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Strategies of symbolization in cardiovascular time series to test individual gestational development in the fetus

机译:心血管时间序列中的符号化策略,用于测试胎儿的个别妊娠发育

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The analysis of symbolic dynamics applied to physiological time series retrieves dynamical properties of the underlying regulation which are robust against the symbolic transformation. In this study, three different transformations to produce a symbolic series were applied to fetal RR interval series to test whether they reflect individual changes of fetal heart rate variability in the course of pregnancy. Each transformation was applied to 215 heartbeat datasets obtained from 11 fetuses during the second and the third trimester of pregnancy (at least 10 datasets per fetus, median 17). In the symbolic series, the occurrence of symbolic sequences of length 3 was categorized according to the amount of variations in the sequence: no variation of the symbols, one variation, two variations. Linear regression with respect to gestational age showed that the individual course during pregnancy performed best using a binary transformation reflecting whether the RR interval differences are below or above a threshold. The median goodness of fit of the individual regression lines was 0.73 and also the variability among the individual slopes was low. Other transformations to symbolic dynamics performed worse but were still able to reflect the individual progress of fetal cardiovascular regulation.
机译:对应用于生理时间序列的符号动力学的分析检索了对符号转换具有鲁棒性的潜在调节的动力学特性。在这项研究中,将三种不同的产生符号序列的转换应用于胎儿RR间隔序列,以测试它们是否反映了怀孕过程中胎儿心率变异性的个体变化。每种转换都应用于在妊娠中期和妊娠中期从11个胎儿获得的215个心跳数据集(每个胎儿至少10个数据集,中位数17)。在符号系列中,长度为3的符号序列的出现是根据序列中的变化量分类的:没有符号变化,一个变化,两个变化。关于胎龄的线性回归表明,怀孕期间的个体病程使用二元转换效果最好,反映了RR间隔差异是低于还是高于阈值。各个回归线的拟合优度中位数为0.73,并且各个斜率之间的变异性也较低。对符号动力学的其他转换效果较差,但仍能够反映胎儿心血管调节的个体进展。

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