Zheng Hong, Chen Wei, Qi Wanyin, Liu Haibo, Zuo Zhichao
Department of Radiology, The Affiliated Cancer Hospital of Xiangya School of Medicine, Central South University/Hunan Cancer Hospital, Changsha, PR China.
Department of Radiology, The Second People's Hospital of Hunan Province, Brain Hospital of Hunan Province, Changsha, PR China.
Digit Health. 2024 Oct 7;10:20552076241289181. doi: 10.1177/20552076241289181. eCollection 2024 Jan-Dec.
The invasiveness of lung adenocarcinoma significantly impacts clinical decision-making. However, assessing this invasiveness preoperatively, especially when it manifests as pure ground-glass nodules (pGGN) on CT scans, poses challenges. This study aims to quantify intratumor heterogeneity (ITH) and determine whether the ITH score can enhance the accuracy of invasiveness predictions.
A total of 524 patients with lung adenocarcinomas presenting as pGGN were enrolled in the study, with 177 (33.78%) receiving a pathologic diagnosis of invasiveness. Four diagnostic approaches were developed to predict the invasiveness of lung adenocarcinoma presenting as pGGN: (1) conventional lesion size, (2) ITH score, (3) clinical-radiological features (ClinRad), and (4) integration of the ITH score with ClinRad. ClinRad alone or in combination with the ITH score served as the input for 11 machine learning approaches. The trained models were evaluated in an independent validation cohort, and the area under the curve (AUC) was calculated to assess classification performance.
The conventional lesion size showed the lowest performance, with an AUC of 0.826 (95% confidence interval [CI]: 0.758-0.894), while the ITH score outperformed it with an AUC of 0.846 (95% CI: 0.787-0.905). The CatBoost model performed best when the ITH score and ClinRad were both used as input features, leading to the development of an ITH-ClinRad-guided CatBoost classifier. CatBoost also excelled with ClinRad alone, resulting in a ClinRad-guided CatBoost classifier with an AUC of 0.830 (95% CI: 0.764-0.896), surpassed by the ITH-ClinRad-guided CatBoost classifier with an AUC of 0.871 (95% CI: 0.818-0.924).
The ITH-ClinRad-guided CatBoost classifier emerges as a promising tool with significant potential to revolutionize the management of lung adenocarcinomas presenting as pGGNs.
肺腺癌的侵袭性对临床决策有重大影响。然而,术前评估这种侵袭性具有挑战性,尤其是当它在CT扫描上表现为纯磨玻璃结节(pGGN)时。本研究旨在量化肿瘤内异质性(ITH),并确定ITH评分是否能提高侵袭性预测的准确性。
本研究共纳入524例表现为pGGN的肺腺癌患者,其中177例(33.78%)经病理诊断为侵袭性。开发了四种诊断方法来预测表现为pGGN的肺腺癌的侵袭性:(1)传统病变大小,(2)ITH评分,(3)临床放射学特征(ClinRad),以及(4)ITH评分与ClinRad的整合。单独的ClinRad或与ITH评分相结合作为11种机器学习方法的输入。在独立验证队列中评估训练好的模型,并计算曲线下面积(AUC)以评估分类性能。
传统病变大小的表现最差,AUC为0.826(95%置信区间[CI]:0.758 - 0.894),而ITH评分表现更好,AUC为0.846(95%CI:0.787 - 0.905)。当ITH评分和ClinRad都用作输入特征时,CatBoost模型表现最佳,从而开发出ITH - ClinRad引导的CatBoost分类器。单独使用ClinRad时CatBoost也表现出色,产生了AUC为0.830(95%CI:0.764 - 0.896)的ClinRad引导的CatBoost分类器,但被AUC为0.871(95%CI:0.818 - 0.924)的ITH - ClinRad引导的CatBoost分类器超越。
ITH - ClinRad引导的CatBoost分类器是一种有前景的工具,具有显著潜力,可能会彻底改变对表现为pGGN的肺腺癌的管理。