论文标题
多类分类的深层体系结构的不确定性驱动组合。在胸部X射线图像中应用于COVID-19的诊断
Uncertainty-driven ensembles of deep architectures for multiclass classification. Application to COVID-19 diagnosis in chest X-ray images
论文作者
论文摘要
呼吸道疾病每年杀死数百万人。这些病理学的诊断是一个手动,耗时的过程,具有间和观察者内的变异性,延迟诊断和治疗。最近的Covid-19大流行表明,需要开发系统以自动化肺炎诊断的系统,而卷积神经网络(CNN)已被证明是自动分类医学图像的绝佳选择。但是,鉴于在这种情况下需要提供置信度分类,至关重要的是量化模型预测的可靠性。在这项工作中,我们提出了一个基于贝叶斯深度学习方法的多层次合奏分类系统,以最大程度地提高性能,同时量化每个分类决策的不确定性。该工具通过根据其预测的不确定性加权结果来结合从不同体系结构中提取的信息。在实际情况下评估了贝叶斯网络的性能,在这种情况下,在四种不同的病理中同时区分了:控制与细菌性肺炎与病毒性肺炎与covid-19肺炎。使用三级决策树将4类分类分为三个二元分类,得出的准确性为98.06%,并克服了最近文献获得的结果。除了提供有关预测的可靠性的信息外,还需要减少获得此高性能的预处理。
Respiratory diseases kill million of people each year. Diagnosis of these pathologies is a manual, time-consuming process that has inter and intra-observer variability, delaying diagnosis and treatment. The recent COVID-19 pandemic has demonstrated the need of developing systems to automatize the diagnosis of pneumonia, whilst Convolutional Neural Network (CNNs) have proved to be an excellent option for the automatic classification of medical images. However, given the need of providing a confidence classification in this context it is crucial to quantify the reliability of the model's predictions. In this work, we propose a multi-level ensemble classification system based on a Bayesian Deep Learning approach in order to maximize performance while quantifying the uncertainty of each classification decision. This tool combines the information extracted from different architectures by weighting their results according to the uncertainty of their predictions. Performance of the Bayesian network is evaluated in a real scenario where simultaneously differentiating between four different pathologies: control vs bacterial pneumonia vs viral pneumonia vs COVID-19 pneumonia. A three-level decision tree is employed to divide the 4-class classification into three binary classifications, yielding an accuracy of 98.06% and overcoming the results obtained by recent literature. The reduced preprocessing needed for obtaining this high performance, in addition to the information provided about the reliability of the predictions evidence the applicability of the system to be used as an aid for clinicians.