论文标题
迭代修剪的深度学习合奏,用于胸部X射线中的COVID-19检测
Iteratively Pruned Deep Learning Ensembles for COVID-19 Detection in Chest X-rays
论文作者
论文摘要
我们证明了使用迭代修剪的深度学习模型集合来检测与胸部X射线的COVID-19的肺表现。这种疾病是由新型严重的急性呼吸综合症冠状病毒2(SARS-COV-2)病毒引起的,也称为新型冠状病毒(2019-NCOV)。自定义的卷积神经网络和一系列ImageNet预处理模型在患者级别的公开CXR集合中进行了培训和评估,以学习特定于模态特异性特征表示。在将CXR分类为正常的相关任务中,表现出细菌性肺炎或COVID-19-病毒异常的相关任务中,学习的知识经过转移和微调,以提高性能和概括。最佳性能模型是迭代修剪以降低复杂性并提高记忆效率。通过不同的合奏策略将表现最佳的修剪模型的预测结合在一起,以提高分类性能。经验评估表明,表现最佳的修剪模型的加权平均值可显着提高性能,从而在检测CXRS上检测COVID-19的发现时,曲线的准确性为99.01%,曲线下的面积为0.9972。特定于模态知识转移,迭代模型修剪和集合学习的综合使用导致了改进的预测。我们希望该模型可以快速采用使用胸部X光片的Covid-19筛选。
We demonstrate use of iteratively pruned deep learning model ensembles for detecting pulmonary manifestation of COVID-19 with chest X-rays. This disease is caused by the novel Severe Acute Respiratory Syndrome Coronavirus 2 (SARS-CoV-2) virus, also known as the novel Coronavirus (2019-nCoV). A custom convolutional neural network and a selection of ImageNet pretrained models are trained and evaluated at patient-level on publicly available CXR collections to learn modality-specific feature representations. The learned knowledge is transferred and fine-tuned to improve performance and generalization in the related task of classifying CXRs as normal, showing bacterial pneumonia, or COVID-19-viral abnormalities. The best performing models are iteratively pruned to reduce complexity and improve memory efficiency. The predictions of the best-performing pruned models are combined through different ensemble strategies to improve classification performance. Empirical evaluations demonstrate that the weighted average of the best-performing pruned models significantly improves performance resulting in an accuracy of 99.01% and area under the curve of 0.9972 in detecting COVID-19 findings on CXRs. The combined use of modality-specific knowledge transfer, iterative model pruning, and ensemble learning resulted in improved predictions. We expect that this model can be quickly adopted for COVID-19 screening using chest radiographs.