Xu Jiaheng, Liu Ling, Ji Yang, Yan Tiancai, Shi Zhenzhou, Pan Hong, Wang Shuting, Yu Kang, Qin Chunhui, Zhang Tong
Department of Radiology, Fourth Affiliated Hospital of Harbin Medical University, Harbin, Heilongjiang, China.
Department of Radiology, Fourth Affiliated Hospital of Harbin Medical University, Harbin, Heilongjiang, China.
Acad Radiol. 2025 Jan;32(1):482-492. doi: 10.1016/j.acra.2024.07.026. Epub 2024 Aug 1.
Extraction of intratumoral and peritumoral radiomics features combined with clinical factors to establish nomograms to predict high-grade patterns (micropapillary and solid) of invasive adenocarcinoma of the lung (IAC).
A retrospective study was conducted on 463 patients with pathologically confirmed IAC. Patients were randomized in a 7:3 ratio into a training cohort (n = 324) and a testing cohort (n = 139). A total of 2154 CT-based radiomic features were extracted from each of the four regions: gross tumor volume (GTV) and gross peritumoral tumor volume (GPTV3, GPTV6, GPTV9) containing peri-tumor regions of 3 mm, 6 mm, and 9 mm. A radiomics nomogram was constructed based on the optimal radiomics model and clinically independent predictors.
The GPTV3 radiomics model showed better predictive performance in the testing group compared to the GTV (0.840), GPTV6 (0.843), and GPTV9 (0.734) models, with an AUC value of 0.889 in the testing group. In the clinical model, tumor density and the presence of a spiculation sign were identified as independent predictors. The nomogram, which combined these independent predictors with the GPTV3-Radscore, proved to be clinically useful.
The GPTV3 radiomics model was superior to the GTV, GPTV6, and GPTV9 radiomics models in predicting high-grade patterns (HGP) of IAC. In addition, nomograms based on GPTV3 radiomics features and clinically independent predictors can further improve the prediction efficiency.
提取肿瘤内和瘤周的影像组学特征并结合临床因素,建立列线图以预测肺浸润性腺癌(IAC)的高级别模式(微乳头和实性)。
对463例经病理证实的IAC患者进行回顾性研究。患者按7:3的比例随机分为训练队列(n = 324)和测试队列(n = 139)。从四个区域分别提取总共2154个基于CT的影像组学特征:大体肿瘤体积(GTV)以及包含3mm、6mm和9mm瘤周区域的大体瘤周肿瘤体积(GPTV3、GPTV6、GPTV9)。基于最佳影像组学模型和临床独立预测因素构建影像组学列线图。
与GTV(0.840)、GPTV6(0.843)和GPTV9(0.734)模型相比,GPTV3影像组学模型在测试组中显示出更好的预测性能,测试组中的AUC值为0.889。在临床模型中,肿瘤密度和毛刺征的存在被确定为独立预测因素。将这些独立预测因素与GPTV3-Radscore相结合的列线图被证明具有临床实用性。
GPTV3影像组学模型在预测IAC的高级别模式(HGP)方面优于GTV、GPTV6和GPTV9影像组学模型。此外,基于GPTV3影像组学特征和临床独立预测因素的列线图可进一步提高预测效率。