Department of Radiology, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, 1277 Jiefang Avenue, Wuhan, Hubei Province 430022, China; Hubei Province Key Laboratory of Molecular Imaging, Wuhan 430022, China.
Bayer Healthcare, No. 399, West Haiyang Road, Shanghai 200126, China.
Clin Radiol. 2024 Oct;79(10):e1226-e1234. doi: 10.1016/j.crad.2024.07.009. Epub 2024 Jul 14.
The purpose of the study was to build a radiomics model using Dual-energy CT (DECT) to predict pathological grading of invasive lung adenocarcinoma.
The retrospective study enrolled 107 patients (80 low-grade and 27 high-grade) with invasive lung adenocarcinoma before surgery. Clinical features, radiographic characteristics, and quantitative parameters were measured. Virtual monoenergetic images at 50kev and 150kev were reconstructed for extracting DECT radiomics features. To select features for constructing models, Pearson's correlation analysis, intraclass correlation coefficients, and least absolute shrinkage and selection operator penalized logistic regression were performed. Four models, including the DECT radiomics model, the clinical-DECT model, the conventional CT radiomics model, and the mixed model, were established. Area under the curve (AUC) and decision curve analysis were used to measure the performance and the clinical value of the models.
The radiomics model based on DECT exhibited outstanding performance in predicting tumor differentiation, with an AUC of 0.997 and 0.743 in the training and testing sets, respectively. Incorporating tumor density, lobulation, and effective atomic number at AP, the clinical-DECT model showed a comparable performance with an AUC of 0.836 in both the training and testing sets. In comparison to the conventional CT radiomics model (AUC of 0.998 in the training and 0.529 in the testing set) and the mixed model (AUC of 0.988 in the training and 0.707 in the testing set), the DECT radiomics model demonstrated a greater AUC value and provided patients with a more significant net benefit in the testing set.
In contrast to the conventional CT radiomics model, the DECT radiomics model produced greater predictive performance in pathological grading of invasive lung adenocarcinoma.
本研究旨在构建基于双能 CT(DECT)的放射组学模型,以预测浸润性肺腺癌的病理分级。
本回顾性研究纳入了 107 例术前浸润性肺腺癌患者(80 例低级别和 27 例高级别)。测量了临床特征、影像学特征和定量参数。重建 50keV 和 150keV 的虚拟单能量图像以提取 DECT 放射组学特征。为了选择构建模型的特征,进行了 Pearson 相关分析、组内相关系数和最小绝对收缩和选择算子惩罚逻辑回归分析。建立了四个模型,包括 DECT 放射组学模型、临床-DECT 模型、常规 CT 放射组学模型和混合模型。采用曲线下面积(AUC)和决策曲线分析评估模型的性能和临床价值。
基于 DECT 的放射组学模型在预测肿瘤分化方面表现出色,在训练集和测试集中的 AUC 分别为 0.997 和 0.743。结合肿瘤密度、分叶和 AP 处的有效原子数,临床-DECT 模型在训练集和测试集中的 AUC 分别为 0.836。与常规 CT 放射组学模型(训练集 AUC 为 0.998,测试集 AUC 为 0.529)和混合模型(训练集 AUC 为 0.988,测试集 AUC 为 0.707)相比,DECT 放射组学模型具有更大的 AUC 值,并在测试集中为患者提供了更大的净收益。
与常规 CT 放射组学模型相比,DECT 放射组学模型在预测浸润性肺腺癌的病理分级方面具有更高的预测性能。