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Deep neural networks trained for segmentation are sensitive to brightness changes: preliminary results

机译:用于分割的深神经网络对亮度变化敏感:初步结果

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Medical images of a patient may have a significantly different appearance depending on imaging modality (e.g. MRI vs. CT), sequence type (e.g., T1-weighted MRI vs. T2-weightcd MRI), and even manufacturer/model of equipment used for the same modality and sequence type (e.g. SIEMENS vs GE). Since in the context of deep learning training and test data often come from different institutions, it is important to determine how well neural networks generalize when image appearance varies. There is currently no systematic answer to this question. In this study, we investigate how deep neural networks trained for segmentation generalize. Our analysis is based on synthesizing a series of datascts of images with the target object of the same shape but with varying pixel intensity of the foreground object and the background. This simulates basic effects of changing equipment models and sequence types. We also consider scenarios when datasets with different image properties are combined to determine whether generalizability of the network to other scenarios is improved. We found that the generalizability of segmentation networks to changing intensities is poor. We also found that the generalizability is somewhat improved when different datasets are combined but that generalizability is typically limited to data similar to the two types of datasets included in training and not to datasets with different image intensities.
机译:根据成像模态(例如MRI与CT),序列类型(例如,T1加权的MRI与T2-PREESCD MRI),甚至用于该设备的制造商/型号相同的模态和序列类型(例如Siemens VS GE)。由于在深度学习培训和测试数据的背景下,经常来自不同的机构,重要的是确定神经网络如何在图像外观变化时概括。目前没有对这个问题的系统答案。在这项研究中,我们调查了如何为分割训练的深度神经网络概括。我们的分析基于合成了一系列具有相同形状的目标对象的图像的一系列图像,但是具有前景对象和背景的不同像素强度。这模拟了更改设备模型和序列类型的基本效果。我们还考虑将具有不同图像属性的数据集组合以便确定网络是否可持续到其他方案的情况。我们发现,分割网络转变强度的普遍性是差的。我们还发现,当组合不同的数据集但是,当组合不同的数据集时,概括性是有些改进的,但是,概括性通常限于类似于训练中包括的两种类型的数据集而不是具有不同图像强度的数据集的数据。

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