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Automated Identification of Thoracic Pathology from Chest Radiographs with Enhanced Training Pipeline

机译:增强训练管道的胸部射线照相自动识别胸部射线照相

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Chest x-rays are the most common radiology studies for diagnosing lung and heart disease. Hence, a system for automated pre-reporting of pathologic findings on chest x-rays would greatly enhance radiologists' productivity. To this end, we investigate a deep-learning framework with novel training schemes for classification of different thoracic pathology labels from chest x-rays. We use the currently largest publicly available annotated dataset ChestX-ray14 of 112,120 chest radiographs of 30,805 patients. Each image was annotated with either a 'NoFinding' class, or one or more of 14 thoracic pathology labels. Subjects can have multiple pathologies, resulting in a multi-class, multi-label problem. We encoded labels as binary vectors using k-hot encoding. We study the ResNet34 architecture, pre-trained on ImageNet, where two key modifications were incorporated into the training framework: (1) Stochastic gradient descent with momentum and with restarts using cosine annealing, (2) Variable image sizes for fine-tuning to prevent overfitting. Additionally, we use a heuristic algorithm to select a good learning rate. Learning with restarts was used to avoid local minima. Area Under receiver operating characteristics Curve (AUC) was used to quantitatively evaluate diagnostic quality. Our results are comparable to, or outperform the best results of current state-of-the-art methods with AUCs as follows: Atelectasis:0.81, Cardiomegaly:0.91, Consolidation:0.81, Edema:0.92, Effusion:0.89, Emphysema: 0.92, Fibrosis:0.81, Hernia:0.84, Infiltration:0.73, Mass:0.85, Nodule:0.76, Pleural Thickening:0.81, Pneumonia:0.77, Pneumothorax:0.89 and NoFinding:0.79. Our results suggest that, in addition to using sophisticated network architectures, a good learning rate, scheduler and a robust optimizer can boost performance.
机译:胸部X射线是诊断肺和心脏病的最常见的放射学研究。因此,用于自动预报胸部X射线的病理发现的系统将极大地提高放射科医生的生产力。为此,我们调查了一个深受培训计划的深度学习框架,用于从胸部X射线分类不同胸道病理标签。我们使用目前最大的公开可用的注释数据集ChexX-ray14为112,120胸部射线照片为30,805名患者。每个图像都用'nofinding'类或14个胸道病理学标签中的一个或多个注释。受试者可以具有多种病例,导致多级多标签问题。我们使用k热编码编码标签作为二进制矢量。我们研究了resnet34架构,在想象中预先培训,其中两个关键修改被纳入训练框架:(1)随机梯度下降,动量和使用余弦退火的重启,(2)可变图像尺寸以进行微调以防止过度装箱。此外,我们使用启发式算法选择良好的学习速率。使用重新启动学习以避免本地最小值。接收器操作特性曲线(AUC)下的区域用于定量评估诊断质量。我们的结果与AUCS的最新方法的最佳结果相当,如下所示:0.81,CardIomegaly:0.91,固结:0.81,水肿:0.92,积液:0.89,肺气肿:0.92,纤维化:0.81,疝气:0.84,渗透:0.73,质量:0.85,结节:0.76,胸膜增稠:0.81,肺炎:0.77,气胸:0.89和NOFINDING:0.79。我们的结果表明,除了使用复杂的网络架构外,良好的学习率,调度程序和强大的优化器可以提高性能。

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