Liu Qiufang, Li Jiaru, Xin Bowen, Sun Yuyun, Wang Xiuying, Song Shaoli
Department of Nuclear Medicine, Fudan University Shanghai Cancer Center, Fudan University, Shanghai, China.
Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China.
Quant Imaging Med Surg. 2023 Mar 1;13(3):1537-1549. doi: 10.21037/qims-22-148. Epub 2023 Feb 13.
We aimed to establish and validate 2 machine learning models using F-flurodeoxyglucose positron emission tomography/computed tomography (F-FDG PET/CT) radiomic features to predict human epidermal growth factor receptor 2 (HER2) expression and prognosis in gastric cancer (GC) patients.
We retrospectively enrolled 90 patients diagnosed with GC, including their clinical information and the F-FDG PET/CT images. Patients were allocated to a training cohort of 72 patients and an independent validation cohort (IVC) of 18 patients. There were 2,100 radiomic features extracted from the F-FDG PET/CT scans. A sequential combination of multivariate and univariate feature selection was applied, including sequential forward selection and a redundancy-based analysis. The justification of the model performance was conducted by cross-validation analysis on the training set and an independent validation analysis.
The machine learning models were developed using a balanced bagging approach for HER2 expression prediction and prognosis prediction, which differentiated HER2 positive expression from negative expression in the IVC with an area under the receiver operating characteristic curve (AUC) of 0.72, sensitivity of 0.85, and specificity of 0.80. The IVC for prognosis prediction achieved an AUC of 0.75, sensitivity of 0.82, and specificity of 0.71. We also conducted a reasonable interpretation for the selected features in each classification task from multiple aspects, including normalized feature importance analysis and statistical correlation analysis with the clinical features that were defaulted to be effective.
F-FDG PET/CT radiomics analysis with a machine learning model provides a quantitative, efficient, and objective mechanism for predicting HER2 expression and prognosis in GC patients.
我们旨在建立并验证两个机器学习模型,利用氟代脱氧葡萄糖正电子发射断层扫描/计算机断层扫描(F-FDG PET/CT)的影像组学特征来预测胃癌(GC)患者的人表皮生长因子受体2(HER2)表达及预后。
我们回顾性纳入了90例诊断为GC的患者,包括他们的临床信息和F-FDG PET/CT图像。患者被分配到一个由72例患者组成的训练队列和一个由18例患者组成的独立验证队列(IVC)。从F-FDG PET/CT扫描中提取了2100个影像组学特征。应用多变量和单变量特征选择的顺序组合,包括顺序向前选择和基于冗余的分析。通过对训练集的交叉验证分析和独立验证分析来评估模型性能。
使用平衡装袋法开发了用于HER2表达预测和预后预测的机器学习模型,该模型在IVC中区分HER2阳性表达和阴性表达的受试者操作特征曲线下面积(AUC)为0.72,灵敏度为0.85,特异性为0.80。预后预测的IVC的AUC为0.75,灵敏度为0.82,特异性为0.71。我们还从多个方面对每个分类任务中选择的特征进行了合理的解释,包括标准化特征重要性分析以及与默认有效的临床特征的统计相关性分析。
F-FDG PET/CT影像组学分析与机器学习模型为预测GC患者的HER2表达和预后提供了一种定量、高效且客观的机制。