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Predicting the Grade of Clear Cell Renal Cell Carcinoma from CT Images Using Random Subspace-KNN and Random Forest Classifiers

机译:用随机子空间knn和随机林分类预测CT图像的透明细胞肾细胞癌等级

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Accurate and non-invasive determination of the International Society of Urological Pathology (ISUP) based tumor grade is important for the effective management of patients with clear cell renal cell carcinoma (cc-RCC). In this study, the radiomic analysis of 3D computed tomography (CT) images are used to determine ISUP grades of cc-RCC patients by exploring machine learning (ML) methods that can address small ISUP grade image datasets. 143 cc-RCC patient studies from The Cancer Imaging Archive (TCIA) USA were used in the study. 1133 radiomic features were extracted from the normalized 3D segmented CT images. Correlation coefficient analysis, Random Forest feature importance analysis and backward elimination methods were used consecutively to reduce the number of features. 15 out of 1133 features were selected. A k-nearest neighbors (KNN) classifier with random subspaces and a Random Forest classifier were implemented. Model performances were evaluated independently on the unused 20% of the original imbalanced data. ISUP grades were predicted by a KNN classifier under random subspaces with an accuracy of 90% and area under the curve (AUC) of 0.88 using the test data. Grades were predicted by a Random Forest classifier with an accuracy of 83% and AUC of 0.80 using the test data. In conclusion, ensemble classifiers can be used to predict the ISUP grade of cc-RCC tumors from CT images with sufficient reliability. Larger datasets and new types of features are currently being investigated.
机译:准确和无侵入的国际泌尿科病理学学会(ISUP)的肿瘤等级对透明细胞肾细胞癌(CC-RCC)的有效管理是重要的。在该研究中,3D计算机断层扫描(CT)图像的射线分析用于通过探索可以解决小型ISUP等级图像数据集的机器学习(ML)方法来确定CC-RCC患者的ISUP等级。 143 CC-RCC患者来自癌症成像档案(TCIA)的研究在研究中使用。从归一化3D分段CT图像中提取1133射粒特征。相关系数分析,随机森林特征重要性分析和后向消除方法是连续使用,以减少特征的数量。选择了1133个功能中的15个。实现了具有随机子空间和随机林分类器的K-Collect邻居(KNN)分类器。在未使用的20%原始不平衡数据的未使用20%的情况下独立评估模型性能。在随机子空间下通过KNN分类器预测ISUP等级,精度为0.88的曲线(AUC)下的90%和面积为0.88。随机森林分类器预测等级,精度为83%,AUC的含量为0.80,使用测试数据。总之,集合分类器可用于预测来自CT图像的CC-RCC肿瘤的Isup等级,具有足够的可靠性。目前正在调查更大的数据集和新类型的功能。

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