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基于计算机断层扫描影像组学和机器学习的局部进展期胃癌血管侵犯术前预测

Preoperative prediction of vessel invasion in locally advanced gastric cancer based on computed tomography radiomics and machine learning.

作者信息

Hu Zhi-Wei, Liang Pan, Li Zhi-Li, Yong Liu-Liang, Lu Hao, Wang Rui, Gao Jian-Bo

机构信息

Department of Radiology, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, Henan 450052, P.R. China.

Department of Radiology, Henan Provincial People's Hospital Medical Imaging Center, Zhengzhou, Henan 450003, P.R. China.

出版信息

Oncol Lett. 2023 May 22;26(1):293. doi: 10.3892/ol.2023.13879. eCollection 2023 Jul.

Abstract

Vessel invasion (VI) is an important factor affecting the prognosis of gastric cancer (GC), and the accurate determination of preoperative VI for locally advanced GC is of great clinical significance. Traditional methods for the evaluation of VI require postoperative pathological examination. Noninvasive preoperative evaluation of VI is therefore crucial to determine the best treatment strategy. To determine the value of preoperative prediction of gastric VI based on portal venous phase computed tomography (CT) radiomic features and machine-learning models, a retrospective analysis of 296 patients with locally advanced GC confirmed through pathological examination was performed. They were divided into two groups, VI+ (n=213) and VI- (n=83), based on pathological results. Using pyradiomics to extract two-dimensional radiomic features of the portal venous stage of locally advanced GC, data were divided into training (n=207) and validation sets (n=89), with a ratio of 7:3, and three feature selection methods were cascaded and merged. Finally, least absolute shrinkage and selection operator (LASSO) regression was used for feature screening to obtain the optimal feature subset. Four current representative machine-learning algorithms were used to construct the prediction model, the receiver operating characteristic curve was constructed to evaluate the predictive performance of the model, and the area under the curve (AUC), accuracy, sensitivity, and specificity were calculated. The differentiation degree, and the Lauren's and CA199 classifications were independent risk factors for locally advanced GC VI. Pyradiomics extracted 864 quantitative features of portal vein images of locally advanced GC. After filtering out low variance features using R, 236 features remained. Next, 18 features were screened using the LASSO algorithm. Extreme gradient boosting (XGBoost), logistic regression, Gaussian naive Bayes, and support vector machine models were constructed based on the 18 best features screened out of the portal venous CT images of advanced GC and three independent risk factors of GC VI in clinical features predicted the training set AUC values of 0.914, 0.897, 0.880, and 0.814, respectively. The predicted validation set AUC values were 0.870, 0.877, 0.859, and 0.773, respectively. The DeLong test results indicated no statistically significant difference in AUC values between the XGBoost and logistic regression models in the training and validation sets. The four machine-learning models showed high predictive performance. The logistic regression model had the highest AUC value in the validation set (0.877), and the accuracy and F1 score were 77 and 87.6%, respectively. CT radiomic features and machine-learning models based on the portal venous phase can be used as a noninvasive imaging method for the preoperative prediction of VI in locally advanced GC. The logistic regression model exhibited the highest diagnostic performance.

摘要

血管侵犯(VI)是影响胃癌(GC)预后的重要因素,准确判定局部进展期GC的术前VI具有重要临床意义。传统的VI评估方法需要术后病理检查。因此,术前无创评估VI对于确定最佳治疗策略至关重要。为了确定基于门静脉期计算机断层扫描(CT)影像组学特征和机器学习模型对胃VI进行术前预测的价值,对296例经病理检查确诊的局部进展期GC患者进行了回顾性分析。根据病理结果,将他们分为两组,VI+组(n = 213)和VI-组(n = 83)。使用pyradiomics提取局部进展期GC门静脉期的二维影像组学特征,数据按7:3的比例分为训练集(n = 207)和验证集(n = 89),并将三种特征选择方法进行级联和合并。最后,使用最小绝对收缩和选择算子(LASSO)回归进行特征筛选,以获得最佳特征子集。使用四种当前具有代表性的机器学习算法构建预测模型,构建受试者工作特征曲线以评估模型的预测性能,并计算曲线下面积(AUC)、准确率、敏感性和特异性。分化程度、Lauren分类和CA199分类是局部进展期GC VI的独立危险因素。Pyradiomics提取了局部进展期GC门静脉图像的864个定量特征。使用R语言过滤掉低方差特征后,剩下236个特征。接下来,使用LASSO算法筛选出18个特征。基于从晚期GC门静脉CT图像中筛选出的18个最佳特征以及GC VI临床特征中的三个独立危险因素构建了极端梯度提升(XGBoost)、逻辑回归、高斯朴素贝叶斯和支持向量机模型,预测训练集的AUC值分别为0.914、0.897、0.880和0.814。预测验证集的AUC值分别为0.870、0.877、0.859和0.773。DeLong检验结果表明,训练集和验证集中XGBoost模型与逻辑回归模型的AUC值无统计学显著差异。这四种机器学习模型均显示出较高的预测性能。逻辑回归模型在验证集中的AUC值最高(0.877),准确率和F1分数分别为77%和87.6%。基于门静脉期的CT影像组学特征和机器学习模型可作为局部进展期GC术前预测VI的无创成像方法。逻辑回归模型表现出最高的诊断性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/73c7/10236253/4ec81f3b997b/ol-26-01-13879-g00.jpg

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