首页> 外文期刊>AJNR. American journal of neuroradiology >Performance evaluation of radiologists with artificial neural network for differential diagnosis of intra-axial cerebral tumors on MR images.
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Performance evaluation of radiologists with artificial neural network for differential diagnosis of intra-axial cerebral tumors on MR images.

机译:用人工神经网络对放射科医生进行MR图像鉴别诊断轴内脑肿瘤的性能评估。

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BACKGROUND AND PURPOSE: Previous studies have suggested that use of an artificial neural network (ANN) system is beneficial for radiological diagnosis. Our purposes in this study were to construct an ANN for the differential diagnosis of intra-axial cerebral tumors on MR images and to evaluate the effect of ANN outputs on radiologists' diagnostic performance. MATERIALS AND METHODS: We collected MR images of 126 patients with intra-axial cerebral tumors (58 high-grade gliomas, 37 low-grade gliomas, 19 metastatic tumors, and 12 malignant lymphomas). We constructed a single 3-layer feed-forward ANN with a Levenberg-Marquardt algorithm. The ANN was designed to differentiate among 4 categories of tumors (high-grade gliomas, low-grade gliomas, metastases, and malignant lymphomas) with use of 2 clinical parameters and 13 radiologic findings in MR images. Subjective ratings for the 13 radiologic findings were provided independently by 2 attending radiologists. All 126 cases were used for training and testing of the ANN based on a leave-one-out-by-case method. In the observer test, MR images were viewed by 9 radiologists, first without and then with ANN outputs. Each radiologist's performance was evaluated through a receiver operating characteristic (ROC) analysis on a continuous rating scale. RESULTS: The averaged area under the ROC curve for ANN alone was 0.949. The diagnostic performance of the 9 radiologists increased from 0.899 to 0.946 (P < .001) when they used ANN outputs. CONCLUSIONS: The ANN can provide useful output as a second opinion to improve radiologists' diagnostic performance in the differential diagnosis of intra-axial cerebral tumors seen on MR imaging.
机译:背景与目的:先前的研究表明,使用人工神经网络(ANN)系统对放射学诊断是有益的。我们在这项研究中的目的是构建用于对MR图像上的轴内脑肿瘤进行鉴别诊断的ANN,并评估ANN输出对放射科医生的诊断性能的影响。材料与方法:我们收集了126例轴内脑肿瘤(58例高级别胶质瘤,37例低度胶质瘤,19例转移性肿瘤和12例恶性淋巴瘤)的MR图像。我们使用Levenberg-Marquardt算法构建了一个单层3层前馈ANN。利用MR图像中的2种临床参数和13项放射学检查结果,ANN旨在区分4类肿瘤(高级别神经胶质瘤,低级别神经胶质瘤,转移瘤和恶性淋巴瘤)。 13位放射学检查结果的主观评分由2位主治放射科医生单独提供。基于个案留一法,所有126个案例都用于ANN的训练和测试。在观察者测试中,由9位放射科医生查看了MR图像,首先没有ANN输出,然后有了ANN输出。通过在连续评定量表上的接收器工作特性(ROC)分析来评估每位放射科医生的表现。结果:仅ANN的ROC曲线下的平均面积为0.949。 9位放射科医生使用ANN输出时的诊断性能从0.899提高到0.946(P <.001)。结论:人工神经网络可以提供有用的输出作为第二意见,以提高放射科医生在MR成像中鉴别出的轴内脑肿瘤的鉴别诊断中的诊断性能。

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