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Usefulness of fine-tuning for deep learning based multi-organ regions segmentation method from non-contrast CT volumes using small training dataset

机译:使用小型训练数据集对基于深度学习的多器官区域分割方法进行微调的实用性

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This paper presents segmentation of multiple organ regions from non-contrast CT volume based on deep learning. Also, we report usefulness of fine-tuning using a small number of training data for multi-organ regions segmentation. In medical image analysis system, it is vital to recognize patient specific anatomical structures in medical images such as CT volumes. We have studied on a multi-organ regions segmentation method from contrast-enhanced abdominal CT volume using 3D U-Net. Since non-contrast CT volumes arc also usually used in the medical field, segmentation of multi-organ regions from non-contrast CT volume is also important for the medical image analysis system. In this study, we extract multi-organ regions from non-contrast CT volume using 3D U-Nct and a small number of training data. We perform fine-tuning from a pre-trained model obtained from the previous studies. The pre-trained 3D U-Nct model is trained by a large number of contrast enhanced CT volumes. Then, fine-tuning is performed using a small number of non-contrast CT volumes. The experimental results showed that the fine-tuned 3D U-Net model could extract multi-organ regions from non-contrast CT volume. The proposed training scheme using fine-tuning is useful for segmenting multi-organ regions using a small number of training data.
机译:本文提出了基于深度学习的非对比CT体积对多个器官区域的分割。此外,我们报告了使用少量训练数据进行多器官区域细分的微调的有用性。在医学图像分析系统中,至关重要的是要在医学图像(例如CT体积)中识别患者特定的解剖结构。我们已经研究了使用3D U-Net从对比增强腹部CT体积中进行的多器官区域分割方法。由于非造影CT体积通常也用于医学领域,因此从非造影CT体积中分割多器官区域对于医学图像分析系统也很重要。在这项研究中,我们使用3D U-Nct和少量训练数据从非造影剂CT量中提取多器官区域。我们从先前研究获得的预训练模型中进行微调。预训练的3D U-Nct模型通过大量增强对比的CT量进行训练。然后,使用少量的非对比CT体积执行微调。实验结果表明,微调的3D U-Net模型可以从非对比CT体积中提取多器官区域。所提出的使用微调的训练方案对于使用少量训练数据分割多器官区域很有用。

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