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T2WI及对比增强T1WI影像组学模型鉴别纤维型与非纤维型脑膜瘤 被引量:2

T2WI and contrast enhanced T1WI radiomics models for distinguishing fibroblastic and non-fibroblastic meningioma
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摘要 目的观察T2WI及对比增强T1WI(T1C)影像组学模型鉴别纤维型与非纤维型脑膜瘤的价值。方法回顾性分析423例经病理证实的单发低级别脑膜瘤患者,按7∶3比例分为训练集(n=296)和验证集(n=127);提取训练集T2WI和T1C中病灶3376个影像组学特征,以SelectPercentile单因素分析法及最小绝对收缩和选择算子(LASSO)筛选最优影像组学特征,分别以分类器逻辑回归(LR)、支持向量机(SVM)、随机森林(RF)、线性SVC(LinearSVC)、自适应增强(Adaboost)及决策树(DT)构建鉴别纤维型与非纤维型脑膜瘤的影像组学模型,即模型_(LR)、模型_(SVM)、模型_(RF)、模型_(linearSVC)、模型_(Adaboost)及模型_(DT),以验证集验证其效能。结果基于T2WI和T1C共筛出13个最优影像组学特征,以之构建的模型_(LR)、模型_(SVM)、模型_(RF)、模型_(linearSVC)、模型_(Adaboost)及模型_(DT)鉴别训练集纤维型与非纤维型脑膜瘤的AUC分别为0.755、0.739、0.819、0.746、0.990及0.607;在验证集的AUC分别为0.698、0.636、0.752、0.670、0.591及0.609。模型_(Adaboost)鉴别训练集纤维型与非纤维型脑膜瘤的AUC为0.990,在验证集为0.591,出现过拟合;模型_(RF)在训练集及验证集中的AUC均高于模型_(SVM)、模型_(linearSVC)及模型_(DT)(Z=2.65~8.25,P均<0.05);模型_(RF)在训练集中的AUC高于模型_(LR)(Z=3.27,P<0.01),在验证集的AUC与模型_(LR)差异无统计学意义(Z=7.95,P=0.05)。模型_(RF)诊断效能最佳。结论术前T2WI及T1C RF影像组学模型可有效鉴别纤维型与非纤维型脑膜瘤。 Objective To observe the values of radiomics models based on preoperative T2WI and contrast enhanced T1WI(T1C)for distinguishing fibroblastic and non-fibroblastic meningioma.Methods Data of 423 patients with single low-grade meningioma confirmed by pathology were retrospectively analyzed.The patients were randomly divided into training set(n=296)or validation set(n=127)in the ratio of 7∶3.Totally 3376 radiomics features were extracted based on T2WI and T1C of training set using Shukun technology platform.SelectPercentile univariate analysis,the least absolute shrinkage and selection operator(LASSO)were used to screen the optimal radiomics features.Classifier logistic regression(LR),support vector machine(SVM),random forest(RF),linearSVC,adaptiveboost(Adaboost)and decision tree(DT)were used to construct radiomics models for distinguishing fibroblastic and non-fibroblastic meningiomas,i.e.model_(LR),model_(SVM),model_(RF),model_(linearSVC),model_(Adaboost)and model_(DT).The efficiency of the models were verified using validation set.Results Totally 13 optimal radiomics features were screened based on T2WI and T1C.The area under the curve(AUC)of model_(L R),model_(SVM),model_(RF),model_(linearSVC),model_(Adaboost)and model_(DT)for distinguishing fibroblastic and non-fibroblastic meningiomas in training set was 0.755,0.739,0.819,0.746,0.990 and 0.607,in validation set was 0.698,0.636,0.752,0.670,0.591 and 0.609,respectively.AUC of model_(Adaboost)for distinguishing fibroblastic and non-fibroblastic meningiomas in training set was 0.990,in validation set was 0.591,indicating overfitting.AUC of model_(RF)was higher than that of model SVM,model linearSVC and model DT in both sets(Z=2.65-8.25,all P<0.05),in training set was higher than that of model_(LR)(Z=3.27,P<0.01),but being not significantly different with AUC of model_(LR)in validation set(Z=7.95,P=0.05).Model RF had the best diagnostic performances.Conclusion RF radiomics model based on preoperative T2WI and T1C could effectively distinguish fibroblastic and non-fibroblastic meningioma.
作者 韩涛 刘显旺 徐震东 龙昌友 张斌 邓靓娜 林晓强 景梦园 周俊林 HAN Tao;LIU Xianwang;XU Zhendong;LONG Changyou;ZHANG Bin;DENG Liangna;LIN Xiaoqiang;JING Mengyuan;ZHOU Junlin(Department of Radiology,Lanzhou University Second Hospital,Second Clinical School,Lanzhou University,Key Laboratory of Medical Imaging of Gansu Province,Gansu International Scientific and Technological Cooperation Base of Medical Imaging Artificial Intelligence,Lanzhou 730030,China;Shukun Network Technology Co.,Ltd.Beijing 100102,China;Imaging Center,Affiliated Hospital of Qinghai University,Xining 810000,China)
出处 《中国医学影像技术》 CSCD 北大核心 2022年第12期1791-1796,共6页 Chinese Journal of Medical Imaging Technology
基金 甘肃省科技计划项目(21YF5FA123)。
关键词 脑膜瘤 诊断 鉴别 磁共振成像 影像组学 meningioma diagnosis,differential magnetic resonance imaging radiomics
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