论文标题

使用一系列后续X射线进行疾病分类的深度学习技术

A Deep Learning Technique using a Sequence of Follow Up X-Rays for Disease classification

论文作者

Vijayaraghavan, Sairamvinay, Haddad, David, Huang, Shikun, Choi, Seongwoo

论文摘要

使用深度学习技术预测肺和心脏基疾病的能力对于许多研究人员,尤其是在世界各地的医学领域中。在本文中,我们介绍了使用X射线的非常熟悉的疾病分类问题的独特前景。我们提出了一个假设,即与使用内部CNN的一个胸部X射线图像输入相比,在疾病分类中包含的X射线射线在其最新三个胸部X射线图像的后续病史中会表现更好。我们已经发现,我们建议解决此问题的通用深度学习体系结构,每个患者提供的每个样品提供了3个输入X射线图像。在本文中,我们还确定,在输出分类之前没有其他层,CNN模型将提高预测每个患者疾病标签的性能。我们在ROC曲线和AUROC分数中提供了结果。我们定义了一种收集三个X射线图像以训练深度学习模型的新方法,我们得出的结论明显改善了模型的性能。我们已经证明,Resnet通常比在特征提取阶段使用的任何其他CNN模型都具有更好的结果。借助我们最初的数据预处理,图像培训和预培训模型的方法,我们认为当前的研究将有助于世界各地的许多医疗机构,这将改善患者症状的预测,并通过更准确的治愈方法进行诊断。

The ability to predict lung and heart based diseases using deep learning techniques is central to many researchers, particularly in the medical field around the world. In this paper, we present a unique outlook of a very familiar problem of disease classification using X-rays. We present a hypothesis that X-rays of patients included with the follow up history of their most recent three chest X-ray images would perform better in disease classification in comparison to one chest X-ray image input using an internal CNN to perform feature extraction. We have discovered that our generic deep learning architecture which we propose for solving this problem performs well with 3 input X ray images provided per sample for each patient. In this paper, we have also established that without additional layers before the output classification, the CNN models will improve the performance of predicting the disease labels for each patient. We have provided our results in ROC curves and AUROC scores. We define a fresh approach of collecting three X-ray images for training deep learning models, which we have concluded has clearly improved the performance of the models. We have shown that ResNet, in general, has a better result than any other CNN model used in the feature extraction phase. With our original approach to data pre-processing, image training, and pre-trained models, we believe that the current research will assist many medical institutions around the world, and this will improve the prediction of patients' symptoms and diagnose them with more accurate cure.

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