Lu Yu-Jie, Yang Yi, Yuan Yi-Hang, Wang Wen-Jie, Cui Meng-Ting, Tang Hai-Ying, Duan Wei-Ming
Department of Oncology, the First Affiliated Hospital of Soochow University, Suzhou, China.
Department of Gastroenterology, the First Affiliated Hospital of Soochow University, Suzhou, China.
Ann Palliat Med. 2020 Sep;9(5):3123-3137. doi: 10.21037/apm-20-886. Epub 2020 Aug 10.
To establish and validate a nomogram to predict liver metastasis in patients with small-cell lung cancer (SCLC).
Information on patients diagnosed with SCLC between 2010 and 2015 was retrospectively retrieved from the Surveillance, Epidemiology, and End Results (SEER) database. Risk factors for liver metastasis were identified by logistic regression analyses to construct a nomogram. The predictive accuracy was evaluated by concordance indexes (c-index) and calibration plots, and the comparison of discrimination between the nomogram and other routine staging systems was achieved with the area under receiver operating characteristic curve (AUC) analysis. Decision curve analysis (DCA) was performed to measure the clinical performance of the nomogram.
A total of 12,957 patients met our inclusion criteria and were randomly assigned to training (n=6,479) and validation (n=6,478) sets. The nomogram which was established based on independent clinicopathological factors had poor accuracy, and after other distant metastatic sites were added into the predictive model, the new nomogram displayed better discrimination power, with c-indexes of 0.703 in the training set and 0.712 in the validation set. Both internal and external calibration plots approached 45 degrees. The AUCs and net benefit of the predictive model were both higher than those of routine staging systems.
The validated nomogram might be a practical tool for clinicians to quantify the risk of liver metastasis in patients with SCLC and improve cancer management.
建立并验证一种用于预测小细胞肺癌(SCLC)患者肝转移的列线图。
回顾性检索2010年至2015年间诊断为SCLC的患者信息,这些信息来自监测、流行病学和最终结果(SEER)数据库。通过逻辑回归分析确定肝转移的危险因素,以构建列线图。通过一致性指数(c指数)和校准图评估预测准确性,并通过受试者操作特征曲线(AUC)分析比较列线图与其他常规分期系统之间的鉴别能力。进行决策曲线分析(DCA)以衡量列线图的临床性能。
共有12957例患者符合纳入标准,并被随机分配到训练集(n = 6479)和验证集(n = 6478)。基于独立临床病理因素建立的列线图准确性较差,在将其他远处转移部位纳入预测模型后,新的列线图显示出更好的鉴别能力,训练集中的c指数为0.703,验证集中的c指数为0.712。内部和外部校准图均接近45度。预测模型的AUC和净效益均高于常规分期系统。
经过验证的列线图可能是临床医生量化SCLC患者肝转移风险并改善癌症管理的实用工具。