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. 2011 Apr 20;14(3):266–273. doi: 10.1007/s10120-011-0039-z

IL-6 serum levels predict postoperative morbidity in gastric cancer patients

Antoni M Szczepanik 1,, Lucyna Scislo 2, Thecla Scully 4, Elzbieta Walewska 2, Maciej Siedlar 3, Piotr Kolodziejczyk 1, Marzena Lenart 3, Magdalena Rutkowska 3, Aleksander Galas 5, Antoni Czupryna 1, Jan Kulig 1
PMCID: PMC3159757  PMID: 21505767

Abstract

Background

Despite progress in surgical techniques and perioperative care, gastrectomy remains a procedure of significant morbidity. Several scoring systems and clinical measures have been adopted to predict postoperative complications in gastric cancer patients. The aim of this study was to investigate whether high serum levels of interleukin 6 (IL-6) in the early postoperative period may be a prognostic factor of postoperative morbidity.

Methods

A group of 99 consecutive patients with resectable gastric cancer were enrolled. The mean age was 62.9 years and the male/female ratio was 72:27. Subtotal gastric resection was performed in 22 patients and total gastric resection in 77. The IL-6 serum level was measured on the 1st postoperative day (POD).

Results

Complications were recorded in 28 patients (28.3%). The observed case-fatality rate was 3.03%. An IL-6 serum level of >288.7 pg/ml on the 1st POD in univariate and multivariate Cox proportional hazard models was an independent prognostic factor for overall complications and infective complications.

Conclusion

Our study showed an association between perioperative IL-6 serum levels and postoperative morbidity in gastric cancer patients. The IL-6 serum level on the 1st POD was shown to be an independent prognostic factor for both overall complications and infective complications.

Keywords: Gastric cancer, Postoperative morbidity, Interleukin 6

Introduction

Postoperative morbidity affects the overall survival, postoperative mortality, length of hospital stay, and cost of treatment involved in every major surgical procedure. In gastric cancer surgery postoperative morbidity remains high and even if the incidence of gastric cancer declines in the future this is likely to remain a problem [1]. It is therefore crucial for both the patient and surgeon to have a reliable risk assessment model for each major surgical procedure. For this reason the number of scoring systems involved in preoperative risk assessment has become increasingly tailored to specific groups of patients [2, 3].

Scoring systems predict risk and lead to the implementation of both prophylactic measures and appropriate perioperative treatment plans. In the case of gastric cancer, primarily a surgical disease, the group of patients disqualified from surgery due to unacceptably high preoperative risk is marginal. Moreover, some risk factors or risk-generating events are intraoperative. Therefore, a need has arisen for additional markers or measures that reflect operative injury.

Acute phase proteins (APPs) are defined as those proteins whose serum concentrations increase or decrease by at least 25% during inflammatory or post-injury states [4]. Changes in levels of APPs result from the effects of inflammatory mediators, mainly cytokines. Some of the major cytokines relevant to the acute phase response are interleukin (IL)-6, IL-1 beta, tumor necrosis factor-alpha (TNF-α) and interferon gamma. These proteins stimulate APP production, with IL-6 being the major inducer of most APPs [5]. This family of cytokines also suppresses the synthesis of albumin by the liver [6]. On the other hand, some cytokines (IL-10 and IL-4) suppress the inflammatory reaction. In addition to changes in the levels of APPs, a number of behavioral, physiologic, biochemical, and nutritional changes are induced by inflammation-associated cytokines. These include: fever [7]; neuroendocrine system effects, such as increased production of corticotropin-releasing hormone [8]; and anemia of chronic disease [9]. Cytokines, especially IL-6, are also known to correlate with operative stress and in some surgical procedures cytokines have been shown to be reliable markers of postoperative morbidity [10]. IL-6 is a cytokine whose levels rise very early post-surgery [11].

The aim of this study was to investigate whether high serum levels of IL-6 in the early postoperative period may be a prognostic factor of postoperative morbidity.

Methods

A group of 99 consecutive patients with resectable gastric cancer were enrolled in the study between n March 2005 and September 2006. This study was a cohort study in which gastric cancer patients were followed up for postoperative complications.

For the purpose of the study two groups of patients were created in the post-hoc analysis. Those whose serum IL-6 level was over the 90th percentile in the whole study group on the 1st postoperative day (POD) were defined as the “high IL-6 level” group, and those whose level was below the value mentioned were defined as the “low IL-6 level” group.

The cutoff level was arbitrally set because there are no data in the literature that indicate specific cutoff values or allow the creation of “high level” or “low level” groups in the postoperative period.

There were 27 women and 72 men in our cohort, and the mean age was 62.9 years (SD 11.2), with ages ranging between 33 and 86 years. None of the patients selected underwent preoperative chemotherapy and none had active infection. All patients were treated with standard postoperative care, including enteral nutrition, antimicrobial prophylaxis for up to 48 h post-surgery, and low-molecular-weight heparin (LMWH). All complications associated with each patient were recorded daily, up to the day of discharge, and thereafter weekly for up to 14 days. Major and minor complications were integrated in the analysis. The case-fatality rate was observed up to 30 days. The average hospital stay was 13.7 days. Tumor staging was assessed according to the International Union Against Cancer (UICC) TNM classification, 7th edition. The details of clinicopathological status are summarized in Table 1.

Table 1.

Patients’ characteristics

N = 99
Gender (n, %)
 Women 27 (27.3%)
 Men 72 (72.7%)
Age (years)
 Mean (SD) 62.9 (11.2)
 Min–max 33–86
Stage (n, %)
 I 8 (8.1%)
 II 22 (22.2%)
 III 23 (23.2%)
 IV 46 (46.5%)
N = 97
Lauren classification (n, %)
 Intestinal (1) 36 (37.1%)
 Diffuse (2) 60 (60.6%)
 Not classified 1 (1.0%)
Type of surgery (n, %)
 Subtotal resection 22 (22.2%)
 Total resection 77 (77.8%)
Tumor location (n, %)
 Cardia 27 (27.3%)
 Other locations 72 (72.7%)
Resection radicality (n, %)
 R0 46 (46.5%)
 R1 42 (42.4%)
 R2 11 (11.1%)

Standard lymphadenectomy for R0 and R1 resections was D2. In all cases of palliative resections the extent of lymphadenectomy was at least D1 (11 patients).

Nutritional status was assessed. As the measures of malnutrition, total albumin level (cutoff <3.5 g/dl), lymphocyte count (cutoff <1500/mm3), and weight loss greater than 10% of body weight during 6 months were adopted. Patients were diagnosed as malnourished if two of these variables were observed.

Concomitant diseases were recorded. Cardiovascular diseases were observed in 49 patients, respiratory diseases in 7 patients, diabetes mellitus in 8 patients, and other chronic comorbidities in 10 patients.

The study was approved by the Institutional Ethics Commission (Approval number KBET/91/L/2004).

Cytokine assay

Blood samples were collected 16–20 h post closure of the wound. The blood was centrifuged and serum samples were stored at −55°C.

For the IL-6 assay the following monoclonal antibodies were used: IL-6 clone MQ2-13A5 (Capture) and MQ2-39C3 (Detection); Antibodies were diluted in 0.1 mol phosphate buffer, pH 9.0, and placed on a 96-well microplate (Nunc Maxisorb, Roskilde, Denmark) according to the manufacturer’s instructions. The reaction was developed with biotinylated anti-mouse antibodies. The results were read using an enzyme-linked immunosorbent assay (ELISA) microplate reader (Universal Microplate Reader; Bio-Tek Instruments, Winooski, VT, USA) at the wavelength of 490/630 nm. The detection range was 10–4030 pg/ml.

Record of complications

The postoperative course was monitored, and all adverse events were recorded and analyzed. The complication rate was based upon clinical assessment, imaging studies, and microbiological examination. Complications were stratified into five groups:

  • Infective complications (pneumonia, urinary tract infections, catheter-related infections, superficial wound infections)

  • Surgical complications (anastomotic/duodenal stump leakage, intraabdominal bleeding, pancreatic fistula, wound dehiscence, intestinal obstruction, delayed wound healing)

  • Respiratory complications (pulmonary embolism and respiratory insufficiency, not including pneumonia)

  • Cardio-circulatory complications

  • Other complications (gastrointestinal [GI] bleeding, transient pyrexia with negative bacterial cultures and without clinical signs of infection)

Statistical analysis

The proportion of patients without complications was presented using Kaplan–Meier curves and the difference between curves was tested using the log rank test.

To define patients with “high” IL-6 levels the cutoff was set at the 90th percentile.

For assessment of the risk of complications the Cox proportional hazard model was used.

For multivariate analysis, the following covariates were used: age (≤50, 51–60, 61–70, >70 years), stage (I–IV), Lauren’s type, type of surgery (total or partial resection), resection radicality, nutritional status, and additionally: diagnosis of cardiovascular disease (yes/no), diagnosis of pulmonary disease (yes/no), diagnosis of diabetes (yes/no), and diagnosis of any other disease (yes/no).

A p level of <0.05 was considered statistically significant. Statistical analysis was performed using the STATA v.8 (StataCorpLP, College Station, TX, USA) software package.

Results

The number of events and the type of complications were recorded for each patient. Because one patient could have more than one complication, the sum of complications (sum of events) exceeded the number of patients with complications.

Complications were observed in 28 of the 99 patients (28.3%) and the observed sum of events was 68 (Table 2).

Table 2.

Types of complications

Complication type N (%)
Infective 24 (24.2)
Pneumonia 20 (20.2)
Surgical 9 (9.1)
Respiratory (without pneumonia) 5 (5.1)
Cardio-circulatory 4 (4.0)
Other 6 (6.1)

The most frequent group of complications were infections, diagnosed in 24.2% of the patients. In this group the main complication was hospital-acquired pneumonia (HAP). Among 9 surgical complications there was one case of anastomotic dehiscence. The perioperative case-fatality rate was 3.03%—3 patients. These patients died on PODs 8, 14, and 27. All of these patients had been diagnosed with HAP on PODs four to seven and had no major surgical complications.

IL-6 as a predictor of complications

The 1st POD serum level of IL-6 was analyzed as it was the earliest postoperative measure available, reflecting not only preoperative factors but also operative injury.

To assess the predictive value of IL-6 serum levels on the 1st POD a cutoff level of 288.7 pg/ml (the equivalent of the 90th percentile) was set. Overall complications, including infective complications, were analyzed 14 days post-surgery. The proportion of patients without complications was significantly higher in patients with IL-6 levels below the cutoff value (p = 0.035), and the results were statistically significant (Fig. 1).

Fig. 1.

Fig. 1

Cumulative proportion of patients without complications within 14 days post-surgery. IL6 Interleukin 6, POD postoperative day

The hazard ratio (HR) of complication as an event assessed in the univariate Cox proportional hazard model was significantly higher in patients with ”high” IL-6 levels in comparison to those with “low” IL-6 levels (HR = 2.40, 95% confidence interval [CI] 1.05–5.48)—Table 3. The multivariate analysis produced similar results (HR = 2.79, 95% CI 1.01–7.76) and if the presence of the diagnosis of other chronic disease was taken into account the risk estimation was even higher (Table 3).

Table 3.

Risk of overall complications

IL-6 Person-day (observation) No. of events/No. of patients Risk of complications (HR) 95% CI p
Overall complicationsa 1169
 ≤278.88 pg/ml 19/83 (22.9%) 1
 >278.88 pg/ml 8/16 (50.0%) 2.40 1.05–5.48 0.038
Overall complicationsb 1046
 ≤278.88 pg/ml 16/74 (21.6%) 1
 >278.88 pg/ml 7/14 (50.0%) 2.79 1.01–7.76 0.049
Overall complicationsc 1046
 ≤278.88 pg/ml 16/74 (21.6%) 1
 >278.88 pg/ml 7/14 (50.0%) 3.08 1.07–8.88 0.038
Overall complicationsd 1046
 ≤278.88 pg/ml 16/74 (21.6%) 1
 >278.88 pg/ml 7/14 (50.0%) 3.57 1.15–11.10 0.028

IL-6 interleukin 6, HR hazard ratio, CI confidence interval

aUnivariate Cox proportional hazard model

bMultivariate Cox proportional hazard model; adjusted for age (≤50, 51–60, 61–70, >70), stage (I–IV), Lauren’s type, type of surgery (total or partial resection), nutritional status (evaluated by total albumin level [cutoff <3.5 g/dl] and total lymphocyte count [cutoff <1500/mm3]), weight loss (in kg), and reported time of weight loss (in months)

cMultivariate Cox proportional hazard model; adjusted for age (≤50, 51–60, 61–70, >70), stage (I–IV), Lauren’s type, type of surgery (total or partial resection), nutritional status (evaluated by total albumin level [cutoff <3.5 g/dl] and total lymphocyte count [cutoff <1500/mm3]), weight loss (in kg), and reported time of weight loss (in months), diagnosis of cardiovascular disease (yes/no), diagnosis of pulmonary disease (yes/no), diagnosis of diabetes (yes/no), and diagnosis of any other disease (yes/no)

dMultivariate Cox proportional hazard model; adjusted for age (≤50, 51–60, 61–70, >70), stage (I–IV), Lauren’s type, type of surgery (total or partial resection), nutritional status (evaluated by total albumin level [cutoff <3.5 g/dl] and total lymphocyte count [cutoff <1500/mm3]), weight loss (in kg), and reported time of weight loss (in months), diagnosis of cardiovascular disease (yes/no), diagnosis of pulmonary disease (yes/no), diagnosis of diabetes (yes/no), diagnosis of any other disease (yes/no), and resection radicality (R0, R1, R2)

IL-6 on the 1st POD was also analyzed as a potential predictor of infective complications. The analysis of Kaplan–Meier curves for the proportion of patients without infective complications over 14 postoperative days revealed a trend similar to that seen with overall complications (Fig. 2). Moreover, these findings were confirmed by the univariate and multivariate Cox proportional hazard models (Table 4).

Fig. 2.

Fig. 2

Cumulative proportion of patients without infective complications within 14 days post-surgery

Table 4.

Risk of infective complications

IL-6 Person-day (observation) No. of events/No. of patients Risk of complications (HR) 95% CI p
Infective complicationsa 1217
 ≤278.88 pg/ml 16/83 (19.3%) 1
 >278.88 pg/ml 7/16 (43.8%) 2.51 1.03–6.11 0.042
Infective complicationsb 1076
 ≤278.88 pg/ml 14/74 (18.9%) 1
 >278.88 pg/ml 7/14 (50.0%) 3.07 1.11–8.43 0.030
Infective complicationsc 1076
 ≤278.88 pg/ml 14/74 (18.9%) 1
 >278.88 pg/ml 7/14 (50.0%) 3.61 1.23–10.60 0.020
Infective complicationsd 1076
 ≤278.88 pg/ml 14/74 (18.9%) 1
 >278.88 pg/ml 7/14 (50.0%) 4.35 1.36–13.97 0.013

aUnivariate Cox proportional hazard model

bMultivariate Cox proportional hazard model; adjusted for age (≤50, 51–60, 61–70, >70), stage (I–IV), Lauren’s type, type of surgery (total or partial resection), nutritional status (evaluated by total albumin level [cutoff <3.5 g/dl] and total lymphocyte count [cutoff <1500/mm3]), weight loss (in kg), and reported time of weight loss (in months)

cMultivariate Cox proportional hazard model; adjusted for age (≤50, 51–60, 61–70, >70), stage (I–IV), Lauren’s type, type of surgery (total or partial resection), nutritional status (evaluated by total albumin level [cutoff <3.5 g/dl), total lymphocyte count [cutoff <1500/mm3]), weight loss (in kg) and reported time of weight loss (in months), diagnosis of cardiovascular disease (yes/no), diagnosis of pulmonary disease (yes/no), diagnosis of diabetes (yes/no), and diagnosis of any other disease (yes/no)

dMultivariate Cox proportional hazard model; adjusted for age (≤50, 51–60, 61–70, >70), stage (I–IV), Lauren’s type, type of surgery (total or partial resection), nutritional status (evaluated by total albumin level [cutoff <3.5 g/dl] and total lymphocyte count [cutoff <1500/mm3]), weight loss (in kg) and reported time of weight loss (in months), diagnosis of cardiovascular disease (yes/no), diagnosis of pulmonary disease (yes/no), diagnosis of diabetes (yes/no), diagnosis of any other disease (yes/no), and resection radicality (R0, R1, R2)

To avoid the confounding effect of surgical radicality, another model, with classification R (0, 1, 2) as one of possible confounding variables, was performed. Risk estimates for overall complications and infective complications were similar to those observed in the previous analyses (Tables 3, 4).

Discussion

Postoperative morbidity in gastric cancer remains high despite progress in perioperative care and surgical techniques. Gastrectomy for the treatment of gastric cancer is still one of the major procedures in general surgery and a 30 day postoperative complication rate of 20–40% has been reported [1216]. In our study 28.3% of the patients had major or minor postoperative complications and the postoperative case-fatality rate was 3.03%. Infections were the most frequent complication (observed in 24 patients), which was in line with other studies [3, 17]. However, in the number of infections reported, some authors included anastomotic leakage and pancreatic fistulas, as they were considered the background for secondary infections [18]. Direct comparison of different studies was not always possible because complication types and data collection were not uniform [1820]. The main risk factors reported in the literature are: the extent of lymphadenectomy, splenectomy, tumor size, age, comorbidities, American Society of Anesthesiologists (ASA) score, malnutrition, and preoperative blood loss [1, 12, 13, 16, 17, 2123].

Some biochemical measures have also been reported as predictors of postoperative morbidity. Low serum albumin and low hemoglobin were reported as negative prognostic factors for morbidity [2, 22, 23]. These factors reflect malnutrition or the need for perioperative blood transfusions. Increased concentrations of C-reactive protein (CRP) and procalcitonin corresponded with the risk of postoperative infective complications, especially pneumonia [24]. There is also evidence that elevated pre- or postoperative levels of cytokines, especially IL-6, may be a prognostic factor for morbidity in various surgical procedures and diseases [2528]. This cytokine is produced rapidly after surgical trauma and the blood level increases in the hours post-surgery [11]. On the other hand elevated preoperative IL-6 levels were observed in patients with more advanced disease [29]. Other cytokines were sporadically reported as being associated with the risk of postoperative morbidity.

A postoperative increase in IL-6 was reported in several studies after stomach resection for gastric cancer [30, 31]; however, its influence on morbidity was not analyzed. In assessing the complications of liver surgery, liver transplantation, and cardiothoracic surgery, increased IL-6 levels were indicated as a prognostic factor [2527].

The postoperative testing of cytokines as well as other markers seems more rational than preoperative testing of cytokines concentrations, because the result depends on both tumor-related and patient-related factors and surgery. The marker should identify patients with an increased mortality and morbidity risk very early and thus enable close monitoring, additional diagnostic procedures and preventive measures, and early treatment of complications that do arise. Therefore, we investigated IL-6 levels on the first postoperative day (POD). Patients with “high” IL-6 levels had significantly higher complication rates. The univariate analysis calculated the hazard ratio (HR) of overall complications at 2.4 and that of infective complications at 2.51. Both estimates were statistically significant.

In the Cox proportional hazard model we used covariates (age, stage, Lauren’s type, type of surgery performed, total albumin level, total lymphocyte count, weight loss, and the time of weight loss) that might influence postoperative morbidity [2123]. Finally, the results of our study showed that a “high” IL-6 level might be an independent prognostic factor for overall (HR = 2.79) and infective (HR = 3.07) complications among stomach cancer patients. When comorbidities and resection radicality were added to the regression model, the HRs were 3.08 and 3.57, respectively, both with statistical significance.

Our study also has some limitations. IL-6 as a marker of inflammation was observed to be higher among patients with more advanced disease. The stage of cancer was a weak predictor of the level of IL-6 in our study and the correlation coefficient observed for these two variables was only 0.15. The small sample size prevented us from performing reliable analysis in the subgroups of stage; however, stage, Lauren’s type, and type of surgery were put in the multivariate proportional Cox model as potential confounders.

A proportion of our patient group underwent palliative surgery. Among these patients the risk of developing complications is higher [32]. Resection radicality was also included in the multivariate analysis. It is still under question whether the same effect of the high 1st POD IL-6 level on the risk of development of post-surgery complications may be expected for patients with different R scores; however, to reveal the answer to this question, more investigations with large sample sizes are required.

The available data on the possible cutoff for the IL-6 level as a predictor of complications among patients after stomach cancer surgery are very sparse. In our study we decided to use the 90th percentile as the threshold; however, this value characterizes our sample only. More investigations are needed to evaluate how the proposed cutoff might be a good predictor of postsurgical complications for other groups of stomach cancer patients.

It is not clear whether the “high” IL-6 level is metabolic or whether it is due to an individual property of patients’ immune cells involved in the production of increased amounts of IL-6. Some investigational data show that IL-6 gene polymorphism may influence IL-6 serum levels in vivo [33, 34]. This may result in a high level of IL-6 production that is genetically determined. However, in a series of cardiosurgery patients this relationship was not observed [35]. Of note, immunomodulatory strategies have been adopted to change postoperative cytokine production and decrease inflammatory reactions, to influence morbidity [36, 37]. These reports describe a limited series of patients and no large clinical trial in this field has been published.

Conclusion

Our study showed an association between perioperative IL-6 serum levels and postoperative morbidity in gastric cancer patients. The first POD IL-6 serum level was shown to be an independent prognostic factor for both overall complications and infective complications. Therefore, the results of our study show that the IL-6 serum level could be used as an early prognostic. The current data on the association of the IL-6 serum level with postoperative morbidity among stomach cancer patients are very limited, and more investigations are required to set up the threshold level. IL-6 levels need to be evaluated prospectively in an independent group of patients. Moreover, further investigation of the pathogenesis of high IL-6 production and possible strategies to prevent complications are needed.

Acknowledgments

This work was supported by the Ministry of Science and Higher Education of Poland grant 2P05C 001 29.

Open Access

This article is distributed under the terms of the Creative Commons Attribution Noncommercial License which permits any noncommercial use, distribution, and reproduction in any medium, provided the original author(s) and source are credited.

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