首页> 外文期刊>Journal of mechanics in medicine and biology >A LUNG IMAGE CLASSIFICATION METHOD: A CLASSIFIER CONSTRUCTED BY COMBINING IMPROVED VGG16 AND GRADIENT BOOSTING DECISION TREE
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A LUNG IMAGE CLASSIFICATION METHOD: A CLASSIFIER CONSTRUCTED BY COMBINING IMPROVED VGG16 AND GRADIENT BOOSTING DECISION TREE

机译:一种肺图像分类方法:通过组合改进的vgg16和梯度升压决策树构造的分类器

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摘要

Early classification and diagnosis of lung diseases is essential to increase the best chance of patient recovery and survival. Using deep learning to make it possible, the key is how to improve the robustness of the deep learning model and the accuracy of lung image classification. In order to classify the five lung diseases, we used transfer learning to improve and fine-tune the fully connected layer of VGG16, and improve the cross entropy loss function, combined with the gradient boosting decision tree (GBDT), to establish a deep learning model called a classifier. The model was trained using the ChestX-ray14 dataset. On the test set, the classification accuracy of our model for the five lung diseases was 82.43%, 95.37%, 82.11%, 79.81%, 78.13%, which is better than the best published results. The F1 value is 0.456 (95% CI 0.415, 0.496). The robustness of the model exceeds CheXNet and average performance of doctors. This study clarified that the model has strong robustness and effectiveness in classifying five lung diseases.
机译:肺部疾病的早期分类和诊断对于增加患者康复和生存的最佳机会至关重要。利用深度学习使之成为可能,关键是如何提高深度学习模型的鲁棒性和肺图像分类的准确性。为了对五种肺部疾病进行分类,我们使用转移学习改进和微调VGG16的完全连接层,并改进交叉熵损失函数,结合梯度提升决策树(GBDT),建立了一个称为分类器的深度学习模型。使用ChestX-ray14数据集对模型进行训练。在测试集上,我们的模型对五种肺部疾病的分类准确率分别为82.43%、95.37%、82.11%、79.81%和78.13%,优于最佳公布结果。F1值为0.456(95%可信区间为0.415,0.496)。该模型的鲁棒性超过了CheXNet和医生的平均表现。本研究表明,该模型对五种肺部疾病的分类具有较强的鲁棒性和有效性。

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