用Python识别呼吸和婴儿睡眠呼吸暂停的有效方法

M. Bennet, K. Subha, R. Kumutha, V. Rajmohan
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引用次数: 0

摘要

睡眠呼吸暂停(SA)是一种常见的难以诊断的睡眠障碍。心电图分析在最近的出版物中被引用为识别睡眠呼吸暂停的有用技术。由于睡眠呼吸暂停引起的心电图改变不会立即显现,因此开发新的技术来识别这种情况比以往任何时候都更加重要。最有效的计算机辅助诊断技术之一是机器学习(ML)。ML采用基于先前临床结果的尖端诊断方法。睡眠呼吸暂停是指人们在睡觉时暂停呼吸。这可能是婴儿和早产儿的一个主要问题。依赖于附着在身体上的神经的监测器可能很复杂,而且运动神经并不总是准确的。该功能旨在制造一种无需与身体直接接触就能更高效地检测呼吸声音并在您停止时发出适当警告的设备。如果需要进一步分析呼吸速度和大小,这可能是一个有效的问题,尽管这也需要改进过滤系统或对原始样品进行第二次处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Effective Method for Distinguishing Breathing and Infant Sleep Apnea Detection and Prevention using Python
A frequent sleep disorder that is difficult to diagnose is sleep apnea (SA). ECG analysis has been cited in recent publications as a useful technique for identifying sleep apnea. It is more important than ever to develop new techniques for identifying the condition because the ECG alterations brought on by sleep apnea are not immediately apparent. One of the most efficient computer-assisted diagnostic techniques is machine learning (ML). ML employs cutting-edge diagnostic methods based on prior clinical outcomes. Sleep apnea is a condition in which people pause to breathe while sleeping. This can be a major concern for infants and preterm infants. Monitors that rely on nerves attached to the body can be complex and movement nerves are not always accurate. This function is intended to build a device that is more efficient without having to make direct contact with the body that can accurately detect sound breathing and issue appropriate warnings when you stop. If further analysis of respiration speed and size is required it may be a valid concern, although that will also require refinement of the filtering system or second processing of the original samples.
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