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在阈值分割中使用实性成分体积和三维实变与肿瘤比值预测T1期肺腺癌浸润程度的最佳阈值的确定。

Identification of the optimal threshold for predicting the infiltration degree of T1-stage lung adenocarcinoma using solid component volume and three-dimensional consolidation-to-tumor ratio in threshold segmentation.

作者信息

Shi Wensong, Wei Zhengpan, Hu Yuzhui, Sun Yingli, Li Ming, Chang Guotao, Yang Yulun, Qian He, Zhao Liang, Li Xiangnan, Zheng Huiyu

机构信息

Department of Thoracic Surgery, The Fifth Clinical Medical College of Henan University of Chinese Medicine (Zhengzhou People's Hospital), Zhengzhou, China.

Department of Thoracic Surgery, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, China.

出版信息

Quant Imaging Med Surg. 2025 Jul 1;15(7):6446-6456. doi: 10.21037/qims-24-1160. Epub 2025 Jun 26.

Abstract

BACKGROUND

Predicting the invasiveness of pulmonary nodules when early-stage lung cancer is suspected is a clinical challenge. This study aimed to determine the optimal computed tomography (CT) threshold values for predicting the invasiveness of T1-stage lung adenocarcinoma. This was achieved using the solid component volume and three-dimensional consolidation-to-tumor ratio (3D CTR) via threshold segmentation.

METHODS

A retrospective study was conducted, involving 1,056 patients with 1,179 pulmonary nodules verified by postoperative pathology. These cases were sourced from two different centers. The patients were divided into two groups: the pre-invasive group, comprising atypical adenomatous hyperplasia (AAH) and adenocarcinoma in situ (AIS), and the invasive group, including minimally invasive adenocarcinoma (MIA) and invasive adenocarcinoma (IAC). Seven different CT threshold settings [-550, -450, -350, -250, -150, -50, 0 Hounsfield unit (HU)] were used, and the solid component volume was calculated; 3D CTR was determined using the threshold segmentation method and the differences between the two groups were analyzed. We plotted the receiver operating characteristic (ROC) curves to evaluate the effectiveness of predicting the invasiveness of T1-stage lung adenocarcinoma. Based on the analysis of the ROC curves, the optimal threshold was determined, and the corresponding optimal cut-off value was calculated.

RESULTS

The optimal predictive efficacy for evaluating the invasiveness of stage T1 lung adenocarcinoma was achieved with a -350 HU CT threshold. The predictive performance for the invasiveness of T1-stage lung adenocarcinoma was optimal. The area under the ROC curve (AUC) with its 95% confidence interval (CI) for the solid component volume was 0.855 (0.834-0.876), and for the 3D CTR, it was 0.823 (0.799-0.847). The optimal cutoff point for the solid component volume was 45.5 mm, and 10.85% for 3D CTR.

CONCLUSIONS

Regardless of the CT threshold setting, the solid component volume and 3D CTR calculated based on the threshold segmentation method were demonstrated to be stable predictive factors that significantly contributed to the assessment of the invasiveness of T1-stage lung adenocarcinoma. The optimal predictive performance was achieved when the CT threshold was set to -350 HU. A solid component volume exceeding 45.5 mm or a 3D CTR greater than 10.85% indicated a higher likelihood of MIA or IAC.

摘要

背景

当怀疑早期肺癌时,预测肺结节的侵袭性是一项临床挑战。本研究旨在确定预测T1期肺腺癌侵袭性的最佳计算机断层扫描(CT)阈值。这是通过阈值分割使用实性成分体积和三维实变与肿瘤比值(3D CTR)来实现的。

方法

进行了一项回顾性研究,纳入1056例患者的1179个经术后病理证实的肺结节。这些病例来自两个不同的中心。患者分为两组:侵袭前组,包括非典型腺瘤样增生(AAH)和原位腺癌(AIS);侵袭组,包括微浸润腺癌(MIA)和浸润性腺癌(IAC)。使用七种不同的CT阈值设置[-550、-450、-350、-250、-150、-50、0亨氏单位(HU)],计算实性成分体积;采用阈值分割法确定3D CTR,并分析两组之间的差异。绘制受试者操作特征(ROC)曲线以评估预测T1期肺腺癌侵袭性的有效性。基于ROC曲线分析确定最佳阈值,并计算相应的最佳截断值。

结果

CT阈值为-350 HU时,评估T1期肺腺癌侵袭性的预测效能最佳。对T1期肺腺癌侵袭性的预测性能最佳。实性成分体积的ROC曲线下面积(AUC)及其95%置信区间(CI)为0.855(0.834-0.876),3D CTR的为0.823(0.799-0.847)。实性成分体积的最佳截断点为45.5 mm,3D CTR为10.85%。

结论

无论CT阈值设置如何,基于阈值分割法计算的实性成分体积和3D CTR均被证明是稳定的预测因素,对评估T1期肺腺癌的侵袭性有显著贡献。当CT阈值设置为-350 HU时,预测性能最佳。实性成分体积超过45.5 mm或3D CTR大于10.85%表明MIA或IAC的可能性更高。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b5b5/12290796/7f85f535c51f/qims-15-07-6446-f1.jpg

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