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首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Computer-Aided Detection of Incidental Lumbar Spine Fractures from Routine Dual-Energy X-Ray Absorptiometry (DEXA) Studies Using a Support Vector Machine (SVM) Classifier
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Computer-Aided Detection of Incidental Lumbar Spine Fractures from Routine Dual-Energy X-Ray Absorptiometry (DEXA) Studies Using a Support Vector Machine (SVM) Classifier

机译:计算机辅助检测偶然的腰椎骨折来自常规双能X射线吸收术(DEXA)研究使用支撑载体(SVM)分类器

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摘要

To assess whether application of a support vector machine learning algorithm to ancillary data obtained from posterior-anterior dual-energy X-ray absorptiometry (DEXA) studies could identify patients with lumbar spine (L1-L4) vertebral body fractures without additional DEXA imaging or radiation. Three hundred seven patients (199 without any fractures of the spine, and 108 patients with at least one fracture of the L1, L2, L3, or L4 vertebral bodies) who had DEXA studies were evaluated. Ancillary data from DEXA output was analyzed. The dataset was split into training (80%) and test (20%) datasets. Support vector machines (SVMs) with 10-fold cross-validation and different kernels were used to identify the best kernel based on the greatest area under the curve (AUC) and the best training vectors in the training dataset. The SVM with the best kernel was then applied to the test dataset to assess the accuracy of the SVM. Receiver operating characteristic (ROC) curves of the SVMs using different kernels in the test dataset were compared using DeLong's test. The SVM classifier with the linear kernel had the greatest AUC in the training dataset (AUC = 0.9258). The AUC of the SVM classifier with the linear kernel in the test dataset was 0.8963. The SVM classifier with the linear kernel had an overall average accuracy of 91.8% in the test dataset. The sensitivity, specificity, positive predictive value, and negative predictive of the SVM classifier with the linear kernel to detect lumbar spine fractures were 81.8%, 97.4%, 94.7%, and 90.5%, respectively. The SVM classifier with the linear kernel ROC curve had a significantly better AUC than the SVM classifier with the cubic polynomial kernel (P = 0.034) for discriminating between patients with lumbar spine fractures and control patients, but not significantly different from the SVM classifier with a radial basis function (RBF) kernel (P = 0.317) or the SVM classifier with a sigmoid kernel (P = 0.729). All fractures identified by the SVM classifiers were not prospectively identified by the radiologist. SVM analysis of ancillary data obtained from routine DEXA studies can identify lumbar spine fractures without the use of vertebral fracture assessment (VFA) DEXA imaging or radiation, and identify fractures missed by radiologists.
机译:为了评估支持向量机学习算法的应用是否从后部双能X射线吸收术(DEXA)研究中的辅助数据可以识别腰椎(L1-L4)椎体骨折的患者而无需额外的DEXA成像或辐射。评估了三百七名患者(199999999患者,并评估了具有Dexa研究的L1,L2,L3或L4椎体的至少一个骨折的108名患者。分析了来自DEXA输出的辅助数据。数据集分为培训(80%)和测试(20%)数据集。支持向量机(SVM)具有10倍交叉验证和不同内核,用于根据曲线(AUC)下的最大区域和训练数据集中的最佳培训向量来识别最佳内核。然后将具有最佳内核的SVM应用于测试数据集以评估SVM的准确性。使用Delong的测试比较使用测试数据集中使用不同内核的SVMS的接收器操作特性(ROC)曲线。具有线性内核的SVM分类器具有训练数据集中最大的AUC(AUC = 0.9258)。 SVM分类器的AUC与测试数据集中的线性内核的AUC为0.8963。具有线性内核的SVM分类器在测试数据集中的总体平均精度为91.8%。 SVM分类器具有线性核的敏感性,特异性,阳性预测值和阴性预测,以检测腰椎骨折分别​​为81.8%,97.4%,94.7%和90.5%。具有线性核ROC曲线的SVM分类器具有比具有立方多项式内核(P = 0.034)的SVM分类器具有明显更好的AUC,用于识别腰椎骨折和对照患者的患者,但与SVM分级器没有显着不同径向基函数(RBF)内核(P = 0.317)或具有S形内核的SVM分类器(P = 0.729)。 SVM分类剂鉴定的所有骨折未被放射科医师似先鉴定。从常规Dexa研究获得的辅助数据的SVM分析可以识别腰椎骨折而不使用椎骨骨折评估(VFA)Dexa成像或辐射,并鉴定放射科医生错过的骨折。

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