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Increasing Safety of Neural Networks in Medical Devices

机译:提高医疗设备中神经网络的安全性

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Neural networks arc now widely used in industry for applications such as data analysis and pattern recognition. In the medical devices domain neural networks are used to detect certain medical/decease indications. For example, a potential imminent asthma insult is detected based e.g. on breathing pattern, heart rate, and a few optional additional parameters. The patient receives a warning message and can either change his behavior and/or take some medicine in order to avoid the insult. This directly increases the patient's quality of life. Although, currently medical devices mostly use neural networks to provide some guidance information or to propose some treatment or change of settings, safety and reliability of the neural network are paramount. Internal errors or influences from the environment can cause wrong inferences. This paper will describe the experiences we made and the ways we used in order to both increase safety and reliability of a neural network in a medical device. We use a combination of online and offline tests to detect undesired behavior. Online tests are performed in regular intervals during therapy and offline tests are performed when the device is not performing therapy.
机译:神经网络现在在工业中广泛用于诸如数据分析和模式识别的应用。在医疗设备领域,神经网络用于检测某些医疗/疾病征兆。例如,基于例如,检测潜在的即将来临的哮喘侵害。呼吸模式,心率以及一些可选的其他参数。病人会收到警告消息,可以改变自己的行为和/或吃点药以避免侮辱。这直接提高了患者的生活质量。尽管当前的医疗设备大多使用神经网络来提供一些指导信息或提出一些治疗方案或更改设置,但是神经网络的安全性和可靠性至关重要。内部错误或环境的影响可能导致错误的推断。本文将介绍我们为增加医疗设备中神经网络的安全性和可靠性而进行的体验和使用的方法。我们结合使用在线和离线测试来检测不良行为。在治疗期间,定期进行在线测试,而在设备不进行治疗时,进行离线测试。

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