Automatic detection Using Deep Convolutional Neural Networks for 11 Abnormal Positioning of Tubes and Catheters in Chest X-ray Images

Abdelfettah Elaanba, Mohammed Ridouani, L. Hassouni
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引用次数: 4

Abstract

Tubes and Catheters are very important devices for saving patients' lives. There is a variety of tubes and Catheters; those especially used during this study are: Endotracheal tube (ETT), Nasogastric (NG)], and Swan Ganz catheter. Errors in positioning these kinds of devices, if not detected early my caused crucial complications (even death). Airway tube malposition in adult patients intubated is seen in up to 25% of cases. Doctors and nurses use checklists to make sure the medical procedure goes smoothly, but these steps take a long time and more resources with the possibility of human errors during verification protocols especially when hospitals are at full capacity. In this article, we propose using transfer learning to train and compare several Keras applications on classification tube problems; the best-selected networks can help in the development of CAD (Computer Aided Detection). The main advantage of using a single Deep Convolutional Neural Network DCNN to detect abnormal positioning of several lines based on chest X-ray image processing is to avoid the complexity caused by using a DCNN (Deep Convolutional Neural Network) network for each type of line. Efficient DCNN can detect abnormal positioning in real-time and immediately notify doctors to adjust tube position. All tested networks during this work are improved after augmentations and parameters tuning, we get the best score for Resnet50V2 model AUC (80%).
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基于深度卷积神经网络的胸部x线图像中11种导管定位异常的自动检测
导管是挽救病人生命的重要设备。有各种各样的管子和导管;在本研究中特别使用的导管有:气管导管(ETT)、鼻胃导管(NG)和Swan Ganz导管。如果不及早发现这些设备的定位错误,可能会导致严重的并发症(甚至死亡)。气管管错位在成人患者插管见于高达25%的病例。医生和护士使用检查清单来确保医疗程序顺利进行,但这些步骤需要很长时间和更多资源,并且在验证协议期间可能出现人为错误,尤其是在医院满负荷运转的情况下。在本文中,我们提出使用迁移学习来训练和比较几种Keras在分类管问题上的应用;最佳选择的网络可以帮助CAD(计算机辅助检测)的发展。基于胸部x线图像处理,使用单个深度卷积神经网络DCNN检测多条线的异常定位,其主要优点是避免了对每条线使用一个深度卷积神经网络所带来的复杂性。高效的DCNN可以实时发现异常定位,并立即通知医生调整管位。经过增强和参数调优后,所有测试网络都得到了改进,我们获得了Resnet50V2模型AUC的最佳分数(80%)。
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