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A Curriculum Learning Strategy to Enhance the Accuracy of Classification of Various Lesions in Chest-PA X-ray Screening for Pulmonary Abnormalities

机译:一种在胸部PA X线检查中筛查肺部异常的方法以提高各种病变分类的准确性

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摘要

We evaluated the efficacy of a curriculum learning strategy using two steps to detect pulmonary abnormalities including nodule[s], consolidation, interstitial opacity, pleural effusion, and pneumothorax with chest-PA X-ray (CXR) images from two centres. CXR images of 6069 healthy subjects and 3417 patients at AMC and 1035 healthy subjects and 4404 patients at SNUBH were obtained. Our approach involved two steps. First, the regional patterns of thoracic abnormalities were identified by initial learning of patch images around abnormal lesions. Second, Resnet-50 was fine-tuned using the entire images. The network was weakly trained and modified to detect various disease patterns. Finally, class activation maps (CAM) were extracted to localise and visualise the abnormal patterns. For average disease, the sensitivity, specificity, and area under the curve (AUC) were 85.4%, 99.8%, and 0.947, respectively, in the AMC dataset and 97.9%, 100.0%, and 0.983, respectively, in the SNUBH dataset. This curriculum learning and weak labelling with high-scale CXR images requires less preparation to train the system and could be easily extended to include various diseases in actual clinical environments. This algorithm performed well for the detection and classification of five disease patterns in CXR images and could be helpful in image interpretation.
机译:我们使用两个步骤来检测肺部异常,包括结节,巩固,间质混浊,胸腔积液和气胸,并通过两个中心的胸部PA X射线(CXR)图像评估了课程学习策略的有效性。获得了6069名健康受试者和3417名AMC患者以及1035名健康受试者和4404名SNUBH患者的CXR图像。我们的方法涉及两个步骤。首先,通过初步了解异常病变周围的斑块图像来确定胸腔异常的区域模式。其次,使用整个图像对Resnet-50进行微调。该网络训练有素,经过修改,可以检测各种疾病模式。最后,提取类激活图(CAM)以定位和可视化异常模式。对于平均疾病,AMC数据集的敏感性,特异性和曲线下面积(AUC)分别为85.4%,99.8%和0.947,而SNUBH数据集分别为97.9%,100.0%和0.983。这种课程学习和使用高品质CXR图像的弱标签需要较少的准备来训练系统,并且可以轻松扩展以涵盖实际临床环境中的各种疾病。该算法对CXR图像中的五种疾病模式的检测和分类效果良好,可能有助于图像解释。

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