首页> 外文会议>Engineering in Medicine and Biology Society, 1998. Proceedings of the 20th Annual International Conference of the IEEE >A neural network classifier for the automatic interpretation of epileptogenic zones in F-18FDG brain PET
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A neural network classifier for the automatic interpretation of epileptogenic zones in F-18FDG brain PET

机译:用于自动解释F-18FDG脑PET中癫痫发生区的神经网络分类器

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For the objective interpretation of cerebral metabolic patterns in epilepsy patients, we developed a computer-aided classifier using artificial neural network. We studied interictal brain FDG PET scans of 257 epilepsy patients which were diagnosed as normal (n=64), left temporal lobe epilepsy (n=112), or right temporal robe epilepsy (n=81) by visual interpretation. Automatically segmented volumes of interest (VOI) were used to reliably extract the features representing patterns of cerebral metabolism. All images were spatially normalized to MNI standard PET template and smoothed with 16 mm FWHM Gaussian kernel using SPM96. Mean count in cerebral region was normalized. The VOI for 34 cerebral regions were previously defined on the standard template and 17 different counts of mirrored regions to hemispheric midline were extracted from spatially normalized images. A three-layer feedforward error backpropagation neural network classifier with 17 input nodes and 3 output nodes was used. The network was trained to interpret metabolic patterns and produce identical diagnoses with those of expert viewers. The performance of the neural network was optimized by testing with 5/spl sim/40 nodes in hidden layer. Randomly selected 40 images from each group were used to train the network and the remainders were used to test the learned network. The optimized neural network gave a maximum agreement rate of 80.3% with expert viewers. It used 20 hidden nodes and was trained for 1508 epochs. Also, neural network gave agreement rates of 75/spl sim/80% with 10 or 30 nodes in hidden layer. We conclude that artificial neural network performed as well as human experts and could be potentially useful tool as clinical decision supporting tool for the localization of epileptogenic zones.
机译:为了客观解释癫痫患者的脑代谢模式,我们开发了使用人工神经网络的计算机辅助分类器。我们研究了通过视觉解释诊断为正常(n = 64),左颞叶癫痫(n = 112)或右颞叶癫痫(n = 81)的257例癫痫患者的大脑间FDG PET扫描。使用自动分割的目标体积(VOI)来可靠地提取代表脑代谢模式的特征。将所有图像在空间上均化为MNI标准PET模板,并使用SPM96用16 mm FWHM高斯核进行平滑处理。大脑区域的平均计数被标准化。预先在标准模板上定义了34个大脑区域的VOI,并从空间归一化图像中提取了到半球中线的17个不同的镜像区域计数。使用具有17个输入节点和3个输出节点的三层前馈误差反向传播神经网络分类器。该网络经过培训可以解释新陈代谢模式,并产生与专家观众相同的诊断结果。通过在隐藏层中使用5 / spl sim / 40节点进行测试,优化了神经网络的性能。从每组中随机选择40张图像来训练网络,其余部分用于测试学习到的网络。优化的神经网络与专家观众的最大同意率为80.3%。它使用了20个隐藏节点,并经过了1508个时代的训练。此外,神经网络在隐藏层中有10或30个节点的情况下协议达成率为75 / spl sim / 80%。我们得出的结论是,人工神经网络的表现与人类专家一样出色,并且可能作为潜在癫痫发作区域定位的临床决策支持工具而成为潜在有用的工具。

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