基于深度迁移学习的胸片解剖结构分割

H. Oliveira, J. A. D. Santos
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引用次数: 15

摘要

胸部前后位x线片解剖结构分割是生物医学图像分析的经典任务。在过去的几年中,深度学习已被广泛用于几种医学图像模式的疾病检测和诊断,但深度方法的可移植性仍然有限,阻碍了预训练模型在新数据中的可重用性。我们通过提出一种基于无监督图像翻译架构的胸部x射线图像跨数据集迁移学习的新方法来解决这个问题。我们的迁移学习方法通过在JSRT数据集上使用预训练模型,并且不使用目标数据集的标记数据,在Montgomery Set中实现了88.20%的肺场分割的Jaccard值。在无监督和半监督转移中进行了几个实验,当使用有限数量的标签时,我们的方法始终优于简单的微调。对Montgomery样本和JSRT数据集的预训练模型进行锁骨和心脏分割任务的定性分析。我们的次要贡献包括在JSRT解剖结构分割方面的几个实验,在肺(96.02%)、心脏(89.64%)和锁骨分割(87.30%)方面取得了最先进的结果。
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Deep Transfer Learning for Segmentation of Anatomical Structures in Chest Radiographs
Segmentation of anatomical structures in Chest Posterior-Anterior Radiographs is a classical task on biomedical image analysis. Deep Learning has been widely used for detection and diagnosis of illnesses in several medical image modalities over the last years, but the portability of deep methods is still limited, hampering the reusability of pre-trained models in new data. We address this problem by proposing a novel method for Cross-Dataset Transfer Learning in Chest X-Ray images based on Unsupervised Image Translation architectures. Our Transfer Learning approach achieved Jaccard values of 88.20% on lung field segmentation in the Montgomery Set by using a pre-trained model on the JSRT dataset and no labeled data from the target dataset. Several experiments in unsupervised and semi-supervised transfer were performed and our method consistently outperformed simple fine-tuning when a limited amount of labels is used. Qualitative analysis on the tasks of clavicle and heart segmentation are also performed on Montgomery samples and pre-trained models from JSRT dataset. Our secondary contributions encompass several experiments in anatomical structure segmentation on JSRT, achieving state-of-the-art results in lung field (96.02%), heart (89.64%) and clavicle segmentation (87.30%).
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