Solís-Montufar Eric E, Gálvez-Coyt Gonzalo, Muñoz-Diosdado Alejandro
Unidad Profesional Interdisciplinaria de Biotecnología, Instituto Politécnico Nacional, Mexico City, Mexico.
Centro de Investigación en Computación, Instituto Politécnico Nacional, Mexico City, Mexico.
Front Physiol. 2020 Aug 12;11:981. doi: 10.3389/fphys.2020.00981. eCollection 2020.
The RR-interval time series or tachograms obtained from electrocardiograms have been widely studied since they reflect the cardiac variability, and this is an indicative of the health status of a person. The tachogram can be seen as a highly non-linear and complex time series, and therefore, should be analyzed with non-linear techniques. In this work, several entropy measures, Sample Entropy (SampEn), Approximate Entropy (ApEn), and Fuzzy Entropy (FuzzyEn) are used as a measure of heart rate variability (HRV). Tachograms belonging to thirty-nine subjects were obtained from a cardiac stress test consisting of a rest period followed by a period of moderate physical activity. Subjects are grouped according to their physical activity using the IPAQ sedentary and active questionnaire, we work with youth and middle-aged adults. The entropy measures for each group show that for the sedentary subjects the values are high at rest and decrease appreciably with moderate physical activity, This happens for both young and middle-aged adults. These results are highly reproducible. In the case of the subjects that exercise regularly, an increase in entropy is observed or they tend to retain the entropy value that they had at rest. It seems that there is a possible correlation between the physical condition of a person with the increase or decrease in entropy during moderate physical activity with respect to the entropy at rest. It was also observed that entropy during longer physical activity tests tends to decrease as fatigue accumulates, but this decrease is small compared to the change that occurs when going from rest to physical activity.
自心电图获得的RR间期时间序列或心动图因其反映心脏变异性而得到广泛研究,而这是一个人健康状况的指标。心动图可被视为高度非线性且复杂的时间序列,因此,应采用非线性技术进行分析。在这项工作中,几种熵度量,样本熵(SampEn)、近似熵(ApEn)和模糊熵(FuzzyEn)被用作心率变异性(HRV)的度量。属于39名受试者的心动图是从一项心脏应激测试中获得的,该测试包括一段休息期,随后是一段适度体育活动期。使用IPAQ久坐和活跃问卷根据他们的体育活动对受试者进行分组,我们研究的是青年和中年成年人。每组的熵度量表明,对于久坐的受试者,休息时的值较高,随着适度体育活动而明显降低,青年和中年成年人都是如此。这些结果具有高度可重复性。对于经常锻炼的受试者,观察到熵增加,或者他们倾向于保持休息时的熵值。似乎一个人的身体状况与适度体育活动期间熵相对于休息时熵的增加或减少之间可能存在相关性。还观察到,在较长时间的体育活动测试中,随着疲劳积累,熵往往会降低,但与从休息到体育活动时发生的变化相比,这种降低很小。