Detecting Respiratory Events with End-to-End ConvNet

Yanping Shuai, Zhangbo Li, Xingjun Wang, Hanrong Cheng
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Abstract

Detecting respiratory events in sleep requires much attention and is labor consuming conventionally. With the development of technology, some kinds of software that can automatically detect the respiratory events was designed to help simplify and improve this process. However, in order to ensure its accuracy of the detection, it is necessary to provide appropriate key parameters before using it. After that the interval adjustment also needs to be done manually, which still takes a lot of time and means high demands on the technicians. In this paper, an end-to-end ConvNet was used to detect the respiratory events which does not need to provide any extra parameters. Its performance was further compared with widely used events detection software, Philips Sleepware G3 with Smonolyzer. The results show that ConvNet has higher accuracy than G3 with Smonolyzer in event detection. Such a ConvNet-based analysis system is sufficiently accurate for event detection according to the AASM classification criteria.
端到端卷积神经网络检测呼吸事件
在睡眠中检测呼吸事件需要大量的注意力,并且是传统的劳动消耗。随着技术的发展,一些能够自动检测呼吸事件的软件被设计出来,以帮助简化和改进这一过程。但是,为了保证其检测的准确性,在使用前必须提供合适的关键参数。之后的间隔调整还需要手工完成,这仍然需要花费大量的时间,对技术人员的要求也很高。本文采用端到端卷积神经网络来检测呼吸事件,不需要提供任何额外的参数。进一步将其性能与广泛使用的事件检测软件Philips Sleepware G3 with Smonolyzer进行比较。结果表明,卷积神经网络在事件检测方面的准确率高于使用Smonolyzer的G3。根据AASM分类标准,这种基于convnet的分析系统对于事件检测具有足够的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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