模型。LASSO 对放射组学模型选择了 14 个放射组学特征。使用逻辑回归对所有选定的放射和放射组学特征进行整合,构建了联合模型。在训练集中,平均 CT 值、形态特征、放射组学特征和联合模型的 AUC 分别为 0.606、0.718、0.756 和 0.808。在验证集中,AUC 分别为 0.601、0.692、0.696 和 0.738。决策曲线显示,联合模型表现出最高的净收益。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/144a/11280730/e7e57a4b9ded/tomography-10-00078-g001.jpg

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