Busha Brett F
The College of New Jersey, Ewing, NJ 08628, USA.
Annu Int Conf IEEE Eng Med Biol Soc. 2010;2010:4546-9. doi: 10.1109/IEMBS.2010.5626039.
The effect of filtering and data set length on the accuracy of the quantification of fractal characteristics of cardiorespiratory activity remains unclear. Breath-to-breath interval (BBI) and heartbeat-to-heartbeat interval (RRI) were recorded from 8 healthy human subjects during a quiet seated posture. Movement artifact was filtered from the raw respiratory data using a simple low-pass (LP) or a wavelet-based (WB) filter. The RRI data was segmented into three sets of 256, 512, and 1024 sequential data points. BBI and RRI fractal scaling was quantified using detrended fluctuation analysis and a wavelet-based estimation of fractal dimension. No significant difference in the calculation of fractal behavior of BBI was identified after using a LP or a WB filter. Furthermore, there was no significant difference in fractal measurements among the different RRI data set lengths. In conclusion, filtering of physiologic data with standard LP or WB techniques or data set length, between 256 and 1024 sequential points, does not significantly affect the calculation of fractal behavior.
过滤和数据集长度对心肺活动分形特征量化准确性的影响尚不清楚。在安静坐姿下,记录了8名健康人类受试者的逐次呼吸间隔(BBI)和逐次心跳间隔(RRI)。使用简单低通(LP)滤波器或基于小波(WB)的滤波器从原始呼吸数据中滤除运动伪影。将RRI数据分割为三组,每组包含256、512和1024个连续数据点。使用去趋势波动分析和基于小波的分形维估计对BBI和RRI分形标度进行量化。使用LP滤波器或WB滤波器后,在BBI分形行为的计算中未发现显著差异。此外,不同RRI数据集长度之间的分形测量也没有显著差异。总之,使用标准LP或WB技术对生理数据进行滤波,或者数据集长度在256至1024个连续点之间,不会显著影响分形行为的计算。