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首页> 外文期刊>Radiological physics and technology >Application of an artificial neural network to the computer-aided differentiation of focal liver disease in MR imaging.
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Application of an artificial neural network to the computer-aided differentiation of focal liver disease in MR imaging.

机译:人工神经网络在磁共振成像中对局灶性肝病的计算机辅助鉴别中的应用。

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The differentiation of focal liver lesions in magnetic resonance (MR) imaging is primarily based on the intensity and homogeneity of lesions with different imaging sequences. However, these imaging findings are falsely interpreted in some patients because of the complexities involved. Our aim is to establish a computer-aided diagnosis system named LiverANN for classifying the pathologies of focal liver lesions into five categories using the artificial neural network (ANN) technique. On each MR image, a region of interest (ROI) in the focal liver lesion was delineated by a radiologist. The intensity and homogeneity within the ROI were calculated automatically, producing numerical data that were analyzed by feeding them into the LiverANN as inputs. Outputs were the following five pathologic categories of hepatic disease: hepatic cyst, hepatocellular carcinoma, dysplasia in cirrhosis, cavernous hemangioma, and metastasis. Of the 320 MR images obtained from 80 patients (four images per patient) with liver lesions, our LiverANN classified 50 cases of a training set into five types of liver lesions with a training accuracy of 100% and 30 test cases with a testing accuracy of 93%. The experiment demonstrated that our LiverANN, which functions as a computer-aided differentiation tool, can provide radiologists with a second opinion during the radiologic diagnostic procedure.
机译:磁共振(MR)成像中局灶性肝病灶的分化主要基于具有不同成像序列的病灶的强度和同质性。但是,由于涉及的复杂性,这些影像学发现在某些患者中被错误地解释了。我们的目标是建立一个名为LiverANN的计算机辅助诊断系统,以使用人工神经网络(ANN)技术将肝脏局灶性病变的病理分为五类。在每个MR图像上,放射线医师划定了肝脏局灶病变的感兴趣区域(ROI)。自动计算ROI内的强度和均匀性,生成数值数据,然后将其输入LiverANN作​​为输入进行分析。输出为以下五个肝脏疾病病理类别:肝囊肿,肝细胞癌,肝硬化异型增生,海绵状血管瘤和转移。从80例肝病患者获得的320张MR图像中(每位患者四幅图像),我们的LiverANN将50例训练集分为5种类型的肝病,训练准确度为100%; 30例测试例,测试准确度为93%。实验表明,我们的LiverANN作​​为计算机辅助的鉴别工具,可以在放射诊断过程中为放射科医生提供第二种意见。

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