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Establishing the safety of a smart heart health monitoring service through validation

机译:通过验证来建立智能心脏健康监测服务的安全性

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In this study we discuss how validation can help to establish the safety of a mature Long Short-Term Memory (LSTM) deep learning algorithm for Atrial Fibrillation (AF) detection. We argue that safety is linked to understanding and testing the deep learning model. We put forward a test scenario for a computer aided diagnosis which incorporates the deep learning algorithm. To be specific, we mimic a situation where the system is tasked with diagnosing a new patient. Studying this model gives us the opportunity to determine how many false positives the system will produce i.e. how many normal subjects were diagnosed as AF. Avoiding false positives is an important safety aspect, because treatment, such as anticoagulation, carries the risk of death. Therefore, preventing false positives plays a significant role for the safety of a diagnosis support system. To establish the false positive performance of our mature LSTM deep learning system, we validated it with normal heart rate data (HR) from the Physionet’s fantasia database. None of the fantasia HR traces was used during the deep learning model design. Furthermore, the test data was measured with a different measurement setup than the data that was used during the deep learning training. Hence, the fantasia data is completely unknown to the deep learning algorithm. Therefore, the algorithm has to rely on the knowledge to differentiate AF and non-AF HR traces which was extracted during the learning phase. The fact that we tested the algorithm with data from normal subjects helps us to quantify the deep learning algorithm performance in terms of avoiding false positive classifications. The mature LSTM deep learning algorithm achieved a false positive rate of 0.024. From a safety perspective, these results could be improved even further by biasing the classification results towards false negative. However, we propose to reduce the false positive rate with a hybrid diagnosis process where the deep learning algorithm works cooperatively with a human cardiologist. The machine algorithm will analyze all HR traces in real time and the human practitioner will be notified if suspicious beats were detected. Once notified, the human expert can fuse the objective deep learning results with prior knowledge about the patient to reach a safe and reliable diagnosis.
机译:在这项研究中,我们讨论了验证如何帮助建立用于房颤(AF)检测的成熟的长期短期记忆(LSTM)深度学习算法的安全性。我们认为安全与理解和测试深度学习模型有关。我们提出了一种包含深度学习算法的计算机辅助诊断的测试方案。具体而言,我们模拟了系统负责诊断新患者的情况。研究此模型使我们有机会确定系统将产生多少假阳性,即有多少正常对象被诊断为房颤。避免误报是一个重要的安全方面,因为抗凝等治疗可能会导致死亡。因此,防止误报对于诊断支持系统的安全起着重要作用。为了确定我们成熟的LSTM深度学习系统的误报性能,我们使用了Physionet幻想曲数据库中的正常心率数据(HR)对其进行了验证。在深度学习模型设计期间,未使用任何幻想性HR痕迹。此外,测试数据是通过与深度学习培训期间使用的数据不同的测量设置来测量的。因此,幻想学习数据对于深度学习算法是完全未知的。因此,该算法必须依赖于知识来区分在学习阶段提取的AF和非AF HR轨迹。我们使用来自正常受试者的数据测试了算法,这一事实有助于我们根据避免错误肯定分类的方式来量化深度学习算法的性能。成熟的LSTM深度学习算法实现了0.024的误报率。从安全角度来看,可以通过将分类结果偏向假阴性来进一步改善这些结果。但是,我们建议通过混合诊断过程来减少误报率,在这种混合诊断过程中,深度学习算法可与人类心脏病专家协同工作。机器算法将实时分析所有HR痕迹,如果检测到可疑的搏动,则会通知人类医生。接到通知后,人类专家可以将客观的深度学习结果与有关患者的先验知识相融合,以实现安全可靠的诊断。

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