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DenXFPN: Pulmonary Pathologies Detection Based on Dense Feature Pyramid Networks

机译:DenXFPN:基于密集特征金字塔网络的肺部病理检测

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Computer-aided detection and diagnosis (CAD) have been applied to many departments of medical institutions, and early detection of diseases can prevent serious health loss. Pulmonary diseases generate negative effects on human health, even leading to death. The chest X-ray is a common examination for diagnosis of pulmonary diseases. The experienced radiologist can quickly infer patients' symptoms by screening the chest X-ray image. While in some developing countries or remote rural areas, due to the lack of experienced radiologists or doctors, patients may be misdiagnosed. Many efforts have been spent on developing an effective auxiliary detection system to provide medical workers with evidence on diseases. In particular, detecting pulmonary complication via chest X-ray images is one of the most challenging tasks. In this paper, we transform the pulmonary complications detection task into a multi-binary classification task for each pulmonary pathology, and propose a new classification model, DenXFPN (for X-ray). DenXFPN combines multiple feature maps at different scales extracted through a densely convolutional neural network. Our model achieves 0.827 on the area under the receiver operating characteristic curve (AUC) metric on average, which outperforms the state-of-the-art results on most of all pathologies in the Chest X-ray14 dataset.
机译:计算机辅助检测与诊断(CAD)已应用于医疗机构的许多部门,疾病的早期检测可以防止严重的健康损失。肺部疾病对人类健康产生负面影响,甚至导致死亡。胸部X光检查是诊断肺部疾病的常见检查。经验丰富的放射科医生可以通过检查胸部X射线图像来快速推断患者的症状。在某些发展中国家或偏远的农村地区,由于缺乏经验丰富的放射科医生或医生,可能会误诊患者。在开发有效的辅助检测系统上已经花费了很多努力,以向医务人员提供疾病的证据。特别是,通过胸部X射线图像检测肺部并发症是最具挑战性的任务之一。在本文中,我们将肺部并发症检测任务转换为针对每种肺部病理的多二元分类任务,并提出了一种新的分类模型DenXFPN(用于X射线)。 DenXFPN组合了通过密集卷积神经网络提取的不同比例的多个特征图。我们的模型在接收器工作特征曲线(AUC)指标下的平均面积达到0.827,这优于Chest X-ray14数据集中大多数病理学的最新结果。

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