Zhang Yang, Liu Jing, Wu Cuiyun, Peng Jiaxuan, Wei Yuguo, Cui Sijia
Cancer Center, Department of Radiology, Zhejiang Provincial People's Hospital, Affiliated People's Hospital, Hangzhou Medical College, Hangzhou 310014, China.
Medical College, Jinzhou Medical University, Jinzhou 121001, China.
Diagnostics (Basel). 2023 Jan 11;13(2):269. doi: 10.3390/diagnostics13020269.
To establish and verify radiomics models based on multiparametric MRI for preoperatively identifying the microsatellite instability (MSI) status of rectal cancer (RC) by comparing different machine learning algorithms. This retrospective study enrolled 383 (training set, 268; test set, 115) RC patients between January 2017 and June 2022. A total of 4148 radiomics features were extracted from multiparametric MRI, including T-weighted imaging, T-weighted imaging, apparent diffusion coefficient, and contrast-enhanced T-weighted imaging. The analysis of variance, correlation test, univariate logistic analysis, and a gradient-boosting decision tree were used for the dimension reduction. Logistic regression, Bayes, support vector machine (SVM), K-nearest neighbor (KNN), and tree machine learning algorithms were used to build different radiomics models. The relative standard deviation (RSD) and bootstrap method were used to quantify the stability of these five algorithms. Then, predictive performances of different models were assessed using area under curves (AUCs). The performance of the best radiomics model was evaluated using calibration and discrimination. Among these 383 patients, the prevalence of MSI was 14.62% (56/383). The RSD value of logistic regression algorithm was the lowest (4.64%), followed by Bayes (5.44%) and KNN (5.45%), which was significantly better than that of SVM (19.11%) and tree (11.94%) algorithms. The radiomics model based on logistic regression algorithm performed best, with AUCs of 0.827 and 0.739 in the training and test sets, respectively. We developed a radiomics model based on the logistic regression algorithm, which could potentially be used to facilitate the individualized prediction of MSI status in RC patients.
通过比较不同的机器学习算法,建立并验证基于多参数磁共振成像(MRI)的影像组学模型,用于术前识别直肠癌(RC)的微卫星不稳定性(MSI)状态。这项回顾性研究纳入了2017年1月至2022年6月期间的383例RC患者(训练集268例,测试集115例)。从多参数MRI中提取了总共4148个影像组学特征,包括T加权成像、T加权成像、表观扩散系数和对比增强T加权成像。采用方差分析、相关性检验、单因素逻辑分析和梯度提升决策树进行降维。使用逻辑回归、贝叶斯、支持向量机(SVM)、K近邻(KNN)和树状机器学习算法构建不同的影像组学模型。采用相对标准差(RSD)和自助法对这五种算法的稳定性进行量化。然后,使用曲线下面积(AUC)评估不同模型的预测性能。使用校准和鉴别评估最佳影像组学模型的性能。在这383例患者中,MSI的患病率为14.62%(56/383)。逻辑回归算法的RSD值最低(4.64%),其次是贝叶斯(5.44%)和KNN(5.45%),明显优于SVM(19.11%)和树状(11.94%)算法。基于逻辑回归算法的影像组学模型表现最佳,训练集和测试集的AUC分别为0.827和0.739。我们开发了一种基于逻辑回归算法的影像组学模型,该模型可能有助于RC患者MSI状态的个体化预测。