Ren Dahu, Chen Shuangqing, Liu Shicheng, Zhang Xiaopeng, Xue Wenfei, Zhao Qingtao, Duan Guochen
Department of Thoracic Surgery, Hebei General Hospital, Shijiazhuang, Hebei, China.
Graduate School, Hebei Medical University, Shijiazhuang, Hebei, China.
Front Oncol. 2025 Jul 23;15:1594499. doi: 10.3389/fonc.2025.1594499. eCollection 2025.
To explore the clinical application value of combining circulating tumor cell (CTC) detection with the artificial intelligence imaging software "uAI platform" in predicting the pathological nature of pulmonary nodules (PN). Develop a joint diagnostic system based on the uAI platform and quantitative detection of CTCs, enable simultaneous classification of pulmonary nodules as benign or malignant and assess the degree of infiltration.
A total of 76 patients with pulmonary nodules undergoing surgical treatment were enrolled. Preoperatively, three-dimensional nodule risk stratification (low、medium、high risk) was performed using the uAI platform, and CTC high-throughput detection was conducted. Key indicators were selected through multi-group comparisons (Benign、Malignant、Invasive subgroups) and logistic regression analysis. A multi-dimensional nomogram model was constructed, and its clinical utility was evaluated using ROC curves and clinical decision curves.
Comparison between benign and malignant pulmonary nodule groups revealed significant differences in the risk stratification of the uAI platform (proportion of high-risk: 75.61% 34.29%) and in the median value of CTC quantitative detection (P<0.001). Multivariate logistic regression analysis demonstrated that high-risk classification by uAI and CTC quantitative detection were independent predictors of malignancy in pulmonary nodules (P<0.05). The nomogram model constructed based on these factors exhibited excellent discrimination, and its combined diagnostic performance was significantly better than that of single indicators (AUC=0.805 uAI 0.730/CTC 0.743).
The combined uAI-CTC model breaks through the limitations of single-dimension diagnosis, enabling risk stratification of malignant pulmonary nodules and quantitative assessment of infiltration, providing evidence-based support for clinical treatment strategies.
探讨循环肿瘤细胞(CTC)检测与人工智能成像软件“uAI平台”相结合在预测肺结节(PN)病理性质方面的临床应用价值。基于uAI平台和CTC定量检测开发联合诊断系统,实现肺结节良恶性同时分类并评估浸润程度。
纳入76例接受手术治疗的肺结节患者。术前,使用uAI平台进行三维结节风险分层(低、中、高风险),并进行CTC高通量检测。通过多组比较(良性、恶性、浸润亚组)和逻辑回归分析选择关键指标。构建多维列线图模型,并使用ROC曲线和临床决策曲线评估其临床效用。
良性和恶性肺结节组之间的比较显示,uAI平台的风险分层(高风险比例:75.61%对34.29%)和CTC定量检测的中位数存在显著差异(P<0.001)。多变量逻辑回归分析表明,uAI高风险分类和CTC定量检测是肺结节恶性的独立预测因素(P<0.05)。基于这些因素构建的列线图模型具有出色的辨别力,其联合诊断性能明显优于单一指标(AUC=0.805对uAI 0.730/CTC 0.743)。
uAI-CTC联合模型突破了单维诊断的局限性,能够对恶性肺结节进行风险分层并对浸润进行定量评估,为临床治疗策略提供循证支持。