![]() | ![]() |
Formats:
|
|||||||||||||||||||||||||||||||||||||||||||||||||||||||||
Multimodal Pressure Flow Analysis: Application of Hilbert Huang Transform in Cerebral Blood Flow Regulation 1Division of Gerontology, Beth Israel Deaconess Medical Center, Harvard Medical School, Boston, MA 2Division of Interdisciplinary Medicine & Biotechnology and Margret & H.A. Rey Institute for Nonlinear Dynamics in Medicine, Beth Israel Deaconess Medical Center, Harvard Medical School, Boston, MA 3Research Center for Adaptive Data Analysis, National Central University, Chungli, Taiwan, ROC 4DynaDx Corporation, Mountain View, CA Corresponding authors/address: Vera Novak, M.D. Ph.D., Division of Gerontology, Beth Israel Deaconess Medical Center, Harvard Medical School, LMOB Suite 1b, 110 Francis Street , Boston, MA 02115, Phone: (617) 632-8680; Fax: (617) 632-8673; email: vnovak/at/bidmc.harvard.edu, C.-K. Peng, Ph.D., Division of Interdisciplinary Medicine & Biotechnology and Margret & H.A. Rey Institute for Nonlinear Dynamics in Medicine, Beth Israel Deaconess Medical Center, Harvard Medical School. 330 Brookline Avenue, Boston, MA 02115, Phone: (617) 667-7122; Fax: (617) 667-8052; email: cpeng/at/bidmc.harvard.edu Abstract Quantification of nonlinear interactions between two nonstationary signals presents a computational challenge in different research fields, especially for assessments of physiological systems. Traditional approaches that are based on theories of stationary signals cannot resolve nonstationarity-related issues and, thus, cannot reliably assess nonlinear interactions in physiological systems. In this review we discuss a new technique “Multi-Modal Pressure Flow method (MMPF)” that utilizes Hilbert-Huang transformation to quantify dynamic cerebral autoregulation (CA) by studying interaction between nonstationary cerebral blood flow velocity (BFV) and blood pressure (BP). CA is an important mechanism responsible for controlling cerebral blood flow in responses to fluctuations in systemic BP within a few heart-beats. The influence of CA is traditionally assessed from the relationship between the well-pronounced systemic BP and BFV oscillations induced by clinical tests. Reliable noninvasive assessment of dynamic CA, however, remains a challenge in clinical and diagnostic medicine. In this brief review we: 1) present an overview of transfer function analysis (TFA) that is traditionally used to quantify CA; 2) describe the a MMPF method and its modifications; 3) introduce a newly developed automatic algorithm and engineering aspects of the improved MMPF method; and 4) review clinical applications of MMPF and its sensitivity for detection of CA abnormalities in clinical studies. The MMPF analysis decomposes complex nonstationary BP and BFV signals into multiple empirical modes adaptively so that the fluctuations caused by a specific physiologic process can be represented in a corresponding empirical mode. Using this technique, we recently showed that dynamic CA can be characterized by specific phase delays between the decomposed BP and BFV oscillations, and that the phase shifts are significantly reduced in hypertensive, diabetics and stroke subjects with impaired CA. In addition, the new technique enables reliable assessment of CA using both data collected during clinical test and spontaneous BP/BFV fluctuations during baseline resting conditions. Keywords: cerebral blood flow, dynamic autoregulation, spontaneous pressure and flow fluctuations, instantaneous phase shift, stroke, hypertension, diabetes I. Introduction Previous works have demonstrated that fluctuations in physiological signals carry important information reflecting the mechanisms underlying control processes and interactions among organ systems at multiple time scales. A major problem in the analysis of physiological signals is related to nonstationarities (statistical properties such as mean and standard deviation vary with time), which is an intrinsic feature of physiological data and persists even without external stimulation.1–3 The presence of nonstationarities makes traditional approaches assuming stationary signals not reliable. To resolve the difficulties related to nonstationary behavior, concepts and methods derived from statistical physics have been applied in the studies of different control mechanisms including locomotion control,4–6 cardiac regulation,7, 8 cardio-respiratory coupling,9–11 renal vascular autoregulation,12 cerebral blood flow regulation,13–16 and circadian rhythms.17–19 One of the innovative approaches applied to physiological studies is Hilbert Huang transform (HHT) 20. The HHT is based on nonlinear chaotic theories and has been designed to extract dynamic information from nonstationary signals at different time scales. The advantages of the HHT over traditional Fourier-based methods have been appreciated in many studies of different physiological systems such as blood pressure hemodynamics 21 , cerebral autoregulation 13, 15, 16, cardiac dynamics 22, respiratory dynamics 23,and electroencephalographic activity24. In this review, we focus on the computational challenge on the quantification of interactions between two nonstationary physiologic signals. To demonstrate progress in resolving the generic problem related to nonstationarities, we review the recent applications of nonlinear dynamic approaches based on HHT to one specific physiological control mechanism—cerebral blood flow regulation. Cerebral autoregulatory mechanisms are engaged to compensate for metabolic demands and perfusion pressure variations under physiologic and pathologic conditions.25, 26 Dynamic autoregulation reflects the ability of the cerebral microvasculature to control perfusion by adjusting the small-vessel resistances in response to beat-to-beat blood pressure (BP) fluctuations by involving myogenic and neurogenic regulation. Reliable and noninvasive assessment of cerebral autoregulation (CA) is a major challenge in medical diagnostics. Transcranial Doppler ultrasound (TCD) enables assessment of dynamic CA during interventions with sudden systemic BP changes induced by the Valsalva maneuver (VM), head-up tilt and sit-to-stand test in various medical conditions.13, 26–34 Conventional approaches typically model cerebral regulation using mathematical models of a linear and time-invariant system to simulate the dynamics of BP as an input to the system, and cerebral blood flow as output. A transfer function is typically used to explore the relationship between BP and cerebral blood flow velocity (BFV) by calculating gain and phase shift between the BP and BFV power spectra.26, 35–40 Many studies have shown that transfer function can identify alterations in BP-BFV relationship under pathologic conditions such as stroke, hypertension, and traumatic brain injuries that are associated with impaired autoregulation. 26, 35–39, 41–43 This Fourier transform based approach, however, assumed that signals are composed of superimposed sinusoidal oscillations of constant amplitude and period at a pre-determined frequency range. This assumption puts an unavoidable limitation on the reliability and application of the method, because BP and BFV signals recorded in clinical settings are often nonstationary and are modulated by nonlinearly interacting processes at multiple time-scales corresponding to the beat-to-beat systolic pressure, respiration, spontaneous BP fluctuations, and those induced by interventions. To overcome problems in CA evaluations related to nonstationarity and nonlinearity, several approaches derived from concepts and methods of nonlinear dynamics have been proposed. 13–16, 44–47 A novel computational method called multimodal pressure-flow (MMPF) analysis was recently developed to study the BP-BFV relationship during the Valsalva maneuver (VM).13 The MMPF method enables evaluation of autoregulatory dynamics based on instantaneous phase analysis of BP and BFV oscillations induced by the intervention (a sudden reduction of BP and BFV followed by an increase in both signals). The MMPF applies an empirical mode decomposition (EMD) algorithm to decompose complex BP and BFV signals into multiple empirical modes.21 Each mode represents a frequency-amplitude modulation in a narrow frequency band that can be related to a specific physiologic process. For example, this technique can easily identify BP and BFV oscillations induced by the VM (0.1-0.03 Hz, i.e., period ~10 to 30 sec). Using this method; a characteristic phase lag between BFV and BP fluctuations corresponding to VM was found in healthy subjects, and this phase lag was reduced in patients with hypertension and stroke.13 These findings suggested that BFV-BP phase lag could serve as an index of CA. However, intervention procedures, such as the VM, introduce large intracranial pressure fluctuations and also require patients’ active participation. As a result, such procedures are not applicable under various clinical conditions, such as in acute care settings. It has been hypothesized that CA can be evaluated from spontaneous BP-BFV fluctuations during resting conditions.14–16 This hypothesis has been motivated by the facts that i) CA is a continuous dynamic process so that it should always engage to regulate cerebral blood flow; and ii) BP and BFV display spontaneous fluctuations at different time scales38, 39, 48–50 even during resting conditions. Since spontaneous BP and BFV fluctuations can be entrained by respiration or other external perturbation over a wide frequency range [0.05-0.4 Hz] 51, 52 and the dominant frequency of spontaneous BP fluctuations varies among individuals over time and under different test conditions, reliable measures of the nonlinear BFV-BP relationship without pre-assuming oscillation frequencies and waveform shapes are needed. These requirements are well satisfied by the MMPF algorithm which extracts intrinsic BP and BFV oscillations embedded in the original signals and quantifies instantaneous phase relationship between them. If the MMPF is sensitive and can provide reliable estimation of autoregulation using spontaneous BP and BFV fluctuations, it is expected that, similar to BP and BFV oscillations introduced by the VM, spontaneous BFV and BP oscillations during resting conditions should also exhibit specific phase shifts. In this review, we present an overview of the transfer function analysis (TFA) that was traditionally used to quantify CA (Sec. II) and of the MMPF method and its modifications (Sec. III). In Sec. IV, we introduce a newly developed automatic algorithm for the improved MMPF method as well as engineering aspects that will potentially lead to a fully automated analysis without expert input. In Sec. V, we review previous applications of MMPF in clinical studies,15, 16 in which the ability and reliability of the method in assessing the CA from spontaneous BP-BFV fluctuations during resting conditions were evaluated (Sec. V). Specifically, we discuss the MMPF results in three pathological conditions that are associated with cardiovascular complications affecting cerebrovascular control systems (stroke, hypertension and diabetes). 53–57 Our previous studies have shown altered CA in these conditions.15, 16, 58 Additionally, a comparison of the MMPF and the TFA results in the study of type 2 diabetes was discussed. In Sec. VI, we discuss why nonlinear dynamic approaches such as the MMPF can more reliably quantify nonlinear relationship between nonstationary signals. II. Transfer Function Analysis Transfer function analysis which has been widely used in the CA assessment 35, 59 is based on Fourier transform. BP and BFV signals are decomposed into multiple sinusoidal waveforms in order to compare the amplitudes and phases of BP and BFV components at different frequencies. The coherence representing the degree of similarity in the variation (phase or amplitude) of two signals within specific frequencies, then, can be evaluated through the cross-spectrum. In general, a strong coherence indicates dysfunction of CA. The BP and BFV time series are first linearly detrended and divided into 5000- point (100-sec) segments with 50% overlap. The Fourier transform of BP, denoted as Sp(f) , and BFV, denoted as SV(f) , are calculated for each segment with a spectral resolution of 0.01Hz, and were used to calculate the transfer function
A coherence value close to 0 indicates the lack of linear relationship between BP and BFV signals and, therefore, the linear relationship between BP and BFV estimated by the transfer function is not reliable. The absence of linear relationship between BP and BFV is usually assumed to reflect the nonlinear influence of CA. Average coherence, gain, and phase are calculated in the frequency range below 0.07Hz in which the CA is assumed to be most effective 35, 39. For comparison with the MMPF results, the same transfer function analysis is also performed in the same frequency range as the observed dominant spontaneous oscillations in BP and BFV. III. Multimodal Pressure-Flow Method The main concept of the MMPF method is to quantify nonlinear BP-BFV relationship by concentrating on intrinsic components of BP and BFV signals that have simplified temporal structures but still can reflect nonlinear interactions between two physiologic variables. The MMPF method includes four major steps: 1) decomposition of each signal (BP and BFV) into multiple empirical modes; 2) selection of empirical modes for (dominant) oscillations in BP and corresponding oscillations in BFV; 3) calculation of instantaneous phases of extracted BP and BFV oscillations; and 4) calculation of biomarker(s) of CA based on BP-BFV phase relationship. The improved MMPF method provides a more reliable estimation of BP-BFV phase relationship by implementing a noise assisted EMD, called ensemble EMD (EEMD)60, to extract oscillations embedded in nonstationary BP and BFV signals. The EEMD technique can ensure that each component does not consist of oscillations at dramatically disparate scales, and that different components are locally non-overlapping in the frequency domain. Thus, each component obtained from the EEMD may better represent fluctuations corresponding to a specific physiologic process. To demonstrate such an advantage of the EEMD, we will apply the method to extract dominant spontaneous BP-BFV oscillations during baseline resting conditions, and compare the results to those obtained from the traditional EMD method. A. Empirical mode decomposition To achieve the first major step of MMPF, we originally utilized the empirical mode decomposition (EMD) algorithm, developed by Huang et al. 21 to decompose the nonstationary BP and BFV signals into multiple empirical modes, called intrinsic mode functions (IMFs). Each IMF represents a frequency-amplitude modulation in a narrow band that can be related to a specific physiologic process 21. For a time series x(t) with at least 2 extremes, the EMD uses a sifting procedure to extract IMFs one by one from the smallest scale to the largest scale
B. Ensemble Empirical Mode Decomposition (EEMD) For signals with intermittent oscillations, one essential problem of the EMD algorithm is that an intrinsic mode could comprise of oscillations with very different wavelengths at different temporal locations (i.e., mode mixing). The problem can cause certain complications for our analysis, making the results less reliable. To overcome the mode mixing problem, a noise assisted EMD algorithm, namely the Ensemble Empirical Mode Decomposition (EEMD), has been proposed 60. The EEMD algorithm first generates an ensemble of data sets obtained by adding different realizations of white noise to the original data. Then, the EMD analysis is applied to these new data sets. Finally, the ensemble average of the corresponding intrinsic mode functions from different decompositions is calculated as the final result. Shortly, for a time series ) x(t), the EEMD includes the following steps:
To illustrate the mode mixing problem, we applied both EMD and EEMD to BP signal of a healthy subject. Figure 1
As shown in our simulation, EEMD ensures the decompositions to compass the range of possible solutions in the sifting process and to collate the signals of different scales in the proper IMF naturally. It produces a set of IMFs, each displaying a time-frequency distribution without transitional gaps. With the elimination of the mode mixing problem, the EEMD can better extract intrinsic mode(s) corresponding to specific physiologic mechanisms. C. Mode selection The second step of the MMPF is to choose an IMF for the BP and the corresponding IMF for the BFV signal. The choice seems rather subjective and any mode within the interested frequency range can be used. The following criteria are proposed for this step in order to improve reliability and robustness of MMPF results. The most important one is to ensure that the two chosen IMFs are matched, i.e., the extracted fluctuations in BP and BFV correspond to the same physiologic process. In addition, it is better to choose BP component that has reproducible patterns to minimize variability among different trials. For example, the initial MMPF study used the BP and BFV oscillations induced by interventions such as VM 13, and recent studies used the spontaneous BP and BFV oscillations entrained by respiration.15, 16 We will discuss these applications of the MMPF and its performance in Sec. IV. D. Hilbert transform The third major step of the MMPF analysis is to obtain instantaneous phases of the extracted BP and BFV oscillations (i.e. the IMFs correspond to specific physiology process). Note that the extracted BP and BFV oscillations are not stationary, i.e., their amplitude and frequency vary over time. Such nonstationary oscillations can be better characterized by analytical methods that can quantify the amplitude and phase (or frequency) at any given moment. Therefore, the MMPF uses Hilbert transform to obtain instantaneous phases of BP and BFV oscillation. Unlike the Fourier transform, Hilbert transform does not assume that signals are composed of superimposed sinusoidal oscillations with constant amplitude and frequency. Thus, the instantaneous phases obtained from Hilbert transform are more suitable for the assessment of the nonlinear relationship between complex oscillations 61. In order to obtain instantaneous phases with appropriate physical meaning, Hilbert transform requires that an oscillatory signal should be symmetric with respect to the local zero mean and the numbers of zero crossings and extreme should be the same. The intrinsic mode function derived from the EMD method satisfies this requirement (see Sec. III A). For a time series s(t) its Hilbert transform is defined as
(t) are the instantaneous amplitude and instantaneous phase of s(t), respectively.In particular, the instantaneous BP and BFV phases are calculated on a sample by sample basis. The BP-BFV phase shift for each subject is calculated as the average of instantaneous differences of BFV and BP phases over the entire baseline. The instantaneous BP-BFV phase shift is averaged over a prolonged time period to provide statistically robust phase estimates. E. MMPF autoregulation indices The last step of the MMPF is to derive indices of CA from the instantaneous phases of BP and BFV oscillations. It is believed that CA leads to fast recovery of BFV in response to BP fluctuations and, thus, the phases of BFV oscillations are advanced compared to BP phases. For simplicity of statistical analysis, originally the phase shift at the minimum and maximum of these two signals is used as the index of CA 13. To provide statistically more robust phase estimates, the BP-BFV phase shift for each subject can be calculated as the average of instantaneous differences of BFV and BP phases over the course of the VM or spontaneous oscillations.16 IV. Computer-Assisted Program for MMPF Analysis To implement steps C–E in the MMPF analysis, a software package was developed to load the decomposed intrinsic modes of BP and BFV signals, to allow the selections of BP and BFV components, and to calculate the MMPF autoregulation index (Fig. 4
V. Performance of Improved MMPF A. Assessment of autoregulation in healthy control, hypertensive and stroke subjects during resting condition To test whether the MMPF can evaluate the dynamics of CA from spontaneous BP-BFV fluctuations during supine rest, our recent study compared the BP-BFV phase shifts obtained from BP and BFV oscillations introduced by the VM and from spontaneous BP-BFV oscillations during supine baseline.15 Data of 12 control, 10 hypertensive and 10 stroke subjects during VM and baseline resting condition were analyzed using the improved MMPF method. Spontaneous oscillations (period: mean±SD, 15.7±9.2 seconds) in the same frequency range as the VM oscillations (17.7±7.9 seconds, pair t-test p=0.37) were chosen. BP-BFV phase shifts during spontaneous oscillations (ranging from ~−60 to 120 degrees) were highly correlated to those obtained from VM oscillations (left side middle cerebral arteries R=0.92, p<0.0001; right side R=0.80, p<0.0001) (Figure 5
B. Measurement of cerebral autoregulation dynamics based on spontaneous oscillations entrained by respirations in diabetic subjects In our recent study 16, the MMPF method was applied to study the relationship between spontaneous BP-BFV oscillations at the respiratory frequency (~0.1–0.4Hz) in healthy (control) and diabetic subjects. The results showed that in healthy subjects, there were also specific phase shifts between spontaneous BP and BFV oscillations over this frequency range (0.1–0.4Hz) and that the phase shifts were significantly reduced in patients with type 2 diabetes, indicating altered dynamics of BP-BFV relationship, and thus impairment of vasoregulation in diabetic subjects (Fig.6
VI. Discussion & Conclusion Assessment of Nonlinear Interactions between Nonstationary Signals Quantification of nonlinear interactions between two nonstationary signals presents a computational challenge in different research fields, especially for assessments of physiological systems. The computational approaches, based on traditional theories and methods, cannot resolve nonstationarity-related issues and be used reliably to study these systems. One possible and promising approach is to utilize and adopt concepts and methods derived from nonlinear dynamics that are designed to explore nonlinear interactions in nonstationary systems. In the last two decades, nonlinear dynamic approaches have been applied in many different biological fields such as cardiovascular system, respiration, locomotor activity, and neuronal activity in brain 11, 14, 63,64. It has been gradually accepted that nonlinear dynamic methods can provide new information about the control mechanisms of physiological systems that may be difficult to be characterized using traditional approaches. In this review, we aim to demonstrate the point by discussing recent advance in the field of cerebral blood flow regulation and the contribution of a nonlinear dynamic approach as represented by the multimodal pressure flow method (as discussed in the following sections). Though the MMPF method has been mainly applied to assess the cerebral autoregulation, the concept of this approach is generally applicable for other physiological controls that involve interactions between two nonstationary signals. Designing and improving these approaches is crucial to tackle the generic problem related to nonstationarity. Assessment of autoregulation from spontaneous BP and BFV oscillations Autoregulatory responses are assessed by challenging cerebrovascular systems using interventions such as the VM, thigh cuff deflation and the head-up tilt 26–31, 65. However, these intervention procedures may introduce large intracranial pressure fluctuations and require patients’ active cooperation. Therefore, they are not generally applicable in acute care clinical settings. In recent studies, an improved MMPF method was introduced to quantify the BP-BFV relationship in healthy, hypertensive and stroke subjects during supine resting conditions15. The results support the notion that autoregulation is a dynamic process and is always engaged even during resting conditions. Dynamic autoregulation is needed for continuous adjustment of cerebral perfusion in response to variations of autonomic cardiovascular and respiratory control (e.g., respiration, heart rate, blood pressure, vascular tone). Furthermore, applying the method to healthy and diabetic subjects, we showed that cerebral vasoregulatory processes that control pressure-flow relationship can operate at shorter time-scales (<10 seconds) than previously suggested (Fig. 6 In this review we also introduced new results that present a significant improvement of MMPF method by introducing an automated mode selection algorithm that is based on time–frequency analysis. This approach allows objective mode selection based on time-frequency measures. Thus, the MMPF software is now more user-friendly and does not require computational knowledge to implement the MMPF technique for clinical evaluations. Unlike traditional Fourier transform based approaches, the MMPF method does not assume the BP and BFV as superimposed sinusoidal oscillations of constant amplitude and period at a preset frequency range. Instead, the method adopts a new adaptive signal processing algorithm, EEMD, to extract dominant spontaneous oscillations that are actually embedded in the BP and BFV fluctuations. Since spontaneous oscillations that are related to a specific physiology process are usually nonstationary (i.e., statistical properties such as mean levels and oscillation period vary over time and change for different subjects), the conventional filters that are based on Fourier or wavelet theories are not reliable or valid for the extraction of embedded spontaneous oscillation from the BP and BFV signals. In this paper, we demonstrated that the EEMD can accurately extract oscillations associated with respirations from nonstationary BP and BFV signals. This result indicates that the EEMD can serve as a blind time-variant filter to extract the embedded nonstationary oscillations adaptively. Studying spontaneous BP and BFV oscillations extracted by the EEMD method revealed advanced phases in BFV compared to those in BP, i.e., flow oscillations preceded systemic pressure oscillations. These BP-BFV phase shifts were similar to those observed during the VM at the BP minimum and maximum 13. Such positive phase shift has also been reported using Fourier transform methods during head-up tilt, and is interpreted as the faster recovery of BFV caused by the compensation of cerebral vasoregulation.30 In our study, we showed that BP-BFV phase shifts of spontaneous oscillation for hypertensive, stroke subjects were significantly reduced when compared to healthy subjects as shown by previous studies during the VM.13 Therefore, the BP-BFV phase shifts derived from the spontaneous oscillations can also be used as the indicator of dynamic CA. Frequency dependence of cerebral autoregulation It has been proposed that autoregulatory mechanisms act as a highpass filter—cybernetic model,35, 37 being more active at lower frequencies (<0.1Hz) and less effective for faster spontaneous fluctuations and at respiration frequency. Though there is no established physiologic neural pathway that can account for the highpass filter mechanism, the frequency dependent influence of CA has been supported by many studies that are based on the transfer function analysis.39, 40, 42, 66 It is important to note that coherence, gain, and phase of transfer function are continuous functions of frequency and do not exhibit an apparent transition point at a specific frequency. Thus, the frequency-dependent influence of CA, as suggested by the model and transfer function results, does not indicate a cutoff frequency beyond which CA has no influence on blood flow regulation. Nevertheless, many studies used ~0.1Hz as an upper frequency boundary for the transfer function analysis, such choice of frequency range for the estimation of CA seems rather arbitrary. Since previous studies showed that blood flow level after induced sudden blood reduction can be restored within 3–6 seconds (corresponding to 0.16–0.33Hz in frequency domain),67, 68 there is no reason to refute that CA can modulate the relationship of BP and BFV at frequencies faster than 0.1Hz. Indeed, there were already studies indicating that BP and BFV oscillations at frequencies faster than 0.1Hz may also provide useful information on CA.14, 69 Moreover, the transfer function analysis is based on Fourier transform that implicitly assumes stationary signals composed of sinusoidal oscillations of constant amplitude and period. However, real-world recordings, such as BP and BFV signals, are usually nonstationary and exhibit dynamic changes over time (e.g. shifts of respiratory frequencies, occurrence of spontaneous waves, etc). Therefore, a single transfer function may not be sensitive enough to identify the influences of CA on relationship between the BP and BFV oscillations at all time scales. It is intriguing that the MMPF analysis revealed a specific phase shift between BP and BFV oscillation in the frequency range of ~0.1–0.4Hz in control subjects, and this phase shift was significantly reduced in diabetic subjects. These findings strongly support that CA is a continuous dynamic process, influencing BP-BFV relationship over a frequency range (>0.1Hz) that is beyond previously ranges recognized. However, transfer function analysis could not identify this alteration in BP-BFV phase relationship in diabetic subjects in this frequency range, suggesting that inherent nonlinearities of CA may be better described by nonlinear methods such as the MMPF and multivariate coherence–an approach that takes into account contributions of other inputs, e.g., pressure and cerebrovascular resistances.46 Comparison of the MMPF method and traditional CA approaches The observation that transfer function analysis (TFA) cannot, but the MMPF can, show difference in phase relation between systemic BP and BFV in type 2 diabetes, may lead to following explanations: 1) TFA quantifies pressure and flow relationship in a specific frequency range , while MMPF is not frequency dependent. Therefore, these two methods may quantify different aspects of underlying mechanisms responsible for blood flow regulation. 2) Sensitivities of these two methods are different so that their performances in a small sample size of subjects can be different. As shown by previous studies, both TFA and MMPF can identify alterations in blood flow regulation in pathologic conditions such as stroke, hypertension, and traumatic brain injuries that are associated with impaired autoregulation. These findings indicate that both methods can quantify CA using BP and cerebral BFV, but do not explain different results in diabetic patients. The second possibility comes from the fact that TFA usually focuses on the frequencies below 0.1Hz while MMPF does not assume frequency range, i.e., MMPF extracted dominant oscillations that are truly embedded in data. Thus, the optimal frequency range to distinguish the difference between controls and diabetics in blood pressure and blood flow relationship is not known. In this study, we found that there were no group differences in TFA results in the frequency range 0.01–0.07 Hz (in which CA was traditionally believed to affect pressure and flow relationship). The frequency of dominant oscillations in blood pressure and flow extracted by MMPF was from 0.1 to 0.4Hz. However, BP-BFV phase obtained from TFA for the frequency range 0.1–0.4 Hz showed no difference between controls and diabetic subjects, either (see Table 1). This finding refutes the notion that the differences in results detected by TFA and MMPF are merely due to differences in frequency range. Therefore, the differences in sensitivity of both methods offer explanation for discrepancy in the CA estimates in diabetic patients. Consistently, we found that the BP-BFV phase shift had a better performance in discriminating between control subjects and subjects with type 2 diabetes (Fig. 7 This review was focused on the MMPF method. There are other approaches from nonlinear dynamics such as phase synchronization technique,14 multiple multivariate coherence 46, and general Volterra-Wiener approaches 44, 45, 47 that have been used to quantify cerebral autoregulation but could not be covered in this short review. More systematic studies are necessary to evaluate advantages and disadvantages of these innovative methods during different physiological and pathological conditions. In conclusion, CA dynamics can be reliably estimated from spontaneous BP and BFV fluctuations during baseline resting conditions, and the BFV-BP phase shift obtained by the improved MMPF method is a sensitive and reliable measure of blood flow regulation and can be potentially used to monitor autoregulation in subjects with cerebromiscrovascular diseases ACKNOWLEDGEMENTS This study was supported by an American Diabetes Association Grant 1-03-CR-23 to V. Novak, an NIH Older American Independence Center Grant AG08812, NIH Program projects AG004390 and NS045745, NIH-NINDS STTR grant NS053128 in collaboration with DynaDx, Inc., a CIMIT New Concept Grant (W81XWH) and a General Clinical Research Center (GCRC) Grant MO1-RR01302., and James S. McDonnell Foundation, the Ellison Medical Foundation Senior Scholar in Aging Award, the G. Harold and Leila Y. Mathers Charitable Foundation, Defense Advanced Research Projects Agency, and the NIH/National Center for Research Resources (P41RR013622). The authors acknowledge Steven Lin, Ary Goldberger for their helpful comments, and Chris Peng for the assistance of data processing. Abbreviations
References 1. Kantz H, Schreiber T, editors. Nonlinear time series analysis. Cambridge: Cambridge University Press; 1997. 2. Viswanathan GM, Peng CK, Stanley HE, Goldberger AL. Deviations from uniform power law scaling in nonstationary time series. Phys Rev E Stat Phys Plasmas Fluids Relat Interdiscip Topics. 1997;55:845–859. [PubMed] 3. Bernaola-Galvan P, Ivanov PC, Nunes Amaral LA, Stanley HE. Scale invariance in the nonstationarity of human heart rate. Phys Rev Lett. 2001;87:168105. [PubMed] 4. Collins JJ, Stewart IN. Symmetry-breaking bifurcation: a possible mechanism for 2:1 frequency-locking in animal locomotion. J Math Biol. 1992;30:827–838. [PubMed] 5. Collins JJ, De Luca CJ. Random walking during quiet standing. Phys Rev Lett. 1994;73:764–767. [PubMed] 6. Hu K, Ivanov PC, Chen Z, Hilton MF, Stanley HE, Shea SA. Non-random fluctuations and multi-scale dynamics regulation of human activity. Physica A. 2004;337:307–318. [PubMed] 7. Peng CK, Mietus J, Hausdorff JM, Havlin S, Stanley HE, Goldberger AL. Long-range anticorrelations and non-Gaussian behavior of the heartbeat. Phys Rev Lett. 1993;70:1343–1346. [PubMed] 8. Costa M, Goldberger AL, Peng CK. Multiscale entropy to distinguish physiologic and synthetic RR time series. Comput Cardiol. 2002;29:137–140. [PubMed] 9. Pompe B, Blidh P, Hoyer D, Eiselt M. Using mutual information to measure coupling in the cardiorespiratory system. IEEE Eng Med Biol Mag. 1998;17:32–39. [PubMed] 10. Hoyer D, Bauer R, Walter B, Zwiener U. Estimation of nonlinear couplings on the basis of complexity and predictability--a new method applied to cardiorespiratory coordination. IEEE Trans Biomed Eng. 1998;45:545–552. [PubMed] 11. Schafer C, Rosenblum MG, Abel HH, Kurths J. Synchronization in the human cardiorespiratory system. Phys Rev E Stat Phys Plasmas Fluids Relat Interdiscip Topics. 1999;60:857–870. [PubMed] 12. Chon KH, Chen YM, Holstein-Rathlou NH, Marmarelis VZ. Nonlinear system analysis of renal autoregulation in normotensive and hypertensive rats. IEEE Trans Biomed Eng. 1998;45:342–353. [PubMed] 13. Novak V, Yang ACC, Lepicovsky L, Goldbeger AL, Lipsitz LA, Peng CK. Multimodal pressure-flow method to assess dynamics of cerebral autoregulation in stroke and hypertension. BioMedical Engineering OnLine. 2004;3:39. [PubMed] 14. Chen Z, Hu K, Stanley HE, Novak V, Ivanov PC. Cross-correlation of instantaneous phase increments in pressure-flow fluctuations: applications to cerebral autoregulation. Phys Rev E Stat Nonlin Soft Matter Phys. 2006;73:031915. [PubMed] 15. Hu K, Peng CK, Czosnyka M, Zhao P, Novak V. Nonlinear Assessment of Cerebral Autoregulation from Spontaneous Blood Pressure and Cerebral Blood Flow Fluctuations. Cardiovasc Eng. 2007 in press. 16. Hu K, Peng CK, Huang N, Wu Z, Lipsitz LA, Cavallerano J, et al. Altered phase interactions between spontaneous blood pressure and flow fluctuations in type 2 diabetes mellitus: Nonlinear assessment of cerebral autoregulation. Physica A. 2008;387:2279–2292. [PubMed] 17. Hu K, Ivanov PC, Hilton MF, Chen Z, Ayers RT, Stanley HE, et al. Endogenous circadian rhythm in an index of cardiac vulnerability independent of changes in behavior. Proc Natl Acad Sci U S A. 2004;101:18223–18227. [PubMed] 18. Hu K, Scheer FA, Ivanov PC, Buijs RM, Shea SA. The suprachiasmatic nucleus functions beyond circadian rhythm generation. Neuroscience. 2007;149:508–517. [PubMed] 19. Ivanov PC, Hu K, Hilton MF, Shea SA, Stanley HE. Endogenous circadian rhythm in human motor activity uncoupled from circadian influences on cardiac dynamics. Proc Natl Acad Sci U S A. 2007;104:20702–20707. [PubMed] 20. Huang NE, Shen Z, Long SR, Wu MC, Shih EH, Zheng Q, et al. The empirical mode decomposition method and the Hilbert spectrum for non-stationary time series analysis. Proc Roy Soc London. 1998;A454:903–995. 21. Huang W, Shen Z, Huang NE, Fung YC. Engineering analysis of biological variables: an example of blood pressure over 1 day. Proc Natl Acad Sci U S A. 1998;95:4816–4821. [PubMed] 22. Maestri R, Pinna GD, Accardo A, Allegrini P, Balocchi R, D'Addio G, et al. Nonlinear indices of heart rate variability in chronic heart failure patients: redundancy and comparative clinical value. J Cardiovasc Electrophysiol. 2007;18:425–433. [PubMed] 23. Balocchi R, Menicucci D, Santarcangelo E, Sebastiani L, Gemignani A, Ghelarducci B, et al. Deriving the respiratory sinus arrhythmia from the heartbeat time series using empirical mode decomposition. Chaos, Solitons and Fractals. 2004;20:171–177. 24. Sweeney-Reed CM, Nasuto SJ. A novel approach to the detection of synchronisation in EEG based on empirical mode decomposition. J Comput Neurosci. 2007;23:79–111. [PubMed] 25. Aaslid R. Cerebral Hemodynamics. In: Newell DW, Aaslid R, editors. Transcranial Doppler. New York: Raven Press; 1992. pp. 49–55. 26. Panerai RB. Assessment of cerebral pressure autoregulation in humans--a review of measurement methods. Physiological Measurements. 1998;19:305–3008. 27. Novak V, Spies JM, Novak P, McPhee BR, Rummans TA, Low PA. Hypocapnia and cerebral hypoperfusion in orthostatic intolerance. Stroke. 1998;29:1876–1881. [PubMed] 28. Novak V, Chowdhary A, Farrar B, Nagaraja H, Braun J, Kanard R, et al. Altered cerebral vasoregulation in hypertension and stroke. Neurology. 2003;60:1657–1663. [PubMed] 29. Dawson SL, Panerai RB, Potter JF. Critical closing pressure explains cerebral hemodynamics during the Valsalva maneuver. J Appl Physiol. 1999;86:675–680. [PubMed] 30. Panerai RB, Dawson SL, Eames PJ, Potter JF. Cerebral blood flow velocity response to induced and spontaneous sudden changes in arterial blood pressure. Am J Physiol Heart Circ Physiol. 2001;280:H2162–H2174. [PubMed] 31. Carey BJ, Panerai RB, Potter JF. Effect of aging on dynamic cerebral autoregulation during head-up tilt. Stroke. 2003;34:1871–1875. [PubMed] 32. Cavestri R, Radice L, Ferrarini F, Sgorbati C, D'Angelo V, Rodriguez G, et al. CBF side-to-side asymmetries in stenosis-occlusion of internal carotid artery. Relevance of CT findings and collateral supply. Italian Journal of Neurological Sciences. 1991;12:383–388. [PubMed] 33. Russo G, de Falco R, Scarano E, Cigliano A, Profeta G. Non invasive recording of CO2 cerebrovascular reactivity in normal subjects and patients with unilateral internal carotid artery stenosis. Journal of Neurosurgical Sciences. 1994;38:147–153. [PubMed] 34. Silvestrini M, Vernieri F, Pasqualetti P, Matteis M, Passarelli F, Troisi E, et al. Impaired cerebral vasoreactivity and risk of stroke in patients with asymptomatic carotid artery stenosis. JAMA. 2000;283:2122–2127. [PubMed] 35. Diehl RR, Linden D, Lucke D, Berlit P. Phase relationship between cerebral blood fow velocity and blood pressure. A clinical test of autoregulation. Stroke. 1995;26:1801–1804. [PubMed] 36. Birch AA, Dirnhuber MJ, Hartley-Davies R, Iannotti F, Neil-Dwyer G. Assessment of autoregulation by means of periodic changes in blood pressure. Stroke. 1995;26:834–837. [PubMed] 37. Diehl RR, Linden D, Lucke D, Berlit P. Spontaneous blood pressure oscillations and cerebral autoregulation. Clin Auton Res. 1998;8:7–12. [PubMed] 38. Blaber AP, Bondar RL, Stein F, Dunphy PT, Moradshahi P, Kassam MS, et al. Transfer function analysis of cerebral autoregulation dynamics in autonomic failure patients. Stroke. 1997;28:1686–1692. [PubMed] 39. Zhang R, Zuckerman JH, Giller CA, Levine BD. Transfer function analysis of dynamic cerebral autoregulation in humans. Am J Physiol. 1998;274:H233–H241. [PubMed] 40. Haubrich C, Wendt A, Diehl RR, Klotzsch C. Dynamic autoregulation testing in the posterior cerebral artery. Stroke. 2004;35:848–852. [PubMed] 41. Giller CA. The frequency-dependent behavior of cerebral autoregulation. Neurosurgery. 1990;27:362–368. [PubMed] 42. Giller CA, Iacopino DG. Use of middle cerebral velocity and blood pressure for the analysis of cerebral autoregulation at various frequencies: the coherence index. Neurological Research. 1997;19:634–640. [PubMed] 43. Haubrich C, Klemm A, Diehl RR, Moller-Hartmann W, Klotzsch C. M-wave analysis and passive tilt in patients with different degrees of carotid artery disease. Acta Neurologica Scandinavica. 2004;109:210–216. [PubMed] 44. Mitsis GD, Zhang R, Levine BD, Marmarelis VZ. Modeling of nonlinear physiological systems with fast and slow dynamics. II. Application to cerebral autoregulation. Ann Biomed Eng. 2002;30:555–565. [PubMed] 45. Mitsis GD, Poulin MJ, Robbins PA, Marmarelis VZ. Nonlinear modeling of the dynamic effects of arterial pressure and CO2 variations on cerebral blood flow in healthy humans. IEEE Trans Biomed Eng. 2004;51:1932–1943. [PubMed] 46. Panerai RB, Eames PJ, Potter JF. Multiple coherence of cerebral blood flow velocity in humans. Am J Physiol Heart Circ Physiol. 2006;291:H251–H259. [PubMed] 47. Mitsis GD, Zhang R, Levine BD, Marmarelis VZ. Cerebral hemodynamics during orthostatic stress assessed by nonlinear modeling. J Appl Physiol. 2006;101:354–366. [PubMed] 48. Diehl RR, Diehl B, Sitzer M, Hennerici M. Spontaneous oscillations in cerebral blood flow velocity in normal humans and in patients with carotid artery disease. Neurosci Lett. 1991;127:5–8. [PubMed] 49. Karemaker JM. Analysis of blood pressure and heart rate variability: Theoretical considerations. In: Low PA, editor. Clinical Autonomic Disorders: Evaluation and Management. 2 ed. Philadelphia: Lippincott-Raven Publishers; 1997. pp. 309–322. 50. Kuo TB, Chern CM, Sheng WY, Wong WJ, Hu HH. Frequency domain analysis of cerebral blood flow velocity and its correlation with arterial blood pressure. Journal of Cerebral Blood Flow & Metabolism. 1998;18:311–318. [PubMed] 51. Kitney RI, Fulton T, McDonald AH, Linkens DA. Transient interactions between blood pressure, respiration and heart rate in man. Journal of Biomedical Engineering. 1985;7:217–224. [PubMed] 52. Novak V, Novak P, de Champlain J, Le Blanc AR, Martin R, Nadeau R. Influence of respiration on heart rate and blood pressure fluctuations. J Appl Physiol. 1993;74:617–626. [PubMed] 53. Eames PJ, Blake MJ, Dawson SL, Panerai RB, Potter JF. Dynamic cerebral autoregulation and beat to beat blood pressure control are impaired in acute ischaemic stroke. J Neurol Neurosurg Psychiatry. 2002;72:467–472. [PubMed] 54. Dawson SL, Panerai RB, Potter JF. Serial changes in static and dynamic cerebral autoregulation after acute ischaemic stroke. Cerebrovasc Dis. 2003;16:69–75. [PubMed] 55. Kwan J, Lunt M, Jenkinson D. Assessing dynamic cerebral autoregulation after stroke using a novel technique of combining transcranial Doppler ultrasonography and rhythmic handgrip. Blood Press Monit. 2004;9:3–8. [PubMed] 56. Griffith DN, Saimbi S, Lewis C, Tolfree S, Betteridge DJ. Abnormal cerebrovascular carbon dioxide reactivity in people with diabetes. Diabet Med. 1987;4:217–220. [PubMed] 57. Zvan B, Zaletel M, Pretnar Oblak J, Pogacnik T, Kiauta T. The middle cerebral artery flow velocities during head-up tilt testing in diabetic patients with autonomic nervous system dysfunction. Cerebrovasc Dis. 2003;15:270–275. [PubMed] 58. Novak V, Yang AC, Lepicovsky L, Goldberger AL, Lipsitz LA, Peng CK. Multimodal pressure-flow method to assess dynamics of cerebral autoregulation in stroke and hypertension. Biomed Eng Online. 2004;3:39. [PubMed] 59. Lipsitz LA, Mukai S, Hammer J, Gagnon M, Babikian VL. Dynamic regulation of middle cerebral artery blood flow velocity in aging and hypertension. Stroke. 2000;31:1897–1903. [PubMed] 60. Wu Z, Huang NE. Ensemble Empirical Mode Decomposition: a noise-assisted data analysis method. Centre for Ocean-Land-Atmosphere Studies, Tech Rep No. 2005:193. 61. Gabor D. Theory of Communication. J IEE (London). 1946;93(III):429–457. 62. Zweig MH, Campbell G. Receiver-operating characteristic (ROC) plots: a fundamental evaluation tool in clinical medicine. Clin Chem. 1993;39:561–577. [PubMed] 63. Bramble DM, Carrier DR. Running and breathing in mammals. Science. 1983;219:251–256. [PubMed] 64. Tass P, Rosenblum MG, Weule J, Kurths J, Pikovsky A, Volkmann J, et al. Detection of n : m phase locking from noisy data: Application to magnetoencephalography. PHYSICAL REVIEW LETTERS. 1998;81:3291–4329. 65. Tiecks FP, Lam AM, Aaslid R, Newell DW. Comparison of static and dynamic cerebral autoregulation measurements. Stroke. 1995;26:1014–1019. [PubMed] 66. Hamner JW, Cohen MA, Mukai S, Lipsitz LA, Taylor JA. Spectral indices of human cerebral blood flow control: responses to augmented blood pressure oscillations. J Physiol. 2004;559:965–973. [PubMed] 67. Symon L, Held K, Dorsch NW. A study of regional autoregulation in the cerebral circulation to increased perfusion pressure in normocapnia and hypercapnia. Stroke. 1973;4:139–147. [PubMed] 68. Aaslid R, Lindegaard KF, Sorteberg W, Nornes H. Cerebral autoregulation dynamics in humans. Stroke. 1989;20:45–52. [PubMed] 69. Panerai RB, Rennie JM, Kelsall AW, Evans DH. Frequency-domain analysis of cerebral autoregulation from spontaneous fluctuations in arterial blood pressure. Med Biol Eng Comput. 1998;36:315–322. [PubMed] |
PubMed related articles
Your browsing activity is empty. Activity recording is turned off. |
||||||||||||||||||||||||||||||||||||||||||||||||||||||||
Phys Rev Lett. 2001 Oct 15; 87(16):168105.
[Phys Rev Lett. 2001]J Math Biol. 1992; 30(8):827-38.
[J Math Biol. 1992]Physica A. 2004 Jun; 337(1-2):307-18.
[Physica A. 2004]Phys Rev Lett. 1993 Mar 1; 70(9):1343-6.
[Phys Rev Lett. 1993]Comput Cardiol. 2002; 29():137-40.
[Comput Cardiol. 2002]Biomed Eng Online. 2004 Oct 25; 3(1):39.
[Biomed Eng Online. 2004]JAMA. 2000 Apr 26; 283(16):2122-7.
[JAMA. 2000]Stroke. 1995 Oct; 26(10):1801-4.
[Stroke. 1995]Stroke. 2004 Apr; 35(4):848-52.
[Stroke. 2004]Am J Physiol. 1998 Jan; 274(1 Pt 2):H233-41.
[Am J Physiol. 1998]Biomed Eng Online. 2004 Oct 25; 3(1):39.
[Biomed Eng Online. 2004]Physica A. 2008 Apr 1; 387(10):2279-2292.
[Physica A. 2008]Ann Biomed Eng. 2002 Apr; 30(4):555-65.
[Ann Biomed Eng. 2002]J Appl Physiol. 2006 Jul; 101(1):354-66.
[J Appl Physiol. 2006]Proc Natl Acad Sci U S A. 1998 Apr 28; 95(9):4816-21.
[Proc Natl Acad Sci U S A. 1998]Phys Rev E Stat Nonlin Soft Matter Phys. 2006 Mar; 73(3 Pt 1):031915.
[Phys Rev E Stat Nonlin Soft Matter Phys. 2006]Physica A. 2008 Apr 1; 387(10):2279-2292.
[Physica A. 2008]Stroke. 1997 Sep; 28(9):1686-92.
[Stroke. 1997]Am J Physiol. 1998 Jan; 274(1 Pt 2):H233-41.
[Am J Physiol. 1998]Neurosci Lett. 1991 Jun 10; 127(1):5-8.
[Neurosci Lett. 1991]Physica A. 2008 Apr 1; 387(10):2279-2292.
[Physica A. 2008]J Neurol Neurosurg Psychiatry. 2002 Apr; 72(4):467-72.
[J Neurol Neurosurg Psychiatry. 2002]Cerebrovasc Dis. 2003; 15(4):270-5.
[Cerebrovasc Dis. 2003]Biomed Eng Online. 2004 Oct 25; 3(1):39.
[Biomed Eng Online. 2004]Stroke. 1995 Oct; 26(10):1801-4.
[Stroke. 1995]Stroke. 2000 Aug; 31(8):1897-903.
[Stroke. 2000]Stroke. 1995 Oct; 26(10):1801-4.
[Stroke. 1995]Am J Physiol. 1998 Jan; 274(1 Pt 2):H233-41.
[Am J Physiol. 1998]Proc Natl Acad Sci U S A. 1998 Apr 28; 95(9):4816-21.
[Proc Natl Acad Sci U S A. 1998]Proc Natl Acad Sci U S A. 1998 Apr 28; 95(9):4816-21.
[Proc Natl Acad Sci U S A. 1998]Proc Natl Acad Sci U S A. 1998 Apr 28; 95(9):4816-21.
[Proc Natl Acad Sci U S A. 1998]Biomed Eng Online. 2004 Oct 25; 3(1):39.
[Biomed Eng Online. 2004]Physica A. 2008 Apr 1; 387(10):2279-2292.
[Physica A. 2008]Biomed Eng Online. 2004 Oct 25; 3(1):39.
[Biomed Eng Online. 2004]Physica A. 2008 Apr 1; 387(10):2279-2292.
[Physica A. 2008]Physica A. 2008 Apr 1; 387(10):2279-2292.
[Physica A. 2008]Clin Chem. 1993 Apr; 39(4):561-77.
[Clin Chem. 1993]Phys Rev E Stat Phys Plasmas Fluids Relat Interdiscip Topics. 1999 Jul; 60(1):857-70.
[Phys Rev E Stat Phys Plasmas Fluids Relat Interdiscip Topics. 1999]Phys Rev E Stat Nonlin Soft Matter Phys. 2006 Mar; 73(3 Pt 1):031915.
[Phys Rev E Stat Nonlin Soft Matter Phys. 2006]Science. 1983 Jan 21; 219(4582):251-6.
[Science. 1983]Stroke. 2003 Aug; 34(8):1871-5.
[Stroke. 2003]Stroke. 1995 Jun; 26(6):1014-9.
[Stroke. 1995]Biomed Eng Online. 2004 Oct 25; 3(1):39.
[Biomed Eng Online. 2004]Am J Physiol Heart Circ Physiol. 2001 May; 280(5):H2162-74.
[Am J Physiol Heart Circ Physiol. 2001]Stroke. 1995 Oct; 26(10):1801-4.
[Stroke. 1995]Clin Auton Res. 1998 Feb; 8(1):7-12.
[Clin Auton Res. 1998]Am J Physiol. 1998 Jan; 274(1 Pt 2):H233-41.
[Am J Physiol. 1998]Stroke. 2004 Apr; 35(4):848-52.
[Stroke. 2004]Neurol Res. 1997 Dec; 19(6):634-40.
[Neurol Res. 1997]Am J Physiol Heart Circ Physiol. 2006 Jul; 291(1):H251-9.
[Am J Physiol Heart Circ Physiol. 2006]Phys Rev E Stat Nonlin Soft Matter Phys. 2006 Mar; 73(3 Pt 1):031915.
[Phys Rev E Stat Nonlin Soft Matter Phys. 2006]Am J Physiol Heart Circ Physiol. 2006 Jul; 291(1):H251-9.
[Am J Physiol Heart Circ Physiol. 2006]Ann Biomed Eng. 2002 Apr; 30(4):555-65.
[Ann Biomed Eng. 2002]IEEE Trans Biomed Eng. 2004 Nov; 51(11):1932-43.
[IEEE Trans Biomed Eng. 2004]J Appl Physiol. 2006 Jul; 101(1):354-66.
[J Appl Physiol. 2006]Physica A. 2008 Apr 1; 387(10):2279-2292.
[Physica A. 2008]Physica A. 2008 Apr 1; 387(10):2279-2292.
[Physica A. 2008]Physica A. 2008 Apr 1; 387(10):2279-2292.
[Physica A. 2008]