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Emergency Clinical Procedure Detection With Deep Learning

机译:深度学习的紧急临床程序检测

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Information about a patient’s state is critical for hospitals to provide timely care and treatment. Prior work on improving the information flow from emergency medical services (EMS) to hospitals demonstrated the potential of using automated algorithms to detect clinical procedures. However, prior work has not made effective use of video sources that might be available during patient care. In this paper we explore the use convolutional neural networks (CNNs) on raw video data to determine how well video data alone can automatically identify clinical procedures. We apply multiple deep learning models to this problem, with significant variation in results. Our findings indicate performance improvements compared to prior work, but also indicate a need for more training data to reach clinically deployable levels of success.
机译:有关患者状态的信息对于医院及时提供护理和治疗至关重要。先前有关改善从紧急医疗服务(EMS)到医院的信息流的工作证明了使用自动化算法检测临床程序的潜力。但是,先前的工作并未有效利用在患者护理期间可能会使用的视频源。在本文中,我们探索对原始视频数据使用卷积神经网络(CNN),以确定仅视频数据可以自动识别临床程序的程度。我们对此问题应用了多种深度学习模型,结果差异很大。我们的发现表明与以前的工作相比,性能有所提高,但也表明需要更多的培训数据才能达到临床可部署的成功水平。

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