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Important influence of respiration power spectra is largely ignored on human R-R interval TROY E. BROWN, LARRY A. BEIGHTOL, JUNKEN KOH, AND DWAIN L. ECKBERG Departments of Medicine and Physiology, Hunter Holmes McGuire Department of Veterans Affairs Medical Center and Medical Collegeof Virginia, Richmond, Virginia 23249 heart rate; respiration rhythmia rate; tidal volume; respiratory sinus ar- orheartratesareused widely as indexes of the level of autonomic traffic to the heart. This usage has its origin in a study published by Katona and Jih (18), who showed that in anesthetized dogs with constant breathing rates respiration-related peak-valley R-R interval fluctuations (respiratory sinus arrhythmia) are related linearly to absolute vagal firing rates. On the basis of this empirical observation, R-R interval fluctuations have been promoted as faithful noninvasive quantitative estimates of human vagal-cardisc nerve traffic. In recent years, the time-domain method used by Katona and Jih has been supplanted by frequency-domain methods. Some workers consider power spectral density or autoregressive approaches to FLUCTUATIONSOFR-RINTERVALS 2310 be superior to time-domain analyses of R-R intervals because the former approaches exclude random fluctuations and may provide quantitative information on the level of sympathetic- as well as vagal-cardiac neural outflow (27). Several studies have shown that respirato ry rate and tidal volume exert major influ .ences on R-R interval or heart rate fluctuations (8, 16, 21, 37). This genre of research is important because if fluctuations of R-R intervals are to be taken as valid noninvasive indexes of autonomic neural traffic, then they should reflect such traffic faithfully and should not be influenced importantly by respiratory-autonomic interactions unrelated to net neural outflow. Our study had two goals. First, we determined the effects of different voluntarily controlled respiratory rates and tidal volumes on R-R interval power spectra. Second, we surveyed published literature to learn how workers in this field have dealt with the potential influence of respiration on these measurements. Our results show that respiration exerts a strong influence on low-frequency as well as respiratory frequency R-R interval power spectra and that this influence is largely ignored in published research. METHODS Subjects. Nine healthy subjects (8 men and 1 woman; age 23-32 yr) were studied in recumbency. Six of the subjects had been studied previously (8), and three were studied prospectively. The prospective study was identical to the earlier study in all important details (see below). This research was approved by the human investigation committees of the Hunter Holmes McGuire Department of Veterans Affairs Medical Center and the Medical College of Virginia. All volunteers gave their informed written consent to participate in this research. Measurements. We recorded the electrocardiogram, integrated tidal volume [Fleisch pneumotachograph for the retrospective study and transit-time ultrasonic breath analyzer (GHG Medizin-Elektronik, Zurich, Switzerland) for the prospective study], and end-tidal CO, concentration (infrared analyzer) on FM tape. Respiratory control. Subjects breathed with an auditory Downloaded from http://jap.physiology.org/ by 10.220.33.2 on October 1, 2016 BROWN,TROY E., LARRY A. BEIGHTOL,JUNKENKOH,AND L. ECKBERG. Important influence of respiration on human R-R interval power spectra is largely ignored. J. Appl. Physiol. 75(5): 2310-2317,1993.-Frequency-domain analyses of RR intervals are used widely to estimate levels of autonomic neural traffic to the human heart. Because respiration modulates autonomic activity, we determined for nine healthy subjects the influence of breathing frequency and tidal volume on R-R interval power spectra (fast-Fourier transform method). We also surveyed published literature to determine current practices in this burgeoning field of scientific inquiry. Supine subjects breathed at rates of 6, 7.5, 10, 15, 17.1, 20, and 24 breaths/min and with nominal tidal volumes of 1,000 and 1,500 ml. R-R interval power at respiratory and low (0.06-0.14 Hz) frequencies declined significantly as breathing frequency increased. R-R interval power at respiratory frequencies was significantly greater at a tidal volume of 1,500 than 1,000 ml. Neither breathing frequency nor tidal volume influenced average R-R intervals significantly. Our review of studies reporting human R-R interval power spectra showed that 51% of the studies controlled respiratory rate, 11% controlled tidal volume, and 11% controlled both respiratory rate and tidal volume. The major implications of our analyses are that breathing parameters strongly influence low-frequency as well as respiratory frequency R-R interval power spectra and that this influence is largely ignored in published research. DWAIN RESPIRATORY MODULATION OF AUTONOMIC OUTFLOW 2311 ’ In this article, we use the term respiratory frequency to signify R-R interval power at respiratory rates and low frequency to signify power between 0.06 and 0.14 Hz. The 0.06- to 0.14-Hz range was chosen to encompass R-R interval frequencies that are considered to reflect sympathetic outflow (24). Resting humans also have R-R interval spectral power at lower frequencies (~0.06 Hz), which are thought to reflect thermoregulatory oscillations (20). We did not evaluate the lowest portion of each subject’s power spectra. Downloaded from http://jap.physiology.org/ by 10.220.33.2 on October 1, 2016 signal at rates of 6, 7.5, 10, 15, 17.1, 20, and 24 breaths/ 20 log( output /input). Inpu t was the tidal volume in min. They controlled their tidal volumes at nominal lev- liters, and output was the total absol.ute power of the els of 1,000 and 1,500 ml according to signals displayed respiratory frequency or low-frequency portion of the Ron a calibrated oscilloscope. Subjects wore a face mask R interval power spectrum. connected to the pneumotachograph or transit-time ulWe evaluated data for normality with the Kolmotrasonic breath analyzer and a three-way respiratory gorov-Smirnov test (22). We made statistical comparivalve (Ewald Koegel, San Antonio, TX, for the retrospecsons on normally distributed data with repeated-meative study and Hans Rudolph, Kansas City, MO, for the sures analysis of variance to test for significant individprospective study). ual differences among mean integrated R-R interval Experimental protocol. Initial measurements were ob- power at different respiratory rates and tidal volumes. tained at the lowest ventilation rate, 6 breaths/min with Then we used Scheffe’s test to identify significantly difa tidal volume of 1,000 ml. The end-tidal CO, concentraferent means. We considered differences significant tion measured at this level of ventilation was maintained when P 5 0.05. Two-tailed tests were used. at all other breathing frequencies and tidal volumes by Literature reuiew. We searched the National Library of addition of CO, to the breathing line. The remaining res- Medicine Medline data base for all references between piratory intervals at the two tidal volumes were used in 1966 and the first quarter of 1991 to “power spectra” or random sequence. Data for each respiratory rate and ti“power spectrum” and “heart rate” or “R-R interval” in dal volume were recorded during one continuous 128-s humans. We examined the articles identified by this period. Breathing was not controlled between data col- search, references cited in those articles, and other referlection periods. ences known to us to determine how often respiratory Data analyses. Electrocardiograms and tidal volumes rate a.nd tidal volume were measured and controlled.2 were digitized (CODAS, Dataq Instruments, Akron, OH) Then we searched the Science Citation Index (Institute with a Compaq 386/25 microcomputer. Power spectral for Scientific Information, Philadelphia, PA) to deteranalyses were derived from R-R interval time series with mine how many times each of these references was cited a custom program developed for use with a software from 1974 to 1991. We report results from the most influpackage (DADiSP, DSP Development, Cambridge, MA). ential articles, those cited 210 times, individually. The technique used for estimation of R-R interval power was based on the Welch algorithm of averaging periodo- RESULTS grams (42), which was implemented according to the Experimental data. Figure 1 depicts the digitized elecmethod of Rabiner et al. (31). A 128-s time series of beatto-beat R-R intervals was fitted to a cubic spline func- trocardiogram, tidal volume, and R-R interval signals tion, interpolated at 8 Hz to obtain equidistant time in- from one subject during breathing at respiratory rate of tervals, and divided into seven equal overlapping seg- 6,15, or 24 breaths/min and at a nominal tidal volume of 1,000 ml. The rhythmic R-R interval changes during ments. Each segment was in turn detrended, Hanning controlled breathing in this subject were similar to those filtered, and fast-Fourier transformed to its frequency representation. The modified periodograms were aver- observed in other subjects. In this subject, R-R interval aged to produce the spectrum estimate. The method we variability decreased as breathing frequency increased; used yielded a frequency resolution of 0.0078 Hz and a at the slowest breathing rate, maximum R-R intervals were longer and minimum R-R intervals were shorter flat response over the frequencies of interest. We measured total absolute R-R interval power at low than at the two fastest breathing rates. Subjects maintained average respiratory rates within and respiratory frequencies over fixed frequency ranges. We determined the respiratory frequency power band- 0.3% of targeted levels and tidal volumes at -7% below width as follows: 1) power spectral analyses were per- targeted levels. End-tidal CO, concentrations were similar (P > 0.05) at all breathing frequencies and tidal volformed on each respiratory signal, 2) the respiratory umes and ranged between 4.7 and 6%. In all subjects, bandwidths were determined (95% of peak respiratory end-tidal CO, was maintained within 0.25% of targeted power), and 3) the average bandwidth at each respiratory frequency was calculated (all were 0.08 Hz). The 0.08-Hz levels. Figure 2 shows average R-R intervals at all bandwidth derived from analysis of respiration was used breathing rates and both tidal volumes. There were no to integrate R-R intervals. (Thus, R-R interval spectral statistically significant differences among mean R-R inpower was integrated at frequencies to.04 Hz and cen- tervals (which ranged between 0.905 and 1.039 s) at different respiratory rates and tidal volumes. All data were tered on each respiratory frequency.) A fixed bandwidth, centered at 0.1 Hz (0.06-0.14 Hz), was also used for low- normally distributed. Figure 3 shows average R-R interval power spectral frequency spectral area calculations.’ We calculated gain-frequency responses to construct Bode plots as waveforms at all respiratory rates and at a nominal tidal 2312 RESPIRATORY n MODULATION OF AUTONOMIC 20 30 OUTFLOW 1.2 0 L 2 1.0 l t 0.8 Qf I f~ 0.6 0 time FIG. R-R 1. Experimental interval variability records from 1 subject. Respiratory rates was greatest at slowest breathing rate. shown volume of 1,000 ml. At each breathing interval, R-R interval power spectra were concentrated at the breathing frequency. Spectral power declined precipitously when the respiratory rate was increased from 10 to 15 breaths/min. Figure 4 depicts average integrated respiratory frequency and low-frequency R-R interval power and gain. Power at the respiratory frequency (Fig. 4A) declined significantly as respiratory rate increased (P < 0.001); a major reduction occurred between respiratory rates of 7.5 and 15 breaths/min at both tidal volumes (P < 0.05). Respiratory frequency power was significantly greater at tidal volumes of 1,500 than 1,000 ml (by an average of 1.50 .b 1000 1500 0 0 ul z 0 4 8 15 (B), and 24 breaths/min 12 0 2.5 5 7.5 (s) are 6 (A), (C). 17%; range, 4-33s; P < 0.05). There was a highly significant linear correlation between R-R interval power at respiratory frequencies and R-R interval standard deviations (r = 0.87 at 1,000 ml and 0.93 at 1,500 ml). Power at low frequencies (Fig. 4C) also declined signifi- ml ml 1.25 L a, c 'CY I fx c 1.00 0.75 F/i E 0.50 5 respiratory 10 15 rate 2. Mean (+-SE) of R-R interval tidal volume. There were no statistically mean R-R intervals. FIG. 20 25 (breaths/min) at each respiratory rate and significant differences among //-31 2 FIG. 3. Average R-R interval power spectra at respiratory rates of 6, 7.5, 10, 15, 17.1,>0, and 24 breaths/m& and nominal tidal volume of 1,000 ml. Respiratory frequency power declines as respiratory rate increases. Downloaded from http://jap.physiology.org/ by 10.220.33.2 on October 1, 2016 cll RESPIRATORY MODULATION OF AUTONOMIC OUTFLOW 2313 -25 n 5 5 25 15 respiratory rate (breaths/min) cantly as respiratory rate increased (P < 0.001). Increases of low-frequency power at rates of 510 breaths/ min resulted from overlap of respiratory frequency and low-frequency bands (Fig. 3). Low-frequency power at the two tidal volumes was similar (P > 0.05). The gain-frequency response (Bode plot) of the respiratory frequency component of R-R interval power spectra documented significantly decreasing system gain with increasing respiratory rate (P < 0.001; Fig. 4B). A nonlinear segmented model fit (SAS Institute, Cary, NC) analysis suggested that the gain-respiratory rate response relationship was best described by a plateau region between 6 and 10 breaths/min (0.10-0.17 Hz) for both tidal volumes. The plateau region was succeededby roll-offs of 10.6 dB/decade for the l,OOO-ml tidal volume and 14.7 dB/decade for the 1,500-ml tidal volume. Gain of respiratory frequency R-R interval power spectra at the lowest breathing frequencies (6-10 breaths/min) was significantly greater than that at all other breathing frequencies (15-24 breaths/min) for both tidal volumes (P < 0.05). Respiratory frequency system gain was significantly greater at tidal volumes of 1,500 than 1,000 ml (by an average of 7%; range, 4-13%; P < 0.001). The gain-frequency response of the low-frequency component of the R-R interval power spectra also documented significantly decreasing system gain with increasing respiratory rate (P < 0.001; Fig. 40). Gain of low-frequency R-R interval power spectra at the two lowest breathing frequencies (6 and 7.5 breaths/min) was significantly greater than that at the highest breathing frequencies (lo-24 breathsimin) for both tidal volumes (P < 0.001). Gain at 10 breaths/min also was significantly greater than that at higher breathing frequencies (15-24 breaths/min; P < 0.05). Low-frequency system gains at the two tidal volumes were nearly identical (P > 0.05). Literature review. Our medical literature search identified 147 articles that reported use of R-R interval or heart rate power spectral analysis in humans.3 Table 1 summarizes these articles. Respiratory rate and tidal volume were controlled in only 11% of studies in which control was possible. Our Science Citation Index search indicated that 23 of the 147 articles were cited 210 times. Table 2 summarizes these articles. There were 133 citations of the article by Pagani et al. (27) and 233 citations of the remaining articles. Four articles (6, 19, 29, 33) dealt with methods and modeling and so were excluded. Thirteen of the remaining 19 articles (68.4%) included measurements of respiratory rate. Three articles (4, 25, 34) involved ambulatory subjects and thus were excluded. Four of the remaining 16 studies (25%) included measurements of tidal volume. Control of respiratory rate and tidal volume was impossible for studies that involved ambulatory subjects and infants and for those that involved psychological treatments. Of the remaining eight studies in which respiratory rate and tidal volume could have been controlled, respiratory rate was controlled in six (75%) and tidal volume was controlled in one (12.5%). DISCUSSION We studied the influence of respiratory rate and tidal volume on human R-R interval power spectra and sur3 A complete list of the articles uncovered by our search can be obtained from the National Auxiliary Publications Service, c/o Microfiche Publications, PO Box 3513, Grand Central Station, NY 10017 (NAPS No. 05059). Downloaded from http://jap.physiology.org/ by 10.220.33.2 on October 1, 2016 FIG. 4. Effects of respiratory rate on R-R interval power spectra at nominal tidal volumes of 1,000 and 1,500 ml. Data are means + SE. A: respiratory frequency power significantly declined as respiratory rate increased (P < 0.001). Power was greater at tidal volumes of 1,500 than 1,000 ml (P < 0.05). B: respiratory frequency gain also significantly declined with increasing respiratory rate (P < 0.001). * There was significant reduction in gain from lower (610 breathsimin) to higher breathing rates (15 24 breaths/min; P < 0.05). Gain was significantly higher (P < 0.001) at 1,500- than l,OOOml tidal volume. C: low-frequency power significantly declined as respiratory rate increased (P < 0.001). Power at 2 tidal volumes was similar. D: low-frequency gain also significantly decreased as respiratory rate increased (P < 0.001). ** Gain at 2 lower breathing frequencies (6 and 7.5 breathsimin) was greater than at all other breathing frequencies (lo-24 breaths/min; P < 0.001). * Additionally, lobreaths/min respiratory rate gain was significantly greater than higher respiratory rates (15-24 breathsjmin; P < 0.05). Values for 2 tidal volumes were similar. 2314 RESPIRATORY MODULATION TABLE 1. Review of publications reporting R-R interval power spectra in humans n Articles reviewed Possibility of respiratory Measured respiratory Possibility of tidal volume Measured tidal volume Possibility of respiratory Controlled respiratory Possibility of tidal volume Controlled tidal volume Controlled respiratory rate measurement rate measurement rate control rate control rate and tidal n, no. of publications; Percentages, in which possibility of measurement volume Percentages 147 119 61 90 20 65 24 65 7 7 percentage of published or control was realized. 51 22 37 11 11 studies AUTONOMIC OUTFLOW power spectra at fewer respiratory rates (5 vs. 7 in our study), at more (6 vs. 2 in our study) and different (4OO1,400 vs. 1,000 and 1,500 ml in our study) tidal volumes, and at different experimentally maintained average endtidal CO, concentrations (3.5-4.6 vs. 4.7-6% in our study). Other studies also document a dependence of R-R interval (or heart rate) fluctuations on respiratory parameters. The study most similar to ours is that of Hirsch and Bishop (16), who characterized heart rate fluctuations in the time domain as respiration-related peak-valley R-R intervals (the longest minus the shortest R-R interval during each breath). Hirsch and Bishop derived Bode plots very similar to ours with a plateau region, a corner frequency at 0.11 Hz, and a linear roll-off of 21 dB/decade. They also showed that peak-valley R-R interval changes and the steepness of the roll-off portion are directly proportional to tidal volume. Our more limited data (Fig. 4B) are concordant with the last observation. Hirsch and Bishop did not indicate if the relationship between tidal volume and respiratory R-R interval changes was statistically significant. However, their Fig. 4 [and data published by Eckoldt and Schubert (lo)] suggests that tidal volume may be an important determinant of such changes: in one subject, sixfold increases of tidal volume led to approximately threefold increases of slowbreath peak-valley R-R interval intercepts. Saul et al. (35), who used frequency-domain methods similar to ours but a broad-band respiratory frequency input, also documented a critical dependence of R-R interval power spectra on breathing-rate. Although the 2. Influential R-R interval power spectral research on humans TABLE Respiratory Measured Authors Pagani et al. (27) Saul et al. (34) Gordon et al. (13) Myers et al. (25) Porges et al. (29) Rohmert et al. (32) Hyndman and Gregory (17) Baselli et al. (2) De Boer et al. (7) Eckberg et al. (9) Walter and Porges (41) Gordon et al. (12) Rompelman et ai. (33) Lishneretal=(23) ~~~n~~~~PEgreY(ll) Kit-ey et al’ tlg) Nugentand*Finley(26) Vybiral et al. (40) Bigger et al. (4) ~~~~~~~“,$~) Shannonet g,. (38) No. of Citations Parameters Controlled Rate Volume Rate Volume 133 33 30 30 25 25 24 23 23 22 22 18 17 16 + + + x + + x x x x + + x x x x X X + + + + x + + + x - + X X x + X X x - ti + - -- x- x- 12 12 12 11 11 10 10 x + + x + x x - x x + x x x + x x x x x - - Reference no. is given in parentheses. +, Parameter measured or controlled; -, parameter not measured or controlled; X, research design prevented measurement or control of narameter or article was devoted to methods or modeling. Downloaded from http://jap.physiology.org/ by 10.220.33.2 on October 1, 2016 veyed the medical literature to learn how scientists who employ power spectral analyses in their research have dealt with respiration. We reached three major conclusions. First, respiratory rate and tidal volume strongly influence low-frequency as well as respiratory frequency R-R interval power. Second, because the breathing parameters we studied did not alter average R-R intervals, variations of respiration distribute autonomic outflow within the respiratory cycle but do not alter net levels of autonomic traffic. Thus, vagal activity during the various phases of the respiratory cycle varied considerably, whereas the overall tonic level remained constant. Third, most of the scientists who performed frequency-domain R-R interval analyses neither controlled nor accounted for the strong influence of respiration on their results. Respiratory influences on R-R interval power spectra at respiratory frequencies. Breathing rates of - 10 breaths/ min or less yielded maximum R-R interval power. Breathing rates of >lO breaths/min yielded reduced levels of R-R interval power in an inverse relationship to breathing rate (Figs. 3 and 4, A and B). However, over the range we studied, breathing rate did not significantly alter average R-R intervals (Fig. 2). Our study effectively doubles the published literature on R-R interval power spectra in subjects who breathed at multiple experimentally controlled breathing rates and tidal volumes; we are aware of only 0ne similar article (37). Selman et al. (37), in an excellent but rarely cited study, obtained results that differed from ours qualitatively and quantitatively. First, they found an inverse relationship between tidal volume and system gain. We found a direct relationship (Fig. 4B). Second, they obtained a Bode plot described by a distinct “M shape” such that system gains were much higher at breathing rates of 10 and 16 than at 12 breaths/min. In our study (Figs. 3 and 4), there was only a hint of an M shape. Third, they did not define a convincing roll-off of system gain at higher breathing frequencies (probably because they studied only 5 breathing frequencies). We found a steady decline of R-R interval power at breathing rates above -10 breaths/min. Fourth, they did not report lowfrequency power separately. The methods used by Selman et al. differed from ours in several respects. They studied subjects whose ages spanned a wider range (2652 vs. 23-32 yr in our study). Their subjects were seated and ours were supine. They measured R-R interval OF RESPIRATORY MODULATION AUTONOMIC OUTFLOW 2315 interval power, however, there were only trivial changes of mean R-R intervals (Fig. 2). This observation is related to one made by Grossman et al. (14), who found that in ,&blocked subjects respiration-induced changes of peak-valley R-R intervals were not associated with changes of mean R-R intervals. We suggest that within subjects different breathing frequencies and depths distribute vagal firing within the respiratory cycle but do not alter the net level of vagal outflow. Literature review. We identified and reviewed 147 articles that reported measurements of human R-R interval (or heart rate) power spectra to determine the prevailing practices of workers in this field. Only about one-half of the studies involved measurement of breathing rate and only about one-third involved control of breathing rate. We also determined the number of times each of the 147 articles had been cited to identify the most influential studies in this field. Authors of the most heavily cited studies (Table 2) were more likely to recognize the importance of measurement and control of respiratory rate than those of less cited studies. However, very few (only 11%) of the studies involved control of tidal volume. Pagani et al. (27), authors of the most heavily cited article in this field, discount the importance of control of respiration for frequency-domain analyses of R-R intervals. They argue that voluntary control of breathing increases power at respiratory frequencies (and net vagal outflow) and decreases power at low frequencies. This conclusion was based on a comparison of R-R interval power (as delimited by an autoregressive algorithm) at respiratory frequencies during spontaneous breathing (at an average rate of 14.4 breaths/min) and during controlled breathing (at an average rate of 19.8 breaths/ min). The approach of Pagani et al. may have been flawed by their comparison of R-R interval power spectra at different breathing rates. However, two other groups compared respiration-related R-R interval fluctuations during controlled and spontaneous breathing at the same breathing rates and concluded that voluntary control of breathing does not alter R-R interval fluctuations. Hirsch and Bishop (16) found that the plateau frequency intercept in 17 subjects was similar during controlled and spontaneous breathing. Eckberg et al. (9) found that respiration-related R-R interval fluctuations (and muscle sympathetic nerve traffic) in eight subjects were nearly superimposable during controlled and spontaneous breathing. Potential limitations. First, use of fast-Fourier transform methods for power spectral analysis requires that signals be stationary. The mathematical concept of stationarity may not be applicable to the highly variable signals that can be obtained from conscious human volunteers, and we did not test our data for stationarity. However, our subjects maintained exquisite control of breathing frequency during data collection periods. Moreover, our results (Fig. 4) are very similar to those of Hirsch and Bishop (16), who used time-domain methods. Second, in our analysis, actual tidal volumes used by our subjects (-930 and 1,400 ml) were larger than the average tidal volumes studied by others. However, Bendixen et al. (3) showed that almost one-half of the healthy women they studied had resting tidal volumes as high as the smaller tidal volume we used. Downloaded from http://jap.physiology.org/ by 10.220.33.2 on October 1, 2016 shapes of the transfer function of Saul et al. and our Bode plot are similar, there may be quantitative differences. We found (Fig. 4B) that the plateau height and the roll-off slope are influenced significantly by tidal volume. In the study of Saul et al., tidal volumes and respiratory rates covaried; therefore, the separate influence of tidal volume on the height of the plateau and the slope of the roll-off could not be determined. Respiratory influences on R-R interval power spectra at low frequencies. A major rationale for study of low-frequency R-R interval fluctuations is that they reflect levels of sympathetic traffic to the heart. Although sympathetic nerve traffic also fluctuates at respiratory frequencies (9, 30), R-R interval responses to such rapid changes of sympathetic activity are small because of the sluggishness of adrenergically mediated sinus node responses. Our results (Fig. 4, C and D) indicate that slow breathing provokes major increases of low-frequency (0.06-0.14 Hz) R-R interval power. In literature involving R-R interval (or heart rate) power spectra, the terms respiratory frequency and high frequency are used interchangeably. Surprisingly, this literature does not anticipate that during periods of slow breathing respiratory frequency and low frequency overlap. Obviously, as breathing rate slows, the possibility that fluctuations of sympathetic nerve traffic contribute to respiratory frequency R-R interval changes increases (however, probably not as a step function). Under such circumstances, the view that changes of sympathetic outflow do not contribute to respiratory frequency power becomes increasingly untenable. It is highly unlikely that the greatly augmented low-frequency R-R interval power we recorded at slow breathing rates (Figs. 3 and 4C) reflects increased sympathetic neural outflow. Seals et al. (36) found that, although rapid breathing redistributes directly measured human (muscle, not cardiac) sympathetic nerve activity within the various phases of the respiratory cycle, it does not alter the net tonic level of sympathetic outflow within the overall cycle. R-R interval power spectra as noninvasive indexes of vagal-cardiac nerve traffic. Kollai and Mizsei (21) argued persuasively that respiratory rate and tidal volume should be factored into estimates of human vagal-cardiac nerve traffic. They compared peak-valley R-R interval changes during uncontrolled breathing and R-R interval shortening provoked by large-dose intravenous atropine (the current “gold standard” for quantification of resting vagal-cardiac nerve traffic in humans). They found a weak but significant (r = 0.61) linear correlation between peak-valley R-R intervals and atropine-induced R-R interval shortening. However, they also found that when respiratory interval and tidal volume were factoredin as coregressors this correlation was much stronger (r = 0.93). Our study raises new questions about the validity of R-R interval power spectra as quantitative indexes of vagal-cardiac neural traffic within individual subjects. Our data suggest that even with explicit knowledge (and control) of respiration, respiratory sinus arrhythmia may not reflect tonic vagal-cardiac neural traffic. 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Brown, Krug Life Sciences, 1290 Hercules, Suite 120, Houston, TX 77058. Address for reprint requests: D. L. Eckberg, Cardiovascular Physiology, Hunter Holmes McGuire Dept. of VA Medical Center, 1201 Broad Rock Blvd., Richmond, VA 23249. Received 25 January 1993; accepted in final form 25 May 1993. OUTFLOW 19. 153,1982. 20. KITNEY, R. I. Proceedings: entrainment of the human RR interval by thermal stimuli. J. Physiol. Lond. 252: 37P-38P, 1975. 21. KOLLAI, M., AND G. MIZSEI. Respiratory sinus arrhythmia is a limited measure of cardiac parasympathetic control in man. J. Physiol. Lond. 424: 329-342,199O. 22. LILLIEFORS, H. W. On the Kolmogorov-Smirnov test for normality with mean and variance unknown. J. Am. Stat. Assoc. 62: 399-402, 1967. 23. LISHNER, M., S. AKSELROD, V. MOR AVI, 0. Oz, M. DIVON, AND M. RAVID. Spectral analysis of heart rate fluctuations. A non-invasive, sensitive method for the early diagnosis of autonomic neuropathy in diabetes mellitus. J. Auton. New. Syst. 19: 119-125, 1987. 24. MALLIANI, A., M. PAGANI, F. LOMBARDI, AND S. CERUTTI. Cardio- Downloaded from http://jap.physiology.org/ by 10.220.33.2 on October 1, 2016 Implications of this study. Frequency-domain analyses of R-R intervals represent sophisticated attempts to estimate, noninvasively, levels of efferent autonomic neural traffic to the human heart. Our analysis shows that respiration influences both respiratory frequency and low-frequency R-R interval power spectra. We propose that, since the influence of respiration is so strong and pervasive, interpretation of R-R interval power spectra must be grounded on understanding of the respiratory patterns that shaped them. It may be inappropriate to use R-R interval power spectra obtained during brief recording sessions to gauge levels of efferent autonomic neural traffic if breathing rate and tidal volume are neither measured nor controlled. During brief recording sessions, breathing patterns of healthy subjects are highly variable (5,39), and a substantial percentage of breaths may occur at frequencies <9 and >20 breaths/min (15). Although the majority of healthy supine young subjects have respiratory power in the roll-off region, where small changes of breathing rate are likely to provoke large changes of respiratory frequency R-R interval power, some of the subjects have substantial respiratory power in the plateau region (40 breaths/min; J. A. Taylor, T. E. Brown, and D. L. Eckberg, unpublished data), where breathing rate is likely to sharply augment low-frequency R-R interval power. In conclusion, we studied the effects of respiratory rate and tidal volume on R-R interval power spectra. Our results indicate that respiratory parameters strongly influence both low-frequency and respiratory frequency R-R interval power spectra. 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