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Vol. 70. Issue 7.
Pages 524-530 (July 2015)
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Vol. 70. Issue 7.
Pages 524-530 (July 2015)
REVIEW
Open Access
Prognostic value of the neutrophil to lymphocyte ratio in lung cancer: A meta-analysis
Visits
872
Yongmei YinI, Jun WangII,
Corresponding author
j.wang1988@hotmail.com

Corresponding author:
, Xuedong WangI, Lan GuI, Hao PeiII, Shougang KuaiII, Yingying ZhangII, Zhongbo ShangII
I Jiangnan University, The Fifth People's Hospital of Wuxi, Radiology Department, Wuxi, Jiangsu, China
II Jiangnan University, The Fifth People's Hospital of Wuxi, Center of Clinical Laboratory, Wuxi, Jiangsu, China
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Recently, a series of studies explored the correlation between the neutrophil to lymphocyte ratio and the prognosis of lung cancer. However, the current opinion regarding the prognostic role of the neutrophil to lymphocyte ratio in lung cancer is inconsistent.

We performed a meta-analysis of published articles to investigate the prognostic value of the neutrophil to lymphocyte ratio in lung cancer. The hazard ratio (HR) and its 95% confidence interval (CI) were calculated.

An elevated neutrophil to lymphocyte ratio predicted worse overall survival, with a pooled HR of 1.243 (95%CI: 1.106−1.397; Pheterogeneity=0.001) from multivariate studies and 1.867 (95%CI: 1.487−2.344; Pheterogeneity=0.047) from univariate studies. Subgroup analysis showed that a high neutrophil to lymphocyte ratio yielded worse overall survival in non-small cell lung cancer (NSCLC) (HR=1.192, 95%CI: 1.061−1.399; Pheterogeneity=0.003) as well as small cell lung cancer (SCLC) (HR=1.550, 95% CI: 1.156−2.077; Pheterogeneity=0.625) in multivariate studies.

The synthesized evidence from this meta-analysis of published articles demonstrated that an elevated neutrophil to lymphocyte ratio was a predictor of poor overall survival in patients with lung cancer.

KEYWORDS:
NLR
Lung Cancer
Overall Survival
Meta-Analysis
Full Text
INTRODUCTION

Lung cancer is one of the leading causes of cancer-related deaths 1,2. Non-small cell lung cancer (NSCLC) accounts for approximately 85% of lung cancer cases, and small-cell lung cancer (SCLC) accounts for nearly 13% of overall lung cancer cases. Despite continue efforts and progress in diagnosis and treatment, the overall survival (OS) for lung cancer patients remains poor 1,2. Prognostic factors influencing survival have been previously identified, including tumor stage, performance status, weight loss, age, sex, histopathology, and plasma lactate dehydrogenase (LDH) and carcinoembryonic antigen (CEA) levels 37. Although novel immunological and histological biomarkers such as intercellular adhesion molecule-1 (IDM-1) and epidermal growth factor receptor (EGFR) have been identified 8,9, these marks are expensive and often time-consuming to measure. Thus, there remains no promising prognostic factor that can be easily detected and closely linked to clinical outcomes for lung cancer patients 10.

The tumor immune environment plays an important role in tumor progression by promoting tumor angiogenesis, tumor metastasis, and cancer cell proliferation and by interfering with the response to systemic treatment 11,12. Neutrophils and T and B lymphocytes have been suggested to play vital roles in tumor inflammation 13,14, and the imbalance between neutrophils and lymphocytes is thought to be secondary to tumor hypoxia or necrosis and associated with anti-apoptotic effects 15. The neutrophil to lymphocyte ratio (NLR), representing a combination of circulating neutrophil and lymphocyte counts, can reflect the imbalance between neutrophils and lymphocytes in patients with tumors and serves as a representative index of systemic inflammation.

Recently, an elevated preoperative or pretreatment NLR, calculated from peripheral blood tests, was identified as an independent and readily available prognostic biomarker related to poor survival in numerous cancers, including colorectal cancer, breast cancer, gastric cancer and esophageal cancer 1619. Additionally, a series of studies have explored the correlation between the NLR and the prognosis of lung cancer. However, according to their results, the current opinion on the prognostic role of the NLR in lung cancer is inconsistent and inconclusive. Thus, we performed this meta-analysis, which is the first systematic study on the subject, to investigate the prognostic value of the NLR in lung cancer.

MATERIALS AND METHODSSearch strategy and study selection

To identify eligible studies regarding the NLR for predicting the prognosis of lung cancer, a systematic review was conducted. Relevant studies were identified by searching the PubMed and Web of Science databases using the following search terms: NLR, neutrophil-to-lymphocyte ratio, neutrophil lymphocyte ratio or neutrophil-lymphocyte ratio with lung cancer, carcinoma of the lung, pulmonary carcinoma and prognosis, prognostic, survival or outcome. The last search was updated on October 31, 2014. Both Medical subheadings (MeSH) and free text terms were used as keywords. The reference lists of papers of interest and published review articles were also explored to potentially retrieve additional studies. The inclusion criteria for the studies were as follows: (a) provided clear information on lung cancer confirmation and the included patients; (b) investigated the association of the pre-treatment NLR with OS; and (c) full text articles in English. The exclusion criteria were as follows: (a) letters, reviews, expert opinions, case reports or laboratory studies; (b) studies with overlapping or duplicate data; and (c) a lack of key information for evaluating the hazard ratio (HR) for further analysis.

Data extraction

All searches were conducted independently by two investigators. The same two authors independently extracted data on the name of the first author, the year of publication, the country of origin, ethnicity, the total number of cases, cancer types, stages, cut-off values, follow ups and HRs of the NLR for OS with 95% confidence intervals (CIs). Any discrepancy was resolved by consensus and, if needed, by consultation with the third author.

Statistical analysis

OS results were evaluated as HRs for each included study. HRs and 95% CIs were obtained directly from each publication. If not available, the necessary data were extracted to calculate the HR using the method reported by Tierney et al. 20. The heterogeneity of pooled results was estimated using Cochran's Q test and Higgins′ I-squared statistic. A p-value <0.10 for the Q-test indicated significant heterogeneity, and a random-effects model (DerSimonian-Laird method) was used to calculate the pooled HRs 21. Otherwise, a fixed-effects model (Mantel-Haenszel method) was applied 22. Egger's linear regression and Begg's funnel plot test were applied to evaluate publication bias in the literature, and a p-value <0.05 was considered significant. A trim and fill method was performed to estimate asymmetry in the funnel plot. Meta-regression was performed to explore the potential source of heterogeneity using variables such as the year of publication, ethnicity, cancer type, cutoff value and sample size. To validate the credibility of outcomes in this meta-analysis, sensitivity analysis was performed by sequential omission of each individual study using the “metainf” STATA command. All statistical analyses were conducted with STATA software version 12.0 (STATA Corporation, College Station, TX, USA), and all p-values were two-sided.

RESULTSStudy characteristics

We identified fourteen studies according to the inclusion and exclusion criteria 2336. The detailed screening process is shown in Figure 1. All of these articles were published in English. The characteristics of the included studies are shown in Table 1. Three studies were performed in China and Japan, whereas two each were performed in the USA, UK and Turkey and one each in Spain and Korea. Among the included studies, participants were Asian in seven studies and Caucasian in the other seven studies. A total of twelve studies explored the NLR in the prognosis of NSCLC, and two studies explored the NLR in SCLC. The cut-off value used in each study was not consistent, ranging from 2.5 to 5.0. The number of patients in each study ranged from 59 to 388. Six studies calculated HRs by multivariate analysis, five studies calculated HRs by univariate analysis, and the other three studies calculated HRs by both multivariate and univariate analyses. In total, nine studies contained HRs calculated from multivariate analysis, and eight studies contained HRs calculated from univariate analysis.

Figure 1.

Methodological flow diagram of the meta-analysis.

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Table 1.

Characteristics of all included studies.

Study  Year  Country  Ethnicity  Number  Type  Method  Stage  Cut-off  Follow-up (months) 
Teramukai (23)  2009  Japan  Asian  388  NSCLC  III/IV  4.744  18.9 (2.3−57.0) 
Kacan (24)  2014  Turkey  Caucasian  299  NSCLC  I-IV  NA 
Yao (25)  2013  China  Asian  182  NSCLC  III/IV  2.63  NA 
Lee (26)  2012  Korea  Asian  199  NSCLC  M/U  III/IV  NA  36 (33.6−37.9) 
Wang (27)  2014  China  Asian  114  SCLC  NA  NA 
Cedrés (28)  2012  Spain  Caucasian  171  NSCLC  IV  9.1 (1−70.37) 
Unal (29)  2013  Turkey  Caucasian  94  NSCLC  NA  3.44  NA 
Pinato (30)  2014  UK  Caucasian  220  NSCLC  M/U  I-III  NA 
Kang (31)  2014  USA  Caucasian  187  SCLC  NA  40.28 (2.60−89.26) 
Cannon (32)  2014  USA  Caucasian  59  NSCLC  I1  2.98  17 
Tomita (33)  2011  Japan  Asian  284  NSCLC  M/U  I-III  2.5  60.7−131.7 
Sarraf (34)  2009  UK  Caucasian  177  NSCLC  I-IV  3.81  29 (8−56) 
Liao (35)  2013  China  Asian  59  NSCLC  I-III  NA  30 (8−40) 
Tomita (36)  2012  Japan  Asian  301  NSCLC  I-III  2.5  NA 

NSCLC: non-small cell lung cancer; SCLC: small-cell lung cancer; M: multivariate; U: univariate.

Outcome from eligible studies

As shown in Table 2, fourteen studies evaluating OS were classified into two groups: nine multivariate studies with HRs and 95% CIs acquired from multivariate analysis, and eight univariate studies with data from univariate analysis. In both the multivariate and univariate analysis groups, an elevated NLR predicted a worse outcome of OS, with a pooled HR of 1.243 (95%CI: 1.106−1.397; Pheterogeneity=0.001) and 1.867 (95%CI: 1.487−2.344; Pheterogeneity=0.047), respectively (Figure 2).

Table 2.

Meta-analysis results.

Outcome  Variable  Number of studies  Model  HR(95%Cl)  Pheterogeneity 
OS  All  14       
  MULTIVARIATE  Random  1.243 (1.106−1.397)  0.001 
  Cancer type         
  NSCLC  Random  1.192 (1.061−1.339)  0.003 
  SCLC  Fix  1.550 (1.156−2.077)  0.625 
  Ethnicity         
  Asian  Random  1.261 (1.029−1.547)  0.021 
  Caucasian  Random  1.545 (1.052−2.269)  0.005 
  Cut-off         
  ≥4  Fix  1.646 (1.319−2.053)  0.247 
  <4  Random  1.221 (1.016−1.468)  0.082 
  Sample size         
  Large  Random  1.608 (1.186−2.179)  0.082 
  Small  Fix  1.090 (1.034−1.131)  0.103 
  UNIVARIATE  Random  1.867 (1.487−2.344)  0.047 
  Ethnicity         
  Asian  Random  1.890 (1.301−2.744)  0.036 
  Caucasian  Fix  1.722 (1.360−2.179)  0.133 
  Cut-off         
  ≥4  Fix  1.500 (1.111−2.025)  0.262 
  <4  Random  2.043 (1.497−2.789)  0.017 
  Sample size         
  Large  Random  2.018 (1.229−3.315)  0.016 
  Small  Fix  1.736 (1.403−2.148)  0.211 

NSCLC: non-small cell lung cancer; SCLC: small-cell lung cancer.

Figure 2.

Forrest plots of studies evaluating HRs of the NLR for OS.

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Subgroup analysis by cancer type in the multivariate studies showed that a high NLR yielded worse OS in NSCLC (HR=1.192, 95%CI: 1.061−1.399; Pheterogeneity=0.003) and SCLC (HR=1.550, 95%CI: 1.156-2.077; Pheterogeneity=0.625). The cancer type in the univariate studies was NSCLC only.

In the subgroup analysis by ethnicity, regardless of whether the patients were Asian or Caucasian, an elevated NLR remained a poor predictor of OS in multivariate studies (Caucasian: HR=1.545, 95%CI: 1.052-2.269; Pheterogeneity=0.005; Asian: HR=1.261, 95%CI: 1.092-1.547; Pheterogeneity=0.021) and univariate studies (Caucasian: HR=1.722, 95%CI: 1.360-2.179; Pheterogeneity=0.133; Asian: HR=1.661, 95%CI: 1.419-1.945; Pheterogeneity=0.036).

Considering different cut-off values, these studies used two subsets of NLR cut-offs and revealed similar results. The NLR was found to be a negative prognostic marker for the outcome of OS in multivariate studies (NLR≥4: HR=1.646, 95%CI: 1.319-2.053; Pheterogeneity=0.247; NLR<4: HR=1.221, 95%CI: 1.016-1.468; Pheterogeneity=0.082) and univariate studies (NLR≥4: HR=1.500, 95%CI: 1.111-2.025; Pheterogeneity=0.262; NLR<4: HR=2.043, 95%CI: 1.497-2.789; Pheterogeneity=0.017).

Further analysis of studies evaluating OS by sample size (studies with more than 200 cases were classified as “large”, and studies with less than 200 cases were classified as “small”) also revealed that a high NLR remained a worse prognostic marker regardless of the sample size (large: HR=1.608, 95%CI: 1.186-2.179; Pheterogeneity=0.082; small: HR=1.090, 95%CI: 1.034-1.131; Pheterogeneity=0.103) in multivariate studies and (large: HR=2.018, 95%CI: 1.229-3.315; Pheterogeneity=0.016; small: HR=1.736, 95%CI: 1.403-2.148; Pheterogeneity=0.211) in univariate studies.

Heterogeneity

Meta-regression analysis was performed to explore the potential source of heterogeneity among multivariate and univariate studies for OS using variables such as the year of publication, ethnicity, cancer type, cut-off value and sample size. In multivariate studies, the results showed that year of publication (p=0.193), ethnicity (p=0.573), cancer type (p=0.407), cut-off value (0.116) and sample size (p=0.183) did not contribute to the source of heterogeneity. The same results were shown in the univariate studies; the year of publication (p=0.146), ethnicity (p=0.963), cut-off (0.457) and sample size (p=0.795) also did not contribute to the source of heterogeneity.

Publication bias and sensitivity analysis

We conducted leave-one-out sensitivity analysis by removing one study per time to check if any individual study affected the results. The result patterns were not obviously affected by any single study in either the univariate or multivariate group (Figures 3, 4). Begg's funnel plot and Egger's linear regression tests were used to evaluate publication bias. In the univariate studies, the results did not show any evidence of publication bias (p=0.711 for Begg's test, and p=0.141 for Egger's test). However, publication bias was found in the multivariate studies (p=0.002 for Egger's test and p=0.251 for Begg's test and). Therefore, a trim and fill method was used to evaluate the asymmetry in the funnel plot. The recalculated pooled HRs with presumed missing studies did not significantly change for multivariate studies (HR=1.118, 95%CI: 1.002–1.233; Pheterogeneity=0.026; Figure 5), indicating the stability of the results.

Figure 3.

Effect of univariate studies on the pooled HR for the NLR and OS of patients.

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Figure 4.

Effect of multivariate studies on the pooled HR for the NLR and OS of patients.

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Figure 5.

Funnel plots adjusted with the trim and fill method for OS. Circles: included studies. Diamonds: presumed missing studies.

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DISCUSSION

Systemic inflammation appears to play a pivotal role in the progression of numerous cancers by promoting tumor angiogenesis, tumor metastasis and cancer cell proliferation and by affecting the tumor response to systemic treatment 11. The NLR, a combination of circulating neutrophil and lymphocyte counts, serves as a representative index of systemic inflammation. Moreover, because it is calculated from peripheral blood test results, the NLR is a readily available biomarker of systemic inflammation that may predict the prognostic outcome of patients. Indeed, recent studies have evaluated the predictive value of the NLR in various types of cancers 1619. Our current study aimed to evaluate the role of the NLR in lung cancer, and to the best of our knowledge, it is the first meta-analysis to investigate the prognostic role of the NLR in lung cancer.

This meta-analysis, including 14 studies with 2,734 lung cancer cases, showed that an elevated NLR indeed predicted worse OS, regardless of whether the HRs were calculated from multivariate or univariate analysis. Subgroup analysis showed that a high NLR yielded a worse OS in NSCLC and SCLC based on multivariate analysis. The cancer type of the studies using univariate analysis was NSCLC only. In the subgroup analyses by ethnicity, we found that regardless of whether patients were Asian or Caucasian, an elevated NLR was still a poor predictor of OS in both multivariate and univariate analyses. Considering different cut-off values, these studies using two subsets of NLR cut-offs revealed similar results, showing that the NLR was a negative prognostic marker for the outcome of OS regardless of the analysis method. Further analysis by sample size also revealed the same results. Meta-regression analysis was performed using variables such as the year of publication, ethnicity, cancer type, cut-off value and sample size; however, none of these variables contributed to heterogeneity.

The NLR has been related to patient prognosis in numerous cancers, although the specific mechanism for this relationship remains incompletely understood. Myeloid cells are known to play a critical role in tumor pathogenesis by promoting cancer cell proliferation, tumor angiogenesis, cell invasion, and metastasis 37. In particular, tumor-derived inflammation can increase myelopoiesis with defective myeloid cell differentiation and proliferation by regulating the bone marrow and spleen, leading to the accumulation of immature myeloid cells in the peripheral circulation 38. In the context of cancer-mediated myelopoiesis, the neutrophil precursors myelocytes and promyelocytes proliferate and are released into the peripheral blood. Neutrophils are the most abundant granulocytes, which account for most peripheral white blood cells 37. Thus, the prognostic and predictive value of peripheral neutrophils as an independent index or as part of the NLR in cancers is apparent, and enhanced neutrophil responses and/or lymphocyte suppression, leading to a high NLR, might promote tumor progression and inhibit the antitumor immune response.

Our study has several limitations that should be carefully considered. First, the studies included in the analysis were full texts in English and were identified by searching the PubMed and Web of Science databases. Thus, publication bias cannot be excluded, although it did not affect the results according to the trim and fill method. In addition, marked heterogeneity of the studies was found; this may have been caused by the year of publication, ethnicity, cancer type, cut-off value and sample size. However, no variables listed above that were analyzed in the meta-regression analysis contributed to the observed heterogeneity. In fact, the existence of heterogeneity may have resulted from a variety of other factors. Due to the lack of detailed data, we could not use other clinical parameters in the meta-regression analysis. Additionally, the number of included studies was not large enough for part of the subgroup analysis; for example, only two studies investigated the NLR for OS in SCLC, and only two univariate studies with a small sample size (less than 100 cases was classified as “small”) yielded a trend of a poor prognostic role of the NLR for OS. In the future, more well-designed studies are needed to present more reliable results.

In conclusion, despite the limitations listed above, the synthesized evidence from published articles revealed that elevated NLR was a poor predictor of survival in patients with lung cancer. The NLR is an easily available blood test and may serve as a useful prognostic biomarker in lung cancer that does not require any additional resources for routine use. Nevertheless, the clinical utility of the NLR must still be confirmed in future analyses.

AUTHOR CONTRIBUTIONS

Wang J conceived and designed the experiments. Wang J, Yin YM, Wang XD, Kuai SG and Shang ZB performed the experiments. JW, YMY, Wang XD, Gu L, Pei H and Zhang YY analyzed the data. The first three authors contributed equally to this article.

ACKNOWLEDGMENTS

The authors thank all of the patients and clinical investigators who were involved in the studies included in this meta-analysis.

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