Background: Hypertension occurs commonly during anaesthesia and is usually promptly and appropriately treated by anaesthetists. However, its recognition is dependent on correctly functioning and calibrated monitors. If it is not diagnosed and/or promptly corrected, it has the potential to cause significant morbidity and even mortality.
Objectives: To examine the role of a previously described core algorithm “COVER ABCD–A SWIFT CHECK” supplemented by a specific sub-algorithm for the management of hypertension occurring in association with anaesthesia.
Methods: The potential performance of this approach for each of the relevant incidents among the first 4000 reported to the Australian Incident Monitoring Study (AIMS) was compared with the actual management as reported by the anaesthetists involved.
Results: There were 70 reports of intraoperative hypertension among the first 4000 incidents reported to AIMS. Drug related causes accounted for 59% of all incidents. It was considered that, properly applied, this structured approach would have led to a quicker and/or better resolution of the problem in 21% of the cases.
Conclusion: Once hypertension is identified and confirmed, its rapid control by the careful use of a volatile anaesthetic agent, intravenous opioids, or rapidly acting antihypertensives will usually avoid serious morbidity. If hypertension is unresponsive to the treatment recommended in the relevant sub-algorithm, an unusual cause such as phaeochromocytoma, carcinoid syndrome, or thyroid storm should be considered.
- drug errors
- anaesthesia complications
- crisis management
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Intraoperative hypertension is common and has many causes. It is usually rapidly and successfully treated by anaesthetists. However, when it is severe, no cause is evident, or it fails to respond to routine measures, it has the potential to cause morbidity and even mortality in susceptible patients.1,2 A rapid appropriate response by the anaesthetist to this problem is therefore required. Because management may be delayed and variable, it was decided to examine the place of a structured approach to hypertension occurring in association with anaesthesia.
In 1993 a “core” crisis management algorithm represented by the mnemonic COVER ABCD–A SWIFT CHECK (the AB precedes COVER for the non-intubated patient) was proposed as the basis for a systematic approach to any crisis during anaesthesia where it is not immediately obvious what should be done or where actions taken have failed to remedy the situation.3 This was validated against the first 2000 incidents reported to the Australian Incident Monitoring Study (AIMS). AIMS is an ongoing study which involves the voluntary anonymous reporting of any unintended incident which reduced or could have reduced the safety margin for a patient.4
It was concluded that, if this algorithm had been correctly applied, a functional diagnosis would have been reached within 40–60 seconds in 99% of applicable incidents, and the learned sequence of actions recommended by the COVER portion would have led to appropriate steps being taken to handle the 60% of problems relevant to this portion of the algorithm.3 However, this study also showed that the 40% of problems represented by the remainder of the algorithm ABCD–A SWIFT CHECK were not always promptly diagnosed or appropriately managed.3–5 It was decided that it would be useful, for these remaining problems, to develop a set of sub-algorithms in an easy-to-use crisis management manual.6 This study reports on the place of the COVER ABCD–A SWIFT CHECK algorithm in the diagnosis and initial management of hypertension, provides an outline of a specific crisis management sub-algorithm for hypertension during anaesthesia, and indicates the potential value of using this structured approach.
Of the first 4000 incidents reported to AIMS, those that made reference to hypertension were extracted and analysed for relevance, the presumed precipitating cause, the type of anaesthetic technique employed, the management, and outcome. The COVER ABCD–A SWIFT CHECK algorithm, described elsewhere in this series of articles,6 was applied to each relevant report to determine the stages at which the problem might have been diagnosed and to confirm that activating the COVER portion would have led to appropriate initial steps being taken. As hypertension is not always adequately dealt with by this algorithm, a specific sub-algorithm was developed (see fig 1) and its putative effectiveness was tested against the reports. How this was done is described elsewhere in this series of articles.6 The potential value of this structured approach—that is, the application of COVER ABCD–A SWIFT CHECK to the diagnosis and initial management of this problem followed by the application of the hypertension sub-algorithm—was assessed in the light of the AIMS reports by comparing its potential effectiveness for each incident with that of the actual management as recorded in each report.
Among the first 4000 AIMS reports there were 252 in which hypertension was mentioned; 182 incidents were excluded from further analysis. Of these, 154 referred only to hypertension diagnosed preoperatively which was unrelated to the event giving rise to the report, 11 dealt with hypertension occurring only in recovery, 10 reported hypertension secondary to laryngoscopy and endotracheal intubation, and three involved hypertension which was a consequence of poorly controlled preoperative hypertension. Four reports of spurious hypertension (table 1) were each due to equipment malfunction. All of these were excluded, leaving 70 reports of the 252 for analysis.
These remaining 70 reports were analysed for causes, treatment, and outcome from the hypertensive incident. The precipitating factors were most commonly drug related (41 reports, 59%), excessive surgical stimulation or light anaesthesia (15 reports (21%), of which 13 were during general anaesthesia and two during regional anaesthesia), or equipment related (nine reports, 13%). Miscellaneous causes accounted for the remaining five reports (7%); these included two reports of water intoxication and one report each of carcinoid syndrome, pre-eclampsia and phaeochromocytoma. Table 2 shows the drug related causes and table 3 the equipment related causes.
In the majority of cases the anaesthetist deepened anaesthesia or corrected the primary cause—for example, repositioning the malpositioned vaporiser in six cases. In 22 cases (31%) specific intravenous antihypertensive therapy was administered. A range of agents was used. Serious morbidity occurred in six cases; there were two reports each of myocardial infarction, pulmonary oedema, and awareness under general anaesthesia.
When the COVER ABCD–A SWIFT CHECK algorithm was applied to each report, it was considered that all cases of hypertension would have been detected at the SCAN level. It was considered that the cause of the hypertension, once identified, would have been detected at the V1 stage of COVER in 4% (hypercapnia due to hypoventilation), at the V2 stage of COVER in 9% (vaporiser not correctly seated on the back bar), at the E1 (endotracheal tube) stage of COVER in 1% (inadvertent endobroncheal intubation), at the recheck/review stage of COVER in 20%, and at the D (drugs stage) of ABCD in 39%. Of the remaining 19 reports where a diagnosis was not made, it was considered that, in three cases, “spurious” hypertension secondary to pressure measuring device faults would have been detected at the R stage of COVER. In one other case there was a calibration error of a non-invasive measurement device. In the remaining 15 reports of the 19 (79%), no specific cause was identifiable at the time of reporting or upon consideration of the incident by AIMS reviewers. These results are summarised in table 4.
When the potential effectiveness of the structured approach represented by the COVER ABCD–A SWIFT CHECK algorithm and the special sub-algorithm for hypertension (fig 1) was compared with that of the actual management as documented in each of the 70 incidents, it was considered that, properly applied, the structured approach would have led to a quicker and/or better resolution of the problem in 15 cases (21%).
Hypertension is commonly encountered by anaesthetists, being mentioned in 252 (6%) of the first 4000 incidents reported to AIMS. Of these reports, 154 mentioned preoperative hypertension only. Pre-existing hypertension, particularly if untreated, increases the likelihood of intraoperative hypertension and of complications, as has previously been reported.7,8 Hypertension is common. The Framingham Study found that 20% of urban “whites” had blood pressures greater than 160/95 mm Hg, and almost half had pressures greater than 140/90 mm Hg. The incidence was even higher in “non-whites”.9
A reliable and early diagnosis of hypertension is only possible with accurate, regularly repeated measurements of systemic blood pressure. Monitor accuracy is dependent on correct maintained calibration of the zero point and on linearity throughout the measurement range. This is emphasised by the three cases in which spurious hypertension was recorded by invasive (n = 2) and non-invasive (n = 1) monitors due to calibration problems and one further report of a sphygmomanometer cuff bladder herniation giving rise to an erroneously high blood pressure.
Hypertension and tachycardia under anaesthesia have been shown to be independent risk factors for poor outcomes, particularly after long procedures.1
Analysis of the AIMS reports has served to emphasise the fact that, while hypertension is usually readily detected and correct identification and treatment of the primary cause usually follows rapidly, a structured systematic approach is necessary to optimise management and outcome in atypical cases. It was judged that correct use of the COVER ABCD–A SWIFT CHECK core algorithm and the hypertension sub-algorithm would, properly applied, have led to earlier recognition and/or better management in 21% of relevant incidents reported to AIMS.
All cases of hypertension should be detected at the SCAN level and confirmed with a manual verification at the CHECK level of the COVER algorithm. The COVER portion of the algorithm yielded 34% of the causes; a further 39% were due to drug errors and would have been detected during the ABCD portion of the algorithm; 27% of causes of hypertension in this series remained undiagnosed. The sub-algorithm presented in fig 1 was relatively ineffective (four of 19 reports) at identifying the cause of the problem. However, in all cases, control of blood pressure would have been achieved by following the steps recommended in the hypertension sub-algorithm.
There were 70 incidents of intraoperative hypertension analysed from among the first 4000 reports to the AIMS database.
In 41 (59%) of the analysed reports drugs were the precipitating cause.
Excessive surgical stimulation or light anaesthesia accounted for another 15 reports (21%).
There were nine reports (13%) involving equipment related causes.
Serious morbidity (six cases) involved two each of myocardial infarction, pulmonary oedema, and awareness under general anaesthesia.
A reliable early diagnosis of hypertension during anaesthesia is dependent upon accurate repeated measurements of systemic blood pressure and monitor accuracy. The latter is dependent upon correct maintained calibration and linearity throughout the measurement range.
Once diagnosed, rapid control of hypertension (titration of volatile agent or of intravenous opioids or rapidly acting antihypertensives) is necessary to avoid potentially serious morbidity.
In this series it was considered that, properly applied, the structured approach using the COVER ABCD–A SWIFT CHECK algorithm and the specific sub-algorithm for hypertension would have led to a quicker and/or better resolution of the problem in 15 cases (21%).
The use of the COVER ABCD algorithm will identify and treat the cause of hypertension in the majority (60%) of cases. However, the use of the sub-algorithm specific for hypertension would have been required in the 40% of reports in which this did not lead to resolution of the problem. In those instances where no obvious cause could be identified, it should be assumed to be due to a combination of light anaesthesia and/or excessive surgical stimulation and the patient depth of anaesthesia rapidly deepened. This will constitute effective treatment for the great majority of cases of hypertension where the cause remains obscure.
Hypertension can have serious consequences for the patient. Major morbidity occurred in six patients and consisted of two reports each of myocardial infarction, pulmonary oedema and awareness while under general anaesthesia. Once identified and confirmed, hypertension should rapidly be controlled by increasing volatile agent concentration or by titrating intravenous doses of opioids or rapidly acting antihypertensives. Failure to respond should alert the anaesthetist to the possibility of an overlooked or unusual cause. The complete algorithm should be carefully repeated at this stage. Should no cause be found, unusual conditions such as phaeochromocytoma, carcinoid syndrome, or thyroid storm should be considered.
Finally, it is important that a full explanation of what happened be given to the patient, that the event and the results of any tests should be documented in the anaesthetic record and that, if appropriate, the patient be given a letter to warn future anaesthetists. If a particular precipitating event was significant or a particular action was useful in resolving the crisis, this should be clearly explained and documented.
The authors would like to thank all the anaesthetists in Australia and New Zealand who contributed to the 4000 incident reports upon which this and the other 24 papers in the Crisis Management Series are based. The coordinators of the project also thank Liz Brown for preparing the draft of the original Crisis Management Manual; Loretta Smyth for typing; Monika Bullock RN for earlier coding and classifying of data; Dr Charles Bradfield for the electronic version of the algorithms; Dr Klee Benveniste for literature research; and Drs Klee Benveniste, Michal Kluger, John Williamson and Andrew Paix for editing and checking manuscripts.