神经网络反向传播算法在睡眠障碍早期检测中的比较

V. Garg, R. Bansal
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引用次数: 10

摘要

睡眠不仅仅是我们日常工作的休息。每天都要让自己的身心焕然一新。有一个良好的睡眠,一个人可以在任何工作中表现最好。但有时,睡眠会受到一些尴尬行为的干扰,这些行为被称为睡眠障碍。许多研究人员采用各种技术和做法来诊断增加睡眠干扰和鼓励其他睡眠障碍的不寻常行为。在这篇论文中,使用人工神经网络算法对睡眠呼吸暂停、失眠、睡眠异常和打鼾等几种睡眠障碍进行了早期检测。提前发现这些疾病可以减少对人体的进一步影响。本文分别使用trainrp、trainlm、trainscg和trainbr等不同的训练函数,对梯度下降、拟牛顿、共轭梯度和贝叶斯正则化四种训练算法进行了比较。所有这些算法都是通过从不同医生那里获得的数据集来训练的。结果发现,以95例患者病历为样本,采用训练函数训练的贝叶斯正则化算法对睡眠障碍的早期检测效果最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of neural network back propagation algorithms for early detection of sleep disorders
Sleep is not merely a BREAK from our regular work. It is must to be physically and mentally refreshed every day. Having a sound nights sleep, one can perform best in whatever job in hand. But some time, sleep gets disturbed along with some awkward behaviors known as sleep disorders. The various techniques and practices are followed by numerous researchers for the diagnosis of the unusual behaviors which increase the disturbances in sleep and also encourage other sleep disorders. In this paper, a step has been taken towards the early detection of a few sleep disorders like Sleep Apnea, Insomnia, Parasomnia and Snoring using artificial neural network algorithms. The prior detection of these disorders can reduce the further effects on human body. This paper presents the comparison of four training algorithms gradient descent, quasi newton, conjugate gradient and Bayesian regularization by using different training functions such as trainrp, trainlm, trainscg and trainbr respectively. All these algorithms are trained by the data set acquired from various physicians. From the results, it is found that Bayesian regularization algorithm which is trained by using trainbr training function provides the best result for early detection of sleep disorders as per chosen sample size of 95 patient records.
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