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Perioperative angiotensin‐converting enzyme inhibitors or angiotensin II type 1 receptor blockers for preventing mortality and morbidity in adults

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Background

Perioperative hypertension requires careful management. Angiotensin‐converting enzyme inhibitors (ACEIs) or angiotensin II type 1 receptor blockers (ARBs) have shown efficacy in treating hypertension associated with surgery. However, there is lack of consensus about whether they can prevent mortality and morbidity.

Objectives

To systematically assess the benefits and harms of administration of ACEIs or ARBs perioperatively for the prevention of mortality and morbidity in adults (aged 18 years and above) undergoing any type of surgery under general anaesthesia.

Search methods

We searched the current issue of the Cochrane Central Register of Controlled Trials (CENTRAL; 2014, Issue 12), Ovid MEDLINE (1966 to 8 December 2014), EMBASE (1980 to 8 December 2014), and references of the retrieved randomized trials, meta‐analyses, and systematic reviews. We reran the search on February 3, 2017. Three potential new studies of interest were added to a list of 'Studies awaiting Classification' and will be incorporated into the formal review findings during the review update.

Selection criteria

We included randomized controlled trials (RCTs) comparing perioperative administration of ACEIs or ARBs with placebo in adults (aged 18 years and above) undergoing any type of surgery under general anaesthesia. We excluded studies in which participants underwent procedures that required local anaesthesia only, or participants who had already been on ACEIs or ARBs.

Data collection and analysis

Two review authors independently performed study selection, assessed the risk of bias, and extracted data. We used standard methodological procedures expected by Cochrane.

Main results

We included seven RCTs with a total of 571 participants in the review. Two of the seven trials involved 36 participants undergoing non‐cardiac vascular surgery (infrarenal aortic surgery), and five involved 535 participants undergoing cardiac surgery, including valvular surgery, coronary artery bypass surgery, and cardiopulmonary bypass surgery. The intervention was started from 11 days to 25 minutes before surgery in six trials and during surgery in one trial. We considered all seven RCTs to carry a high risk of bias. The effects of ACEIs or ARBs on perioperative mortality and acute myocardial infarction were uncertain because the quality of the evidence was very low. The risk of death was 2.7% in the ACEIs or ARBs group and 1.6% in the placebo group (risk ratio (RR) 1.61; 95% confidence interval (CI) 0.44 to 5.85). The risk of acute myocardial infarction was 1.7% in the ACEIs or ARBs group and 3.0% in the placebo group (RR 0.55; 95% CI 0.14 to 2.26). ACEIs or ARBs may improve congestive heart failure (cardiac index) perioperatively (mean difference (MD) ‐0.60; 95% CI ‐0.70 to ‐0.50, very low‐quality evidence). In terms of rate of complications, there was no difference in perioperative cerebrovascular complications (RR 0.48; 95% CI 0.18 to 1.28, very low‐quality evidence) and hypotension (RR 1.95; 95% CI 0.86 to 4.41, very low‐quality evidence). Cardiac surgery‐related renal failure was not reported. ACEIs or ARBs were associated with shortened length of hospital stay (MD ‐0.54; 95% CI ‐0.93 to ‐0.16, P value = 0.005, very low‐quality evidence). These findings should be interpreted cautiously due to likely confounding by the clinical backgrounds of the participants. ACEIs or ARBs may shorten the length of hospital stay, (MD ‐0.54; 95% CI ‐0.93 to ‐0.16, very low‐quality evidence) Two studies reported adverse events, and there was no evidence of a difference between the ACEIs or ARBs and control groups.

Authors' conclusions

Overall, this review did not find evidence to support that perioperative ACEIs or ARBs can prevent mortality, morbidity, and complications (hypotension, perioperative cerebrovascular complications, and cardiac surgery‐related renal failure). We found no evidence showing that the use of these drugs may reduce the rate of acute myocardial infarction. However, ACEIs or ARBs may increase cardiac output perioperatively. Due to the low and very low methodology quality, high risk of bias, and lack of power of the included studies, the true effect may be substantially different from the observed estimates. Perioperative (mainly elective cardiac surgery, according to included studies) initiation of ACEIs or ARBs therapy should be individualized.

PICOs

Population
Intervention
Comparison
Outcome

The PICO model is widely used and taught in evidence-based health care as a strategy for formulating questions and search strategies and for characterizing clinical studies or meta-analyses. PICO stands for four different potential components of a clinical question: Patient, Population or Problem; Intervention; Comparison; Outcome.

See more on using PICO in the Cochrane Handbook.

Giving blood pressure‐lowering drugs around the time of surgery to reduce the risk of death and serious illness in adults

Review question

We reviewed the evidence on two drugs that are used to lower blood pressure (angiotensin‐converting enzyme inhibitors (ACEIs) or angiotensin II type 1 receptor blockers (ARBs)) around the time of surgery for reducing the risk of death and serious illness in adults undergoing surgery using a general anaesthetic.

Background

People with high blood pressure around the time of surgery are carefully treated as they have a higher risk of complications such as reduced blood flow to the heart muscle (myocardial ischaemia), heart attack, and even death. ACEIs or ARBs relax the blood vessels and are effective in treating high blood pressure associated with surgery, but the outcome is uncertain when these are used for the prevention of surgery‐related complications.

Study characteristics

We searched the databases to 8 December 2014. We found seven randomized controlled trials (from 1992 to 2014) with 571 participants that met our inclusion criteria. Two of the seven trials involved 36 participants undergoing non‐cardiac vascular surgery (infrarenal aortic surgery), and five involved 535 participants undergoing cardiac surgery, including valvular surgery, coronary artery bypass surgery, and cardiopulmonary bypass surgery. The interventions started from 11 days to 25 minutes before surgery in six trials and during surgery in one. All of the seven studies were conducted in Europe and the United States. One of the seven studies was funded by a drug company.

Key results

Three trials involving 419 participants reported on deaths, but the results were imprecise with no evidence of a difference between the intervention and placebo groups (perioperative mortality). Two trials with 345 participants reported a similar number of participants in the two groups with changes in their electrocardiogram that indicated a heart attack (acute myocardial infarction). The output of the heart (cardiac index) appeared to be increased in one trial only.

The two trials that reported the risk of low blood pressure as a potential complication of the intervention found no apparent difference; and the risk of stroke was similar with and without the intervention in three trials.

The results from three studies showed that ACEIs or ARBs may reduce length of hospital stay, but these findings should be interpreted cautiously because of the possible influence of the clinical backgrounds of the participants studied. Two trials that assessed adverse events found no evidence of a difference between ACEIs or ARBs and placebo (no treatment).

Quality of the evidence

The quality of evidence for the outcomes was low or very low. The overall number of participants was small. Most participants were undergoing cardiac surgery, which meant the findings cannot be generalized to other types of surgery. We reran the search on February 3, 2017. We will deal with the three studies of interest when we update the review.

Authors' conclusions

Implications for practice

Overall, this review did not find evidence in preventing mortality, morbidity, and complications (hypotension, perioperative cerebrovascular complications, and cardiac surgery‐related renal failure) of perioperative ACEIs or ARBs. There was also no evidence that the use of these drugs may reduce the risk of acute myocardial infarction. However, ACEIs or ARBs may increase cardiac output perioperatively. Due to the low and very low methodology quality, high risk of bias, and lack of power of the included studies, the true effect may be substantially different from the observed estimates. Perioperative (mainly elective cardiac surgery, according to included studies) initiation of ACEIs or ARBs therapy should be individualized.

Implications for research

Poor methodology was the most common reason for the downgrading of quality of evidence. Since the evidence this review provides is still weak, further clinical trials should control the risk of bias through rigorous study design and adopt a relatively large sample size. Moreover, the efficacy of perioperative administration of ACEIs or ARBs on patients undergoing non‐cardiac surgery should be studied. As the quality of evidence for each outcome was low or very low, we are unable to determine the effects of perioperative ACEIs or ARBs. Further research is very likely to have an important impact on the results of this review.

Summary of findings

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Summary of findings for the main comparison. ACEIs or ARBs compared to placebo for preventing surgery‐related mortality and morbidity in adults

ACEIs or ARBs compared to placebo for preventing surgery‐related mortality and morbidity in adults

Patient or population: Patients undergoing any type of surgery under general anaesthesia receiving ACEIs or ARBs perioperatively
Settings: All settings
Intervention: ACEIs or ARBs
Comparison: Placebo

Outcomes

Illustrative comparative risks* (95% CI)

Relative effect
(95% CI)

No of Participants
(studies)

Quality of the evidence
(GRADE)

Comments

Assumed risk

Corresponding risk

Placebo

ACEIs or ARBs

All‐cause mortality

Study population

RR 1.61
(0.44 to 5.85)

419
(3 studies)

⊕⊝⊝⊝
very low1

All the included trials were at high risk of bias.

Total sample size is lower than the calculated.

Duration of follow‐up: until discharge from hospital

16 per 1000

25 per 1000
(7 to 90)

Moderate

7 per 1000

11 per 1000
(3 to 41)

Risk of acute myocardial ischaemia

Study population

RR 0.55
(0.14 to 2.26)

345
(2 studies)

⊕⊝⊝⊝
very low1

All the included trials were at high risk of bias.

Total sample size is lower than the calculated.

Duration of follow‐up: until discharge from hospital

30 per 1000

16 per 1000
(4 to 67)

Moderate

56 per 1000

31 per 1000
(8 to 127)

Congestive heart failure

The mean cardiac index in the intervention groups was
0.6 higher
(0.7 to 0.5 higher)

34
(2 studies)

⊕⊝⊝⊝
very low1

All the included trials were at high risk of bias.

Total population size is less than 400.

Duration of follow‐up: not specified

Hypotension

RR 1.95 (0.86 to 4.41)

298 (1 study)

⊕⊝⊝⊝
very low1

All the included trials were at high risk of bias.

Total population size is less than 400.

Duration of follow‐up: not specified

Rate of perioperative cerebrovascular complications

Study population

RR 0.48
(0.18 to 1.28)

459
(3 studies)

⊕⊝⊝⊝
very low1

All the included trials were at high risk of bias.

Duration of follow‐up: until discharge from hospital (Billings 2012; Pretorius 2012); 90 days after surgery (Flesch 2009)

50 per 1000

24 per 1000
(9 to 65)

Moderate

71 per 1000

34 per 1000
(13 to 92)

Length of hospital stay

The mean length of hospital stay in the intervention groups was
0.54 lower
(0.93 lower to 0.16 lower)

372
(2 studies)

⊕⊝⊝⊝
very low1

All the included trials were at high risk of bias.

Total population size is less than 400.

Duration of follow‐up: until discharge from hospital

Treatment related adverse events

385 (2 studies)

⊕⊝⊝⊝
very low1

All the included trials were at high risk of bias.

Total population size is less than 400.

Authors did not provided detailed information on adverse events, which made the synthesis of the results less clinically relevant.

*The basis for the assumed risk (e.g. the median control group risk across studies) is provided in footnotes. The corresponding risk (and its 95% confidence interval) is based on the assumed risk in the comparison group and the relative effect of the intervention (and its 95% CI).
ACEIs: angiotensin‐converting enzyme inhibitors; ARBs: angiotensin II type 1 receptor blockers; CI: confidence interval; ECG: electrocardiograph; RR: risk ratio

GRADE Working Group grades of evidence
High quality: Further research is very unlikely to change our confidence in the estimate of effect.
Moderate quality: Further research is likely to have an important impact on our confidence in the estimate of effect and may change the estimate.
Low quality: Further research is very likely to have an important impact on our confidence in the estimate of effect and is likely to change the estimate.
Very low quality: We are very uncertain about the estimate.

1Downgraded by three levels due to very serious study limitations (all the trials included were at high risk of bias) and serious imprecision (total population size is less than 400).

Background

Hypertension is closely related to cardiac diseases such as myocardial infarction, congestive heart failure, and even sudden death (Lloyd‐Jones 2010). An increasing number of patients scheduled to undergo surgery suffer from hypertension, which is an important contributing factor to perioperative cardiac complications. Patients who undergo non‐cardiac surgery run the risk of myocardial infarction or cardiac death, which also leads to considerably increased costs (Freeman 2009). Perioperative myocardial infarction occurs in 6% of patients, with a mortality rate of 3% in patients with acquired cardiac diseases (Wiesbauer 2007). Due to the high risk of perioperative cardiac complications, strategies for prevention are worth examining (Fleisher 2007).

Description of the condition

As cardiovascular events remain a major threat perioperatively in hypertensive patients undergoing cardiac or non‐cardiac operative procedures, considerable effort has been expended to lower the extent of myocardial ischaemia in these patients. There is also a high economic cost associated with cardiovascular morbidity and mortality. Perioperative medical therapy is one of three categories of interventions intended to reduce the rate of perioperative cardiac complications. Pharmacological therapies include beta‐blockers, alpha 2‐adrenergic agonists, nitrates, diuretics, calcium‐channel blockers, angiotensin‐converting enzyme inhibitors (ACEIs), and angiotensin II receptor blockers (ARBs). Pharmacologic attenuation of sympathetic nervous system activity is thought to improve participant outcomes, and beta‐blockers have been found to reduce perioperative arrhythmias and myocardial ischaemia (Wiesbauer 2007). However, they also seem to be associated with increased mortality and a higher risk of cerebrovascular complications (Devereaux 2008). Several randomized studies showed that alpha 2‐adrenergic agonists did not reduce rates of fatal cardiac events and cardiac death (Ellis 1994; Stuhmeier 1996). Nitrates and calcium‐channel blockers have not shown benefits in reducing the rate of cardiac events (Dodds 1993). Despite the variety of therapeutic interventions available, cardiac complications remain a threat to the safety of patients undergoing surgery.

Description of the intervention

ACEIs and ARBs are two types of effective and widely used antihypertensive drugs targeting the renin‐angiotensin system (RAS). They can be used perioperatively to control hypertension via similar mechanisms. ACEIs prevent the production of angiotensin II from angiotensin I and interfere with the regulation of blood pressure by impairing degradation of bradykinin and inhibit the receptor binding of angiotensin II (Tschope 2002). ARBs exert their vasodilation effect at the receptor level by inhibiting the binding of angiotensin II to the type 1 receptors (AT1R), irrespective of whether angiotensin II is generated by renin‐angiotensin cascade or in local tissues by other means (Zou 2009).

How the intervention might work

Perioperative usage of ACEIs and ARBs is thought to be helpful in controlling high blood pressure. Perioperatively, aggressive and early treatment of hypertensive reactions is suggested to reduce cardio‐cerebral complications. In hypertensive emergencies, intravenous infusion of ACEI enalaprilat lowered blood pressure in more than 60% of participants (Strauss 1984). The use of ACEIs and ARBs may work on multiple foci. Heightened sympathetic nervous system activity contributes greatly to perioperative cardiac complications, and pharmacologic intervention of that pathway improves participant outcomes (Warltier 2000). Research has showed that ACEIs can reduce sympathetic drive and augment vagal tone (Fariello 1989). However, conflicting opinions have been proposed indicating that sympathetic nervous inhibition is not a major component of the blood pressure‐lowering action (Krum 2006). Can RAS inhibitors, apart from decreasing blood pressure, lower hard endpoints like myocardial ischaemia, perioperative mortality, and length of hospitalization?

The RAS are activated during cardiac surgery with cardiopulmonary bypass (CPB), which disturbs the balance of pro‐ and anti‐inflammatory cytokines and modifies regional blood flow, contributing to morbidity (Kwapisz 2004). The systemic vascular resistance index of participants treated with ACEI quinapril was significantly lower compared with those treated with isotonic saline solution, without an increased risk of deleterious haemodynamic episodes (Kwapisz 2004). Thus, administration of RAS inhibitors during cardiac surgery with CPB may lower cardiac complications through modifying regional blood flow during CPB.

In people routinely treated with ACEIs, adrenergic receptor hyporesponsiveness and regression of cardiovascular hypertrophy are thought to be implicated (Licker 1996). Long‐term administration of ACEIs and ARBs has been demonstrated to be beneficial to participants with cardiovascular and renal diseases (Garg 1995; Lee 2004). When taken properly in adequate dosages, ACEIs/ARBs slowed the progression of heart failure and greatly reduced morbidity and mortality for participants with heart failure (Cohn 1991; Hunt 2001). Thus, an increasing number of patients scheduled to undergo cardiac surgery are now chronically treated with ACEIs (Licker 2000). However, some of these patients develop perioperative hypotensive episodes (Coriat 1994; Tuman 1995), which are due to impaired adrenergic vasoconstrictive response in people chronically treated with ACEIs (Licker 2000). In these cases, can perioperative administration of RAS inhibitors for the treatment of hypertensive reactions improve outcomes?

In both diabetic and non‐diabetic proteinuria renal disease, blockade of the RAS is regarded as reno‐protective (Brenner 2003; Nakao 2003). During cardiac surgery with CPB, effective renal plasma flow and glomerular filtration rate decreased in the control group whereas they remained unchanged in the captopril group (Colson 1990). The reno‐protective effect of RAS inhibitors may be beneficial to patients undergoing cardiopulmonary bypass or those with renal diseases.

Why it is important to do this review

The beneficial effects of chronic administration of ACEIs and ARBs have been demonstrated, but the value of the administration of these drugs in the operative setting remains controversial. Different investigators have different opinions (Boeken 1999; Colson 1992; Coriat 1994; Deakin 1998; Di Pasquale 1993; Licker 1996; Pigott 1999; Ryckwaert 2001; Webb 1998). In light of the uncertain evidence for perioperative administration of ACEIs and ARBs, a systematic review of randomized trials appraising the perioperative usage of ACEIs and ARBs is necessary to test whether these two types of RAS inhibitors are suitable for controlling haemodynamic condition and then preventing mortality and morbidity in patients undergoing surgery. Blessberger 2014 conducted a systematic review on perioperative beta‐blockers for preventing surgery‐related mortality and morbidity, but due to the low‐ to moderate‐quality evidence, the authors were uncertain as to whether the intervention had an important effect on these outcomes, which made the present review more interesting.

Objectives

To systematically assess the benefits and harms of administration of ACEIs or ARBs perioperatively for the prevention of mortality and morbidity in adults (aged 18 years and above) undergoing any type of surgery under general anaesthesia.

Methods

Criteria for considering studies for this review

Types of studies

We included randomized controlled trials (RCTs) comparing perioperative administration of ACEIs or ARBs with placebo.

Types of participants

We included adults (aged 18 years and above) undergoing any type of surgery under general anaesthesia receiving ACEIs or ARBs perioperatively, including those participants with pre‐existing hypertension, heart failure, or ventricular dysfunction.

We excluded:

  1. participants undergoing procedures that require local anaesthesia only;

  2. participants who are already on chronic treatment with ACEIs or ARBs.

Types of interventions

We included trials that compared perioperative administration of any kind of ACEI or ARB via any route versus placebo. ACEIs and ARBs are started preoperatively (after hospital admission), during operation, or up to one day after surgery.

Types of outcome measures

Primary outcomes

  1. All‐cause mortality and cardiac mortality (occurring 30 days postoperatively or before hospital discharge).

  2. Risk of acute myocardial infarction, defined as the presence of characteristic chest pain, an ST elevation, or increase in myocardial isoenzymes, occurring up to 30 days postoperatively or before discharge from hospital.

  3. Risk of myocardial ischaemia (defined as the presence of clinical symptoms and significant ST segment depression, occurring up to 30 days postoperatively or before hospital discharge).

Secondary outcomes

  1. Congestive heart failure (occurring 30 days postoperatively or before hospital discharge).

  2. Hypotension (defined as hypotension in the individual studies selected for the review).

  3. Cerebrovascular complications (diagnosed by clinical symptoms and computed tomography or magnetic resonance imaging).

  4. Renal insufficiency (diagnosed by clinical symptoms and laboratory examination, including serum creatinine and urinary diagnostic indices, occurring 30 days postoperatively or before hospital discharge).

  5. Length of hospital stay.

  6. Treatment related adverse events

Search methods for identification of studies

Electronic searches

We searched the current issue of the Cochrane Central Register of Controlled Trials (CENTRAL; 2014, Issue 12), Ovid MEDLINE (1966 to 8 December 2014), and EMBASE (1980 to 8 December 2014).

We reran the search on February 3, 2017. We will deal with the three studies of interest when we update the review.

We retrieved relevant RCTs without language or date restrictions. Please see Appendix 1 for our search terms.

We searched for ongoing clinical trials and unpublished studies via:

  1. http://www.controlled‐trials.com/

  2. http://clinicaltrials.gov/

Searching other resources

We screened the references of the retrieved randomized trials, meta‐analyses, and systematic reviews for additional trials. We contacted the main authors of studies to ask for missing or unreported data.

Data collection and analysis

Selection of studies

After searching the literature, we reviewed the titles and abstracts of all studies identified, and determined which publications were suitable for further consideration. We then obtained the full records of these publications. Two review authors (ZZ, XYC) independently assessed the eligibility of each trial for inclusion in the review. We conferred with a third review author (XYS) to resolve disagreements. In order to avoid duplication, we only included the data from the latest study if the same group of participants were involved in the different reports.

Data extraction and management

Two review authors (ZZ, XYC) independently extracted data from each identified trial and recorded them on a standardized data extraction form (see Appendix 2). We resolved disagreements by consensus. When additional information was required, we contacted the first author of the relevant trial.

Assessment of risk of bias in included studies

Two review authors (ZZ, XYS) independently appraised the methodological quality of the eligible trials. We resolved any disagreements by discussion. A third review author (HBY) arbitrated when necessary. We assessed each trial according to the quality domains of random sequence generation, allocation concealment, blinding of participants and personnel, blinding of outcome assessment, incomplete outcome data, selective reporting, and other potential threats to validity (Higgins 2011; Kjaergard 2001; Moher 1998; Schulz 1995). We considered a trial to be at low risk of bias if all domains were assessed as adequate. We considered a trial to be at high risk of bias if one or more domains were assessed as inadequate or unclear. We reported the 'Risk of bias' table as part of the Characteristics of included studies table and present a 'Risk of bias' summary figure that details all of the judgements made for all included studies in the review (Higgins 2011). We resolved disagreements in a consensus meeting. To avoid selection bias, we did not exclude trials because of low quality or any methodological characteristics. We used study quality assessment to assess the stability of the meta‐analytic results by features of study design such as randomization. We carried out the analysis before and after we excluded certain studies of lower methodological quality. If the effect measures differed significantly between the analyses, with or without the lower methodological quality studies, we reported stratified results according to study quality.

Measures of treatment effect

We summarized dichotomous data as risk ratio and continuous data as mean difference or standardized mean difference. We calculated the number of participants who suffered from treatment‐related adverse effects. In the original studies, "adverse events considered as related with the study medication" or other similar expressions were recognized as the outcomes of interest. We calculated risk ratio and number needed to treat for an additional beneficial outcome with 95% confidence intervals (Cook 1995) if the data allowed.

Unit of analysis issues

We combined different ACEIs or ARBs when trials compared ACEIs or ARBs with placebo. We analysed cardiac surgery and non‐cardiac surgery separately. We ensured that cluster randomized trials were treated appropriately.

Dealing with missing data

We tried to contact the first author of included trials to obtain missing data necessary for the meta‐analysis. We calculated missing standard deviations from the standard errors or confidence intervals (Higgins 2011). When we were unable to calculate standard deviations, we planned to impute these data using the mean value of reported standard deviations of other trials. We addressed the influence of missing data in the Discussion section of the review.

Assessment of heterogeneity

We assessed clinical heterogeneity and statistical heterogeneity. We solved clinical heterogeneity by subgroup analysis and sensitivity analysis. We also examined heterogeneity using the Chi2 statistic with significance set at P value < 0.1. We used the I2 statistic to describe the proportion of any variability due to heterogeneity (Higgins 2002). When P value > 0.1, we carried out the meta‐analysis in a fixed‐effect model; otherwise, we used a random‐effects model. We assumed the corresponding outcomes between groups to be statistically significant when the 95% confidence interval of risk ratio did not include 1.

Assessment of reporting biases

We planned to use a funnel plot to assess publication bias if we included more than 10 trials in the review. We planned to use weighted linear regression to test for funnel plot asymmetry (Egger 1997). However, due to the limited number of trials for each outcome, we did not produce a funnel plot.

Data synthesis

We undertook a meta‐analysis to measure the effect size if the degree of clinical and statistical heterogeneity was not excessive. We performed the meta‐analysis using RevMan 5.3. We used the fixed‐effect and random‐effects model according to the value of P and the I2 statistic. When the data extracted from the original reports did not warrant a quantitative summary measure, we carried out a qualitative description of the outcomes. For trials where continuous data were not given as means, no standard deviations (SDs) or standard errors were presented, or data were difficult to decipher (for instance the results were shown in figures and difficult to quantify accurately), we tried to contact the first authors and corresponding authors as stated in Dealing with missing data. When the attempt failed, we moved these studies to the studies awaiting classification. Only one study, Boldt 1996, should have been classified as awaiting classification since the data reporting in this study was incomplete. However, the lead author of that study has been accused of fraud. Consequently the reliability of the results of that study is questionable, and we have excluded the study.

According to the Cochrane Handbook for Systematic Reviews of Interventions (Higgins 2011), when SDchange were unavailable in the original report, we imputed standard deviations for changes from baseline with the following technique: SDchange = (SDbaseline2 + SDfinal2 ‐ 2*Corr*SDbaseline*SDfinal)0.5. Default value (0.8) imputed for the correlation value.

Subgroup analysis and investigation of heterogeneity

We performed subgroup analyses according to participants and interventions.

Subgroups of participants

We planned to conduct subgroup analyses according to types of surgery, anaesthesia, and other potentially influential factors.

  • Type of surgery: cardiac surgery or non‐cardiac surgery.

  • Type of anaesthesia: general anaesthesia only, or general anaesthesia combined with local anaesthesia. However, since none of the trials contained any information about combination of general anaesthesia and local anaesthesia, we could not perform subgroup analysis to assess the impact of anaesthesia method.

  • Type of potentially influential factors: factors that may increase the perioperative risk (presence of heart failure, recent acute myocardial infarction, diabetes, cerebrovascular insufficiency, lung disease, etc.). However, since individual raw data were not available, we could not perform subgroup analyses to assess the impact of perioperative risk of participants.

Subgroups of interventions

  • Perioperative AECIs versus placebo.

  • Perioperative ARBs versus placebo.

Sensitivity analysis

We performed sensitivity analyses to exclude trials with a high risk of bias. We performed 'trim and fill' sensitivity analysis of the primary outcomes if publication bias existed. To assess the influence of each trial on the result, we excluded them one by one using Stata. When we came across studies where the standard deviation of change from baseline was missing, we imputed the missing standard deviation using an imputed value, Corr, for the correlation coefficient. Besides the default value (0.8), we used different hypothesized values of Corr based on reasoned argument to determine whether the overall result of the analysis was robust to the use of imputed correlation coefficients.

Summary of findings tables and GRADE

We assessed the quality of the body of evidence associated with specific outcomes (all‐cause mortality, risk of acute myocardial ischaemia, risk of myocardial ischaemia, hypotension, cerebrovascular complications, and cardiac mortality) using the principles of the GRADE system (Guyatt 2008). We constructed a 'Summary of findings' table using the GRADE software (GRADEpro). The GRADE approach appraises the quality of a body of evidence based on the extent to which one can be confident an estimate of effect or association reflects the item being assessed. The assessment of the quality of the body of evidence was considered within study risk of bias (methodologic quality), the directness of the evidence, heterogeneity of the data, precision of effect estimates, and risk of publication bias.

Results

Description of studies

See: Characteristics of included studies; Characteristics of excluded studies.

Results of the search

Our initial electronic search yielded 2258 publications (last searched December 2014). We scanned these publications and identified 46 studies that we could not exclude by scrutiny of titles and abstracts alone. After reading the full texts, we found seven randomized controlled trials (RCTs) that met the inclusion criteria (Billings 2012; Colson 1992; Flesch 2009; Licker 1996; Pretorius 2012; Ryckwaert 2001; Walter 2002):

We included seven trials in this review and excluded 39 studies for the reasons stated in the Characteristics of excluded studies table. One trial, Billings 2012, used more than one eligible drug (candesartan and ramipril), and we combined the two intervention groups numerically using the statistical methods in Chapters 7 and 16 of the Cochrane Handbook for Systematic Reviews of Interventions (Higgins 2011), so in effect we compared one intervention group of 46 participants with the placebo group of 28 participants (Figure 1)


Flow diagram of study selection process.

Flow diagram of study selection process.

We reran the search on February 3, 2017. The 301 studies yielded were scanned and three studies were found of interest. The three potential new studies of interest were added to a list of 'Studies awaiting Classification' and will be incorporated into the formal review findings during the review update.

Included studies

All the eligible trials were conducted in Europe and the United States. The RCTs were parallel‐group and single‐centre designed. Three trials had more than one ACEIs or ARBs group (Billings 2012; Colson 1992; Pretorius 2012); we discarded the unrelated groups. The seven included studies included 571 enrolled participants, with sample size varying from 14 to 305 participants. The participants in the Colson 1992 and Licker 1996 studies were undergoing non‐cardiac surgery (infrarenal aortic surgery) (n = 36), and the participants in the other RCTs were undergoing cardiac surgery (n = 535), including valvular surgery, coronary artery bypass surgery, and cardiopulmonary bypass surgery. Demographic data in each RCT were specified in a data extraction form. Flesch 2009 and Walter 2002 detailed the disease status of participants preoperatively. Four trials specified prior drug therapies (Billings 2012; Flesch 2009; Licker 1996; Pretorius 2012). We contacted the investigators of the trials for missing data and added this information to the Characteristics of included studies table.

The agents used in the ACEIs or ARBs groups included enalapril (Colson 1992; Licker 1996; Ryckwaert 2001; Walter 2002), ramipril (Billings 2012; Pretorius 2012), and candesartan (Billings 2012; Flesch 2009). In six RCTs pharmaceutical therapy was started preoperatively (11 days to 25 minutes prior to surgery) (Billings 2012; Colson 1992; Flesch 2009; Licker 1996; Pretorius 2012; Walter 2002), and in one RCT it was started intraoperatively (Ryckwaert 2001). Drugs were administered orally or intravenously in the seven included trials.

Three RCTs reported the primary outcomes (Billings 2012; Pretorius 2012; Walter 2002). Of these, acute myocardial infarction was measured in dichotomous data (ST elevation or new Q wave in electrocardiogram test). One trial reported glomerular filtration rate as a measurement of renal function (Colson 1992). Two RCTs reported the rate of hypotension (Pretorius 2012; Walter 2002), but the definitions were different. Pretorius et al defined hypotension as systolic blood pressure less than 90 mmHg or prolonged need for vasopressors, while Walter et al defined hypotension as blood pressure below 80/50 mmHg.

We considered the included studies to be underpowered because only two studies, Flesch 2009 and Pretorius 2012, reported the methods of sample size calculations. Compared with the sample size of these two studies, the other five studies contained fewer participants, which made them underpowered. Besides, in Flesch 2009 and Pretorius 2012, mortality was not included as primary outcome, which means the sample size calculations in these two trials might not be correct for testing statistical significance of mortality.

Excluded studies

We excluded 39 studies for the reasons detailed in Characteristics of excluded studies.

Ongoing studies

No ongoing studies were identified.

Studies awaiting classification

There are three studies awaiting classification (Fan 2016; Fuentes‐Reyes 2016;Tian 2015). For further details see Characteristics of studies awaiting classification.

Risk of bias in included studies

See: Figure 2; Figure 3Characteristics of included studies.


Risk of bias summary: review authors' judgements about each risk of bias item for each included study.

Risk of bias summary: review authors' judgements about each risk of bias item for each included study.


Risk of bias graph: review authors' judgements about each risk of bias item presented as percentages across all included studies.

Risk of bias graph: review authors' judgements about each risk of bias item presented as percentages across all included studies.

Allocation

The seven included RCTs did not provide an adequate description of the methods used for generating the allocation sequence; all were described as randomized. We considered that all of the included studies carried an unclear risk of bias. None of the trials specified allocation concealment.

Blinding

One trial had no relevant description (Billings 2012), while the remaining six studies claimed to be double‐blind designs. After contacting the author, we recognized the Billings 2012 study as a double‐blind design. In addition, in Pretorius 2012, the study personnel who assessed the outcomes were blinded.

Incomplete outcome data

Five studies detailed information of dropouts (Billings 2012; Flesch 2009; Licker 1996; Pretorius 2012; Walter 2002). Among these five studies, Flesch 2009, and Pretorius 2012 carried out intention‐to‐treat analysis. In one study all data were included in the analysis, although no information about dropouts was provided (Ryckwaert 2001). Another study provided no relevant description, so we considered this study to be at high risk of bias (Colson 1992).

Selective reporting

We found no protocols for any of the studies, and were therefore unable to assess reporting bias.

Other potential sources of bias

We did not recognize any other potential sources of bias.

Effects of interventions

See: Summary of findings for the main comparison ACEIs or ARBs compared to placebo for preventing surgery‐related mortality and morbidity in adults

See: summary of findings Table for the main comparison.

Primary outcomes

All‐cause mortality

Three RCTs involving 419 participants reported perioperative mortality (Billings 2012; Pretorius 2012; Walter 2002). There was no significant difference between the ACEIs or ARBs and control groups (risk ratio (RR) 1.61; 95% confidence interval (CI) 0.44 to 5.85, P value = 0.48) with no statistical heterogeneity across the studies (I2 statistic = 0%) (Figure 4). All of the included trials were at high risk of bias, and the sample sizes were small. For these reasons, we downgraded this outcome to very low quality.


Forest plot of comparison: 1 All‐cause mortality, outcome: 1.1 All‐cause mortality.

Forest plot of comparison: 1 All‐cause mortality, outcome: 1.1 All‐cause mortality.

Risk of acute myocardial infarction
ST elevation or new Q wave in electrocardiogram test

Two RCTs involving 345 participants reported the outcome of perioperative electrocardiogram test (Pretorius 2012; Walter 2002). All of the participants underwent elective cardiac surgery. Positive findings included ST segment elevation or new Q wave, which indicated acute myocardial infarction. The rates of myocardial infarction were similar in both groups without significant difference during the study period (RR 0.55; 95% CI 0.14 to 2.26, P value = 0.41), with no statistical heterogeneity across the studies (I2 statistic = 0%) (Figure 5). However, the direction of the analysis favoured administration of ACEIs or ARBs. All of the included trials were at high risk of bias, and the sample sizes were small. For these reasons, we downgraded the outcome to very low quality.


Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.2 ST‐elevation or new Q wave in ECG test.

Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.2 ST‐elevation or new Q wave in ECG test.

Myocardial ischaemia

None of the trials reported myocardial ischaemia (defined as the presence of clinical symptoms and significant ST segment depression, occurring up to 30 days postoperatively or before hospital discharge).

Secondary outcomes

Congestive heart failure

None of the studies reported the rate of congestive heart failure. Two trials involving 34 participants compared enalapril with placebo on cardiac index (Licker 1996; Ryckwaert 2001). Cardiac index favoured ACEIs (mean difference (MD) ‐0.60; 95% CI ‐0.70 to ‐0.50, P value < 0.00001) (Figure 6), with no significant statistical heterogeneity across the studies (I2 statistic = 0%). When the study containing participants undergoing cardiac surgery, Licker 1996, was removed, we found similar results as follows: cardiac index (MD ‐0.60; 95% CI ‐0.71 to ‐0.49, P value < 0.00001). All of the included trials were at high risk of bias, and the sample sizes were small. For these reasons, we downgraded the outcome to very low quality.


Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.3 Cardiac index.

Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.3 Cardiac index.

Hypotension

Two studies reported the occurrence of hypotension (Pretorius 2012; Walter 2002). As Walter 2002 did not describe the results clearly, we discarded this study when we synthesized the rate of hypotension. There was no statistical difference in the rate of hypotension (RR 1.95; 95% CI 0.86 to 4.41, P value = 0.11) (Table 1).

Open in table viewer
Table 1. Rate of hypotension

Outcome or subgroup

Studies

Participants

Statistical method

Effect estimate

Rate of hypotension

1

298

Risk Ratio (M‐H, Fixed, 95% CI)

1.95 [0.86, 4.41]

Risk ratio < 1 favours angiotensin‐converting enzyme inhibitors and angiotensin II type 1 receptor blockers group. Risk ratio > 1 favours control group.

Rate of perioperative cerebrovascular complications

Three trials involving 459 participants compared ACEIs or ARBs with placebo (Billings 2012; Flesch 2009; Pretorius 2012). In total, 19 cerebrovascular events occurred; the rate was similar in both groups without significant difference during the study period (RR 0.48; 95% CI 0.18 to 1.28, P = 0.14), and there was no significant statistical heterogeneity across the studies (I2 statistic = 0%) (Figure 7). The ACEIs or ARBs arm in two studies used ARB (candesartan) as the experimental drug (Billings 2012; Flesch 2009). We conducted subgroup analyses according to the experimental drugs used. We found that when the ACEIs or ARBs group contained ACEIs only (ramipril arm in Billings 2012; Pretorius 2012), the rate of perioperative cerebrovascular complications was similar in both groups (RR 0.51; 95% CI 0.12 to 2.13, P value = 0.35), with no heterogeneity across the studies (I2 statistic = 0%). When the ACEIs or ARBs group contained ARBs only, the rate of perioperative cerebrovascular complications was also similar in both groups (RR 0.45; 95% CI 0.12 to 1.77, P value = 0.26), and there was no heterogeneity across studies (I2 statistic = 0%). All the included trials were at high risk of bias. For these reasons, we downgraded the outcome to very low quality. Subgroup difference was insignificant (P value = 0.80, I2 statistic = 0%).


Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.4 Rate of perioperative cerebrovascular complications.

Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.4 Rate of perioperative cerebrovascular complications.

Renal insufficiency

No trial reported the rate of perioperative renal insufficiency, but one trial reported glomerular filtration rate as a measurement of renal function (Colson 1992). There was no significant difference between the ACEIs or ARBs group and control group (MD ‐1.40; 95% CI ‐10.30 to 7.50, P value = 0.76) (Table 2).

Open in table viewer
Table 2. Glomerular filtration rate

Outcome or subgroup

Studies

Participants

Statistical method

Effect estimate

Glomerular filtration rate

1

16

Mean Difference (IV, Random, 95% CI)

‐1.40 [‐10.30, 7.50]

IV ‐ inverse variance

IV: intravenous

Length of hospital stay

Two trials involving 372 participants reported the length of hospital stay (Billings 2012; Pretorius 2012). There was a statistical difference between the two groups (MD ‐0.54; 95% CI ‐0.93 to ‐0.16, P value = 0.005), with no significant statistical heterogeneity across the studies (I2 statistic = 0%). However, we found that the clinical backgrounds of the participants varied between trials, which might give rise to confounding factors (Figure 8). All the included trials were at high risk of bias, and the sample sizes were small. For these reasons, we downgraded the outcome to very low quality.


Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.5 Length of hospital stay.

Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.5 Length of hospital stay.

Treatment related adverse events

Two studies reported adverse events, and there was no evidence of a difference between the ACEIs or ARBs and control groups (Flesch 2009; Pretorius 2012). There were no serious adverse events considered as related to the study drug in Flesch 2009, while Pretorius 2012 reported similar incidence of serious adverse events between the two groups (P value = 0.7) but the authors did not describe what the adverse events were.

Sensitivity analysis

Since all of the included studies were at high risk of bias, we did not perform sensitivity analysis based on the risk of bias. Sensitivity analyses using different hypothesized values of Corr (0.4 to 0.9) yielded stable result. (Corr = 0.4, cardiac index favoured ACEIs (MD ‐0.60; 95% CI ‐0.77 to ‐0.43, P value < 0.00001), with no significant statistical heterogeneity across studies (I2 statistic = 0%); Corr = 0.9, cardiac index favoured ACEIs (MD ‐0.60; 95% CI ‐0.69 to ‐0.51, P value < 0.00001), with no significant statistical heterogeneity across studies (I2 statistic = 0%)).

Discussion

Summary of main results

Seven RCTs with a total of 571 participants, comparing perioperative administration of ACEIs or ARBs with placebo and reporting mortality and morbidity, met the inclusion criteria of this review. As all seven RCTs were underpowered and considered to carry a high risk of bias, no firm conclusion could be drawn. We found insufficient evidence to determine the effects of perioperative administration of ACEIs or ARBs on perioperative mortality and acute myocardial infarction. However, ACEIs or ARBs might improve cardiac output perioperatively. In terms of hypotension, perioperative cerebrovascular complications, and cardiac surgery related renal failure, ACEIs or ARBs might not be helpful in reducing the rate of these complications. Due to the potential confounding factors, the estimation of length of hospital stay should be interpreted cautiously, though the results showed that ACEIs or ARBs might result in an earlier discharge.

Overall completeness and applicability of evidence

The present review suggests that the existing evidence on effectiveness of perioperative ACEIs or ARBs administration is far from sufficient. The generalization of the findings is limited.

All the participants in the eligible RCTs underwent cardiac or vascular surgery, which seriously limited the generalization of the findings in this review. As the necessary raw data such as details of anaesthesia/surgery, disease status, comorbidities, and prior drug therapies were not available in every RCT, we could not perform some of the planned subgroup analyses. Moreover, the male‐dominated population of the studies might also limit the generalization. In summary, we could draw no robust conclusion.

All seven studies provided sufficient information on their interventions. However, it is worth noting that experimental drugs were different among the RCTs. The use of different kinds of ACEIs or ARBs could introduce clinical heterogeneity. In six RCTs pharmacological therapy started preoperatively (11 days to 25 minutes prior to surgery) (Billings 2012; Colson 1992; Flesch 2009; Licker 1996; Pretorius 2012; Walter 2002), and in one RCT it started intraoperatively (Ryckwaert 2001); this difference might also introduce clinical heterogeneity.

Although we included seven studies, there were a limited number of trials for each outcome. None of the seven included studies reported cardiac mortality. Regarding all‐cause mortality, sample sizes were small and total events were few; hence, we were unable to make a firm conclusion. Most of the included RCTs presented their results in table form but failed to detail the diagnostic methods used, which might introduce heterogeneity. For instance, theoretically, cerebrovascular complication should be confirmed by computed tomography or magnetic resonance imaging, but none of the three trials reported this (Billings 2012; Flesch 2009; Pretorius 2012). In addition, none of these RCTs reported the rate of congestive heart failure.

Quality of the evidence

The major weakness of all seven included studies was the high risk of bias. None of the studies strictly abided by the reporting criteria laid down in the Consolidated Standards of Reporting Trials (CONSORT) statement. None of the seven trials reported randomization sequence generation as well as allocation concealment, which might indicate potential selection bias. Only one of the trials attempted to blind the study personnel who assessed the outcome, and Colson 1992 did not report any information of dropouts when not all the participants completed the research. All of these were sources of information bias. Not thoroughly describing the type of potentially influential factors that might increase the perioperative risk of participants (presence of heart failure, recent acute myocardial infarction, diabetes, cerebrovascular insufficiency, and lung disease) could bring about confounding bias. The other weakness for all seven included studies was that the sample sizes were small, which made them susceptible to being underpowered to detect clinically significant differences. None reported a sample size calculation based on mortality, which indicated faulty methodology in these RCTs (Figure 2). Poor methodology was the most common reason for the downgrading of quality of evidence. Since the quality of evidence in each outcome was low or very low, further research is very likely to have an important impact on our confidence in the estimation of effect and is likely to change the estimate.

Potential biases in the review process

Our process for searching for studies was thorough. We followed the review protocol strictly in the process of study selection, data extraction, and analysis. However, there is always the possibility that we missed unreported trials or those that only appeared in unpublished conference abstracts. We also excluded studies whose authors could not provide us required information, which could also introduce bias. Challenges in optimizing search terms/poor indexing of studies were a potential source of bias.

Agreements and disagreements with other studies or reviews

A recently published, well‐designed prospective observational study (Drenger 2012) involving 4224 participants on patterns of perioperative ACEIs usage in coronary artery bypass surgery (CABG) with cardiopulmonary bypass effects suggested that regardless what pattern was adopted (continuation, withdrawal, addition, or no ACEI), no differences in in‐hospital mortality and cerebral events were noted, which is identical with our results. However, another retrospective observational cohort study reported that preoperative therapy with ACEI was associated with an increased risk of mortality, use of inotropic support, postoperative renal dysfunction, and new onset of postoperative atrial fibrillation (Miceli 2009). The IMAGINE trial drew the same conclusion: In participants at low risk of cardiovascular events after CABG, routine early initiation (less than seven days) of ACEI therapy did not appear to improve clinical outcome up to three years after CABG but increased the rate of adverse events, particularly early after CABG (Rouleau 2008). These studies did not meet the criteria of the present review, but our objectives were similar. Their conclusions should be tested with well‐designed RCTs.

A retrospective cohort study with large sample size (n = 1358) suggested that preoperative use of ACEI/ARB was associated with a 27.6% higher risk of acute kidney injury postoperatively (Arora 2008). Stopping ACEIs or ARBs before cardiac surgery might reduce the rate of acute kidney injury. On the other hand, a propensity score‐based analysis of 536 participants undergoing CABG on cardiopulmonary bypass suggested that preoperative ACEIs were associated with a reduced rate of acute kidney injury after on‐pump CABG surgery (Benedetto 2008). Our comprehensive and systematic search did not find any RCT supporting either of these conclusions.

Flow diagram of study selection process.
Figures and Tables -
Figure 1

Flow diagram of study selection process.

Risk of bias summary: review authors' judgements about each risk of bias item for each included study.
Figures and Tables -
Figure 2

Risk of bias summary: review authors' judgements about each risk of bias item for each included study.

Risk of bias graph: review authors' judgements about each risk of bias item presented as percentages across all included studies.
Figures and Tables -
Figure 3

Risk of bias graph: review authors' judgements about each risk of bias item presented as percentages across all included studies.

Forest plot of comparison: 1 All‐cause mortality, outcome: 1.1 All‐cause mortality.
Figures and Tables -
Figure 4

Forest plot of comparison: 1 All‐cause mortality, outcome: 1.1 All‐cause mortality.

Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.2 ST‐elevation or new Q wave in ECG test.
Figures and Tables -
Figure 5

Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.2 ST‐elevation or new Q wave in ECG test.

Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.3 Cardiac index.
Figures and Tables -
Figure 6

Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.3 Cardiac index.

Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.4 Rate of perioperative cerebrovascular complications.
Figures and Tables -
Figure 7

Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.4 Rate of perioperative cerebrovascular complications.

Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.5 Length of hospital stay.
Figures and Tables -
Figure 8

Forest plot of comparison: 1 ACEIs or ARBs versus placebo, outcome: 1.5 Length of hospital stay.

Comparison 1 ACEIs or ARBs versus placebo, Outcome 1 All cause mortality.
Figures and Tables -
Analysis 1.1

Comparison 1 ACEIs or ARBs versus placebo, Outcome 1 All cause mortality.

Comparison 1 ACEIs or ARBs versus placebo, Outcome 2 ST‐elevation or new Q wave in ECG test.
Figures and Tables -
Analysis 1.2

Comparison 1 ACEIs or ARBs versus placebo, Outcome 2 ST‐elevation or new Q wave in ECG test.

Comparison 1 ACEIs or ARBs versus placebo, Outcome 3 Cardiac index.
Figures and Tables -
Analysis 1.3

Comparison 1 ACEIs or ARBs versus placebo, Outcome 3 Cardiac index.

Comparison 1 ACEIs or ARBs versus placebo, Outcome 4 Rate of perioperative cerebrovascular complications.
Figures and Tables -
Analysis 1.4

Comparison 1 ACEIs or ARBs versus placebo, Outcome 4 Rate of perioperative cerebrovascular complications.

Comparison 1 ACEIs or ARBs versus placebo, Outcome 5 Length of hospital stay.
Figures and Tables -
Analysis 1.5

Comparison 1 ACEIs or ARBs versus placebo, Outcome 5 Length of hospital stay.

Summary of findings for the main comparison. ACEIs or ARBs compared to placebo for preventing surgery‐related mortality and morbidity in adults

ACEIs or ARBs compared to placebo for preventing surgery‐related mortality and morbidity in adults

Patient or population: Patients undergoing any type of surgery under general anaesthesia receiving ACEIs or ARBs perioperatively
Settings: All settings
Intervention: ACEIs or ARBs
Comparison: Placebo

Outcomes

Illustrative comparative risks* (95% CI)

Relative effect
(95% CI)

No of Participants
(studies)

Quality of the evidence
(GRADE)

Comments

Assumed risk

Corresponding risk

Placebo

ACEIs or ARBs

All‐cause mortality

Study population

RR 1.61
(0.44 to 5.85)

419
(3 studies)

⊕⊝⊝⊝
very low1

All the included trials were at high risk of bias.

Total sample size is lower than the calculated.

Duration of follow‐up: until discharge from hospital

16 per 1000

25 per 1000
(7 to 90)

Moderate

7 per 1000

11 per 1000
(3 to 41)

Risk of acute myocardial ischaemia

Study population

RR 0.55
(0.14 to 2.26)

345
(2 studies)

⊕⊝⊝⊝
very low1

All the included trials were at high risk of bias.

Total sample size is lower than the calculated.

Duration of follow‐up: until discharge from hospital

30 per 1000

16 per 1000
(4 to 67)

Moderate

56 per 1000

31 per 1000
(8 to 127)

Congestive heart failure

The mean cardiac index in the intervention groups was
0.6 higher
(0.7 to 0.5 higher)

34
(2 studies)

⊕⊝⊝⊝
very low1

All the included trials were at high risk of bias.

Total population size is less than 400.

Duration of follow‐up: not specified

Hypotension

RR 1.95 (0.86 to 4.41)

298 (1 study)

⊕⊝⊝⊝
very low1

All the included trials were at high risk of bias.

Total population size is less than 400.

Duration of follow‐up: not specified

Rate of perioperative cerebrovascular complications

Study population

RR 0.48
(0.18 to 1.28)

459
(3 studies)

⊕⊝⊝⊝
very low1

All the included trials were at high risk of bias.

Duration of follow‐up: until discharge from hospital (Billings 2012; Pretorius 2012); 90 days after surgery (Flesch 2009)

50 per 1000

24 per 1000
(9 to 65)

Moderate

71 per 1000

34 per 1000
(13 to 92)

Length of hospital stay

The mean length of hospital stay in the intervention groups was
0.54 lower
(0.93 lower to 0.16 lower)

372
(2 studies)

⊕⊝⊝⊝
very low1

All the included trials were at high risk of bias.

Total population size is less than 400.

Duration of follow‐up: until discharge from hospital

Treatment related adverse events

385 (2 studies)

⊕⊝⊝⊝
very low1

All the included trials were at high risk of bias.

Total population size is less than 400.

Authors did not provided detailed information on adverse events, which made the synthesis of the results less clinically relevant.

*The basis for the assumed risk (e.g. the median control group risk across studies) is provided in footnotes. The corresponding risk (and its 95% confidence interval) is based on the assumed risk in the comparison group and the relative effect of the intervention (and its 95% CI).
ACEIs: angiotensin‐converting enzyme inhibitors; ARBs: angiotensin II type 1 receptor blockers; CI: confidence interval; ECG: electrocardiograph; RR: risk ratio

GRADE Working Group grades of evidence
High quality: Further research is very unlikely to change our confidence in the estimate of effect.
Moderate quality: Further research is likely to have an important impact on our confidence in the estimate of effect and may change the estimate.
Low quality: Further research is very likely to have an important impact on our confidence in the estimate of effect and is likely to change the estimate.
Very low quality: We are very uncertain about the estimate.

1Downgraded by three levels due to very serious study limitations (all the trials included were at high risk of bias) and serious imprecision (total population size is less than 400).

Figures and Tables -
Summary of findings for the main comparison. ACEIs or ARBs compared to placebo for preventing surgery‐related mortality and morbidity in adults
Table 1. Rate of hypotension

Outcome or subgroup

Studies

Participants

Statistical method

Effect estimate

Rate of hypotension

1

298

Risk Ratio (M‐H, Fixed, 95% CI)

1.95 [0.86, 4.41]

Risk ratio < 1 favours angiotensin‐converting enzyme inhibitors and angiotensin II type 1 receptor blockers group. Risk ratio > 1 favours control group.

Figures and Tables -
Table 1. Rate of hypotension
Table 2. Glomerular filtration rate

Outcome or subgroup

Studies

Participants

Statistical method

Effect estimate

Glomerular filtration rate

1

16

Mean Difference (IV, Random, 95% CI)

‐1.40 [‐10.30, 7.50]

IV ‐ inverse variance

IV: intravenous

Figures and Tables -
Table 2. Glomerular filtration rate
Comparison 1. ACEIs or ARBs versus placebo

Outcome or subgroup title

No. of studies

No. of participants

Statistical method

Effect size

1 All cause mortality Show forest plot

3

419

Risk Ratio (M‐H, Fixed, 95% CI)

1.61 [0.44, 5.85]

2 ST‐elevation or new Q wave in ECG test Show forest plot

2

345

Risk Ratio (M‐H, Fixed, 95% CI)

0.55 [0.14, 2.26]

3 Cardiac index Show forest plot

2

34

Mean Difference (IV, Random, 95% CI)

‐0.60 [‐0.70, ‐0.50]

4 Rate of perioperative cerebrovascular complications Show forest plot

3

459

Risk Ratio (M‐H, Fixed, 95% CI)

0.48 [0.18, 1.28]

5 Length of hospital stay Show forest plot

2

372

Mean Difference (IV, Fixed, 95% CI)

‐0.54 [‐0.93, ‐0.16]

Figures and Tables -
Comparison 1. ACEIs or ARBs versus placebo