Wang Tong, Fan Zheng, Yue Yong, Lu Xiaomei, Deng Xiaoxu, Hou Yang
Department of Radiology, Shengjing Hospital of China Medical University, Shenyang, China.
Department of Orthopedics, Shengjing Hospital of China Medical University, Shenyang, China.
Transl Lung Cancer Res. 2025 Feb 28;14(2):431-448. doi: 10.21037/tlcr-24-726. Epub 2025 Feb 27.
Accurate diagnosis of early-stage lung adenocarcinoma (LA) subtypes is crucial for optimal patient management. Radiomics extract features from medical images reflect underlying biological information, while effective atomic number (Zeff) from new-generation spectral dual-layer detector computed tomography (SDCT) reflects tissue composition. This study evaluated the utility of SDCT-Zeff-based radiomics, deep learning (DL), and clinical features to differentiate between ground-glass nodule (GGN)-featured precursor glandular lesions (PGLs) and adenocarcinomas.
Patients diagnosed with GGN who underwent preoperative contrast-enhanced SDCT at two medical centers were prospectively enrolled between January 2022 and April 2024. Center 1 (Shengjing Hospital of China Medical University; n=582) served as the training cohort, while Center 2 (Shengjing Hospital, Huaxiang Branch; n=210) served as the external validation cohort. SDCT-Zeff delineated the region of interest (ROI) for radiomics feature extraction. A pre-trained ResNet50 model was used for DL feature extraction. Features were fused, screened, and integrated with various machine learning algorithms and clinical features to construct a clinical-based DL radiomics (DLR) signature nomogram, which was externally validated. Model performance was assessed regarding identification, calibration, and clinical utility.
A total of 792 GGNs were analyzed, classified as glandular precursor lesions (n=296) and adenocarcinomas (n=496). Zeff was inversely correlated with invasiveness. Three features were obtained: clinical, radiomics, and DL. LightGBM was identified as the best-performing model. The area under the curves (AUCs) of DLR in the training and test sets were 0.974 [95% confidence interval (CI): 0.963-0.983] and 0.827 (95% CI: 0.770-0.884), outperforming radiomics (AUC =0.897 and 0.765), and DL (AUC =0.929 and 0.758). The nomogram coupling clinical features [Zeff_a, electron density (ED)_a, and tumor abnormal protein (TAP)] showed the best predictive ability, with AUCs of 0.983 (95% CI: 0.974-0.990) and 0.833 (95% CI: 0.779-0.885) in the training and test sets. The calibration curve indicated strong agreement between predicted and observed outcomes in both cohorts. Decision curve analysis (DCA) revealed that this nomogram offers significant clinical benefits, with a threshold probability range surpassing other models.
The coupled nomogram integrating SDCT-Zeff DLR with clinical features demonstrated improved predictive performance and was particularly effective in detecting GGN-featured glandular precursor lesions and adenocarcinomas. It provides a foundation for managing GGNs and offers valuable insights for preoperative evaluation.
准确诊断早期肺腺癌(LA)亚型对于优化患者管理至关重要。放射组学从医学图像中提取反映潜在生物学信息的特征,而新一代光谱双层探测器计算机断层扫描(SDCT)的有效原子序数(Zeff)反映组织成分。本研究评估了基于SDCT-Zeff的放射组学、深度学习(DL)和临床特征在鉴别磨玻璃结节(GGN)特征性前体腺性病变(PGL)和腺癌方面的效用。
2022年1月至2024年4月期间,前瞻性纳入了在两个医疗中心接受术前对比增强SDCT检查且诊断为GGN的患者。中心1(中国医科大学附属盛京医院;n = 582)作为训练队列,而中心2(盛京医院滑翔院区;n = 210)作为外部验证队列。SDCT-Zeff划定感兴趣区域(ROI)以进行放射组学特征提取。使用预训练的ResNet50模型进行DL特征提取。将特征进行融合、筛选,并与各种机器学习算法和临床特征整合,构建基于临床的DL放射组学(DLR)特征列线图,并进行外部验证。评估模型在识别、校准和临床效用方面的性能。
共分析了792个GGN,分为腺性前体病变(n = 296)和腺癌(n = 496)。Zeff与侵袭性呈负相关。获得了三个特征:临床、放射组学和DL。LightGBM被确定为表现最佳的模型。训练集和测试集中DLR的曲线下面积(AUC)分别为0.974 [95%置信区间(CI):0.963 - 0.983]和0.827(95% CI:0.770 - 0.884),优于放射组学(AUC = 0.897和0.765)以及DL(AUC = 0.929和0.758)。结合临床特征[Zeff_a、电子密度(ED)_a和肿瘤异常蛋白(TAP)]的列线图显示出最佳预测能力,训练集和测试集中的AUC分别为0.983(95% CI:0.974 - 0.990)和0.833(95% CI:0.779 - 0.885)。校准曲线表明两个队列中预测结果与观察结果之间具有高度一致性。决策曲线分析(DCA)显示,该列线图具有显著的临床益处,其阈值概率范围超过其他模型。
将SDCT-Zeff DLR与临床特征相结合的列线图显示出改进的预测性能,在检测GGN特征性腺性前体病变和腺癌方面尤为有效。它为GGN的管理提供了基础,并为术前评估提供了有价值的见解。