1.Application of heart rate mathematical analysis for body functional state evaluation
Journal of Practical Medicine 2002;435(11):44-48
Statistical analysis of 100 successive RR interval time in ECG, mean heart rate was carried out in 3 groups. The 1st group consisted of 23 healthy men, aged 19.3. The 2nd group consisted of 8 men, aged 21,6 and suffered from inconciousness during working time. The 3rd group consisted of 6 men, aged 19.2 with bad occupational adaptation. Results: heart rate index of 2nd and 3rd groups at rest clearly represented functional strain in comparison with that of 1st group were decreased, mean HR and SI were increased. After 30 and 60 minutes of stricly standing, all index of 3 groups were significantly greater than that at rest, but the index variation of the 1st group were higher than in 2nd and 3rd groups.
Analysis
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Heart Rate
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physiology
2.Heart rate measurement algorithm based on artificial intelligence.
Chinese Journal of Medical Instrumentation 2010;34(1):1-3
Based on the heart rate measurement method using time-lapse image of human cheek, this paper proposes a novel measurement algorithm based on Artificial Intelligence. The algorithm combining with fuzzy logic theory acquires the heart beat point by using the defined fuzzy membership function of each sampled point. As a result, it calculates the heart rate by counting the heart beat points in a certain time period. Experiment shows said algorithm satisfies in operability, accuracy and robustness, which leads to constant practical value.
Algorithms
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Artificial Intelligence
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Heart Rate
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physiology
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Humans
3.Interactive guided breathing technology.
Zheng-Bo ZHANG ; Wei-Dong WANG ; Kai-Yuan LI ; Bu-Qing WANG ; Qing ANG
Chinese Journal of Medical Instrumentation 2008;32(2):86-119
OBJECTScientific guided breathing technology is to be studied based on the cardiopulmonary interaction.
METHODSHeart rate variability was used as the target function to study the smoothly respiratory relaxation procedure in order to acquire the common pattern of regular and slow breathing.
RESULTSMusic based on the acquired common pattern was created and a musical pattern temporally-related to the breathing movement monitored by a sensor could be chosen to guide the breathing interactively.
Breathing Exercises ; Heart Rate ; physiology ; Humans ; Respiration
4.The role of vagal innervation in the variability of heart beat.
Shu-Yun HE ; San-Jue HU ; Xian-Hui WANG ; Sheng HAN
Acta Physiologica Sinica 2002;54(2):129-132
To determine the role of vagi in heart rate variability, conscious rabbits were employed and electrocardiogram was recorded under conditions of bilateral vagi intact, unilateral vagotomy, and bilateral vagotomy. The variability of RR intervals (RRI) was analyzed using power spectrum and approximate entropy (ApEn). The results showed that the values of high frequency power (HF) component, low frequency power (LF) component and ApEn in animals with bilateral vagi intact were the highest, but the LF/HF ratio was the lowest; unilateral vagotomy decreased ApEn, right vagotomy increased LF/HF ratio but left vagotomy did not; the LF/HF ratio increased while ApEn decreased significantly in animals with bilateral vagotomy. It is suggested that the variability of RRI is mainly regulated by the vagi and the role of right vagi is more important than that of the left. When measuring heart rate variability, the results obtained with conventional method are consistent with those with nonlinear method.
Animals
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Entropy
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Heart Rate
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physiology
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Male
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Rabbits
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Vagus Nerve
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physiology
6.A noninvasive method for measuring electrocardiogram from chick embryos and researching changes of their heart rate during the late period of development.
Jian-Song DING ; Jihua NIE ; Su-Ping ZHANG
Chinese Journal of Applied Physiology 2009;25(1):48-106
Animals
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Chick Embryo
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physiology
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Electrocardiography
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methods
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Heart
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embryology
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physiology
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Heart Rate
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physiology
8.Investigating the fractal characteristic of heart rate variability during anesthesia.
Xiaofang LIU ; Wenlong XU ; Wu CHEN ; Zhiqian YE
Journal of Biomedical Engineering 2006;23(3):492-495
By use of fractal analysis indexes-correlation dimension, fractal dimension and scaling exponent, the heart rate variability signals obtained from 38 subjects' ECG during anesthesia are analyzed. The results show that there is an obvious change of fractal characteristic of heart rate variability during anesthesia. The correlation dimension (P < 0.000001) during anesthesia is evidently less than that during consciousness, while the short-range scaling exponent a (P < 0.0001) during consciousness is evidently less than that during anesthesia. These illustrate that the difference in fractal characteristic between anesthesia and well-balanced state can be detected by the fractal analysis of heart rate variability. In the end, the paper poses that the analysis of heart rate variability is fit for monitoring the depth of anesthesia by detrended fluctuation analysis.
Anesthesia
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Electrocardiography
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Heart Rate
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physiology
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Humans
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Monitoring, Physiologic
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methods
10.R-wave detection of ECG signal by using wavelet transform.
Xuelong TIAN ; Chunhong YAN ; Yaqing YU ; Tianxing WANG
Journal of Biomedical Engineering 2006;23(2):257-261
The detection of R-wave of ECG is essential to the analysis of the heart rate variability (HRV). In this paper, an R-wave detection method using wavelet transform(WT) is presented in line with the principle of discrete wavelet transform(DWT) and multi-resolution technique (MRT). We made use of the special properties of dbl wavelet in time-domain, decomposed the original ECG signals into 3-level detailed signals on different frequency bands by using DWT with Mallat algorithm, and got appropriate threshold values in different high frequency bands to distinguish R-wave. It is concluded that the algorithm had significant effects on it, which is verified by MIT/BIH (Massachusetts Institute of Technology/Boston's Beth Israel Hospital) ECG Database. The results show that R-wave could be detected accurately and localized precisely by this method, even when the patient was seriously sick or the signal was disturbed by noise. Consequently the method has a quite high locating precision (its error is not more than two sampled points and about 85 percent of the points of R-wave in ECG signal are localized precisely) and the correct detection rate of R-wave is 99.8% by using wavelet transform, so this method is quite feasible.
Algorithms
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Electrocardiography
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Heart Rate
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physiology
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Humans
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Signal Processing, Computer-Assisted