Jia Heng, Li Ruzhi, Liu Yawei, Zhan Tian, Li Yuan, Zhang Jianping
Department of General Surgery, The Second Affiliated Hospital of Nanjing Medical University, Nanjing 210011, China.
Department of Endoscopic Center, The Fourth Affiliated Hospital of Nanjing Medical University, Nanjing 210031, China.
Cancers (Basel). 2024 Jan 31;16(3):614. doi: 10.3390/cancers16030614.
The aim of this study was to construct and validate a nomogram for preoperatively predicting perineural invasion (PNI) in gastric cancer based on machine learning, and to investigate the impact of PNI on the overall survival (OS) of gastric cancer patients.
Data were collected from 162 gastric patients and analyzed retrospectively, and radiomics features were extracted from contrast-enhanced computed tomography (CECT) scans. A group of 42 patients from the Cancer Imaging Archive (TCIA) were selected as the validation set. Univariable and multivariable analyses were used to analyze the risk factors for PNI. The -test, Max-Relevance and Min-Redundancy (mRMR) and the least absolute shrinkage and selection operator (LASSO) were used to select radiomics features. Radscores were calculated and logistic regression was applied to construct predictive models. A nomogram was developed by combining clinicopathological risk factors and the radscore. The area under the curve (AUC) values of receiver operating characteristic (ROC) curves, calibration curves and clinical decision curves were employed to evaluate the performance of the models. Kaplan-Meier analysis was used to study the impact of PNI on OS.
The univariable and multivariable analyses showed that the T stage, N stage and radscore were independent risk factors for PNI ( < 0.05). A nomogram based on the T stage, N stage and radscore was developed. The AUC of the combined model yielded 0.851 in the training set, 0.842 in the testing set and 0.813 in the validation set. The Kaplan-Meier analysis showed a statistically significant difference in OS between the PNI group and the non-PNI group ( < 0.05).
A machine learning-based radiomics-clinicopathological model could effectively predict PNI in gastric cancer preoperatively through a non-invasive approach, and gastric cancer patients with PNI had relatively poor prognoses.
本研究旨在构建并验证基于机器学习的术前预测胃癌神经侵犯(PNI)的列线图,并探讨PNI对胃癌患者总生存期(OS)的影响。
收集162例胃癌患者的数据进行回顾性分析,从增强CT扫描中提取影像组学特征。从癌症影像存档(TCIA)中选取42例患者作为验证集。采用单因素和多因素分析来分析PNI的危险因素。使用t检验、最大相关性和最小冗余度(mRMR)以及最小绝对收缩和选择算子(LASSO)来选择影像组学特征。计算Radscores并应用逻辑回归构建预测模型。通过结合临床病理危险因素和Radscore绘制列线图。采用受试者操作特征(ROC)曲线、校准曲线和临床决策曲线的曲线下面积(AUC)值来评估模型的性能。采用Kaplan-Meier分析来研究PNI对OS的影响。
单因素和多因素分析显示,T分期、N分期和Radscore是PNI的独立危险因素(P<0.05)。基于T分期、N分期和Radscore绘制了列线图。联合模型在训练集、测试集和验证集中的AUC分别为0.851、0.842和0.813。Kaplan-Meier分析显示,PNI组和非PNI组在OS方面存在统计学显著差异(P<0.05)。
基于机器学习的影像组学-临床病理模型可通过非侵入性方法有效术前预测胃癌中的PNI,且伴有PNI的胃癌患者预后相对较差。