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Classification of Pathological Types of Lung Cancer from CT Images by Deep Residual Neural Networks with Transfer Learning Strategy

机译:通过转移学习策略对CT图像肺癌病理类型的分类

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摘要

Lung cancer is one of the most harmful malignant tumors to human health. The accurate judgment of the pathological type of lung cancer is vital for treatment. Traditionally, the pathological type of lung cancer requires a histopathological examination to determine, which is invasive and time consuming. In this work, a novel residual neural network is proposed to identify the pathological type of lung cancer via CT images. Due to the low amount of CT images in practice, we explored a medical-to-medical transfer learning strategy. Specifically, a residual neural network is pre-trained on public medical images dataset luna16, and then fine-tuned on our intellectual property lung cancer dataset collected in Shandong Provincial Hospital. Data experiments show that our method achieves 85.71% accuracy in identifying pathological types of lung cancer from CT images and outperforming other models trained with 2054 labels. Our method performs better than AlexNet, VGG16 and DenseNet, which provides an efficient, non-invasive detection tool for pathological diagnosis.
机译:肺癌是人类健康最有害的恶性肿瘤之一。治疗病理型肺癌的准确判断对于治疗至关重要。传统上,病理类型的肺癌需要组织病理学检查来确定,这是侵入性和耗时的。在这项工作中,提出了一种新的残留神经网络,通过CT图像识别肺癌的病理型。由于实践中的CT图像量低,我们探讨了医疗到医疗转移学习策略。具体而言,剩余神经网络在公共医学图像数据集Luna16上进行预先培训,然后在山东省级医院收集的知识产权肺癌数据集进行微调。数据实验表明,我们的方法达到了85.71%的准确性,可识别来自CT图像的病理类型的肺癌,优于2054个标签培训的其他型号。我们的方法比AlexNet,VGG16和DENSenet更好,为病理诊断提供了高效的非侵入性检测工具。

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