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The Utility of Applying Various Image Preprocessing Strategies to Reduce the Ambiguity in Deep Learning-based Clinical Image Diagnosis

机译:应用各种图像预处理策略的实用性降低基于深度学习的临床图像诊断中的模糊性

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Purpose: A general problem of machine-learning algorithms based on the convolutional neural network (CNN) technique is that the reason for the output judgement is unclear. The purpose of this study was to introduce a strategy that may facilitate better understanding of how and why a specific judgement was made by the algorithm. The strategy is to preprocess the input image data in different ways to highlight the most important aspects of the images for reaching the output judgement.Materials and Methods: Tsub2/sub-weighted brain image series falling into two age-ranges were used. Classifying each series into one of the two age-ranges was the given task for the CNN model. The images from each series were preprocessed in five different ways to generate five different image sets: (1) subimages from the inner area of the brain, (2) subimages from the periphery of the brain, (3–5) subimages of brain parenchyma, gray matter area, and white matter area, respectively, extracted from the subimages of (2). The CNN model was trained and tested in five different ways using one of these image sets. The network architecture and all the parameters for training and testing remained unchanged.Results: The judgement accuracy achieved by training was different when the image set used for training was different. Some of the differences was statistically significant. The judgement accuracy decreased significantly when either extra-parenchymal or gray matter area was removed from the periphery of the brain ( P 0.05).Conclusion: The proposed strategy may help visualize what features of the images were important for the algorithm to reach correct judgement, helping humans to understand how and why a particular judgement was made by a CNN.
机译:目的:基于卷积神经网络(CNN)技术的机器学习算法的一般问题是输出判断的原因尚不清楚。本研究的目的是介绍一个可能有助于更好地理解该算法如何以及为什么特定判断的方法。该策略是以不同的方式预处理输入图像数据,以突出显示图像的最重要方面,以实现输出判断。材料和方法:T 2 - 重量脑图像系列落入两个年龄 - 使用范围。将每个系列分类为两个龄范围之一是CNN模型的给定任务。每个系列的图像以五种不同的方式预处理,以产生五种不同的图像集:(1)来自大脑内部区域的(2)来自大脑周边的子像,(3-5)脑实质的子宫子分别从(2)的子图像中提取的灰质区域和白质区域。使用这些图像集之一以五种不同的方式培训和测试CNN模型。网络架构和用于训练和测试的所有参数保持不变。结果:当用于训练的图像集不同时,通过培训实现的判断准确性不同。一些差异是统计学意义。从大脑周边移除额外实质或灰质区域时,判断准确度会显着降低(P <0.05)。结论:所提出的策略可以帮助可视化图像的特征对于算法来达到正确判断很重要,帮助人类了解CNN的特定判断如何以及为何。

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