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. 2017 Mar 23;17:49. doi: 10.1186/s12871-017-0342-2

Effects of short-term hyperoxia on erythropoietin levels and microcirculation in critically Ill patients: a prospective observational pilot study

Abele Donati 1,, Elisa Damiani 1, Samuele Zuccari 1, Roberta Domizi 1, Claudia Scorcella 1, Massimo Girardis 2, Alessia Giulietti 3, Arianna Vignini 3, Erica Adrario 1, Rocco Romano 1, Laura Mazzanti 3, Paolo Pelaia 1, Mervyn Singer 4
PMCID: PMC5364633  PMID: 28335733

Abstract

Background

The normobaric oxygen paradox states that a short exposure to normobaric hyperoxia followed by rapid return to normoxia creates a condition of ‘relative hypoxia’ which stimulates erythropoietin (EPO) production. Alterations in glutathione and reactive oxygen species (ROS) may be involved in this process. We tested the effects of short-term hyperoxia on EPO levels and the microcirculation in critically ill patients.

Methods

In this prospective, observational study, 20 hemodynamically stable, mechanically ventilated patients with inspired oxygen concentration (FiO2) ≤0.5 and PaO2/FiO2 ≥ 200 mmHg underwent a 2-hour exposure to hyperoxia (FiO2 1.0). A further 20 patients acted as controls. Serum EPO was measured at baseline, 24 h and 48 h. Serum glutathione (antioxidant) and ROS levels were assessed at baseline (t0), after 2 h of hyperoxia (t1) and 2 h after returning to their baseline FiO2 (t2). The microvascular response to hyperoxia was assessed using sublingual sidestream dark field videomicroscopy and thenar near-infrared spectroscopy with a vascular occlusion test.

Results

EPO increased within 48 h in patients exposed to hyperoxia from 16.1 [7.4–20.2] to 22.9 [14.1–37.2] IU/L (p = 0.022). Serum ROS transiently increased at t1, and glutathione increased at t2. Early reductions in microvascular density and perfusion were seen during hyperoxia (perfused small vessel density: 85% [95% confidence interval 79–90] of baseline). The response after 2 h of hyperoxia exposure was heterogeneous. Microvascular perfusion/density normalized upon returning to baseline FiO2.

Conclusions

A two-hour exposure to hyperoxia in critically ill patients was associated with a slight increase in EPO levels within 48 h. Adequately controlled studies are needed to confirm the effect of short-term hyperoxia on erythropoiesis.

Trial registration

ClinicalTrials.gov (www.clinicaltrials.gov), NCT02481843, registered 15th June 2015, retrospectively registered

Keywords: Erythropoietin, Anemia, Normobaric hyperoxia, Microcirculation

Background

Anemia is a frequent problem in critically ill intensive care patients [1]. Inhibition of erythropoietin (EPO) production induced by inflammatory cytokines contributes to the etiology of critical illness anemia [24]. A diminished oxygen (O2) content due to anemia or hypoxaemia is the physiologic stimulus for EPO synthesis [5]. Reports suggest that a sudden decrease in tissue O2 levels after a short-term exposure to normobaric hyperoxia can stimulate EPO synthesis by producing a state of “relative” hypoxia (normobaric oxygen paradox, NOP) [6, 7]. However, studies are needed to demonstrate the effectiveness of this procedure, to define the optimal dose and frequency of exposure [8], and to confirm the safety of transient exposure to hyperoxia in ICU patients. Hyperoxia induces oxidative damage to various organs [9], coronary and systemic vasoconstriction [10] with a fall in cardiac output [11], and a possible decrease in regional O2 delivery [12]. Exposure to arterial hyperoxia is also associated with higher mortality in certain ICU patient subsets [13].

We aimed to test the effectiveness of the NOP on increasing serum EPO levels in critically ill patients. Secondly, we explored the safety of hyperoxia exposure by evaluating the microcirculatory response to hyperoxia and the effects upon circulating levels of nitric oxide (NO), reactive O2 species (ROS) and the antioxidant, glutathione (GSH).

Methods

This prospective, non-randomized study was approved by the Institutional Review Board of the Azienda Ospedaliera Universitaria Ospedali Riuniti of Ancona, Italy (Protocol nr. 212638; NCT02481843 www.clinicaltrials.gov). Written informed consent was obtained from the enrolled patients or their next of kin. Adult (≥18-year old) patients admitted to the 12-bed medical-surgical ICU of Azienda Ospedaliera Universitaria Ospedali Riuniti of Ancona, Italy between April 2013 and March 2015 and requiring mechanical ventilation with an inspired O2 fraction (FiO2) ≤0.5 and PaO2/FiO2 ≥ 200 mmHg were eligible to participate. Exclusion criteria were: hemoglobin (Hb) <9 g/dL, acute bleeding or blood transfusion during the study period; surgical interventions during the study period; acute or chronic renal failure; hemodynamic instability; chronic obstructive pulmonary disease; pregnancy; factors impeding evaluation of the sublingual microcirculation (oral surgery or maxillo-facial trauma). In all patients, blood pressure was monitored with an arterial catheter. Sedation and analgesia, fluids and vasopressors were provided according to individual needs.

Interventions

Forty patients were enrolled in total and were allocated in the hyperoxia or control group using a before-after method. The first 20 patients (hyperoxia group) underwent a 2-hour period of normobaric hyperoxia (FiO2 1.0), according to the protocol applied by Balestra et al. [6]. No variation in FiO2 was applied to the last 20 patients (control group). All patients were enrolled in the morning and hyperoxia was performed between 10.00 and 14.00 h to minimize variability due to the circadian rhythm of EPO production. No variations to sedation or vasopressor dosing or ventilator settings were applied during the study period.

Measurements

On the study day, measurements were taken at baseline (t0), after 2 h of breathing 1.0 FiO2 (hyperoxia, t1) and 2 h after returning to baseline FiO2 (t2). Measures included body temperature, heart rate (HR), mean arterial pressure (MAP), arterial and central venous blood gases, arterial lactate, evaluation of the sublingual microcirculation and peripheral microvascular (StO2) oxygenation. The same measures were performed in the control group but with no period of hyperoxia. Serum EPO, reticulocyte count, Hb and hematocrit were measured at 8 am in all patients on the study day, and at 24 and 48 h.

Microcirculation assessment

The sublingual microcirculation was evaluated at five different sites using sidestream dark field (SDF) videomicroscopy (Microscan, Microvision Medical, Amsterdam, NL), as previously described [1417]. Three images per time-point were analyzed using the Automated Vascular Analysis software (Microvision Medical BV). Total vessel density (TVD), perfused vessel density (PVD), De Backer score, proportion of perfused vessels (PPV), microcirculatory flow index (MFI), flow heterogeneity index (FHI) and blood flow velocity (BFV) were calculated in small or medium vessels (diameter ≤ or >20 μm, respectively) [16, 18]. Continuous video recording was also performed for ≥2 min on one site during the change in FiO2 (either start or end of hyperoxia) to evaluate the early microcirculatory response. Video clips of 10 s’ duration (two per time point) corresponding to before (baseline or 2 h FiO2 1.0) and after (2 min FiO2 1.0 or 2 min after returning to baseline FiO2) the change in FiO2 were selected and subsequently analyzed.

Near-infrared spectroscopy (NIRS) (InSpectra™ Model 650; Hutchinson Technology Inc., Hutchinson, MN, USA) with a 15 mm-sized probe was used to measure microvascular oxygen saturation (StO2) and tissue Hb index (THI) [19] on the thenar eminence at baseline and during a vascular occlusion test [16, 20]. The StO2 downslope (%/minute) was calculated as an index of O2 consumption, while the StO2 upslope (%/minute) and the area under the curve (AUC) of the hyperemic response were obtained to assess microvascular reactivity [20].

Immunoassays

In the first 12 patients in each group, arterial blood samples (10 mL) were taken at baseline, t1 and t2 and immediately centrifuged; plasma and serum were stored at −70 °C. A marker of NO production was measured as plasma nitrite/nitrate using a Nitric Oxide Colorimetric Detection Kit (Cat. No. K023-H1, Arbor Assays, Ann Arbor, MI, USA) while GSH levels were measured using a Glutathione Colorimetric Detection Kit (Cat. No. K006-H1 - Arbor Assays) following the manufacturer’s instructions. High Reactive Oxygen Species (hROS) levels were determined by hydroxyphenyl fluorescein (Cell Technology Inc, Mountain View, CA, USA), which selectively detects hydroxyl radical (●OH) and peroxynitrite (ONOO) [21]. Immunoassays could not be performed in all patients for economic reasons.

Statistical analysis

This was performed using GraphPad Prism Version 6 (GraphPad Software, La Jolla, CA, USA). Normality of distribution was checked using the Kolmogorov-Smirnov test. The data were expressed as mean ± standard deviation (SD) for normally distributed variables or median [1st-3rd quartiles] for non-normally distributed variables. One-way analysis of variance (ANOVA) for repeated measures with Bonferroni post-hoc testing (or Friedman’s test with Dunn’s multiple comparison test for non-normally distributed variables) was used to evaluate changes over time in the same group. For normally distributed variables, the two-way ANOVA for repeated measures with Bonferroni post-hoc testing was used to evaluate differences between the groups. For non-normally distributed variables, the Mann-Whitney U test was applied to evaluate differences between the two groups at the same time-point. Spearman correlation coefficient was calculated to assess correlations between variables. The alpha level of significance was set a priori at 0.05.

Results

A total of 791 patients was screened during the 2-year study period. Of these, 617 patients were excluded because they did not meet the predefined inclusion criteria or had exclusion criteria; 105 patients were excluded as already enrolled in another study; 24 patients denied consent to participation in the study; 45 patients were not enrolled due to the unavailability of the investigators or SDF/NIRS devices. Median age was 74 [53–81] years in the hyperoxia group and 65 [56–73] years in the control group. The male:female ratio was 10:10 and 14:6 in the hyperoxia and control groups, respectively. Admission diagnoses were neurological (hyperoxia group: 4 patients, controls: 12), polytrauma (hyperoxia: 5, controls: 7), post-cardiac arrest (hyperoxia: 7, controls: 1) and sepsis (hyperoxia: 3, none in the control group). The Sequential Organ Failure Assessment (SOFA) score was 8.5 [6.2–10] and 8 [69] in the hyperoxia and control groups, respectively.

Hemodynamic and blood gas data

The PaO2 increased to >400 mmHg during hyperoxia. A significant decrease in MAP (p < 0.01 versus t1) and increase in HR (p < 0.05 versus t0 and t1) were found at t2 in the hyperoxia group. Central venous O2 saturation (ScvO2) increased in the hyperoxia group at t1 (p < 0.001 versus t0 and t2). Arterial lactate levels increased in the hyperoxia group and were higher than those seen in the control group at t1 and t2 (Table 1).

Table 1.

Variations in hemodynamics and blood gas parameters under hyperoxia and after the return to baseline FiO2

t0 t1 t2 p (time)a p (interaction)b
Heart Rate (bpm) 0.813
Hyperoxia 70 ± 20 71 ± 22 77 ± 22##‡ 0.008
Controls 67 ± 19 66 ± 19 72 ± 25 0.086
Mean Arterial Pressure (mmHg) -
Hyperoxia 86 [70–91] 87 [81–97] 83 [72–87]* 0.008
Controls 87 [79–101] 88 [84–97] 85 [81–92] 0.462
Body temperature (°C) 0.176
Hyperoxia 36.1 ± 1.1 36.3 ± 0.9 36.3 ± 1.1* 0.407
Controls 36.7 ± 0.8 36.7 ± 0.9 37.1 ± 0.8#‡ 0.010
PaO2 (mmHg) <0.001
Hyperoxia 108 ± 35 433 ± 109###*** 111 ± 26‡‡‡ <0.001
Controls 118 ± 33 119 ± 28 115 ± 33 0.622
SaO2 (%) -
Hyperoxia 99.7 [98.9–100] 100[100–100]###*** 99.8 [99.1–100]‡‡ <0.001
Controls 100 [99.6–100] 99.9 [99.5–100] 99.8 [99.5–100] 0.863
PaO2/FiO2 (mmHg) <0.001
Hyperoxia 290 ± 93 435 ± 111###*** 287 ± 82‡‡‡ <0.001
Controls 314 ± 108 315 ± 93 303 ± 99 0.330
ScvO2 (%) -
Hyperoxia 79 [70–83] 86 [74–90]### 76 [72–81]‡‡‡ <0.001
Controls 82 [74–84] 80 [75–85] 79 [75–84] 0.838
pH 0.696
Hyperoxia 7.48 ± 0.07 7.49 ± 0.07 7.48 ± 0.07 0.516
Controls 7.45 ± 0.06 7.45 ± 0.05 7.45 ± 0.06 0.966
PaCO2 (mmHg) -
Hyperoxia 38 [36–42] 39 [34–42] 39 [36–42] 0.826
Controls 38 [34–42] 39 [35–43] 41 [35–42] 0.145
Base excess (mmol/L) 0.971
Hyperoxia 5.0 ± 5.2 5.3 ± 5.3 5.6 ± 4.9 0.430
Controls 2.9 ± 3.8 3.1 ± 4.1 3.3 ± 3.6 0.288
Lactate (mmol/L) -
Hyperoxia 1.1 [0.7–1.5] 1.2 [1.1–2.0]** 1.3 [1.0–1.8]* 0.037
Controls 0.9 [0.7–1.2] 0.9 [0.7–1.2] 0.9 [0.7–1.2] 0.616

Data are expressed as mean ± standard deviation or median [1st-3rd quartile], as appropriate (t0): baseline; (t1): 2 h 1.0 FiO2; (t2): 2 h after the return to baseline FiO2

a Overall effect of time on the variance in each group. One-way ANOVA for repeated measures with Bonferroni’s post hoc test or Friedman test with Dunn’s test for multiple comparisons, as appropriate

b Test of interaction between time and groups. Two-way ANOVA for repeated measures. This was applicable only to normally distributed variables

*p < 0.05, **p < 0.01, ***p < 0.001 versus controls (same time point); two-way ANOVA for repeated measures with Bonferroni post-hoc test or Mann-Whitney test, as appropriate

# p < 0.05, ## p < 0.01, ### p < 0.001 versus t0; p < 0.05, ‡‡ p < 0.01, ‡‡‡ p < 0.001 versus t1; One-way ANOVA for repeated measures with Bonferroni’s post hoc test or Friedman test with Dunn’s test for multiple comparisons, as appropriate

Effects on erythropoiesis

EPO levels rose in the hyperoxia group (p < 0.05) and were significantly higher at 48 h compared to baseline (p < 0.05). No changes were seen in the control group. The reticulocyte count and Hb levels fell over time in both groups (Table 2).

Table 2.

Variations in erythropoietin, reticulocyte count, haemoglobin and haematocrit in the two groups

Baseline 24 h 48 h p (time)a p (interaction)b
Erythropoietin (IU/L) -
Hyperoxia 16.1 [7.4–20.2] 20.1 [10.7–31.2] 22.9 [14.1–37.2]# 0.022
Controls 12.8 [7.3–22.2] 14.9 [9.2–18.6] 14.8 [7.9–24.8] 0.692
Reticulocytes (*103/mm3) -
Hyperoxia 55.9 [39.4–67.4] 47.3 [33.1–62.2]## 46.2 [29.8–66.2] 0.010
Controls 60.2 [46.3–78.7] 52.5 [42.9–65.9] 50.7 [44.1–64.5]# 0.027
Hemoglobin (g/dL) 0.601
Hyperoxia 10.7 ± 1.4 10.2 ± 1.3 10.1 ± 1.3# 0.013
Controls 11.7 ± 2.0 11.3 ± 1.8 11.3 ± 1.7 0.027
Hematocrit (%) 0.053
Hyperoxia 32 ± 6 31 ± 6 30 ± 6#* 0.029
Controls 34 ± 8 34 ± 8 34 ± 8 0.675

Data are expressed as mean ± standard deviation or median [1st-3rd quartile], as appropriate

a Overall effect of time on the variance in each group. One-way ANOVA for repeated measures with Bonferroni’s post hoc test or Friedman test with Dunn’s test for multiple comparisons, as appropriate

b Test of interaction between time and groups. Two-way ANOVA for repeated measures. This was applicable only to normally distributed variables

*p < 0.05 versus controls (same time point); two-way ANOVA for repeated measures with Bonferroni post-hoc test

Effects on the sublingual microcirculation

Continuous microcirculatory assessment of the same site during changes in the FiO2 showed that the first 2 min of hyperoxia were associated with an early and consistent reduction in TVD (87% [95% confidence interval (CI) 82–91] of baseline for small vessels), PVD (85% [79–90] of baseline for small vessels) and PPV (97% [96–99] of baseline for small vessels) (Fig. 1). When compared to measures taken after breathing an FiO2 of 1.0 for 2 h, these parameters increased on return to the baseline FiO2 (TVD: 107% [100–114], PVD: 109% [102–117], PPV: 102% [100–103] (Fig. 1).

Fig. 1.

Fig. 1

Early microcirculatory response to acute variations in the FiO2. a : Sidestream Dark Field imaging of the same site of sublingual microcirculation in one patient before (FiO2 0.5) and after 2 min of exposure to hyperoxia (2 min FiO2 1.0). Stars indicate regions of microvascular de-recruitment. b and c : Individual and mean (SD) changes in perfused vessel density (b) and proportion of perfused vessels (c) during acute variations in the FiO2 in the hyperoxia group (n = 20). The same region of the sublingual mucosa was assessed continuously at each time point (start hyperoxia and end hyperoxia) for at least 2 min . *p < 0.05, ***p < 0.001, paired t-test

Evaluation of the microcirculation at 2-hour intervals showed a more heterogeneous response. A trend was seen towards a reduction in the De Backer score, TVD and PVD for small vessels at t1, with normalization at t2 (Table 3). The variation in TVD after 2 h hyperoxia (t1-t0) was inversely correlated with the change seen 2 h after return to the baseline FiO2 (t2-t1) (r = −0.52 [95% CI −0.78, −0.10]). The microcirculation remained stable over time in the control group, which showed a significantly higher De Backer score, TVD and PVD for small and medium vessels as compared to the hyperoxia group at all time-points (Table 3).

Table 3.

Sublingual and peripheral microvascular changes after a 2-hour exposure to hyperoxia and 2 h after return to baseline FiO2

t0 t1 t2 p (time)a p (interaction)b
TVD small (mm/mm2) -
Hyperoxia 18.5 [16.5–21.6]** 16.4 [14.6–21.6]** 19.3 [18.2–21.3]* 0.035
Controls 21.7 [20.0–23.8] 22.2 [18.8–24.3] 21.0 [19.8–23.7] 0.705
TVD medium (mm/mm2) -
Hyperoxia 0.9 [0.4–1.6] 0.5 [0.4–0.9]** 0.7 [0.3–1.3] 0.268
Controls 1.2 [0.8–1.8] 1.0 [0.7–1.8] 1.1 [0.6–1.7] 0.861
PVD small (mm/mm2) -
Hyperoxia 17.4 [16.3–20.8]** 15.4 [13.2–20.3]** 18.4 [17.1–19.9]* 0.058
Controls 20.1 [18.9–22.6] 21.0 [18.0–23.3] 20.0 [18.5–22.9] 0.549
PVD medium (mm/mm2) 0.178
Hyperoxia 0.9 ± 0.6 0.6 ± 0.5* 0.8 ± 0.6 0.142
Controls 1.2 ± 0.6 1.2 ± 0.6 1.1 ± 0.7 0.851
De Backer score (n/mm) -
Hyperoxia 11.2 [9.9–13.2]** 9.7 [8.8–13.2]** 11.8 [10.0–13.4]** 0.019
Controls 14.5 [12.0–15.8] 14.1 [11.6–15.8] 14.1 [12.7–16] 0.951
MFI small (AU) -
Hyperoxia 2.74 [2.50–2.90] 2.67 [2.50–2.90] 2.75 [2.52–2.92] 0.713
Controls 2.67 [2.44–2.90] 2.75 [2.60–3.00] 2.79 [2.67–2.98] 0.099
PPV small (%) 0.223
Hyperoxia 96 ± 3 94 ± 4 95 ± 3 0.149
Controls 94 ± 4 95 ± 3 95 ± 4 0.396
FHI small (AU) -
Hyperoxia 0.14 [0.08–0.21] 0.18 [0.09–0.30]* 0.10 [0.02–0.20] 0.551
Controls 0.09 [0.02–0.19] 0.09 [0.00–0.18] 0.09 [0.00–0.18] 0.290
BFV (μm/s) 0.631
Hyperoxia 497 ± 63 489 ± 81 502 ± 45 0.741
Controls 520 ± 56 519 ± 54 531 ± 65 0.537
StO2 (%) 0.655
Hyperoxia 80 ± 8 82 ± 8 82 ± 7 0.261
Controls 81 ± 9 81 ± 8 82 ± 9 0.824
StO2 downslope (%/min) -
Hyperoxia −7.9 [−9.1, −7.0] −7.7 [−9.3, −6.8] −9.4 [−11.0, −7.9] 0.003
Controls −8.1 [−9.7, −6.8] −7.9 [−10.1, −7.0] −8.6 [−9.9, −6.9] 0.212
StO2 upslope (%/min) -
Hyperoxia 133 [98–243] 194 [145–274] 192 [140–244] 0.101
Controls 194 [150–228] 193 [139–262] 219 [132–263] 0.247
StO2 area under the curve (%*min) 0.284
Hyperoxia 14.6 ± 8.8 18.0 ± 11.8 13.2 ± 7.6 0.066
Controls 20.3 ± 15.1 19.8 ± 14.7 18.3 ± 13.3 0.660
THI (AU) 0.884
Hyperoxia 11.0 ± 3.2 11.4 ± 3.8 11.8 ± 3.2 0.374
Controls 12.6 ± 2.2 12.7 ± 3.5 13.0 ± 3.1 0.801

Data are expressed as mean ± standard deviation or median [1st-3rd quartile], as appropriate. (t0): baseline; (t1): 2 h 1.0 FiO2; (t2): 2 h after the return to baseline FiO2. TVD total vessel density, PVD perfused vessel density, PPV proportion of perfused vessels, MFI microvascular flow index, FHI flow heterogeneity index, BFV blood flow velocity

a Overall effect of time on the variance in each group. One-way ANOVA for repeated measures with Bonferroni’s post hoc test or Friedman test with Dunn’s test for multiple comparisons, as appropriate

b Test of interaction between time and groups. Two-way ANOVA for repeated measures. This was applicable only to normally distributed variables

*p < 0.05, **p < 0.01 versus controls (same time point); two-way ANOVA for repeated measures with Bonferroni post-hoc test or Mann-Whitney test, as appropriate

p < 0.05 versus t1; Friedman test with Dunn’s test for multiple comparisons, as appropriate

NIRS variables

The StO2 value was not affected by changes in FiO2. The gradient of the StO2 downslope was however significantly increased at t2 in the hyperoxia group (p < 0.01 versus t1) implying increased O2 extraction rate, although no significant difference was found with the control group. The StO2 upslope, area under the curve and THI did not show any significant change over time in the hyperoxia group compared to controls. All NIRS parameters remained stable in the control group and no differences were found between the two groups at any time-point (Table 3).

NO, ROS and GSH

The percentage variations of ROS and GSH in the hyperoxia group are shown in Fig. 2. ROS increased to 111% [95% CI 104–117] of baseline at t1 (p < 0.05 versus t0), and decreased to 97% [91–104] of baseline at t2 (p < 0.01 versus t1). GSH did not change at t1 (98% [92–103] of baseline) but increased to 103% [99–107] of baseline at t2 (p < 0.05 versus t1). NO did not change significantly over time in either group (Table 4). No correlation was found between changes in nitrite/nitrate and changes in sublingual microvascular parameters.

Fig. 2.

Fig. 2

Individual and mean (SD) changes in serum ROS (a) and GSH (b) levels in the hyperoxia group (n = 12), expressed as percentage of baseline values. *p < 0.05, **p < 0.01, one-way ANOVA for repeated measures with Bonferroni’s post hoc test

Table 4.

Changes in nitrite/nitrate, GSH and ROS after a 2-hour exposure to hyperoxia and 2 h after return to baseline FiO2

t0 t1 t2 p (time)a p (interaction)b
Nitrite/nitrate (μM) 0.378
Hyperoxia (n = 12) 41 ± 17 45 ± 21 43 ± 18 0.301
Controls (n = 12) 51 ± 18 55 ± 16 59 ± 14 0.198
GSH (μM) -
Hyperoxia (n = 12) 2.21 [2.12–2.28] 2.17 [2.09–2.25] 2.24 [2.20–2.39] 0.114
Controls (n = 12) 2.19 [2.12–2.33] 2.18 [2.15–2.23] 2.23 [2.17–2.28] 0.273
ROS (RFU) -
Hyperoxia (n = 12) 2915 [1196–6537] 3109 [1348–6961] 3061 [1261–5841] 0.046
Controls (n = 12) 1773 [1070–3018] 2024 [1135–3069] 1841 [1066–3058] 0.338

These analyses were restricted to the 12 patients per group. Data are expressed as mean ± standard deviation or median [1st-3rd quartile], as appropriate. (t0): baseline; (t1): 2 h 1.0 FiO2; (t2): 2 h after return to baseline FiO2. RFU relative fluorescence units

a Overall effect of time on the variance in each group. One-way ANOVA for repeated measures with Bonferroni’s post hoc test or Friedman test with Dunn’s test for multiple comparisons, as appropriate

b Test of interaction between time and groups. Two-way ANOVA for repeated measures. This was applicable only to normally distributed variables

Discussion

In this prospective observational study on 40 critically ill patients within different disease categories, a single 2-hour exposure to normobaric hyperoxia was associated with a slight increase in serum EPO levels over the following 48 h, despite wide inter-individual variability in the response observed. An initial decrease in microvascular perfusion was seen during hyperoxia, followed by normalization on returning to the baseline FiO2. Serum ROS levels were elevated after hyperoxia, while the return to the baseline FiO2 was associated with an increase in GSH and normalization of ROS levels.

Intermittent hyperoxia can stimulate erythropoiesis in healthy volunteers and in various patient categories [6, 7, 22, 23], although other reports have questioned the existence of a NOP [24]. Mechanisms underlying the NOP may involve regulation of Hypoxia-Inducible Factor 1-alpha (HIF-1α) expression. During normoxia, HIF-1α undergoes ubiquitination by the Von Hippel Lindau tumor suppressor and degradation into the proteasome. This process is mediated by the oxidized form of glutathione (GSSG). Under hypoxia, the GSH-GSSG ratio increases, thus limiting the inactivation of HIF-1α, which can induce expression of the EPO gene. The increase in ROS during hyperoxia induces de novo synthesis of GSH. When returning to normoxia, the increased production of GSH, together with the reduction of GSSG to GSH, creates a “surplus” of GSH that enhances the inactivation of HIF-1α [6]. Our findings are consistent with this theory: serum ROS levels increased after 2 h of hyperoxia, while GSH levels were elevated 2 h after returning to the baseline FiO2. This variation in GSH levels may be able to modulate the activity of HIF-1α and EPO production.

Several factors may account for the inter-individual variability observed in the NOP response. Arterial hyperoxia (PaO2 > 100 mmHg) was present at baseline in 60% of patients in the hyperoxia group; this may have had either a positive (enhanced induction of GSH synthesis) or negative (higher ROS levels) impact on the EPO response. The two groups were also unbalanced for admission diagnosis so definitive conclusions cannot be drawn. Importantly, baseline Hb levels tended to be lower in the hyperoxia group: this could in itself act as a stimulus for EPO synthesis independent of exposure to hyperoxia.

As EPO secretion normally follows an individual circadian rhythm of production, individual matching of the circadian rhythm is needed to detect an increase in EPO levels at a specific time of the day [8]. This could be particularly important in ICU patients where the normal circadian rhythm of hormone production is frequently abolished due to their underlying illness as well as sedation and disturbances in the sleep-wake cycle [25]. We measured EPO levels at 08.00 h each morning in all patients to limit the impact of this source of variability.

The ideal “dose” of O2 for triggering the NOP is poorly described. An excessive increase in ROS (such as that induced by hyperbaric hyperoxia) may suppress rather than stimulate EPO production [6]. An FiO2 of 1.0 may not represent optimal dosing for all patients and could have produced varying effects. Repeated rather than single exposures may perhaps be more effective [8].

Arterial hyperoxia causes vasoconstriction, thus reducing tissue perfusion [11, 26]. This cannot be part of an evolutionary innate response as exposure to high concentrations of inspired oxygen can only be traced back to the relatively modern era. Arterial hyperoxia must therefore represent a purely iatrogenic ‘insult’; the ensuing physiological response (vasoconstriction) to the resulting tissue hyperoxia may reproduce adaptive efforts to match O2 supply to reduced cellular metabolic needs seen in pathological states such as sepsis where tissue oxygen tensions rise [27]. The corollary of reducing oxygen supply in conditions of relative tissue oxygen excess is a blunting of the increase in ROS production, thereby attenuating toxicity.

Mechanisms underlying this response may involve a down-regulation of the adenosine pathway [28] or modulation of the ROS-mediated prostaglandin and NO pathways [29] with reduced NO bioavailability [30]. In our study, hyperoxia led to an early decrease in microcirculatory vessel density and perfusion after 2 min of exposure. These alterations persisted after 2 h in some patients, while others showed similar or even increased vessel densities as compared with baseline levels. No reduction in plasma NO levels was seen after 2 h hyperoxia, which may reflect the variability observed in microvascular perfusion. An undetected short-lived derangement in the NO pathway may at least partly explain the early microcirculatory alterations observed. Our results suggest that the vasoconstrictor response was more pronounced during an acute increase in arterial PaO2 rather than after a more sustained exposure. Of note, continuous monitoring of the microcirculation in the same region of sublingual mucosa is likely to be more sensitive in detecting even minute variations in vessel density compared to intermittent measurements, as it excludes any variability related to the random selection of different areas, albeit averaged over three samples [31, 32].

Microvascular density and perfusion normalized after the return to the baseline FiO2. This was associated with a decrease in MAP and an increase in HR after 2 h , suggesting a decrease in systemic vascular resistance. The increased gradient in the StO2 downslope at 2 h after returning to baseline FiO2 indicates a higher regional O2 extraction rate. This likely reflects an increase in local perfusion and O2 consumption in this phase. Notably, the microvascular response at 2 h after return to normoxia was inversely related to the variations observed after 2 h of hyperoxia. In other words, those patients who did not demonstrate hyperoxia-induced vasoconstriction tended to show an unaltered or even decreased vessel density at return to baseline FiO2. Several factors including baseline PaO2 and ROS levels, factors affecting vascular tone, or an underlying microvascular/endothelial dysfunction may determine this “non-physiological” response. In healthy volunteers normobaric hyperoxia induced a reduction in the estimated muscle O2 consumption with slower StO2 drop during the VOT [10]. In our study, the StO2 downslope was unaltered after 2 h of hyperoxia, suggesting no apparent effect on muscle O2 consumption, which seems in contrast to the increased ScvO2. It should be taken into account that the response of the peripheral skeletal muscle circulation may not always reflect the response of other organs in the critically ill. Microvascular mechanisms of regulation and adaptation may vary between different capillary beds and may be impaired in a heterogeneous manner during critical illness. Sedation or vasopressors in ICU patients may influence tissue O2 requirements and extraction rate in the peripheral skeletal muscle circulation. Differences in the study protocol and time of exposure to hyperoxia may also contribute to the discrepant results.

Our study has several limitations. First, the non-randomized, non-blinded design of the study, together with the relatively small sample size, precludes drawing definitive conclusions. Second, we studied a necessarily heterogenous critically ill patient population, although we tried to standardize both the patients and their status (e.g. cardiorespiratory stability) as much as possible. Third, baseline differences in Hb between the two groups may be responsible for different changes in EPO levels, irrespective of the exposure to hyperoxia. In addition, we cannot exclude that differences in other parameters between the two groups (e.g. lower body temperature in the hyperoxia group) influenced microvascular perfusion and the changes detected. Fourth, the observed increase in EPO levels may not have been sufficient to induce a significant increase in erythropoiesis. The 48-hour observational period may have been too short to detect an increase in reticulocyte count and Hb after the exposure to hyperoxia. We focussed upon EPO production as numerous confounding factors may have influenced Hb levels over this time period including hemodilution due to fluid infusion, anemia of inflammation, repeated blood sampling, and other blood losses. Fifth, NO, ROS and GSH were measured only in 60% of the study population. Lastly, cardiac output and systemic vascular resistance were not measured in this stable population. As MAP was stable over the course of our study despite the local vasoconstrictor response, we speculate that cardiac output was reduced after 2 h of hyperoxia.

Conclusions

A two-hour exposure to normobaric hyperoxia was associated with a slight increase in serum EPO levels within 48 h in critically ill patients. Mechanisms responsible for the stimulation of erythropoiesis may include an enhanced production of GSH induced by an increase in ROS. This enhanced oxidative stress was followed by normalization 2 h after returning to baseline levels of FiO2. An early vasoconstrictor response was observed at the microcirculatory level under hyperoxia. After 2 h , the response was heterogeneous between different patients, but normalized on returning to the baseline FiO2.

The findings of this pilot study encourage further exploration of the NOP as a means of stimulating erythropoiesis during critical illness. However, adequately controlled studies are needed to isolate the effect of short-term hyperoxia on EPO production independently of possible confounding factors such as baseline Hb levels or the patient’s underlying disease. Potential dangers of excessive O2 exposure must also be considered, specifically enhanced oxidative stress and short-term alterations in microvascular perfusion. Further investigations should clarify the time course of the microvascular response and recovery under hyperoxia in critically ill patients and identify any factors potentially influencing this response.

Acknowledgements

The authors wish to thank the patients for their participation in this study and the medical and nurse staff for its support and contribution to the realization of this work.

Funding

None external.

Availability of data and materials

The data that support the findings of this study are available from the corresponding author upon reasonable request.

Authors’ contributions

AD, MG, EA, RR, LM, PP, MS contributed to the study conception and design and revised the manuscript for important intellectual content. ED, SZ, RD, AG, AV collected and analysed the data, contributed to the interpretation of the results and drafted the manuscript. All authors read and approved the final version of the manuscript. All authors are accountable for all aspects of the work in ensuring that questions related to the accuracy or integrity of any of its parts are appropriately investigated and resolved.

Competing interests

The authors declare that they have no competing interests.

Consent for publication

Not applicable.

Ethics approval and consent to participate

The study protocol was approved by our local ethical committee of Azienda Ospedaliera Universitaria “Ospedali Riuniti” of Ancona, Italy (protocol number 212638). Written informed consent was obtained from all patients or their next of kin.

Publisher’s Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Abbreviations

ANOVA

Analysis of variance

AUC

Area under the curve

BFV

Blood flow velocity

EPO

Erythropoietin

FHI

Flow heterogeneity index

FiO2

Inspired oxygen fraction

GSH

Glutathione (reduced form)

GSSG

Glutathione (oxidized form)

Hb

Hemoglobin

HIF-1α

Hypoxia-inducible factor-1 alpha

HR

Heart rate

ICU

Intensive care unit

MAP

Mean arterial pressure

MFI

Microvascular flow index

NIRS

Near-infrared spectroscopy

NO

Nitric oxide

NOP

Normobaric oxygen paradox

O2

Oxygen

ONOO

Peroxynitrite

PPV

Proportion of perfused vessels

PVD

Perfused vessel density

ROS

Reactive oxygen species

SDF

Sidestream dark field

StO2

Tissue oxygen saturation

THI

Tissue hemoglobin index

TVD

Total vessel density

Contributor Information

Abele Donati, Phone: +390715964603, Email: a.donati@univpm.it.

Elisa Damiani, Email: eli.dam86@alice.it.

Samuele Zuccari, Email: samuelezuccari@gmail.com.

Roberta Domizi, Email: robertadomizi@gmail.com.

Claudia Scorcella, Email: cla.scorcella83@alice.it.

Massimo Girardis, Email: girardis.massimo@unimo.it.

Alessia Giulietti, Email: a.giulietti@univpm.it.

Arianna Vignini, Email: a.vignini@univpm.it.

Erica Adrario, Email: e.adrario@univpm.it.

Rocco Romano, Email: viboval@yahoo.it.

Laura Mazzanti, Email: l.mazzanti@univpm.it.

Paolo Pelaia, Email: p.pelaia@univpm.it.

Mervyn Singer, Email: m.singer@ucl.ac.uk.

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Data Availability Statement

The data that support the findings of this study are available from the corresponding author upon reasonable request.


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