Wan Jiayu, Lin Xue, Wang Zhaokai, Sun Peng, Gui Shen, Ye Tianhe, Fan Qianqian, Liu Weiwei, Pan Feng, Yang Bo, Geng Xiaotong, Quan Zhen, Yang Lian
Department of Radiology, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.
Hubei Provincial Clinical Research Center for Precision Radiology & Interventional Medicine, Wuhan, China.
Transl Lung Cancer Res. 2025 Feb 28;14(2):385-397. doi: 10.21037/tlcr-24-822. Epub 2025 Feb 27.
Lung adenocarcinoma (LUAD) is the leading cause of cancer-related deaths. High-resolution computed tomography (HRCT) has improved the detection of ground glass nodules (GGNs), which are early indicators of lung cancer. Accurate assessment of GGN invasiveness is crucial for determining the appropriate surgical approach. Dual-layer spectral detector computed tomography (DLCT) offers advanced imaging capabilities, including electron density and iodine density, which enhance the evaluation of GGN invasiveness. This study aims to develop a machine learning (ML) model that integrates DLCT parameters and clinical features to predict the invasiveness of GGNs in LUAD, aiding in surgical decision-making and prognosis improvement.
The retrospective study encompassed 272 patients who were diagnosed with LUAD, comprising 154 cases of invasive adenocarcinomas (IA) and 118 cases of pre-invasive minimally invasive adenocarcinoma (MIA) which were then randomly allocated into a training set and a test set. Six ML models were developed based on five DLCT parameters (conventional, iodine density, virtual noncontrast, electron density, and effective atomic number). Subsequently, a nomogram was constructed using multi-factor logistic regression, incorporating radiomic characteristics and clinicopathological risk factors.
The ML model based on conventional plus electron density performed better than the models with other DLCT parameters, with the area under the curves (AUCs) of 0.945 and 0.964 in the training and test sets, respectively. The clinical model and radiomics score (Rad-score) were combined in the logistic regression to construct a joint model, of which the AUCs were 0.974 in the training sets and 0.949 in the test sets. The ML model effectively differentiated between IA and pre-invasive MIA, and further classified patients into high and medium risk categories for invasion using waterfall plots.
The ML model based on DLCT parameters helps predict the invasiveness of GGNs and classifies the GGNs into different risk grades.
肺腺癌(LUAD)是癌症相关死亡的主要原因。高分辨率计算机断层扫描(HRCT)提高了磨玻璃结节(GGN)的检测率,而GGN是肺癌的早期指标。准确评估GGN的侵袭性对于确定合适的手术方法至关重要。双层光谱探测器计算机断层扫描(DLCT)提供了先进的成像能力,包括电子密度和碘密度,可增强对GGN侵袭性的评估。本研究旨在开发一种机器学习(ML)模型,该模型整合DLCT参数和临床特征,以预测LUAD中GGN的侵袭性,辅助手术决策并改善预后。
这项回顾性研究纳入了272例被诊断为LUAD的患者,其中包括154例浸润性腺癌(IA)和118例浸润前微浸润性腺癌(MIA),然后将其随机分为训练集和测试集。基于五个DLCT参数(常规参数、碘密度、虚拟平扫、电子密度和有效原子序数)开发了六个ML模型。随后,使用多因素逻辑回归构建列线图,纳入了影像组学特征和临床病理危险因素。
基于常规参数加电子密度的ML模型比其他DLCT参数的模型表现更好,训练集和测试集的曲线下面积(AUC)分别为0.945和0.964。在逻辑回归中结合临床模型和影像组学评分(Rad-score)构建联合模型,训练集和测试集的AUC分别为0.974和0.949。ML模型有效地区分了IA和浸润前MIA,并使用瀑布图将患者进一步分为高侵袭风险和中侵袭风险类别。
基于DLCT参数的ML模型有助于预测GGN的侵袭性,并将GGN分为不同的风险等级。