The Effect of Preprocessing on Convolutional Neural Networks for Medical Image Segmentation

K. B. D. Raad, Karin A. van Garderen, M. Smits, S. V. D. Voort, Fatih Incekara, E. Oei, J. Hirvasniemi, S. Klein, M. P. Starmans
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引用次数: 10

Abstract

In recent years, deep learning has become the leading method for medical image segmentation. While the majority of studies focus on developments of network architectures, several studies have shown that non-architectural factors also play a substantial role in performance improvement. An important factor is preprocessing. However, there is no agreement on which preprocessing steps work best for different applications. The aim of this study was to investigate the effect of preprocessing on model performance. To this end, we conducted a systematic evaluation of 24 preprocessing configurations on three clinical application datasets (brain, liver, and knee). Different configurations of normalization, region of interest selection, bias field correction, and resampling methods were applied before training one convolutional neural network. Performance varied up to 64 percentage points between configurations within one dataset. Across the three datasets, different configurations performed best. In conclusion, to improve model performance, preprocessing should be tuned to the specific segmentation application.
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预处理对卷积神经网络医学图像分割的影响
近年来,深度学习已成为医学图像分割的主要方法。虽然大多数研究关注的是网络架构的发展,但也有一些研究表明,非架构因素在性能改进中也起着重要作用。一个重要的因素是预处理。然而,对于哪些预处理步骤最适合不同的应用程序,目前还没有达成一致意见。本研究的目的是探讨预处理对模型性能的影响。为此,我们在三个临床应用数据集(脑、肝和膝关节)上对24种预处理配置进行了系统评估。在训练一个卷积神经网络之前,采用了不同的归一化配置、兴趣区域选择、偏置场校正和重采样方法。在一个数据集中,不同配置之间的性能差异高达64个百分点。在三个数据集中,不同的配置表现最好。总之,为了提高模型性能,预处理应该针对特定的分割应用进行调整。
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