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基于图像深度学习的术前标志物,用于识别 CT 直径≤2cm 的肺腺癌实性结节。

Preoperative markers for identifying CT ≤2 cm solid nodules of lung adenocarcinoma based on image deep learning.

机构信息

Department of Thoracic Surgery, Shandong Provincial Hospital Affiliated to Shandong First Medical University, Shandong First Medical University, Jinan, PR China.

Department of Thoracic Surgery, Lanshan People's Hospital, Linyi, PR China.

出版信息

Thorac Cancer. 2024 Nov;15(31):2272-2282. doi: 10.1111/1759-7714.15448. Epub 2024 Oct 1.

Abstract

BACKGROUND

The solid pattern is a highly malignant subtype of lung adenocarcinoma. In the current era of transitioning from lobectomy to sublobar resection for the surgical treatment of small lung cancers, preoperative identification of this subtype is highly important for patient surgical approach selection and long-term prognosis.

METHODS

A total of 1489 patients with clinical stage IA1-2 primary lung adenocarcinoma were enrolled. Based on patient clinical characteristics and lung imaging features obtained via deep learning, highly correlated diagnostic factors were identified through LASSO regression and decision tree analysis. Subsequently, a logistic model and nomogram were constructed. A restricted cubic spline (RCS) was used to calculate the optimal inflection point of quantitative data and the differences between the groups.

RESULTS

The three-dimensional proportion of solid component (PSC), sex, and smoking status was identified as being highly correlated diagnostic factors for solid predominant adenocarcinoma. The logistic model had good prediction efficiency, and the area under the ROC curve was 0.85. Decision curve analysis demonstrated that the application of diagnostic factors can improve patient outcomes. RCS analysis indicated that the proportion of solid adenocarcinomas increased by 4.6 times when the PSC was ≥72%. A PSC of 72% is a good cutoff point.

CONCLUSION

The preoperative diagnosis of solid-pattern adenocarcinoma can be confirmed by typical imaging features and clinical characteristics, assisting the thoracic surgeon in developing a more precise surgical plan.

摘要

背景

实体型是肺腺癌的一种高度恶性亚型。在当前从肺叶切除术向亚肺叶切除术转变的时代,对于小肺癌的外科治疗,术前识别这种亚型对于患者手术方法的选择和长期预后非常重要。

方法

共纳入 1489 例临床分期为 IA1-2 期原发性肺腺癌患者。基于患者的临床特征和通过深度学习获得的肺部影像学特征,通过 LASSO 回归和决策树分析确定高度相关的诊断因素。然后,构建了一个逻辑模型和列线图。采用受限立方样条(RCS)计算定量数据的最佳拐点和组间差异。

结果

三维实性成分比例(PSC)、性别和吸烟状况被确定为实体为主型腺癌的高度相关诊断因素。逻辑模型具有良好的预测效率,ROC 曲线下面积为 0.85。决策曲线分析表明,诊断因素的应用可以改善患者的预后。RCS 分析表明,当 PSC≥72%时,实性腺癌的比例增加了 4.6 倍。PSC 为 72%是一个很好的截断点。

结论

术前可以通过典型的影像学特征和临床特征来确诊实体型腺癌,帮助胸外科医生制定更精确的手术计划。

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