CT≤2 cm的术前微乳头和实性型肺腺癌临床决策工具的开发与验证
Development and validation of a clinical decision tool for preoperative micropapillary and solid pattern lung adenocarcinoma of CT ≤2 cm.
作者信息
Gao Zhen, Liu Shang, Xiao Han, Li Meng, Ren Wan-Gang, Fen Zhen, Xu Lin, Peng Zhong-Min
机构信息
Department of Thoracic Surgery, Provincial Hospital Affiliated to Shandong First Medical University, Shandong First Medical University, Jinan, Shandong Province, People's Republic of China.
出版信息
Int J Surg. 2024 Dec 1;110(12):7607-7615. doi: 10.1097/JS9.0000000000001832.
BACKGROUND
Micropapillary (MP) and solid (S) pattern adenocarcinoma are highly malignant subtypes of lung adenocarcinoma. In today's era of increasingly conservative surgery for small lung cancer, effective preoperative identification of these subtypes is greatly important for surgical planning and the long-term survival of patients.
METHODS
For this retrospective study, the presence of MP and/or S was evaluated in 2167 consecutive patients who underwent surgical resection for clinical stage IA1-2 lung adenocarcinoma. MP and/or S pattern-positive patients and negative-pattern patients were matched at a ratio of 1:3. The Lasso regression model was used for data dimension reduction and imaging signature building. Multivariate logistic regression was used to establish the predictive model, presented as an imaging nomogram. The performance of the nomogram was assessed based on calibration, identification, and clinical usefulness, and internal and external validation of the model was conducted.
RESULTS
The proportion of solid components (PSC), Sphericity, entropy, Shape, bronchial honeycomb, nodule shape, sex, and smoking were independent factors in the prediction model of MP and/or S lung adenocarcinoma. The model showed good discrimination with an area under the receiver operating characteristic curve of 0.85. DCA demonstrated that the model could achieve good benefits for patients. Restricted cubic spline analysis suggested a significant increase in the proportion of MP and/or S from 11 to 48% when the PSC value was 68%.
CONCLUSION
Small MP and/or S adenocarcinoma can be effectively identified preoperatively by their typical three-dimensional and 2D imaging features.
背景
微乳头型(MP)和实体型(S)腺癌是肺腺癌的高恶性亚型。在当今对小肺癌手术日益保守的时代,术前有效识别这些亚型对于手术规划和患者的长期生存极为重要。
方法
在这项回顾性研究中,对2167例接受临床IA1-2期肺腺癌手术切除的连续患者评估MP和/或S的存在情况。MP和/或S型阳性患者与阴性型患者按1:3的比例匹配。采用套索回归模型进行数据降维和影像特征构建。使用多变量逻辑回归建立预测模型,并以影像列线图呈现。基于校准、鉴别能力和临床实用性评估列线图的性能,并对模型进行内部和外部验证。
结果
实体成分比例(PSC)、球形度、熵、形状、支气管蜂窝状、结节形状、性别和吸烟是MP和/或S型肺腺癌预测模型中的独立因素。该模型显示出良好的鉴别能力,受试者工作特征曲线下面积为0.85。决策曲线分析表明该模型可为患者带来良好的获益。受限立方样条分析表明,当PSC值为68%时,MP和/或S的比例从11%显著增加到48%。
结论
小的MP和/或S腺癌可通过其典型的三维和二维影像特征在术前得到有效识别。
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