网络参数对基于U-Net的MR图像直肠癌分割系统的影响

J. Panić, V. Giannini, Arianna Defeudis, D. Regge, G. Balestra, S. Rosati
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引用次数: 0

摘要

近年来,深度学习(DL)算法在医学成像领域的应用越来越多。但是,它们需要选择一组参数才能正确执行。在这项研究中,我们评估了三个因素(训练集的构建、网络层数和损失函数)对U-Net系统在磁共振成像(MRI)上分割局部晚期直肠癌(LARC)性能的影响。来自3个不同机构和4个不同扫描仪的图像被用于该范围,共100名患者。所有图像都经过预处理步骤,以标准化和突出肿瘤区域。两个扫描器的序列被用来构建网络,而其余的序列被用来验证性能最好的系统。从我们的结果来看,骰子相似系数不受任何评估因素的影响。相反,损失函数的选择可能会使结果偏向于精度或召回率,因此,应该根据网络的范围适当执行损失函数。此外,使用基于聚类的训练集可以略微改善性能,这可能是由于更好地表征了医学图像的异质性。
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Impact of network parameters on a U-Net based system for rectal cancer segmentation on MR images
The use of Deep Learning (DL) algorithms in the medical imaging field is increasing in recent years. However, they require the selection of a set of parameters to properly perform. In this study we evaluated the impact of three factors (the construction of the training set, the number of network layers and the loss function) on the performance of a U-Net system in the segmentation of Locally Advanced Rectal Cancer (LARC) on Magnetic Resonance Imaging (MRI). Images from 3 different institutions and 4 different scanners were used to this scope, for a total of 100 patients. All images underwent a pre-processing step to normalize and to highlight the tumoral area. The sequences of two scanners were used to construct the networks while the remaining sequences were employed for validating the best performing systems. From our results, it emerged that Dice Similarity Coefficient is not affected by any of the evaluated factors. Conversely, the choice of loss function could bias the results towards either precision or recall and, thus, it should be properly performed according to the scope of the network. Moreover, a slightly improvement of the performances was observed using a training set based on clustering, maybe due to a better representation of the heterogeneity characterizing medical images.
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