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Hierarchical Fine-Tuning for joint Liver Lesion Segmentation and Lesion Classification in CT

机译:CT肝脏病变分割和病变分类的分级微调

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We present an automatic method for joint liver lesion segmentation and classification using a hierarchical fine-tuning framework. Our dataset is small, containing 332 2-D CT examinations with lesion annotated into 3 lesion types: cysts, hemangiomas, and metastases. Using a cascaded U-net that performs segmentation and classification simultaneously, we trained a strong lesion segmentation model on the dataset of MICCAI 2017 Liver Tumor Segmentation (LiTS) Challenge. We used the trained weights to fine-tune a slightly modified model to obtain improved lesion segmentation and classification, on the smaller dataset. Since pre-training was done with similar data on a related task, we were able to learn more representative features (especially higher-level features in the U-Net’s encoder), and improve pixel-wise classification results. We show an improvement of over 10% in Dice score and classification accuracy, compared to a baseline model. We further improve the classification performance by hierarchically freezing the encoder part of the network and achieve an improvement of over 15% in Dice score and classification accuracy. We compare our results with an existing method and show an improvement of 14% in the success rate and 12% in the classification accuracy.
机译:我们提出了一种使用分层微调框架进行关节肝病变分割和分类的自动方法。我们的数据集很小,包含332个2-D CT检查,病变注释为3种病变类型:囊肿,血管瘤和转移灶。使用同时执行分割和分类的级联U网络,我们在MICCAI 2017肝肿瘤分割(LiTS)挑战数据集上训练了强大的病变分割模型。我们使用训练后的权重来微调稍微修改的模型,以在较小的数据集上获得改进的病变分割和分类。由于预训练是在相关任务上使用相似的数据完成的,因此我们能够了解更多具有代表性的功能(尤其是U-Net编码器中的更高级别的功能),并改善了按像素分类的结果。与基线模型相比,我们在Dice得分和分类准确性方面的改进幅度超过10%。我们通过分层冻结网络的编码器部分来进一步提高分类性能,并实现Dice得分和分类准确性提高15%以上。我们将结果与现有方法进行比较,结果显示成功率提高了14%,分类准确性提高了12%。

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