Rusch T L, Sankar R, Scharf J E
Marshfield Medical Research Foundation, Center for Medical Genetics, WI 54449, USA.
Comput Biol Med. 1996 Mar;26(2):143-59. doi: 10.1016/0010-4825(95)00049-6.
Current signal processing technology has driven many advances in almost every aspect of life, including medical applications. It follows that applying signal processing techniques to pulse oximetry could also provide major improvements. This research was designed to identify and implement one or more techniques that could improve pulse oximetry oxygen saturation (SpO2) measurements. The hypothesis was that frequency domain analysis could more easily extract the cardiac rate and amplitude of interest from the time domain signal. The focus was on the digital signal processing algorithms that had potential to improve pulse oximetry readings, and then test those algorithms. This was accomplished using the Fast Fourier Transform (FFT) and the Discrete Cosine Transform (DCT). The results indicate that the FFT and DCT computation of oxygen saturation were as accurate without averaging, as weighted moving average (WMA) algorithms currently being used, and directly indicate when erroneous calculations occur.
当前的信号处理技术几乎在生活的方方面面都推动了许多进步,包括医学应用。因此,将信号处理技术应用于脉搏血氧测定法也可能带来重大改进。本研究旨在识别并实施一种或多种能够改善脉搏血氧测定法中血氧饱和度(SpO2)测量的技术。假设是频域分析能够更轻松地从时域信号中提取出感兴趣的心率和幅度。重点在于那些有可能改善脉搏血氧测定法读数的数字信号处理算法,然后对这些算法进行测试。这是通过快速傅里叶变换(FFT)和离散余弦变换(DCT)来实现的。结果表明,在不进行平均的情况下,FFT和DCT计算的血氧饱和度与目前正在使用的加权移动平均(WMA)算法一样准确,并且能直接指出何时出现错误计算。