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Severity of disease scoring systems and mortality after non-cardiac surgery

Abstract

Background:

Mortality after surgery is frequent and severity of disease scoring systems are used for prediction. Our aim was to evaluate predictors for mortality after non-cardiac surgery.

Methods:

Adult patients admitted at our surgical intensive care unit between January 2006 and July 2013 was included. Univariate analysis was carried using Mann-Whitney, Chi-square or Fisher's exact test. Logistic regression was performed to assess independent factors with calculation of odds ratio and 95% confidence interval (95% CI).

Results:

4398 patients were included. Mortality was 1.4% in surgical intensive care unit and 7.4% during hospital stay. Independent predictors of mortality in surgical intensive care unit were APACHE II (OR = 1.24); emergent surgery (OR = 4.10), serum sodium (OR = 1.06) and FiO2 at admission (OR = 14.31). Serum bicarbonate at admission (OR = 0.89) was considered a protective factor. Independent predictors of hospital mortality were age (OR = 1.02), APACHE II (OR = 1.09), emergency surgery (OR = 1.82), high-risk surgery (OR = 1.61), FiO2 at admission (OR = 1.02), postoperative acute renal failure (OR = 1.96), heart rate (OR = 1.01) and serum sodium (OR = 1.04). Dying patients had higher scores in severity of disease scoring systems and longer surgical intensive care unit stay.

Conclusion:

Some factors influenced both surgical intensive care unit and hospital mortality.

KEYWORDS
Postoperative mortality; Severity of disease scoring systems; APACHE II; SAPS II; Surgical intensive care unit; Non-cardiac surgery

Resumo

Justificativa:

A mortalidade após cirurgia é frequente e os sistemas de classificação da gravidade da doença são usados para a previsão. Nosso objetivo foi avaliar os preditivos de mortalidade após cirurgia não cardíaca.

Métodos:

Os pacientes adultos admitidos em nossa unidade de terapia intensiva cirúrgica entre janeiro de 2006 e julho de 2013 foram incluídos. Análise univariada foi feita com o teste de Mann-Whitney, qui-quadrado ou exato de Fisher. Regressão logística foi feita para avaliar fatores independentes com cálculo de razão de chances (odds ratio - OR) e intervalo de confiança de 95% (IC 95%).

Resultados:

No total, 4.398 pacientes foram incluídos. A mortalidade foi de 1,4% na unidade de terapia intensiva cirúrgica e de 7,4% durante a internação hospitalar. Os preditivos independentes de mortalidade na unidade de terapia intensiva cirúrgica foram APACHE II (OR = 1,24); cirurgia de emergência (OR = 4,10), sódio sérico (OR = 1,06) e FiO2 na admissão (OR = 14,31). Bicarbonato sérico na admissão (OR = 0,89) foi considerado um fator protetor. Os preditivos independentes de mortalidade hospitalar foram idade (OR = 1,02), APACHE II (OR = 1,09), cirurgia de emergência (OR = 1,82), cirurgia de alto risco (OR = 1,61), FiO2 na admissão (OR = 1,02), insuficiência renal aguda no pós-operatório (OR = 1,96), frequência cardíaca (OR = 1,01) e sódio sérico (OR = 1,04). Os pacientes moribundos apresentaram escores mais altos de gravidade da doença nos sistemas de classificação e mais tempo de permanência em unidade de terapia intensiva cirúrgica.

Conclusão:

Alguns fatores tiveram influencia sobre a mortalidade tanto hospitalar quanto na unidade de terapia intensiva cirúrgica.

PALAVRAS-CHAVE
Mortalidade após cirurgia; Sistemas de classificação da gravidade da doença; APACHE II; SAPS II; Unidade de terapia intensiva cirúrgica; Cirurgia não cardíaca

Introduction

It is estimated that 234.2 million people are submitted to surgery every year.11 Weiser TG, Regenbogen SE, Thompson KD, et al. An estimation of the global volume of surgery: a modelling strategy based on available data. Lancet. 2008;372:139-44. According to the 2012 European Surgical Outcomes Study, postoperative mortality was 4% before hospital discharge and 5.5% at 1 year.22 Monk TG, Saini V, Weldon BC, et al. Anesthetic management and one-year mortality after noncardiac surgery. Anesth Analg. 2005;100:4-10. The majority of deaths occurred in older patients who undergo major emergent surgery and who have severe coexisting diseases as well as in patients that develop complications.33 Khuri SF, Henderson WG, DePalma RG, et al. Determinants of long-term survival after major surgery and the adverse effect of postoperative complications. Ann Surg. 2005;242:326-41.

4 Ghaferi AA, Birkmeyer JD, Dimick JB. Variation in hospital mortality associated with inpatient surgery. N Engl J Med. 2009;361:1368-75.

5 Pearse RM, Harrison DA, James P, et al. Identification and characterisation of the high-risk surgical population in the United Kingdom. Crit Care. 2006;10:R81.
-66 Abelha FJ, Castro MA, Landeiro NM, et al. Mortality and length of stay in a surgical intensive care unit. Rev Bras Anestesiol. 2006;56:34-45.

There are several risk factors described for morbidity and mortality after surgery, which may be divided into three categories: patient-related, surgery-related and anesthesia-related. Developed countries have major morbidity due to postoperative complications (12% in United States) and evidence increasingly suggests that postoperative complications have a major impact on mortality.33 Khuri SF, Henderson WG, DePalma RG, et al. Determinants of long-term survival after major surgery and the adverse effect of postoperative complications. Ann Surg. 2005;242:326-41.,44 Ghaferi AA, Birkmeyer JD, Dimick JB. Variation in hospital mortality associated with inpatient surgery. N Engl J Med. 2009;361:1368-75.,77 Arbous MS, Grobbee DE, van Kleef JW, et al. Mortality associated with anaesthesia: a qualitative analysis to identify risk factors. Anaesthesia. 2001;56:1141-53.,88 Hall BL, Hamilton BH, Richards K, et al. Does surgical quality improve in the American College of Surgeons National Surgical Quality Improvement Program: an evaluation of all participating hospitals. Ann Surg. 2009;250:363-76. The risks of surgery and anesthesia are low for most patients but aging and associated patient's co-morbidities, as well as the increasing number of patients and surgeries performed, make postoperative morbidity and mortality more likely.44 Ghaferi AA, Birkmeyer JD, Dimick JB. Variation in hospital mortality associated with inpatient surgery. N Engl J Med. 2009;361:1368-75.,99 Leung JM, Dzankic S. Relative importance of preoperative health status versus intraoperative factors in predicting postoperative adverse outcomes in geriatric surgical patients. J Am Geriatr Soc. 2001;49:1080-5.

Half of the postoperative adverse events were identified as avoidable.1010 Kable AK, Gibberd RW, Spigelman AD. Adverse events in surgical patients in Australia. Int J Qual Health Care. 2002;14:269-76. Reducing rates of postoperative complications and their effective management may be one approach to reduce postoperative mortality.33 Khuri SF, Henderson WG, DePalma RG, et al. Determinants of long-term survival after major surgery and the adverse effect of postoperative complications. Ann Surg. 2005;242:326-41.,44 Ghaferi AA, Birkmeyer JD, Dimick JB. Variation in hospital mortality associated with inpatient surgery. N Engl J Med. 2009;361:1368-75.,88 Hall BL, Hamilton BH, Richards K, et al. Does surgical quality improve in the American College of Surgeons National Surgical Quality Improvement Program: an evaluation of all participating hospitals. Ann Surg. 2009;250:363-76. Immediate postoperative care allows a close monitoring and early intervention to prevent early postoperative complications and deaths. Patients with increased risk of complications may require more extensive monitoring in a Surgical Intensive Care Unit (SICU) which may contribute to a better outcome, decreasing morbidity and mortality. However, there are few SICU's beds and high costs of their use.1111 Weissman C. The enhanced postoperative care system. J Clin Anesth. 2005;17:314-22.,1212 Simpson JC, Moonesinghe SR. Introduction to the postanaesthetic care unit. Perioper Med (Lond). 2013;2:5.

To improve postoperative care, severity of disease scoring systems is used to predict prognosis and estimate the morbidity and mortality of patients. Acute Physiology and Chronic Health Evaluation II (APACHE II) and Simplified Acute Physiology Score II (SAPS II) are two worldwide-used severity of disease scoring systems.1313 Knaus WA, Draper EA, Wagner DP, et al. APACHE II: a severity of disease classification system. Crit Care Med. 1985;13:818-29.

14 Vincent JL, Moreno R. Clinical review: scoring systems in the critically ill. Crit Care. 2010;14:207.
-1515 Le Gall JR, Lemeshow S, Saulnier F. A new Simplified Acute Physiology Score (SAPS II) based on a European/North American multicenter study. JAMA. 1993;270:2957-63. They may be used to predict mortality with the calculation of the Standardized Mortality Ratio (SMR), the ratio of observed to predicted mortality, which can be used as indicators of the quality of ICU care,1616 Sirio CA, Shepardson LB, Rotondi AJ, et al. Community-wide assessment of intensive care outcomes using a physiologically based prognostic measure: implications for critical care delivery from Cleveland Health Quality Choice. Chest. 1999;115:793-801.

17 Jarman B, Pieter D, van der Veen AA, et al. The hospital standardised mortality ratio: a powerful tool for Dutch hospitals to assess their quality of care? Qual Saf Health Care. 2010;19:9-13.
-1818 Breslow MJ, Badawi O. Severity scoring in the critically ill: Part 2: maximizing value from outcome prediction scoring systems. Chest. 2012;141:518-27. although some authors argue that they should not be used for that.1919 Lilford R, Pronovost P. Using hospital mortality rates to judge hospital performance: a bad idea that just won't go away. BMJ. 2010;340:c2016.,2020 Mohammed MA, Deeks JJ, Girling A, et al. Evidence of methodological bias in hospital standardised mortality ratios: retrospective database study of English hospitals. BMJ. 2009;338:b780. Several risk indices have been developed over the past years based on the relationship between comorbidities and perioperative morbidity and mortality. The Revised Cardiac Risk Index (RCRI) has become well known and, although it is not a severity of disease score, it has been used to predict the risk of cardiac complications after surgery, being incorporated in the preoperative risk factors guidelines.2121 Lee TH, Marcantonio ER, Mangione CM, et al. Derivation and prospective validation of a simple index for prediction of cardiac risk of major noncardiac surgery. Circulation. 1999;100:1043-9.,2222 Kristensen SD, Knuuti J, Saraste A, et al. ESC/ESA Guidelines on non-cardiac surgery: cardiovascular assessment and management: The Joint Task Force on non-cardiac surgery: cardiovascular assessment and management of the European Society of Cardiology (ESC) and the European Society of Anaesthesiology (ESA). Eur J Anaesthesiol. 2014;2014.

The aim of the present study was to evaluate the determinants of mortality using parameters included in severity of disease scoring systems in a cohort of critical surgical patients.

Methods

Data collection

The study protocol was approved by the research ethics committee of our hospital. This retrospective cohort study was carried out in the multidisciplinary Post-Anesthesia Care Unit (PACU) at Hospital São João, an 1124 bed community teaching hospital in Porto, Portugal. Included in the PACU was a Surgical Intensive Care Unit (SICU) with five beds to which critically ill surgical patients were admitted, monitored and treated.

All patients admitted at SICU who underwent non-cardiac surgery between 1st January 2006 and 19th July 2013 were eligible for inclusion. Patients less than 18 years old, medical patients, re-admittance for the same medical reason during the studied period and SICU Length Of Stay (LOS) lower than 12 h were excluded.

The following variables were recorded in the SICU: age, type of admission (elective or non-elective surgery), mechanical ventilation, LOS and mortality. APACHE II and SAPS II were calculated and all variables and parameters of those scores were evaluated separately.1313 Knaus WA, Draper EA, Wagner DP, et al. APACHE II: a severity of disease classification system. Crit Care Med. 1985;13:818-29.,1515 Le Gall JR, Lemeshow S, Saulnier F. A new Simplified Acute Physiology Score (SAPS II) based on a European/North American multicenter study. JAMA. 1993;270:2957-63. Organ insufficiency (considering presence of at least one organ failure defined by APACHE II) and previous renal insufficiency (considering creatinine >2 mg.dL-1 and/or oliguria of <500 mL.day-1 were also evaluated.

RCRI was evaluated using criteria developed by Lee et al.: high-risk surgery (intraperitoneal, intrathoracic, or suprainguinal vascular procedures), history of ischemic heart disease, history of congestive heart disease, preoperative insulin therapy, preoperative serum creatinine >2.0 mg.dL-1 and history of cerebrovascular disease.2121 Lee TH, Marcantonio ER, Mangione CM, et al. Derivation and prospective validation of a simple index for prediction of cardiac risk of major noncardiac surgery. Circulation. 1999;100:1043-9.

Statistical analysis

Kolmogorov-Smirnov Test for normality of the underlying variable was performed. The Mann-Whitney U, the Chi-square and Fisher's exact test were used in the univariate analyses to compare continuous variables and proportions, respectively. To assess independent predictive factors of postoperative mortality we used multiple binary logistic regressions. After applying the Bonferroni's correction for multiple comparisons, all the variables included in severity of disease scoring systems that had p ≤ 0.001 in the univariate analyses were entered in a logistic multiple regression binary analysis with forward elimination method to examine covariate effects on mortality, calculating an odds ratio (OR) and 95% confidence interval (CI). The statistical software SPSS version 22.0 for Windows (SPSS, Chicago, IL) was used to analyze the data.

Results

During the study period there were 4561 admissions in the SICU and 4398 patients met the inclusion criteria. A total of 163 patients were excluded: 53 with a LOS <12 h, 42 were admitted more than once, 38 were younger than 18 years old and 30 were admitted for medical reasons.

The median age was 65 years, 61% were male and 13% were admitted after non-elective surgery. The median postoperative length of stay was 20 h (IQR 16-42 h). Sixty patients (1.4%) died in the SICU and 327 (7.4%) died during hospital stay.

Table 1 displays the characteristics of all patients enrolled in the study and the comparison between patients who survive and who died during SICU stay. In univariate analysis, patients that died in SICU were older and more likely submitted to an emergent surgery. They were admitted more frequently with mechanical ventilation, a Glasgow coma scale <9 and organ insufficiency as defined by APACHE II. Patients that died in the SICU had lower hematocrit, lower body temperature, lower systolic and mean arterial pressure, higher heart and respiratory rate, higher urea and creatinine serum concentration, higher total bilirubin, higher FiO2, lower PaO2, higher PaCO2, lower serum bicarbonate, lower pH and higher serum sodium during the first 24 h of SICU stay. They also developed postoperative acute renal failure more frequently.

Table 1
Univariate analysis of mortality predictors in SICU - patients' characteristics.

Table 2 presents severity of disease scores and length of stay in the SICU. Patients that died were more likely to have congestive heart failure or preoperative renal insufficiency and were submitted more frequently to a high-risk surgery. Patients not surviving had higher scores of APACHE II (median 22 vs. 8); SAPS II (median 44 vs. 18), RCRI ≥ 2 more often and a longer SICU stay (median 46 vs. 20).

Table 2
Univariate analysis of mortality predictors in SICU - criteria developed by Lee et al. and risk scores.

In Table 3, the results of the multivariate analyses for mortality during SICU stay show that APACHE II (OR = 1.24), emergent surgery (OR = 4.10), serum sodium (OR = 1.06) and FiO2 at admission (OR = 14.31) were independent predictors of mortality. Serum bicarbonate at admission (OR = 0.89) was considered a protective factor.

Table 3
Multivariate analysis of mortality predictors in SICU.

Table 4 displays the characteristics of all patients enrolled in the study and the comparison between patients who survive and who died during hospital stay. In univariate analysis, patients that died before hospital discharge were older and more likely submitted to an emergent surgery. They were admitted more frequently with mechanical ventilation, a Glasgow coma scale <9 and organ insufficiency as defined by APACHE II. Patients that died during hospital stay had lower hematocrit, lower body temperature, lower systolic and mean arterial pressure, higher heart rate, higher urea and creatinine serum concentration, higher total bilirubin, higher FiO2, higher PaCO2, lower serum bicarbonate, lower pH and higher serum sodium during the first 24 h of SICU stay. They also developed postoperative acute renal failure more frequently.

Table 4
Univariate analysis of hospital mortality predictors - patients' characteristics.

Table 5 presents severity of disease scores and length of stay at SICU. Patients that died were more likely to have congestive heart failure or preoperative renal insufficiency and were submitted more frequently to a high-risk surgery. Patients not surviving had higher scores of APACHE II (median 12 vs. 8), SAPS II (median 27 vs. 18), RCRI ≥ 2 more often and a longer SICU stay (median 36 vs. 20).

Table 5
Univariate analysis of hospital mortality predictors - criteria developed by Lee et al. and risk scores.

In Table 6 the results of the multivariate analyses for mortality during hospital stay show that age (OR = 1.02), APACHE II (OR = 1.09), emergent surgery (OR = 1.82), high-risk surgery (OR = 1.61), FiO2 at admission (OR = 1.02), postoperative acute renal failure (OR = 1.96), heart rate (OR = 1.01) and serum sodium (OR = 1.04) were independent predictors of mortality.

Table 6
Multivariate analysis of hospital mortality predictors.

Discussion

The study of outcome in critical care patients has been primarily focused on hospital survival and heath care resources utilization, adjusted according to the severity of illness. ICU mortality strongly depend on the severity of illness of the population being analyzed.2323 Halpern NA, Pastores SM, Greenstein RJ. Critical care medicine in the United States 1985-2000: an analysis of bed numbers, use, and costs. Crit Care Med. 2004;32:1254-9. Several risk models have been developed for assessing mortality after ICU admission and may also be useful in surgical patients.

Although previous studies have focused on identifying predictors of postoperative morbidity and mortality evaluating and quantifying comorbidities, perioperative factors and the presence of postoperative complications,22 Monk TG, Saini V, Weldon BC, et al. Anesthetic management and one-year mortality after noncardiac surgery. Anesth Analg. 2005;100:4-10.

3 Khuri SF, Henderson WG, DePalma RG, et al. Determinants of long-term survival after major surgery and the adverse effect of postoperative complications. Ann Surg. 2005;242:326-41.

4 Ghaferi AA, Birkmeyer JD, Dimick JB. Variation in hospital mortality associated with inpatient surgery. N Engl J Med. 2009;361:1368-75.
-55 Pearse RM, Harrison DA, James P, et al. Identification and characterisation of the high-risk surgical population in the United Kingdom. Crit Care. 2006;10:R81.,2424 Abelha FJ, Botelho M, Fernandes V, et al. Quality of life and mortality assessment in patients with major cardiac events in the postoperative period. Rev Bras Anestesiol. 2010;60:268-84.

25 Maia PC, Abelha FJ. Predictors of major postoperative cardiac complications in a surgical ICU. Rev Port Cardiol. 2008;27:321-8.

26 Lobo SM, Rezende E, Knibel MF, et al. Early determinants of death due to multiple organ failure after noncardiac surgery in high-risk patients. Anesth Analg. 2011;112:877-83.

27 Abelha FJ, Luis C, Veiga D, et al. Outcome and quality of life in patients with postoperative delirium during an ICU stay following major surgery. Crit Care. 2013;17:R257.

28 Abelha FJ, Botelho M, Fernandes V, et al. Determinants of postoperative acute kidney injury. Crit Care. 2009;13:R79.

29 Rhodes A, Moreno RP, Metnitz B, et al. Epidemiology and outcome following post-surgical admission to critical care. Intensive Care Med. 2011;37:1466-72.

30 Sakr Y, Vincent JL, Ruokonen E, et al. Sepsis and organ system failure are major determinants of post-intensive care unit mortality. J Crit Care. 2008;23:475-83.

31 Xara D, Santos A, Abelha F. Adverse respiratory events in a post-anesthesia care unit. Arch Bronconeumol. 2015;51:69-75.
-3232 Elias AC, Matsuo T, Grion CM, et al. Incidence and risk factors for sepsis in surgical patients: a cohort study. J Crit Care. 2012;27:159-66. none have attempted to identify predictors from routine physiological and analytical postoperative parameters included in severity of disease scoring systems.

In a large study with 46,539 patients submitted to surgery, only 4% died before hospital discharge, however, only 27% were submitted to major surgery and admitted at SICU in the postoperative period.22 Monk TG, Saini V, Weldon BC, et al. Anesthetic management and one-year mortality after noncardiac surgery. Anesth Analg. 2005;100:4-10. A multicenter study including 84,730 patients submitted to general or vascular surgery reported different mortality rates between hospitals, varying from 3.5% to 6.9%.55 Pearse RM, Harrison DA, James P, et al. Identification and characterisation of the high-risk surgical population in the United Kingdom. Crit Care. 2006;10:R81. A few years ago, we measured the mortality rate after major surgery in our hospital which was 7.6% in SICU and 15.7% before hospital discharge.77 Arbous MS, Grobbee DE, van Kleef JW, et al. Mortality associated with anaesthesia: a qualitative analysis to identify risk factors. Anaesthesia. 2001;56:1141-53. Fortunately, we were able to reduce that mortality, improving the post-operative care in our SICU.

Type of admission is a variable that has been studied and found to be related to mortality.55 Pearse RM, Harrison DA, James P, et al. Identification and characterisation of the high-risk surgical population in the United Kingdom. Crit Care. 2006;10:R81.,66 Abelha FJ, Castro MA, Landeiro NM, et al. Mortality and length of stay in a surgical intensive care unit. Rev Bras Anestesiol. 2006;56:34-45.,99 Leung JM, Dzankic S. Relative importance of preoperative health status versus intraoperative factors in predicting postoperative adverse outcomes in geriatric surgical patients. J Am Geriatr Soc. 2001;49:1080-5.,2929 Rhodes A, Moreno RP, Metnitz B, et al. Epidemiology and outcome following post-surgical admission to critical care. Intensive Care Med. 2011;37:1466-72.,3333 Devereaux PJ, Chan MT, Alonso-Coello P, et al. Association between postoperative troponin levels and 30-day mortality among patients undergoing noncardiac surgery. JAMA. 2012;307:2295-3304. It seems that patients undergoing non-elective surgery are likely to have a worse prognosis since they are more severely ill, have a less functional reserve or may not be medically optimized for surgery. Emergency surgeries can be complex and they usually require a careful intraoperative care.99 Leung JM, Dzankic S. Relative importance of preoperative health status versus intraoperative factors in predicting postoperative adverse outcomes in geriatric surgical patients. J Am Geriatr Soc. 2001;49:1080-5.,3434 Weissman C, Klein N. The importance of differentiating between elective and emergency postoperative critical care patients. J Crit Care. 2008;23:308-16. In our study, non-elective surgery was considered an independent predictor of mortality, increasing the risk of death both during SICU and hospital stay.

In multivariate analysis FiO2 was another independent predictor of mortality. Higher FiO2 is frequently required in patients with impaired tissue oxygenation trying to avoid the harmful effects of hypoxia. In fact it is well documented that the PaO2/FiO2 ratio is associated with mortality, however, both SAPS II and APACHE II use FiO2 as a variable.3535 Choi WI, Shehu E, Lim SY, et al. Markers of poor outcome in patients with acute hypoxemic respiratory failure. J Crit Care. 2014;29:797-802.,3636 Cooke CR, Kahn JM, Caldwell E, et al. Predictors of hospital mortality in a population-based cohort of patients with acute lung injury. Crit Care Med. 2008;36:1412-20. In our study, we did not studied the PaO2/FiO2 ratio but the isolated FiO2 parameter, which may be considered as a relevant surrogate indicator of that fraction. In a previous study, higher FiO2 remained an independent predictor of mortality even after adjustment for PaO2/FiO2 ratio,3737 de Jonge E, Peelen L, Keijzers PJ, et al. Association between administered oxygen, arterial partial oxygen pressure and mortality in mechanically ventilated intensive care unit patients. Crit Care. 2008;12:R156. suggesting poor prognosis not only because these patients are more severely ill with impaired tissue oxygenation, but also because of hyperoxia and ventilation side-effects.3737 de Jonge E, Peelen L, Keijzers PJ, et al. Association between administered oxygen, arterial partial oxygen pressure and mortality in mechanically ventilated intensive care unit patients. Crit Care. 2008;12:R156.

38 Chahoud J, Semaan A, Almoosa KF. Ventilator-associated events prevention, learning lessons from the past: a systematic review. Heart Lung. 2015;44:251-9.
-3939 Kallet RH, Matthay MA. Hyperoxic acute lung injury. Respir Care. 2013;58:123-41.

Some authors have found serum sodium to be a reliable risk factor for mortality4040 Darmon M, Diconne E, Souweine B, et al. Prognostic consequences of borderline dysnatremia: pay attention to minimal serum sodium change. Crit Care. 2013;17:R12.

41 Funk GC, Lindner G, Druml W, et al. Incidence and prognosis of dysnatremias present on ICU admission. Intensive Care Med. 2010;36:304-11.

42 Darmon M, Timsit JF, Francais A, et al. Association between hypernatraemia acquired in the ICU and mortality: a cohort study. Nephrol Dial Transplant. 2010;25:2510-5.

43 Waite MD, Fuhrman SA, Badawi O, et al. Intensive care unit-acquired hypernatremia is an independent predictor of increased mortality and length of stay. J Crit Care. 2013;28:405-12.
-4444 Stelfox HT, Ahmed SB, Khandwala F, et al. The epidemiology of intensive care unit-acquired hyponatraemia and hypernatraemia in medical-surgical intensive care units. Crit Care. 2008;12:R162. and we also arrive to the same result. Hypernatremia is a common complication in critically ill patients such they may be unconscious, intubated or sedated and may invariably denotes hyperosmolar state and transiently intracellular dehydration.4545 Lindner G, Funk GC. Hypernatremia in critically ill patients. J Crit Care. 2013;28:216.e11-e20.

The multivariate analysis of independent variables showed that higher serum bicarbonate was associated with a reduction of mortality. Low bicarbonate levels could be associated with metabolic acidosis and consequently with case fatalities that have been shown by others.4646 Martin MJ, FitzSullivan E, Salim A, et al. Use of serum bicarbonate measurement in place of arterial base deficit in the surgical intensive care unit. Arch Surg. 2005;140:745-51.

47 Gunnerson KJ, Saul M, He S, et al. Lactate versus non-lactate metabolic acidosis: a retrospective outcome evaluation of critically ill patients. Crit Care. 2006;10:R22.

48 Surbatovic M, Radakovic S, Jevtic M, et al. Predictive value of serum bicarbonate, arterial base deficit/excess and SAPS III score in critically ill patients. Gen Physiol Biophys. 2009;28:271-6.
-4949 Meregalli A, Oliveira RP, Friedman G. Occult hypoperfusion is associated with increased mortality in hemodynamically stable, high-risk, surgical patients. Crit Care. 2004;8:R60-5. Although the deleterious impact of low serum bicarbonate is known, both lower and higher serum bicarbonates may be associated with increased all-cause mortality as a result of the well documented consequences of acid-base abnormalities that have been associated with adverse outcomes and mortality.5050 Liborio AB, Noritomi DT, Leite TT, et al. Increased serum bicarbonate in critically ill patients: a retrospective analysis. Intensive Care Med. 2015;41:479-86. However, a recent retrospective analysis shows that acidosis itself had no relation with poor outcome which was more dependent on severe conditions that cause acidosis.5151 Paz Y, Zegerman A, Sorkine P, et al. Severe acidosis does not predict fatal outcomes in intensive care unit patients: a retrospective analysis. J Crit Care. 2014;29:210-3.

A previous study has documented an increased risk of mortality if the patients develop acute kidney failure in the post-operative period with an OR of 3.12 (28). We observed a similar tendency with an OR of 1.86.

Another study reported higher mortality with hypotension or tachycardia in the postoperative period.5252 Wolters U, Wolf T, Stutzer H, et al. ASA classification and perioperative variables as predictors of postoperative outcome. Br J Anaesth. 1996;77:217-22. However, that study included acute patients from many medical areas and not only those submitted to surgery.

The post-operative mortality also depends on the age of the population included in the study.22 Monk TG, Saini V, Weldon BC, et al. Anesthetic management and one-year mortality after noncardiac surgery. Anesth Analg. 2005;100:4-10.,55 Pearse RM, Harrison DA, James P, et al. Identification and characterisation of the high-risk surgical population in the United Kingdom. Crit Care. 2006;10:R81.,5353 Naughton C, Feneck RO. The impact of age on 6-month survival in patients with cardiovascular risk factors undergoing elective non-cardiac surgery. Int J Clin Pract. 2007;61:768-76. It could be as low as 3.7% when the age is around 76 years,1010 Kable AK, Gibberd RW, Spigelman AD. Adverse events in surgical patients in Australia. Int J Qual Health Care. 2002;14:269-76. versus 38% when the median of age is 84 years.5555 Basques BA, Fu MC, Buerba RA, et al. Using the ACS-NSQIP to identify factors affecting hospital length of stay after elective posterior lumbar fusion. Spine. 2014;39:497-502. In our study, the age was also a risk factor for mortality.

In order to stratify the preoperative risk of patients, we relied on the RCRI. Some comorbidities included in RCRI, history of congestive heart disease or renal disease, were also associated with mortality. Patients that died had more frequently a RCRI score ≥2 but only high-risk surgery was considered an independent risk factor for mortality. Perhaps in this particular group of patients, the burden of surgery was more relevant than their comorbidities.

Not surprisingly, patients with prolonged SICU LOS had higher mortality, suggesting that they may have developed postoperative complications or were more severely ill.66 Abelha FJ, Castro MA, Landeiro NM, et al. Mortality and length of stay in a surgical intensive care unit. Rev Bras Anestesiol. 2006;56:34-45.,2424 Abelha FJ, Botelho M, Fernandes V, et al. Quality of life and mortality assessment in patients with major cardiac events in the postoperative period. Rev Bras Anestesiol. 2010;60:268-84.

25 Maia PC, Abelha FJ. Predictors of major postoperative cardiac complications in a surgical ICU. Rev Port Cardiol. 2008;27:321-8.
-2626 Lobo SM, Rezende E, Knibel MF, et al. Early determinants of death due to multiple organ failure after noncardiac surgery in high-risk patients. Anesth Analg. 2011;112:877-83. Based on previous literature, we can say that the occurrence of postoperative complications decreases survival by 69% with the postoperative period being more important than preoperative comorbidities and intraoperative risk factors.33 Khuri SF, Henderson WG, DePalma RG, et al. Determinants of long-term survival after major surgery and the adverse effect of postoperative complications. Ann Surg. 2005;242:326-41.,44 Ghaferi AA, Birkmeyer JD, Dimick JB. Variation in hospital mortality associated with inpatient surgery. N Engl J Med. 2009;361:1368-75. Therefore, focus in postoperative intensive care and evaluating physiological variables to early predict outcomes is of paramount importance.

Study limitations

Besides the limitations inherent to a retrospective cohort study, others are present on the design of this study. Preoperative risk assessment is roughly based on three broad but connected categories including several risk factors: surgery-related, patient-related or dependent on patient's functional status. Not knowing the pre-existing conditions of patients beyond the comorbidities present in the Revised Cardiac Risk Index probably may limit the value of conclusions, because comorbidities others than those may influence physiological parameters included in the severity of disease scoring systems. The lack of an American Society of Anesthesiologists Physical Status (ASA-PS) for our sample population is also questionable. Risk prediction models for intraoperative and postoperative mortality have included the ASA-PS classification as a strong predictor of outcome.2222 Kristensen SD, Knuuti J, Saraste A, et al. ESC/ESA Guidelines on non-cardiac surgery: cardiovascular assessment and management: The Joint Task Force on non-cardiac surgery: cardiovascular assessment and management of the European Society of Cardiology (ESC) and the European Society of Anaesthesiology (ESA). Eur J Anaesthesiol. 2014;2014.,5252 Wolters U, Wolf T, Stutzer H, et al. ASA classification and perioperative variables as predictors of postoperative outcome. Br J Anaesth. 1996;77:217-22.,5454 Moonesinghe SR, Mythen MG, Das P, et al. Risk stratification tools for predicting morbidity and mortality in adult patients undergoing major surgery: qualitative systematic review. Anesthesiology. 2013;119:959-81.,5555 Basques BA, Fu MC, Buerba RA, et al. Using the ACS-NSQIP to identify factors affecting hospital length of stay after elective posterior lumbar fusion. Spine. 2014;39:497-502. Furthermore, neither intraoperative hemodynamic parameters nor other postoperative complications beyond organ insufficiency were evaluated in our study which may influence outcome and mortality.

Conclusions

In conclusion, postoperative mortality was 1.4% in SICU and 7.4% during hospital stay. Fatality cases had significantly higher scores in severity of disease scoring systems and a longer SICU stay. Almost all variables included in the severity of disease scoring systems were different between groups. We have identified independent risk factors for mortality at SICU: APACHE II, type of admission, serum sodium and FiO2 at admission while higher serum bicarbonate was associated with a reduction of mortality We have identified independent risk factors for mortality during hospital stay: age, APACHE II, type of admission, high-risk surgery, FiO2 at admission, postoperative acute renal failure, heart rate and serum sodium during SICU stay.

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Publication Dates

  • Publication in this collection
    May-Jun 2018

History

  • Received
    18 Aug 2015
  • Accepted
    22 Nov 2017
Sociedade Brasileira de Anestesiologia R. Professor Alfredo Gomes, 36, 22251-080 Botafogo RJ Brasil, Tel: +55 21 2537-8100, Fax: +55 21 2537-8188 - Campinas - SP - Brazil
E-mail: bjan@sbahq.org