Literature DB >> 26415731

Associations of arterial carbon dioxide and arterial oxygen concentrations with hospital mortality after resuscitation from cardiac arrest.

Hendrik J F Helmerhorst1,2, Marie-José Roos-Blom3,4, David J van Westerloo5, Ameen Abu-Hanna6, Nicolette F de Keizer7,8, Evert de Jonge9,10.   

Abstract

INTRODUCTION: Arterial concentrations of carbon dioxide (PaCO2) and oxygen (PaO2) during admission to the intensive care unit (ICU) may substantially affect organ perfusion and outcome after cardiac arrest. Our aim was to investigate the independent and synergistic effects of both parameters on hospital mortality.
METHODS: This was a cohort study using data from mechanically ventilated cardiac arrest patients in the Dutch National Intensive Care Evaluation (NICE) registry between 2007 and 2012. PaCO2 and PaO2 levels from arterial blood gas analyses corresponding to the worst oxygenation in the first 24 h of ICU stay were retrieved for analyses. Logistic regression analyses were performed to assess the relationship between hospital mortality and both categorized groups and a spline-based transformation of the continuous values of PaCO2 and PaO2.
RESULTS: In total, 5,258 cardiac arrest patients admitted to 82 ICUs in the Netherlands were included. In the first 24 h of ICU admission, hypocapnia was encountered in 22 %, and hypercapnia in 35 % of included cases. Hypoxia and hyperoxia were observed in 8 % and 3 % of the patients, respectively. Both PaCO2 and PaO2 had an independent U-shaped relationship with hospital mortality and after adjustment for confounders, hypocapnia and hypoxia were significant predictors of hospital mortality: OR 1.37 (95 % CI 1.17-1.61) and OR 1.34 (95 % CI 1.08-1.66). A synergistic effect of concurrent derangements of PaCO2 and PaO2 was not observed (P = 0.75).
CONCLUSIONS: The effects of aberrant arterial carbon dioxide and arterial oxygen concentrations were independently but not synergistically associated with hospital mortality after cardiac arrest.

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Year:  2015        PMID: 26415731      PMCID: PMC4587673          DOI: 10.1186/s13054-015-1067-6

Source DB:  PubMed          Journal:  Crit Care        ISSN: 1364-8535            Impact factor:   9.097


Introduction

Even after successful resuscitation and return of spontaneous circulation (ROSC), cardiac arrest carries a poor prognosis with limited options for treatment [1, 2]. In addition to controlling temperature after cardiac arrest, optimizing ventilation and oxygenation may improve outcome [3]. International consensus currently recommends careful monitoring of post-resuscitation ventilation for neurological and cardiovascular outcome [4]. Indeed, targeting safe levels of carbon dioxide and oxygen in arterial blood may limit global ischemic damage and enhance oxygenation and blood flow. Aberrant arterial levels have repeatedly been shown to be associated with worse outcome after cardiac arrest, but the effects may depend on degree and duration of the (concurrent) exposure [5-14]. Recently, a large cohort study was performed in 125 intensive care units (ICUs) in Australia and New Zealand, which showed that abnormal concentrations of arterial carbon dioxide (PaCO2) were common after cardiac arrest [15]. Compared with normocapnia, hypocapnia was independently associated with worse clinical outcomes, whereas hypercapnia was associated with a greater likelihood of good outcome. The results were reproduced in a smaller cohort [16] and are supported by pediatric [17] and experimental research [18-20]. However, ventilation and oxygenation are closely related and effects of PaCO2 may not be independent from arterial oxygen levels (PaO2). In this study, we aimed to investigate the separate and combined effects of both parameters in a multicenter cohort of patients admitted to Dutch ICUs after cardiac arrest.

Methods

Data collection

Analyses were performed on patient data retrieved from 82 ICUs of teaching and non-teaching hospitals participating in the Dutch National Intensive Care Evaluation (NICE) registry between 2007 and 2012. The NICE registry is a high quality ICU database, which is subject to multiple quality checks and local audits in accordance with applicable research and ethical protocols [21]. In brief, the registry contains all clinical data required to calculate mortality risk predictions according to, among others, the Acute Physiology and Chronic Health Evaluation (APACHE) IV for all consecutive ICU patients. The registry does not contain variables determining the cause and circumstances of the cardiac arrest and resuscitation. For the analyses, data obtained from routine care and without patient identifying information were used and consent was therefore not needed according to the Dutch Personal Data Protection Act. In 2012, approximately 90 % of all Dutch ICUs recorded the data for their patients in the registry. In accordance with the previously conducted study by Schneider et al. [15], all adult patients admitted after out-of-hospital cardiac arrest were included. Abstracted data included demographics, comorbidities, arterial blood gas parameters, diagnostic and physiologic information, admission source and illness severity score by means of the APACHE IV.

Data extraction

Adult patients admitted to the ICU after out-of-hospital cardiac arrest and cardiopulmonary resuscitation, who were mechanically ventilated at any moment in the first 24 h of admission, were included. We excluded readmissions, trauma patients, nonventilated patients and records not meeting APACHE IV criteria. As part of the NICE data collection, arterial blood gas (ABG) parameters that were associated with the lowest PaO2 to FiO2 ratio in the first 24 h after admission were automatically extracted and subsequently used for classification of patients. The APACHE IV score was recalculated (AP4-adj) by standardizing the PaCO2 and PaO2 to fixed normal values (40 mmHg and 80 mmHg, respectively) in order to prevent overadjustment of these variables in the multivariate models.

Statistical analysis

Univariate and multivariate logistic generalized estimating equation (GEE) regression models, which account for potential correlation of outcome within ICUs, were used to examine the relationship between the primary outcome (hospital mortality) and either PaCO2 or PaO2. The relationship of PaCO2 and PaO2 with mortality was plotted in order to inspect the dose–response curve. Considering the nonlinear relationships, the associations were analyzed by modeling each of PaCO2 and PaO2 as a restricted cubic spline and separately in categorized groups [22]. PaCO2 was categorized in three groups, using conventional thresholds (normocapnia: 35–45 mmHg). PaO2 was categorized according to thresholds from previous studies (normoxia: 60–300 mmHg) [5, 7–9, 23, 24]. The individual, joint and interaction effects of two-sided derangements were separately investigated, as suggested for cohort studies [25]. For a further understanding of the dose–response relationship in multivariate models, PaO2 categories were also reanalyzed with alternative thresholds derived from observation percentiles or previously used targets [5, 7, 8, 26]. Variables extracted from the first 24 h of admission were considered for the multivariate etiological model based on clinical relevance and in accordance with a previously used model [15]. Considered covariates were introduced separately to the univariate models in order to estimate the unadjusted effect and included age, gender, AP4-adj, year of admission, admission source, therapeutic hypothermia and lowest glucose as a possible proxy-marker of less attentive care [24]. Covariates were subsequently identified as confounders for the outcome using the 10 % change-in-estimate method [27]. Hence, the final multivariate GEE models consisted of age, lowest glucose, AP4-adj and either PaCO2 or PaO2. Collinearity among the covariates was inspected by estimating Pearson or Spearman correlation coefficients as appropriate. Routine temperature correction of arterial blood gas results is uncommon in Dutch ICUs and was performed according to the participating site’s practice. To account for multiple testing, the statistical significance level for the P-value was set at 0.01. All analyses were conducted using SPSS version 21 (IBM Corp, Armonk, NY, USA) and R version 3.0.1 (R Foundation for Statistical Computing, Vienna, Austria).

Results

Data from 6,496 out-of-hospital cardiac arrest patients and 82 hospitals were extracted from the NICE registry and screened for enrollment (Additional file 1: Figure S1). The main reasons for exclusion were no mechanical ventilation (n = 196), missing valid ABG data (n = 379) and not fulfilling APACHE IV criteria (n = 314). Descriptive characteristics of the 5,258 included patients are summarized in Table 1. The median age was 66 (interquartile range [IQR] 56–76) and patients were predominantly male (69.6 %). Median PaCO2 was 42 mmHg (IQR 36–49) and median PaO2 was 92 mmHg (IQR 75–124). Of all patients, 21.6 % were classified as hypocapnic, 43.5 % as normocapnic and 34.9 % as hypercapnic. Patients were further classified as hypoxic (8 %), normoxic (89.3 %) or hyperoxic (2.7 %). The majority of patients (87.4 %) were admitted to the ICU from the emergency room of the same hospital. The unadjusted mean APACHE IV score was 117.3, with the normocapnia and the normoxia groups showing the lowest mean (P < 0.001). Groups were relatively balanced in terms of admission source, comorbidities, temperature, glucose and non-respiratory markers.
Table 1

Descriptive characteristics

Characteristic  All patientsPaCO2 groupPaO2 group
HypocapniaNormocapniaHypercapnia P valueHypoxiaNormoxiaHyperoxia P value
No. (%) of patients52581136 (21.6)2288 (43.5)1834 (34.9)418 (8.0)4696 (89.3)144 (2.7)
Baseline characteristics
Age (years)66 (56–76)68 (56–77)66 (56–76)65 (55–74)<0.00169 (57–78)66 (56–75)67 (56–77)0.02
Male gender, n (%)3661 (69.6)737 (64.9)1601 (70.0)1323 (72.1)<0.001294 (70.3)3269 (69.6)98 (68.1)0.87
Admission source, n (%)
 Operating room from emergency room same hospital182 (3.5)32 (2.8)95 (4.2)55 (3.0)0.0514 (3.3)166 (3.5)2 (1.4)0.38
 Emergency room same hospital4578 (87.1)981 (86.4)1972 (86.2)1625 (88.6)0.05367 (87.8)4077 (86.8)134 (93.1)0.08
 Operating room from emergency room other hospital4 (0.1)1 (0.1)1 (<0.1)2 (0.1)0.7404 (0.1)00.79
 Emergency room other hospital183 (3.5)41 (3.6)81 (3.5)61 (3.3)0.9016 (3.8)166 (3.5)1 (0.7)0.17
 Home311 (5.9)81 (7.1)139 (6.1)91 (5.0)0.0521 (5.0)283 (6.0)7 (4.9)0.61
Acute renal failure, n (%)660 (12.6)154 (13.6)242 (10.6)264 (14.4)<0.00179 (18.9)565 (12.0)16 (11.1)<0.001
Chronic co-morbidities, n (%)
 Cardiovascular disease380 (7.2)94 (8.3)158 (6.9)128 (7.0)0.3030 (7.2)340 (7.2)10 (6.9)0.99
 Renal disease319 (6.1)87 (7.7)137 (6.0)95 (5.2)0.0424 (5.7)287 (6.1)8 (5.6)0.91
 Respiratory disease225 (4.3)33 (2.9)72 (3.1)120 (6.5)<0.00126 (6.2)191 (4.1)8 (5.6)0.08
 Cirrhosis44 (0.8)16 (1.4)14 (0.6)14 (0.8)0.059 (2.2)35 (0.7)0<0.01
 Cancer106 (2.0)25 (2.2)48 (2.1)33 (1.8)0.626 (1.4)96 (2.0)4 (2.8)0.57
Markers of severity,
 APACHE IV score117.3 (29.69)117.5 (29.10)114.6 (30.52)120.4 (28.68)<0.001132.2 (29.22)115.9 (29.47)119.5 (26.21)<0.001
 APACHE IV risk of death80.7 (65.3-90.0)81.2 (66.2-90.2)79.2 (63.0-89.2)82.5 (68.2-91.1)<0.00188.8 (78.1-94.0)79.8 (64.3-89.4)81.9 (64.9-89.4)<0.001
Physiological parameters obtained within the first 24 h in the intensive care unit
Temperature
 Highest temperature (°C)35.7 (34.8-36.9)35.8 (34.7-37.0)35.7 (34.8-36.8)35.8 (34.8-36.9)0.3735.7 (34.6-37.1)35.7 (34.8-36.9)35.9 (34.9-36.8)0.88
 Lowest temperature (°C)32.5 (31.8-33.2)32.4 (31.8-33.4)32.5 (31.9-33.2)32.5 (31.9-33.3)0.5532.5 (31.8-33.6)32.5 (31.8-33.2)32.4 (31.7-33.3)0.78
Lowest temperature below 34 °C, n (%)4229 (80.4)888 (78.2)1863 (81.4)1478 (80.6)0.08326 (78.0)3788 (80.7)115 (79.9)0.41
Heart Rate
 Highest heart rate, beats/min103 (87–120)102 (85–120)101 (86–119)105 (90–122)<0.001110 (91–128)102 (87–120)105 (88–125)<0.001
 Lowest heart rate, beats/min55 (45–68)55 (45–69)53 (44–65)55 (45–70)<0.00155 (45–74)55 (45–67)51 (42–67)0.11
Blood pressure (BP)
 Highest systolic BP (mmHg)150 (134–171)150 (134–170)150 (134–172)150 (133–170)0.61145 (128–165)150 (134–172)156 (139–178)<0.001
 Lowest systolic BP (mmHg)80 (70–90)80 (71–91)81 (70–90)80 (69–89)<0.00176 (64–86)80 (70–90)82 (70–91)<0.001
Respiratory rate (RR)
 Highest RR, breaths (min)23 (20–28)23 (19–29)23 (19–28)24 (20–29)<0.00125 (20–30)23 (20–28)23 (19–28)<0.01
 Lowest RR, breaths (min)14 (12–16)14 (12–16)14 (11–16)14 (12–17)0.0315 (12–18)14 (12–16)14 (12–16)<0.001
Oxygenation
 PaO2 (mmHg)92 (75–124)99 (78–136)94 (76–125)87 (70–116)<0.00151 (44–56)94 (78–124)359 (320–438)<0.001
 FiO2 (%)50 (40–70)45 (40–60)50 (40–62)60 (44–90)<0.00166 (50–100)50 (40–70)98 (67–100)<0.001
 PaO2/FiO2 ratio191 (124–272)227 (157–316)203 (134–283)158 (100–228)<0.00171 (55–100)198 (136–272)440 (361–550)<0.001
Carbon dioxide
 PaCO2 (mmHg)42 (36–49)31 (28–33)40 (38–43)52 (48–59)<0.00145 (38–54)41 (35–48)40 (34–48)<0.001
Metabolic
 Lowest glucose (mmol l−1)6.0 (4.8-7.4)5.9 (4.8-7.3)6.0 (4.8-7.3)6.1 (4.8-7.5)0.656.2 (4.8-7.9)6.0 (4.8-7.3)6.1 (5.0-7.8)0.13
Acid–base balance
 Lowest pH7.28 (0.12)7.37 (0.11)7.30 (0.10)7.20 (0.12)<0.0017.24 (0.14)7.29 (0.12)7.26 (0.14)<0.001
 Highest HCO3 - (mmol l−1)22.3 (3.92)20.8 (3.67)22.1 (3.54)23.5 (4.16)<0.00122.8 (4.70)22.3 (3.85)22.0 (3.89)0.43
 Lowest HCO3 - (mmol l−1)17.4 (4.33)16.0 (4.17)17.4 (4.03)18.3 (4.54)<0.00116.6 (4.96)17.5 (4.27)17.2 (4.10)<0.01

Data presented as total number (percentage), mean (standard deviation) or median (interquartile range) depending on underlying data distribution

P-values for group comparisons using ANOVA or Kruskal-Wallis according to data distribution

APACHE Acute Physiology and Chronic Health Evaluation, ANOVA Analysis of variance

Descriptive characteristics Data presented as total number (percentage), mean (standard deviation) or median (interquartile range) depending on underlying data distribution P-values for group comparisons using ANOVA or Kruskal-Wallis according to data distribution APACHE Acute Physiology and Chronic Health Evaluation, ANOVA Analysis of variance

Unadjusted outcome

Table 2 shows the unadjusted mortality rates. Overall, 2,491 (47.4 %) patients died in the ICU and 2,833 (53.9 %) died in the hospital. Hospital mortality was highest in the hypocapnia group (58.4 %), compared with the hypercapnia (56.8 %) and normocapnia (49.3 %) group (P < 0.001). Compared with the hyperoxia (57.6 %) and normoxia (52.9 %) groups, hospital mortality was higher (P < 0.001) in the hypoxia group (63.6 %).
Table 2

Unadjusted mortality rates

Outcome  All patientsPaCO2 groupPaO2 group
HypocapniaNormocapniaHypercapnia P valueHypoxiaNormoxiaHyperoxia P value
Intensive care unit mortality2491 (47.4)576 (50.7)976 (42.7)939 (51.2)<0.001244 (58.4)2171 (46.2)76 (52.8)<0.001
In-hospital mortality 2833 (53.9)663 (58.4)1129 (49.3)1041 (56.8)<0.001266 (63.6)2484 (52.9)83 (57.6)<0.001

Data presented as total number (percentage) per group. P-values for group comparisons using Chi-squared test

Unadjusted mortality rates Data presented as total number (percentage) per group. P-values for group comparisons using Chi-squared test In the univariate logistic regression model, PaCO2 was significantly associated with mortality (P < 0.001). This model was improved when PaO2 was added (P < 0.001). No interaction effect (arterial oxygen by arterial carbon dioxide concentration) on mortality was found (P = 0.25). PaO2 was also univariately associated with hospital mortality (P < 0.001).

Adjusted outcomes

Both PaCO2 and PaO2 showed a curvilinear U-shaped relationship with mortality in adjusted analyses (Figs. 1 and 2). Odds ratios from multivariate analyses are listed in Table 3. After adjustment for age, lowest glucose, AP4-adj and PaO2 (splines), hypocapnia showed a significant association with hospital mortality (P < 0.001), whereas hypercapnia did not. When this model was reanalyzed without adjustment for PaO2, the results were virtually unchanged (data not shown).
Fig. 1

Adjusted probability of in-hospital death by arterial carbon dioxide levels. Loess smoothing curve predicted from logistic regression model adjusted for spline functions of age, lowest glucose, AP4-adj and PaO2. Grey zones represent 95 % confidence intervals

Fig. 2

Adjusted probability of in-hospital death by arterial oxygen levels. Loess smoothing curve predicted from logistic regression model adjusted for spline functions of age, lowest glucose, AP4-adj and PaCO2. Grey zones represent 95 % confidence intervals

Table 3

Adjusted associations between subgroups and hospital mortality

Group comparison  Odds ratio (95 % CI) P value
PaCO2 groups
 Hypocapnia vs. normocapnia1.39 (1.18–1.63)a <0.001
 Hypercapnia vs. normocapnia1.10 (0.95–1.27)a 0.20
 Hypercapnia vs. hypocapnia0.79 (0.67–0.94)a <0.01
PaO2 groups
 Hypoxia vs. normoxia1.34 (1.08–1.66)b <0.01
 Hyperoxia vs. normoxia1.13 (0.81–1.57)b 0.46
 Hyperoxia vs. hypoxia0.85 (0.58–1.24)b 0.39
Alternative PaO2 categoriesc
 55-80 vs. >300 mmHg1.06 (0.76–1.50)b 0.72
 80-102 vs. >300 mmHg0.90 (0.64–1.27)b 0.55
 102-300 vs. >300 mmHg0.79 (0.56–1.11)b 0.17

Hypocapnia = PaCO2 < 35 mmHg; normocapnia = PaCO2 35–45 mmHg; hypercapnia = PaCO2 > 45 mmHg

Hypoxia = PaO2 < 60 mmHg; normoxia = PaO2 60–300 mmHg; hyperoxia = PaO2 > 300 mmHg

aMultivariable analysis adjusted for age, lowest glucose, AP4-adj and PaO2 (splines)

bMultivariable analysis adjusted for age, lowest glucose, AP4-adj and PaCO2 (splines)

cStratification based on thresholds from ARDSnet oxygenation target (55–80 mmHg), upper threshold of median cohort quintile (102 mmHg), and threshold from previous studies (300 mmHg)

Adjusted probability of in-hospital death by arterial carbon dioxide levels. Loess smoothing curve predicted from logistic regression model adjusted for spline functions of age, lowest glucose, AP4-adj and PaO2. Grey zones represent 95 % confidence intervals Adjusted probability of in-hospital death by arterial oxygen levels. Loess smoothing curve predicted from logistic regression model adjusted for spline functions of age, lowest glucose, AP4-adj and PaCO2. Grey zones represent 95 % confidence intervals Adjusted associations between subgroups and hospital mortality Hypocapnia = PaCO2 < 35 mmHg; normocapnia = PaCO2 35–45 mmHg; hypercapnia = PaCO2 > 45 mmHg Hypoxia = PaO2 < 60 mmHg; normoxia = PaO2 60–300 mmHg; hyperoxia = PaO2 > 300 mmHg aMultivariable analysis adjusted for age, lowest glucose, AP4-adj and PaO2 (splines) bMultivariable analysis adjusted for age, lowest glucose, AP4-adj and PaCO2 (splines) cStratification based on thresholds from ARDSnet oxygenation target (55–80 mmHg), upper threshold of median cohort quintile (102 mmHg), and threshold from previous studies (300 mmHg) Adjusted for age, lowest glucose, AP4-adj and PaCO2(splines), hypoxia but not hyperoxia was found to be associated with hospital mortality in comparison to normoxia (P < 0.01). When this model was reanalyzed without adjustment for PaCO2 the results were not materially different (data not shown). When the model was reanalyzed with hyperoxia (>300 mmHg) as reference category, no effects on mortality were observed for various oxygenation ranges. The individual and joint effect estimates for derangements (normal range vs. outside normal range) of both parameters are listed in Table 4. Aberrant levels of both PaCO2 and PaO2 were independently associated with hospital mortality (P < 0.01). The estimate for the interaction term (presence of PaCO2 derangement by presence of PaO2 derangement) was not significant on a multiplicative scale (P = 0.75).
Table 4

Associations between derangements and hospital mortality

VariableUnadjusted odds ratio (95 % CI)Adjusted odds ratio (95 % CI) P value
PaCO2 derangement vs. normocapnia1.38 (1.24–1.54)1.21 (1.07–1.36)a 0.003
PaO2 derangement vs. normoxia1.45 (1.21–1.74)1.27 (1.05–1.54)b 0.01
Interaction term-1.07 (0.71–1.62)0.75

PaCO2 derangement = PaCO2 < 35 or PaCO2 > 45 mmHg; normocapnia = PaCO2 35–45 mmHg

PaO2 derangement = PaO2 < 60 or PaO2 > 300 mmHg; normoxia = PaO2 60–300 mmHg

aMultivariable analysis adjusted for age, lowest glucose, AP4-adj and PaO2 (splines)

bMultivariable analysis adjusted for age, lowest glucose, AP4-adj and PaCO2 (splines)

CI confidence interval

Associations between derangements and hospital mortality PaCO2 derangement = PaCO2 < 35 or PaCO2 > 45 mmHg; normocapnia = PaCO2 35–45 mmHg PaO2 derangement = PaO2 < 60 or PaO2 > 300 mmHg; normoxia = PaO2 60–300 mmHg aMultivariable analysis adjusted for age, lowest glucose, AP4-adj and PaO2 (splines) bMultivariable analysis adjusted for age, lowest glucose, AP4-adj and PaCO2 (splines) CI confidence interval

Discussion

In accordance with previous studies, we found that early exposure to both hypo- and hypercapnia is common in ICU patients resuscitated from cardiac arrest [15, 16]. In contrast, hypoxia and severe hyperoxia are uncommon findings early in the ICU stay of Dutch hospitals. Both PaCO2 and PaO2 had a U-shaped relationship with outcome and after adjustment for known confounders, hypocapnia and hypoxia were significantly associated with hospital mortality. Hyperoxia was not independently associated with higher mortality in comparison with various ranges for normoxia. However, this study may lack power to detect significant associations for severe arterial oxygen derangements considering the low prevalence in the present cohort. Our adjusted mortality plots and the categorized results stress the importance of aberrant arterial levels after cardiac arrest, but rigid cut-offs for optimal ranges remain to be determined and validated. Increasing mortality rates may be skewed towards extreme PaO2 levels in the early phase after cardiac arrest. In line, PaCO2 levels between 40 and 45 mmHg appear to be favorable shortly after ICU admission. The complex U-shape of the survival curves for both parameters may explain the heterogeneity in previously observed associations [14]. It shows that unfavorable effects cannot be consistently captured when the results are stratified by groups based on arbitrary thresholds. Indeed, studies assessing arterial hyperoxia with lower thresholds usually failed to show significant effects on outcome, whereas higher risks were observed with substantially higher upper limits [5-9]. The current findings validate the recent calls for caution with hyperoxia in cardiac arrest patients only to a limited extent. The prevalence in this cohort shows that hypoxia and hyperoxia are not a common concern shortly after cardiac arrest patients are admitted to Dutch ICUs. In the analyses of those conditions, the relatively small number of exposed patients increases the probability of type 2 errors. Associations are, therefore, more likely to be consistent with increasing statistical power in the studied subgroups. Moreover, reanalyzing the adjusted effects of oxygenation based on quintiles did not detect a significant association with mortality (data not shown). Hypothesizing that physicians would avoid hypoxia most attentively in the most critically ill patients, hyperoxia could be an indirect marker of illness severity or responsive care, and could thereby reflect a worse outcome. Accordingly, hypoxia and hypocapnia may also be markers of less attentive care or prehospital injury. The absence of a significant interaction effect between PaCO2 and PaO2 suggests that it is mainly the effect of the individual variables that influences mortality in our model rather than the absolute effect caused by the interaction between the two variables. The effect of PaO2 on hospital mortality is therefore not likely to differ significantly across strata of PaCO2, or vice versa. Further, the effect size did not significantly depend on the concurrent presence of aberrant arterial carbon dioxide and arterial oxygen levels. Conditions in which both parameters are concurrently and strongly modified may, therefore, not synergistically increase the risk. However, the univariate associations of PaCO2 and PaO2 were subtly altered when adjusted for each other and both parameters should, therefore, judiciously be considered as possible confounders. For our analyses, we were restricted to the variables that were collected as part of the NICE registry. Our database does not contain prehospital variables, nor does it include all ABG samples per admission, but only a single measurement associated with the worst oxygenation in the first 24 h. Although this method has not previously been shown to be inferior, the selected data may not be the most representative data over the total ICU stay and may, therefore, misclassify patients. In addition, selecting either the first, worst or highest value from arterial blood gas sampling emerges as an essential methodological issue for the intended analyses [28]. The first measured sample may reflect pre-ICU treatment, including oxygen administration in the ambulance and emergency department. Early oxygen administration can influence oxidative metabolism, respiratory markers, vasoconstrictive status and blood flow [29-31], and may thus be an important predictor of outcome. In fact, both highest and lowest systolic blood pressures were significantly higher in the hyperoxia groups. Further, hyperoxia frequently coincides with hyperventilation and concurrent hypocapnia [32]. Interestingly, systemic blood pressures were very similar across the PaCO2 subgroups in this cohort. PaCO2 could yet be an important mediator in vascular effects, cardiopulmonary resuscitation and cerebral perfusion [13, 33]. In view of that, the association between hypocapnia and mortality may be explained by cerebral vasoconstriction, whereas hypercapnia may be less harmful due to increased peripheral tissue oxygenation [34-38]. Although our findings are observational and do not necessarily imply causality, the present results are supported by previous results [5, 15]. Our findings regarding hyperoxia are in line with several recent studies [8, 23, 39], even though conflicting results have been documented [6, 7, 24, 40]. Parts of the heterogeneity in previous findings may be attributed to the adjustment for PaCO2. Pure oxygen therapy after cardiac arrest has previously been shown to worsen neurological outcome in animal models [41] and exposure to hypocapnia and hypercapnia after ROSC has been associated with poor neurological function at hospital discharge [16]. However, the effects of PaO2 targets on neurological recovery of critically ill patients are still uncertain. In contrast to the previous study by Schneider et al. [15], both the unadjusted and adjusted association between mortality and hypocapnia were statistically significant. Specific study differences may be explained by population and methodological differences. Our multivariate model differed slightly and there was less dispersion of the carbon dioxide concentrations in our data. Other notable differences between both studies include the substantially lower median PaO2 (92 vs. 106 mmHg), mean FiO2 (58 vs. 71 %), and marginally lower mean PaCO2 (46 vs. 44 mmHg). Furthermore, the vast majority of patients in our cohort (80 vs. 40 %) reached a temperature lower than 34 °C during the first 24 h of ICU admission. Under these conditions, PaCO2 and PaO2 progressively decrease with decreasing body temperature and the occurrence of hypocapnia and hypoxia may be underestimated with uncorrected ABG levels. However, temperature correction of ABG measurements is ambiguous and was not routinely performed in our study or in the study by Schneider et al. In order to consistently assess the relationship between risk factors and outcome, it is important to re-evaluate previously established associations in different populations using robust methodology. The modified methodology of the present study provides further insights into the independent and combined effects of PaCO2 and PaO2 and accounts for clustering by hospital, interaction effects and model variances. Still, residual confounding by prehospital and Utstein variables cannot be ruled out, and derangements may not be isolated risk factors for mortality.

Conclusions

In this multicenter cohort study, we have studied the survival probability inferred from different levels of PaCO2 and PaO2 in post cardiac arrest patients. Most effects were attenuated after adjustment for identified confounders, but hypocapnia and hypoxia were independently associated with hospital mortality. The close relationship between both parameters argues for a concurrent assessment of the effects and further evaluation of target ranges is warranted.

Key messages

After resuscitation from cardiac arrest, exposure of patients to both hypo- and hypercapnia is common within 24 h of ICU admission Hypoxia and severe hyperoxia are uncommon findings early in the ICU stay Both PaCO2 and PaO2 had an independent U-shaped relationship with hospital mortality After adjustment for relevant confounders, hypocapnia and hypoxia were significant predictors of hospital mortality A synergistic effect of concurrent derangements of PaCO2 and PaO2 was not observed
  40 in total

1.  Human cardiovascular dose-response to supplemental oxygen.

Authors:  Z Bak; F Sjöberg; A Rousseau; I Steinvall; B Janerot-Sjoberg
Journal:  Acta Physiol (Oxf)       Date:  2007-05-17       Impact factor: 6.311

2.  When one depends on the other: reporting of interaction in case-control and cohort studies.

Authors:  Mirjam J Knol; Matthias Egger; Pippa Scott; Mirjam I Geerlings; Jan P Vandenbroucke
Journal:  Epidemiology       Date:  2009-03       Impact factor: 4.822

3.  The effect of Pa CO2 on the metabolism of ischemic brain in squirrel monkeys.

Authors:  J D Michenfelder; T M Sundt
Journal:  Anesthesiology       Date:  1973-05       Impact factor: 7.892

4.  Relationship between supranormal oxygen tension and outcome after resuscitation from cardiac arrest.

Authors:  J Hope Kilgannon; Alan E Jones; Joseph E Parrillo; R Phillip Dellinger; Barry Milcarek; Krystal Hunter; Nathan I Shapiro; Stephen Trzeciak
Journal:  Circulation       Date:  2011-05-23       Impact factor: 29.690

5.  Hyperoxia is associated with increased mortality in patients treated with mild therapeutic hypothermia after sudden cardiac arrest.

Authors:  David R Janz; Ryan D Hollenbeck; Jeremy S Pollock; John A McPherson; Todd W Rice
Journal:  Crit Care Med       Date:  2012-12       Impact factor: 7.598

6.  Association between arterial hyperoxia following resuscitation from cardiac arrest and in-hospital mortality.

Authors:  J Hope Kilgannon; Alan E Jones; Nathan I Shapiro; Mark G Angelos; Barry Milcarek; Krystal Hunter; Joseph E Parrillo; Stephen Trzeciak
Journal:  JAMA       Date:  2010-06-02       Impact factor: 56.272

7.  Arterial carbon dioxide tension and outcome in patients admitted to the intensive care unit after cardiac arrest.

Authors:  Antoine G Schneider; Glenn M Eastwood; Rinaldo Bellomo; Michael Bailey; Miklos Lipcsey; David Pilcher; Paul Young; Peter Stow; John Santamaria; Edward Stachowski; Satoshi Suzuki; Nicholas C Woinarski; Janine Pilcher
Journal:  Resuscitation       Date:  2013-02-27       Impact factor: 5.262

8.  Cerebral hemodynamic changes during sustained hypocapnia in severe head injury: can hyperventilation cause cerebral ischemia?

Authors:  A Ausina; M Báguena; M Nadal; S Manrique; A Ferrer; J Sahuquillo; A Garnacho
Journal:  Acta Neurochir Suppl       Date:  1998

9.  Hyperoxia in the intensive care unit and outcome after out-of-hospital ventricular fibrillation cardiac arrest.

Authors:  Joshua F Ihle; Stephen Bernard; Michael J Bailey; David V Pilcher; Karen Smith; Carlos D Scheinkestel
Journal:  Crit Care Resusc       Date:  2013-09       Impact factor: 2.159

10.  Arterial hyperoxia and in-hospital mortality after resuscitation from cardiac arrest.

Authors:  Rinaldo Bellomo; Michael Bailey; Glenn M Eastwood; Alistair Nichol; David Pilcher; Graeme K Hart; Michael C Reade; Moritoki Egi; D James Cooper
Journal:  Crit Care       Date:  2011-03-08       Impact factor: 9.097

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  34 in total

1.  Association Between Early Hyperoxia Exposure After Resuscitation From Cardiac Arrest and Neurological Disability: Prospective Multicenter Protocol-Directed Cohort Study.

Authors:  Brian W Roberts; J Hope Kilgannon; Benton R Hunter; Michael A Puskarich; Lisa Pierce; Michael Donnino; Marion Leary; Jeffrey A Kline; Alan E Jones; Nathan I Shapiro; Benjamin S Abella; Stephen Trzeciak
Journal:  Circulation       Date:  2018-02-01       Impact factor: 29.690

2.  Post-resuscitation arterial oxygen and carbon dioxide and outcomes after out-of-hospital cardiac arrest.

Authors:  Henry E Wang; David K Prince; Ian R Drennan; Brian Grunau; David J Carlbom; Nicholas Johnson; Matthew Hansen; Jonathan Elmer; Jim Christenson; Peter Kudenchuk; Tom Aufderheide; Myron Weisfeldt; Ahamed Idris; Stephen Trzeciak; Michael Kurz; Jon C Rittenberger; Denise Griffiths; Jamie Jasti; Susanne May
Journal:  Resuscitation       Date:  2017-09-21       Impact factor: 5.262

3.  Hemodynamic, Biochemical, and Ventilatory Parameters are Independently Associated with Outcome after Cardiac Arrest.

Authors:  Joseph H Pitcher; John Dziodzio; Joshua Keller; Teresa May; Richard R Riker; David B Seder
Journal:  Neurocrit Care       Date:  2018-08       Impact factor: 3.210

4.  Association Between Arterial Carbon Dioxide Tension and Clinical Outcomes in Venoarterial Extracorporeal Membrane Oxygenation.

Authors:  Arne Diehl; Aidan J C Burrell; Andrew A Udy; Peta M A Alexander; Peter T Rycus; Ryan P Barbaro; Vincent A Pellegrino; David V Pilcher
Journal:  Crit Care Med       Date:  2020-07       Impact factor: 7.598

Review 5.  Relationship between hyperoxemia and ventilator associated pneumonia.

Authors:  Karim Jaffal; Sophie Six; Farid Zerimech; Saad Nseir
Journal:  Ann Transl Med       Date:  2017-11

6.  [Translated article] Oxygen therapy. Considerations regarding its use in acute ill patients.

Authors:  José Manuel Valencia Gallardo; Jordi Solé Violán; Felipe Rodríguez de Castro
Journal:  Arch Bronconeumol       Date:  2022-01-12       Impact factor: 4.872

7.  Partial pressure of arterial carbon dioxide after resuscitation from cardiac arrest and neurological outcome: A prospective multi-center protocol-directed cohort study.

Authors:  J Hope Kilgannon; Benton R Hunter; Michael A Puskarich; Lisa Shea; Brian M Fuller; Christopher Jones; Michael Donnino; Jeffrey A Kline; Alan E Jones; Nathan I Shapiro; Benjamin S Abella; Stephen Trzeciak; Brian W Roberts
Journal:  Resuscitation       Date:  2018-11-16       Impact factor: 5.262

8.  Hyperoxia and Hypocapnia During Pediatric Extracorporeal Membrane Oxygenation: Associations With Complications, Mortality, and Functional Status Among Survivors.

Authors:  Katherine Cashen; Ron Reeder; Heidi J Dalton; Robert A Berg; Thomas P Shanley; Christopher J L Newth; Murray M Pollack; David Wessel; Joseph Carcillo; Rick Harrison; J Michael Dean; Robert Tamburro; Kathleen L Meert
Journal:  Pediatr Crit Care Med       Date:  2018-03       Impact factor: 3.624

Review 9.  Oxygen Toxicity in Critically Ill Adults.

Authors:  Chad H Hochberg; Matthew W Semler; Roy G Brower
Journal:  Am J Respir Crit Care Med       Date:  2021-09-15       Impact factor: 30.528

Review 10.  Target arterial PO2 according to the underlying pathology: a mini-review of the available data in mechanically ventilated patients.

Authors:  Julien Demiselle; Enrico Calzia; Clair Hartmann; David Alexander Christian Messerer; Pierre Asfar; Peter Radermacher; Thomas Datzmann
Journal:  Ann Intensive Care       Date:  2021-06-02       Impact factor: 6.925

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