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Automatic adjustment of display window (gray level) for MR images using a neural network

机译:使用神经网络自动调整MR图像的显示窗口(灰度级)

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Abstract: We have developed a system to automatically adjust the display window width and level (WWL) for MR images using a neural network. There were three main points in the development of our system as follows: (1) We defined an index for the clarity of a displayed image, and we call this index 'EW'. EW is a quantitative measure of the clarity of an image displayed in a certain WWL, and can be derived from the difference between gray-level with the WWL adjusted by a human expert and with the WWL adjusted by this automatic system. (2) We extracted a group of six features from a gray-level histogram of displayed images. We designed a neural network which is able to learn the relationship between these features and the desired output (teaching signal), 'EQ', which is normalized to 0 to 1.0 from EW. Learning was performed using a back-propagation method. As a result, the neural network after learning is able to provide a quantitative measure, 'Q', of the clarity of images displayed in the designated WWL. (3) Using the 'Hill climbing' method, we have been able to determine the best possible WWL for displaying images. (a) The maximum Q is searched for and found from roughly sampled WWLs. (b) The WWL sampling intervals are gradually made finer. (c) The WWL with maximum Q searched in (b) is selected as the best possible WWL. We have tested this technique for MR brain images. The results show that this system can adjust WWL comparable to that adjusted by a human expert for the majority of test images. The neural network is effective for the automatic adjustment of the display window for MR images. We are now studying the application of this system to sagittal and coronal images. !
机译:摘要:我们开发了一种系统,可以使用神经网络自动调整MR图像的显示窗口宽度和水平(WWL)。我们系统的开发主要有以下三个方面:(1)我们为显示图像的清晰度定义了一个索引,我们将该索引称为“ EW”。 EW是定量显示在特定WWL中的图像的清晰度的定量度量,可以从由专家调整的WWL与由该自动系统调整的WWL的灰度之间的差异得出。 (2)我们从显示图像的灰度直方图中提取了一组六个特征。我们设计了一个神经网络,该网络能够了解这些功能与所需输出(教学信号)“ EQ”之间的关系,该输出从EW标准化为0到1.0。使用反向传播方法进行学习。结果,学习后的神经网络能够对指定的WWL中显示的图像的清晰度提供定量度量“ Q”。 (3)使用“爬山”方法,我们已经能够确定用于显示图像的最佳WWL。 (a)从粗略采样的WWL中搜索并找到最大Q。 (b)WWL采样间隔逐渐变细。 (c)选择在(b)中搜索到的具有最大Q的WWL作为可能的最佳WWL。我们已经针对MR脑图像测试了该技术。结果表明,对于大多数测试图像,该系统可以调整WWL的水平,与由专家调整的WWL相当。神经网络对于自动调整MR图像的显示窗口非常有效。我们现在正在研究该系统在矢状和冠状图像中的应用。 !

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