| Literature DB >> 35135852 |
Heta Helakari1,2,3, Vesa Korhonen4,2,3, Sebastian C Holst5, Johanna Piispala2,3,6, Mika Kallio2,3,6, Tommi Väyrynen4,2,3, Niko Huotari4,2,3, Lauri Raitamaa4,2,3, Johanna Tuunanen4,2,3, Janne Kananen4,2,3, Matti Järvelä4,2,3, Timo Tuovinen4,2,3, Ville Raatikainen4,2,3, Viola Borchardt4,2,3, Hannu Kinnunen7, Maiken Nedergaard8,9, Vesa Kiviniemi1,2,3.
Abstract
The physiological underpinnings of the necessity of sleep remain uncertain. Recent evidence suggests that sleep increases the convection of cerebrospinal fluid (CSF) and promotes the export of interstitial solutes, thus providing a framework to explain why all vertebrate species require sleep. Cardiovascular, respiratory and vasomotor brain pulsations have each been shown to drive CSF flow along perivascular spaces, yet it is unknown how such pulsations may change during sleep in humans. To investigate these pulsation phenomena in relation to sleep, we simultaneously recorded fast fMRI, magnetic resonance encephalography (MREG), and electroencephalography (EEG) signals in a group of healthy volunteers. We quantified sleep-related changes in the signal frequency distributions by spectral entropy analysis and calculated the strength of the physiological (vasomotor, respiratory, and cardiac) brain pulsations by power sum analysis in 15 subjects (age 26.5 ± 4.2 years, 6 females). Finally, we identified spatial similarities between EEG slow oscillation (0.2-2 Hz) power and MREG pulsations. Compared with wakefulness, nonrapid eye movement (NREM) sleep was characterized by reduced spectral entropy and increased brain pulsation intensity. These effects were most pronounced in posterior brain areas for very low-frequency (≤0.1 Hz) vasomotor pulsations but were also evident brain-wide for respiratory pulsations, and to a lesser extent for cardiac brain pulsations. There was increased EEG slow oscillation power in brain regions spatially overlapping with those showing sleep-related MREG pulsation changes. We suggest that reduced spectral entropy and enhanced pulsation intensity are characteristic of NREM sleep. With our findings of increased power of slow oscillation, the present results support the proposition that sleep promotes fluid transport in human brain.SIGNIFICANCE STATEMENT We report that the spectral power of physiological brain pulsation mechanisms driven by vasomotor, respiration, and cardiac rhythms in human brain increase during sleep, extending previous observations of their association with glymphatic brain clearance during sleep in rodents. The magnitudes of increased pulsations follow the rank order of vasomotor greater than respiratory greater than cardiac pulsations, with correspondingly declining spatial extents. Spectral entropy, previously known as vigilance and as an anesthesia metric, decreased during NREM sleep compared with the awake state in very low and respiratory frequencies, indicating reduced signal complexity. An EEG slow oscillation power increase occurring in the early sleep phase (NREM 1-2) spatially overlapped with pulsation changes, indicating reciprocal mechanisms between those measures.Entities:
Keywords: brain pulsations; fast fMRI; glymphatic clearance; sleep; slow-wave EEG; spectral power
Mesh:
Year: 2022 PMID: 35135852 PMCID: PMC8944230 DOI: 10.1523/JNEUROSCI.0934-21.2022
Source DB: PubMed Journal: J Neurosci ISSN: 0270-6474 Impact factor: 6.709
Figure 1.Data processing and exclusion of subjects. Twenty-five subjects were recruited and scanned in the study. The final analyses included 15 and 12 subjects, whose results are presented in the article. MREG, magnetic resonance encephalography; AASM, American Academy of Sleep Medicine; EtCO, end-tidal carbon dioxide; SpO, fingertip peripheral; ROI, region of interest.
Figure 2.Study protocol and exemplary signals of awake state and NREM sleep. , Study design through 1 week of sleep monitoring. Awake scanning session was performed on day 2 after a good night of sleep. Sleep scanning session was performed on day 5, the morning after a night of documented sleep deprivation. At the beginning of both sessions, subjects underwent a CANTAB test to evaluate reaction times. In the Awake scan session, two scans were recorded, (1) eyes open (A1–2) and (2), eyes closed. In the Sleep scan session two scans were taken, (1), a 10 min Sleep scan (S1–2) and (2) a 10 min Sleep scan (S3–4). Numbers (A1–2, S1–4) correspond to 5 min segments that were treated separately for further analysis. Percentage represents the average fraction of sleep during the scan segment. , Examples of electrophysiological and dynamic brain pulsations measured in the same subject while awake (100% awake) and sleeping (80% NREM stage 2; 20% NREM stage 1) for 5 min recordings. Thus, the power spectra were calculated for an entire 5 min segment. The data were measured simultaneously by 256 lead high density DC-EEG Oz-channel presented in , and fast 10 Hz magnetic resonance encephalography (MREG) (, ) covering the whole brain in the ≤5 Hz band. Both time and frequency domain data indicated increased power and amplitude of brain pulsations on transition from the EEG-verified fully awake state to NREM sleep. The dominant increase in very low-frequency pulsation power reshapes the power spectrum distribution and alters the spectral entropy of the EEG and MREG signals.
Figure 3.Spectral entropy of MREG decreases in line with increased amount of NREM sleep. , EEG sleep state data show that the amount and depth of sleep both increase as a function of scan segment. , Visual cortex SEROI spectral entropy of region of interest (visual cortex, SEROI) of MREG data predicts sleep and wakefulness across subjects (n = 12). Results indicate linear declines both in EEG sleep state and MREG SEROI values as a function of scan segment in the experiment. , Spectral entropy decreased significantly in posterior brain areas (p < 0.05, df 11). , The SEROI showed a drop in all subjects in the transition from wakefulness to EEG-verified sleep states in S2. , The receiver operating curve (ROC) curve of SEROI data indicate high accuracy, area under the curve (AUC) = 0.88 (p < 0.0001), in the ability to distinguish sleep (n = 30 Sleep segments) from awake data (n = 30 Awake segments). The model has a sensitivity of 93% and a specificity of 77%. p-value, p; Correlation coefficient, r; Montreal Neurologic Institute, MNI; Confidence interval, Cl.
The amount of NREM sleep was higher during the sleep scan session than in the awake scan session
| Awake scan session | Sleep scan session | ||||||
|---|---|---|---|---|---|---|---|
| Mean ± STD | A1 | A2 | EC | S1 | S2 | S3 | S4 |
| (%) | |||||||
| Wake | 99 ± 3 | 99 ± 3 | 68 ± 39 | 22 ± 19 | 11 ± 23 | 23 ± 32 | 22 ± 35 |
| N1 | 1 ± 3 | 1 ± 3 | 28 ± 39 | 47 ± 25 | 40 ± 33 | 40 ± 22 | 35 ± 30 |
| N2 | 0 | 0 | 4 ± 14 | 25 ± 19 | 46 ± 38 | 37 ± 29 | 37 ± 36 |
| N3 | 0 | 0 | 0 | 0 | 1 ± 3 | 0 | 0 |
| No REM sleep was observed. | |||||||
| NREM sleep (%) | 1 ± 3 | 1 ± 3 | 32 ± 40 | 72 ± 17 | 87 ± 21 | 77 ± 30 | 72 ± 35 |
Mean ± SD (%) of the amounts of wakefulness, NREM, and total sleep times were calculated from the number of sleep-scored EEG epochs in each condition. The highest amount of sleep was achieved in S2 (mean across subjects 87%). Unknown epochs are likely because of artifacts. A1, Awake 1 time segment, 5 min; A2, awake 2 time segment, 5 min; EC, 5 min; S1, sleep 1 time segment, 5 min; S2, sleep 2 time segment, 5 min; S3, sleep 3 time segment, 5 min; S4, sleep 4 time segment, 5 min. The n values represent the number of a total of 15 subjects with an available EEG for sleep scoring.
Respiratory and cardiac frequency ranges were determined from physiological EtCO2 and SpO2 signals
| Minimum | Peak | Maximum | ||
|---|---|---|---|---|
| Respiratory EtCO2 (Hz) | ||||
| Eyes open | 0.17 ± 0.06 | 0.27 ± 0.06 | 0.35 ± 0.05 | |
| Eyes closed | 0.13 ± 0.06 | 0.24 ± 0.06 | 0.32 ± 0.05 | |
| Sleep scan 1 | 0.17 ± 0.05 | 0.24 ± 0.04 | 0.31 ± 0.05 | |
| Sleep scan 2 | 0.16 ± 0.05 | 0.24 ± 0.05 | 0.32 ± 0.06 | |
| Cardiac SpO2 (Hz) | ||||
| Eyes open | 0.96 ± 0.10 | 1.07 ± 0.12 | 1.19 ± 0.16 | |
| Eyes closed | 0.90 ± 0.12 | 1.03 ± 0.13 | 1.19 ± 0.18 | |
| Sleep scan 1 | 0.81 ± 0.13 | 0.94 ± 0.16 | 1.09 ± 0.17 | |
| Sleep scan 2 | 0.82 ± 0.12 | 0.94 ± 0.16 | 1.11 ± 0.21 | |
Individually determined minimum and maximum values for lower and upper edge of the power peak were used for further analysis. Respiratory rate and heart rate decreased in NREM sleep versus awake based on the power peaking value. The n values represent the number of a total of 15 subjects with an available end-tidal carbon dioxide (EtCO2) and fingertip peripheral (SpO2) signals.
*p < 0.05;
**p < 0.01;
***p < 0.001.
Figure 4.NREM sleep sharply changes the power spectrum of physiological brain pulsations. , Global MREG power spectra and power sum difference (paired t test) between Awake and Sleep in very low frequency (0.008-0.1 Hz); , respiratory frequency (0.11–0.44 Hz); and , cardiac frequency (0.52–1.6 Hz) bands. The global very low and respiratory frequency power both increased markedly in sleep, and both differed significantly in posterior brain regions. The global cardiac frequency power increased to a lesser extent but showed a decrease in heart rate (*p < 0.05, df 11; **p < 0.01). Montreal Neurologic Institute, MNI.
Figure 5.Spatial distribution of spectral brain pulsation entropy and power are linked to frequency band. Paired t test shows differences in Sleep versus Awake state (p < 0.05, df 11). Thresholded mean maps across subjects and difference maps are presented. , , Spectral entropy (), spectral power () in each pulsation frequency band in 5 min segments in NREM sleep. The three rows show results in very low, respiratory, and cardiac frequencies, respectively. The spatial overlap of the power and entropy increases dimishes as a function of frequency, with the largest overlap in the very low-frequency range, partial overlap in the respiratory band, and no overlap in cardiac frequencies (no change in spectral entropy).
Figure 6.EEG slow oscillation (0.2–2 Hz) power increased in spatially overlapping regions in very low, respiratory, and cardiac frequency pulsations in MREG. , EEG slow oscillation (0.2–2 Hz) power sum mean maps in Awake and Sleep and difference (Sleep > Awake, p < 0.05). EEG power maps were converted to the radiologic perspective for comparison with MREG results. , Power sum of MREG pulsations in very low frequency (0.008–0.1 Hz; ), respiratory frequency (0.11–0.44 Hz; ), and cardiac frequency (0.52–1.6 Hz; ); Sleep > Awake, p < 0.05. , Spectral entropy of MREG in very low frequency (0.008–0.1 Hz), Sleep < Awake, p < 0.05. Mean maps among subjects during Awake and Sleep are on the left, and Difference maps are in the right column.