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首页> 外文期刊>European journal of nuclear medicine >Automated interpretation of ventilation-perfusion lung scintigrams for the diagnosis of pulmonary embolism using artificial neural networks.
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Automated interpretation of ventilation-perfusion lung scintigrams for the diagnosis of pulmonary embolism using artificial neural networks.

机译:使用人工神经网络自动解释通气-灌注肺闪烁图以诊断肺栓塞。

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The purpose of this study was to develop a completely automated method for the interpretation of ventilation-perfusion (V-P) lung scintigrams used in the diagnosis of pulmonary embolism. An artificial neural network was trained for the diagnosis of pulmonary embolism using 18 automatically obtained features from each set of V-P scintigrams. The techniques used to process the images included their alignment to templates, the construction of quotient images based on the ventilation and perfusion images, and the calculation of measures describing V-P mismatches in the quotient images. The templates represented lungs of normal size and shape without any pathological changes. Images that could not be properly aligned to the templates were detected and excluded automatically. After exclusion of those V-P scintigrams not properly aligned to the templates, 478 V-P scintigrams remained in a training group of consecutive patients with suspected pulmonary embolism, and a further 87 V-P scintigrams formed a separate test group comprising patients who had undergone pulmonary angiography. The performance of the neural network, measured as the area under the receiver operating characteristic curve, was 0.87 (95% confidence limits 0.82-0.92) in the training group and 0.79 (0.69-0.88) in the test group. It is concluded that a completely automated method can be used for the interpretation of V-P scintigrams. The performance of this method is similar to others previously presented, whereby features were extracted manually.
机译:这项研究的目的是开发一种用于诊断肺栓塞的通气-灌注(V-P)肺闪烁图的全自动方法。训练了一个人工神经网络,使用从每组V-P闪烁图中自动获得的18个特征来诊断肺栓塞。用于处理图像的技术包括其与模板的对齐,基于通气和灌注图像的商图像的构造以及描述商图像中V-P不匹配的度量的计算。模板代表正常大小和形状的肺,无任何病理变化。未能正确对齐模板的图像被检测到并自动排除。排除那些未与模板正确对齐的V-P闪烁图后,在连续的疑似肺栓塞患者的训练组中保留了478 V-P闪烁图,另外87 V-P闪烁图形成了一个单独的测试组,该组包含接受过肺血管造影的患者。神经网络的性能(以接收器工作特性曲线下的面积衡量)在训练组中为0.87(95%置信范围0.82-0.92),在测试组中为0.79(0.69-0.88)。结论是,可以使用完全自动化的方法来解释V-P闪烁图。此方法的性能与以前介绍的其他方法类似,后者是手动提取特征的。

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