Pattern Recognition in Vital Signs Using Spectrograms.

Sidharth Srivatsav Sribhashyam, Md Sirajus Salekin, Dmitry Goldgof, Ghada Zamzmi, Mark Last, Yu Sun
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Abstract

Spectrograms visualize the frequency components of a given signal which may be an audio signal or even a time-series signal. Audio signals have higher sampling rate and high variability of frequency with time. Spectrograms can capture such variations well. But, vital signs which are time-series signals have less sampling frequency and low-frequency variability due to which, spectrograms fail to express variations and patterns. In this paper, we propose a novel solution to introduce frequency variability using frequency modulation on vital signs. Then we apply spectrograms on frequency modulated signals to capture the patterns. The proposed approach has been evaluated on 4 different medical datasets across both prediction and classification tasks. Significant results are found showing the efficacy of the approach for vital sign signals. The results from the proposed approach are promising with an accuracy of 91.55% and 91.67% in prediction and classification tasks respectively.

基于谱图的生命体征模式识别。
频谱图将给定信号的频率成分可视化,该信号可以是音频信号,甚至是时间序列信号。音频信号具有较高的采样率和频率随时间的高变异性。谱图可以很好地捕捉到这种变化。但是,生命体征作为时间序列信号,采样频率少,频率变异性低,因此频谱图不能表达变化和模式。在本文中,我们提出了一种新的解决方案,利用频率调制来引入生命体征的频率可变性。然后,我们将频谱图应用于调频信号来捕获模式。该方法已经在4个不同的医学数据集上进行了评估,包括预测和分类任务。结果显示了该方法对生命体征信号的有效性。该方法在预测和分类任务上的准确率分别为91.55%和91.67%。
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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