Abstract
Studies investigating association between tumor necrosis factor (TNF) gene polymorphisms and silicosis susceptibility report conflicting results. The aim of this meta-analysis was to assess association between TNF gene polymorphisms and silicosis susceptibility. A systematic literature search was conducted to find relevant studies. Pooled odds ratios (ORs) with 95% confidence intervals (CIs) were used to estimate the strength of association. Finally, a total of 12 articles, involving 1990 silicosis patients and 1898 healthy controls were included in the meta-analysis. Overall, meta-analysis revealed a significant association between the TNF −308A allele and silicosis (OR = 1.348, 95%CI = 1.156–1.570, P<0.001). A significant association of AA+AG genotype of the TNF −308 A/G polymorphism with susceptibility to silicosis was also found (OR = 1.466, 95%CI = 1.226–1.753, P<0.001). After stratification by ethnicity, significant associations were detected under the genetic models (A allele and AA+AG genotype) for TNF −308A/G polymorphisms in the Asian population (P<0.05). Similarly, meta-analysis of the TNF −238A/G polymorphism revealed the same pattern as that shown by meta-analysis of TNF −308A/G. The meta-analysis suggests that the TNF −308A/G and −238A/G polymorphisms are associated with susceptibility to silicosis, especially in Asians.
Keywords: meta-analysis, silicosis, susceptibility, TNF
Introduction
Silicosis is an interstitial lung disease prevalent among miners, sand blasters, and quarry workers, manifested as a chronic inflammatory response leading to severe pulmonary fibrotic changes [1]. It is characterized by fibrotic nodules, thickening of the alveolar interstitium, and accumulation of inflammatory cells in the lung. This disease is considered a major public health problem in some developing countries such as India, South African, and China. Although the clear pathogenesis of silicosis has not been fully elucidated, evidence suggests that increased cumulative silica exposure promoted risk of silicosis [2,3]. Interestingly, it is quite pronounced that individual specific responses to dust exposure demonstrated some genes and genes variations mainly influenced the silicosis susceptibility, suggesting that genetic factors may influence susceptibility to this disease [4–6].
Silicotic inflammation and fibrosis are developed when alveolar phagocytes contact or ingest silica particles. Cytokines and fibrogenic mediators were released into the local tissues and triggered an inflammatory response, followed by fibroblast proliferation and collagenization [7]. In this regard, tumor necrosis factor (TNF)-α derived from alveolar macrophages in the lung is important in regulating these mediators in silicosis. TNF-α is an important pro-inflammatory cytokine, secreted primarily by mononuclear phagocytic cells [8]. It is involved in various physiologic and pathologic processes, such as inflammation initiation, immuno-regulation, proliferation, and apoptosis [9]. TNF-α deficient mice are resistant to developing fibrosis from silica [10] and murine lung transfected with TNF-α resulted in spontaneous alveolitis, alveolar disruption, and a progressive fibrotic reaction [11], suggesting that TNF-α may play an important role in silicosis. TNF gene is located on chromosome 6 (region p21.3), within the central major histocompatibility complex. Studies have indicated that TNF-α production is regulated at the transcriptional level [12–14], and a G-to-A mutation in the −238, −308 promoter section is accompanied by an increase in TNF-α production. Recently, studies have demonstrated that these two polymorphisms are related to the occurrence and development of silicosis [15–17]. On the contrary, some studies did not find any associations between the TNF polymorphisms (−308A/G, −238A/G) and silicosis [18–20].
Meta-analysis is a statistical method for combining the results of several studies to produce a single estimate of the major effect with enhanced precision. It is considered a powerful tool for pooling inconsistent results from different studies [21]. Li et al. performed a meta-analysis to assess association between TNF gene polymorphisms and silicosis susceptibility, but this meta-analysis included TNF −308A/G polymorphism and only nine studies [22]. More studies concerning the association between TNF polymorphisms and silicosis risk have been reported in recent years [19,23–24]. Thus, it seems necessary to perform a meta-analysis that includes the most updated data to investigate the relationship between TNF gene polymorphisms and the risk of silicosis.
Materials and methods
Search strategy
A systematic literature search in PubMed database, Elsevier Science Direct, the China National Knowledge Infrastructure database (CNKI), the Chinese Biomedical database (CBM), Wanfang Database, and VIP Chinese journal database was performed to identify articles. The text words were as followings: “silicosis” and “tumor necrosis factor or tumor necrosis factor gene or TNF-α or TNF alpha” combined with “gene polymorphism or polymorphisms or mutation or variant or gene.” The languages were limited to English and Chinese. The last search was updated on July 1, 2018. References in the identified studies were reviewed to find additional studies regarding the association between TNF gene polymorphisms and silicosis susceptibility.
Inclusion and exclusion criteria
The inclusion criteria were defined as: (1) the design was a case–control; (2) the studies evaluated the association between TNF gene polymorphisms (−308A/G and −238A/G) and susceptibility to silicosis; and (3) the studies provided sufficient data to calculate the odds ratio (OR). Studies were excluded if one of the followings existed: (1) the studies contained overlapping data; (2) studies included family members who had been studied because of analysis based on linkage considerations.
Quality assessment
The Newcastle–Ottawa scale (NOS) was adopted to assess the quality of eligible studies from three aspects: (1) selection: 0–4 points; (2) comparability: 0–2 points; and (3) outcome: 0–3 points [25]. Total scores ranged from 0 to 9, and studies with a score of more than 7 were regard as of high quality. In our meta-analysis, the scores of included studies ranged from 7 to 8, which showed that all studies included were in compliance with high quality (Table 1).
Table 1. Characteristics of the individual studies included in the meta-analysis.
First author, year | Population (ethnicity) | Case | Control | Genotyping methods | Association | P (HWE) | NOS score | |
---|---|---|---|---|---|---|---|---|
P value (allele contrast) | ||||||||
Yucesoy 2001 [1] | American (C) | 325 | 164 | PCR-RFLP | TNF −308A/G | P>0.05 | 0.003 | 8 |
TNF −238A/G | P<0.05 | 0.127 | ||||||
Crobett 2002 [30] | South African (AF) | 121 | 120 | PCR-RFLP | TNF −308A/G | P>0.05 | 0.054 | 8 |
TNF −238A/G | P<0.05 | 0.152 | ||||||
Li 2004 [18] | Chinese (A) | 259 | 341 | PCR-RFLP | TNF −308A/G | P>0.05 | 0.554 | 8 |
Wang 2005 [15] | Chinese (A) | 96 | 116 | PCR-RFLP | TNF −308A/G | P<0.05 | 0.161 | 7 |
TNF −238A/G | P<0.05 | 0.888 | ||||||
Qu 2007 [19] | Chinese (A) | 184 | 111 | PCR-RFLP | TNF −308A/G | P>0.05 | 0.105 | 8 |
Wang 2005 [16] | Chinese (A) | 75 | 137 | PCR-RFLP | TNF −308A/G | P<0.01 | 0.176 | 7 |
TNF −238A/G | P<0.01 | 0.897 | ||||||
Wu 2007 [20] | Chinese (A) | 183 | 111 | PCR-RFLP | TNF −308A/G | P>0.05 | 0.106 | 8 |
TNF −238A/G | P>0.05 | 0.619 | ||||||
Yu 2009 [29] | Chinese (A) | 259 | 341 | PCR-RFLP | TNF −238A/G | P>0.05 | 0.379 | 8 |
Rad 2012 [28] | Iranian (C) | 45 | 45 | PCR | TNF −308A/G | P>0.05 | 0.584 | 8 |
Wang 2012 [17] | Chinese (A) | 68 | 68 | PCR-RFLP | TNF −308A/G | P<0.05 | 0.945 | 8 |
TNF −238A/G | P<0.05 | 0.951 | ||||||
Kurniawidjaja 2014 [24] | Indonesian (A) | 171 | 165 | PCR-RFLP | TNF −308A/G | P<0.05 | 0.719 | 8 |
Mai 2014 [23] | Chinese (A) | 64 | 44 | PCR-RFLP | TNF −308A/G | P>0.05 | 0.450 | 8 |
TNF −238A/G | P>0.05 | 0.877 |
C: Caucasian, A: Asian, AF: African.
Data extraction
Data were collected by two independent investigators. If these two investigators could not reach a consensus, disagreements were discussed and resolved by a third investigator. The characteristics of the selected articles are shown in Table 1, including first author, year of publication, study population, ethnicity, number of cases, controls, and findings about the polymorphisms investigated in these studies, P values of Hardy–Weinberg equilibrium (HWE) for controls and NOS score. The study populations comprise American, South African, Iranian, Indonesian, and Chinese. The Asian subgroup included Chinese and Indonesian populations. American and Iranian populations were classified in the Caucasian subgroup, South African in the African subgroup.
Statistical analysis
Allele frequencies at the TNF gene polymorphisms from the individual study were determined by the counting method. The association between TNF (–308 A/G and –238 A/G) polymorphism and the risk of silicosis was estimated by calculating a pooled OR and 95%CI under an allele model (A vs. G), a recessive model (AA vs. AG+GG), a dominant model (AA+AG vs. GG), a homozygote model (AA vs. GG) and a heterozygote model (AG vs. GG).
The χ2 test-based Q statistic was used to examine the heterogeneity of between-studies [26]. The I2 statistic measures the degree of inconsistency in the studies by computing what percentage of the total variation across studies was due to heterogeneity rather than by chance. A high I2 value indicated a higher probability of the existence of heterogeneity (I2 = 0–25%, no heterogeneity; I2 = 25–50%, moderate heterogeneity; I2 = 50–75%, large heterogeneity; and I2 = 75–100%, extreme heterogeneity). If the P value of the heterogeneity Q statistic was less than 0.10, the random effects model was selected. Otherwise, a fixed effects model was adopted. Publication bias was estimated using Egger’s linear regression test and a funnel plot. If the P value was less than 0.05, statistically significant publication bias might exist [27].
All the statistical analyses for the meta-analysis were performed with STATA statistical software (version 11.0 STATA Corp, College Station, TX). A two-sided P value <0.05 was regarded as statistically significant.
Results
Literature search and study characteristics
The process for selecting the studies is shown in Figure 1. The initial search of databases identified 412 potentially relevant studies of which 412 articles, 253 records were excluded owing to not about TNF gene, 95 were animal studies, 18 records were review, 30 were not about gene polymorphisms, 1 study contained overlapping data, and 3 were excluded owing to the absences of genotype frequencies. Finally, 12 articles met the inclusion criteria and were finally included in our meta-analysis [1,15–20,23,24,28–30] including 1990 patients with silicosis and 1898 healthy controls. There were 11 studies on TNF −308A/G, 8 studies involved Asian populations [15–20,23,24], 2 studies involved Caucasian populations [1,28], and 1 study involved African populations [30]. There were 8 studies on TNF −238A/G, 6 studies involved Asian populations [15–17,20,23,29], 1 study involved Caucasian populations [1], and 1 study involved African populations [30]. The main characteristics of each study included in this meta-analysis are shown in Table 1.
Figure 1. Flow diagram of the study selection process.
Evaluation of heterogeneity and publication bias
Heterogeneity of the included studies regarding each polymorphism is presented in Table 2. Between-study heterogeneity was found during some meta-analyses of TNF −238A/G polymorphism in the overall population and the Asian group. So these meta-analyses were performed in a random effects model, and the other meta-analyses were done in a fixed effects model.
Table 2. Meta-analysis of TNF gene polymorphisms and silicosis.
Polymorphisms | Populations | Number of studies | Sample size | Test of association | Test of heterogeneity | Egger’s test (P) | ||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Case | Control | OR (95%CI) | Z | P | Model | χ2 | P | I2 | ||||
TNF −308A/G | Overall | 11 | 1591 | 1422 | 1.348 (1.156–1.570) | 3.82 | 0.000 | F | 11.59 | 0.314 | 13.7% | 0.016 |
A vs. G | NA | NA | NA | 1.158 (1.012–1.325)a | NA | NA | NA | NA | NA | NA | NA | |
Asian | 8 | 1100 | 1093 | 1.581 (1.288–1.941) | 4.83 | 0.000 | F | 5.33 | 0.619 | 0.0% | 0.079 | |
Caucasian | 2 | 370 | 209 | 1.183 (0.897–1.559) | 1.19 | 0.234 | F | 0.10 | 0.757 | 0.0% | NA | |
African | 1 | 121 | 120 | 0.923 (0.605–1.407) | 0.37 | 0.709 | NA | NA | NA | NA | NA | |
AA vs. AG+GG | Overall | 11 | 1591 | 1422 | 1.194 (0.752–1.898) | 0.75 | 0.452 | F | 5.93 | 0.821 | 0.0% | 0.009 |
NA | NA | NA | 0.811 (0.536–1.228)a | NA | NA | NA | NA | NA | NA | NA | ||
Asian | 8 | 1100 | 1093 | 1.689 (0.894–3.226) | 1.62 | 0.106 | F | 2.32 | 0.940 | 0.0% | 0.148 | |
Caucasian | 2 | 370 | 209 | 1.024 (0.382–2.744) | 0.05 | 0.962 | F | 0.95 | 0.331 | 0.0% | NA | |
African | 1 | 121 | 120 | 0.608 (0.228–1.627) | 0.99 | 0.322 | NA | NA | NA | NA | NA | |
AA+AG vs. GG | Overall | 11 | 1591 | 1422 | 1.466 (1.226–1.753) | 4.19 | 0.000 | F | 8.31 | 0.598 | 0.0% | 0.086 |
Asian | 8 | 1100 | 1093 | 1.640 (1.307–2.058) | 4.27 | 0.000 | F | 5.19 | 0.637 | 0.0% | 0.118 | |
Caucasian | 2 | 370 | 209 | 1.318 (0.925–1.878) | 1.53 | 0.127 | F | 0.00 | 0.986 | 0.0% | NA | |
African | 1 | 121 | 120 | 1.021 (0.609–1.712) | 0.08 | 0.936 | NA | NA | NA | NA | NA | |
AA vs. GG | Overall | 11 | 1591 | 1422 | 1.321 (0.826–2.112) | 1.16 | 0.245 | F | 6.15 | 0.802 | 0.0% | 0.010 |
NA | NA | NA | 1.209 (0.730–2.002)a | NA | NA | NA | NA | NA | NA | NA | ||
Asian | 8 | 1100 | 1093 | 1.899 (0.995–3.624) | 1.95 | 0.052 | F | 2.42 | 0.933 | 0.0% | 0.196 | |
Caucasian | 2 | 370 | 209 | 1.146 (0.417–3.149) | 0.26 | 0.792 | F | 0.78 | 0.376 | 0.0% | NA | |
African | 1 | 121 | 120 | 0.636 (0.234–1.733) | 0.88 | 0.376 | NA | NA | NA | NA | NA | |
AG vs. GG | Overall | 11 | 1591 | 1422 | 1.472 (1.222–1.772) | 4.08 | 0.000 | F | 6.53 | 0.769 | 0.0% | 0.205 |
Asian | 8 | 1100 | 1093 | 1.611 (1.272–2.040) | 3.96 | 0.000 | F | 4.79 | 0.686 | 0.0% | 0.235 | |
Caucasian | 2 | 370 | 209 | 1.325 (0.925–1.900) | 1.53 | 0.125 | F | 0.05 | 0.830 | 0.0% | NA | |
African | 1 | 121 | 120 | 1.139 (0.655–1.980) | 0.46 | 0.645 | NA | NA | NA | NA | NA | |
TNF −238A/G | Overall | 8 | 1191 | 1101 | 2.092 (1.232–3.550) | 2.73 | 0.006 | R | 21.76 | 0.003 | 67.8% | 0.061 |
A vs. G | Asian | 6 | 745 | 817 | 3.044 (1.234–7.510) | 2.42 | 0.016 | R | 20.70 | 0.001 | 75.8% | 0.052 |
Caucasian | 1 | 325 | 164 | 1.353 (0.994–1.840) | 1.92 | 0.055 | NA | NA | NA | NA | NA | |
African | 1 | 121 | 120 | 1.339 (0.554–3.239) | 0.65 | 0.517 | NA | NA | NA | NA | NA | |
AA vs. AG+GG | Overall | 8 | 1191 | 1101 | 1.374 (0.562–3.362) | 0.70 | 0.486 | F | 1.90 | 0.755 | 0.0% | 0.018 |
NA | NA | NA | 1.027 (0.440–2.402) a | 0.57 | NA | NA | NA | NA | NA | NA | ||
Asian | 6 | 745 | 817 | 3.934 (0.614–25.193) | 1.45 | 0.148 | F | 0.70 | 0.966 | 0.0% | 0.567 | |
Caucasian | 1 | 325 | 164 | 0.886 (0.256–3.074) | 0.19 | 0.849 | NA | NA | NA | NA | NA | |
African | 1 | 121 | 120 | 0.992 (0.137–7.156) | 0.01 | 0.993 | NA | NA | NA | NA | NA | |
AA+AG vs. GG | Overall | 8 | 1191 | 1101 | 2.230 (1.297–3.836) | 2.90 | 0.004 | R | 19.22 | 0.006 | 64.9% | 0.091 |
Asian | 6 | 745 | 817 | 3.063 (1.240–7.567) | 2.43 | 0.015 | R | 19.88 | 0.001 | 74.8% | 0.051 | |
Caucasian | 1 | 325 | 164 | 1.631 (1.112–2.392) | 2.50 | 0.012 | NA | NA | NA | NA | NA | |
African | 1 | 121 | 120 | 1.454 (0.535–3.956) | 0.73 | 0.463 | NA | NA | NA | NA | NA | |
AA vs. GG | Overall | 8 | 1191 | 1101 | 1.635 (0.666–4.016) | 1.07 | 0.283 | F | 1.80 | 0.772 | 0.0% | 0.044 |
NA | NA | NA | 1.220 (0.549–2.708)a | NA | NA | NA | NA | NA | NA | NA | ||
Asian | 6 | 745 | 817 | 4.591 (0.716–29.452) | 1.61 | 0.108 | F | 0.07 | 0.965 | 0.0% | 0.682 | |
Caucasian | 1 | 325 | 164 | 1.145 (0.325–4.027) | 0.21 | 0.833 | NA | NA | NA | NA | NA | |
African | 1 | 121 | 120 | 1.018 (0.141–7.354) | 0.02 | 0.986 | NA | NA | NA | NA | NA | |
AG vs. GG | Overall | 8 | 1191 | 1101 | 2.205 (1.299–3.743) | 2.93 | 0.003 | R | 18.18 | 0.011 | 61.5% | 0.093 |
Asian | 6 | 745 | 817 | 2.919 (1.222–6.976) | 2.41 | 0.016 | R | 18.29 | 0.003 | 72.7% | 0.052 | |
Caucasian | 1 | 325 | 164 | 1.659 (1.125–2.446) | 2.56 | 0.011 | NA | NA | NA | NA | NA | |
African | 1 | 121 | 120 | 1.629 (0.517–5.132) | 0.83 | 0.405 | NA | NA | NA | NA | NA |
F: fixed effects model, R: random effects model, NA: not available.
Adjusted using the “trim and fill” method.
Evidence of publication bias was observed for the meta-analysis of the TNF −308A/G (allele contrast, recessive model, and homozygote model) and −238A/G (recessive model and homozygote model) in all study subjects. Thus, the “trim and fill” method was used to adjust for publication bias. The adjusted results using the “trim and fill” technique remained unchanged, suggesting that these results might not be affected by publication bias (Table 2).
Meta-analysis of tumor necrosis factor gene polymorphisms in silicosis
A summary of the meta-analysis of the relationship between TNF gene polymorphisms and silicosis is listed in Table 2.
Tumor necrosis factor −308A/G polymorphism and silicosis
Eleven studies determined the relationship between the −308A/G polymorphism and silicosis. The total sample size for patients with silicosis and healthy controls was 1591 and 1422, respectively. Meta-analysis revealed a significant association between −308A allele and silicosis in the overall population (OR = 1.348, 95%CI = 1.156–1.570, P = 0.000, Figure 2). Analysis using dominant and heterozygote models also showed a significant association between −308A/G and silicosis risk in all study subjects (OR = 1.466, 95%CI = 1.226–1.753, P = 0.000 and OR = 1.472, 95%CI = 1.222–1.772, P = 0.000, respectively). Stratification by ethnicity indicated that −308A/G polymorphism was significantly associated with silicosis risk in the Asian population (A vs. G: OR = 1.581, 95%CI = 1.288–1.941, P = 0.000; AA+AG vs. GG: OR = 1.640, 95%CI = 1.307–2.058, P = 0.000; AG vs. GG: OR = 1.611, 95%CI = 1.272–2.040, P = 0.000).
Figure 2. Odds ratios and 95% confidence intervals for individual studies and pooled data for the association between the A vs. G allele of TNF −308A/G polymorphism and silicosis.
Tumor necrosis factor −238A/G polymorphism and silicosis
Eight case–control studies including 1191 cases and 1101 controls identified an association between the TNF −238A/G polymorphism and silicosis risk. The pooled OR (95%CI, P value) in the A vs. G allele was 2.092 (1.232–3.550, P = 0.006). Meta-analysis found a significant association between the AA+AG genotype and silicosis in all study subjects (OR = 2.230, 95%CI = 1.297–3.836, P = 0.004). Meta-analysis of heterozygote model also revealed a significant association between −238A/G and silicosis risk in all study subjects (OR = 2.205, 95%CI = 1.299–3.743, P = 0.003). Ethnicity-specific analysis indicated an association between −238A allele and silicosis in the Asian group (OR = 3.044, 95%CI = 1.234–7.510, P = 0.016). In addition, significant association were identified in the dominant and heterozygote models for the Asian silicosis population (OR = 3.063, 95%CI = 1.240–7.567, P = 0.015; OR = 2.919, 95%CI = 1.222–6.976, P = 0.016). The forest plot is shown in Figure 3.
Figure 3. Odds ratios and 95% confidence intervals for individual studies and pooled data for the association between the A vs. G allele of TNF −238A/G polymorphism and silicosis.
Discussion
Silicosis is pneumoconiosis of lung fibrosis caused by inhalation of silica particles usually at low levels but for long periods. It is a common occupational disease among the workers who are exposed to silica particles. Disease development is related to both environmental and individual factors. As is known, there is individual susceptibility to most of the human diseases even with the same environmental exposure. Host factors, including gene polymorphisms involved in the diseases, might have interpreted this difference partly. Therefore, genetic susceptibility to the diseases has been a research focus in the scientific community. It has been recognized that exposure to dust is a start-up factor, but only part of those exposed to dust get silicosis, suggesting that individual factors performed significantly in silicosis [31].
TNF-α is one of the most relevant cytokines to the biological events in silicosis such as inflammation and silica-induced pulmonary fibrosis, regulating cell proliferation, differentiation, and apoptosis [19,32,33]. Findings from animal models showed that TNF-α associated with silica-induced lung damage [34,35]. TNF pro-inflammatory cytokine overexpression and involvement in silica-induced sponge collagen biosynthesis was demonstrated in quartz-treated explants as compared with controls by means of specific TNF inhibitors affecting the fibrogenic gene response [36]. Zhang et al. have found that anti-TNF may improve silica-induced pulmonary inflammation by decreasing the TNF-α, inhibiting NF-κB signaling as well as oxidant status, which suggest that anti-TNF has potential role in the treatment of silica-induced lung damage [37]. On the other hand, several studies discussed association of TNF gene polymorphisms in patients with silicosis, but results were inconsistent. In a study with Chinese workers exposed to silica particles, there was significant correlation between polymorphisms of TNF −308A/G and −238A/G polymorphisms and risk of silicosis [17]. Similarly, in the Han population of Southwest China, TNF gene polymorphisms (−308A/G and −238A/G) might be related to occurrence of silicosis and the degree of severe pulmonary fibrosis in silicosis [15]. By contrast, polymorphisms of TNF −308A/G were not associated with silicosis in an Iranian population [28]. Therefore, to better comprehend the relationship between these two polymorphisms and silicosis, a pooled analysis with a large sample size, and heterogeneity explored is needed.
The present meta-analysis found a significant association between TNF −308A polymorphism and silicosis in the overall population, and a significant association of AA+AG genotype of TNF −308A/G polymorphism with susceptibility to silicosis was noted. Similarly, there was significant association between TNF −238A allele and all silicosis cases, and AA+AG genotype of TNF −238A/G polymorphism indicated a significant association with silicosis. However, recessive model (AA vs. AG+GG) of both TNF −308 A/G and −238A/G was not significantly related to silicosis in all populations. These findings show that TNF −308A/G and −238A/G polymorphisms might help to explain the individual differences in the susceptibility to silicosis. Considering the effect of genetic background on the results, subgroup analyses by ethnicity were performed for these polymorphisms. The present meta-analysis showed that TNF −308A/G polymorphism was related to silicosis in Asians. Dominant model of TNF −238A/G polymorphisms (AA+AG vs. GG) showed significantly increased silicosis risk for Caucasian population, but it might not be reliable because only one published article in Caucasian population was included. In addition, single nucleotide polymorphisms (SNPs) have geographical and ethnic differences [38]. Therefore, even the same polymorphisms in genes may lead to different effects on different groups of silicosis susceptibility. Consequently, the result should be interpreted with caution, and additional studies with further large-scale case–control ones, especially in Caucasian and African population are needed to validate the result.
The findings of the present study seem to contradict with some individual studies, by which those studies did not find significant correlation between TNF (−308A/G and −238A/G) polymorphisms and risk of silicosis. Reasons may be that, first, even though results of some individual studies explored correlation between TNF gene polymorphisms and risk of silicosis are not significant, the ORs (95%CIs) of the individual studies [18–20,23,27] draw near significant values as shown in Figures 2 and 3. If those individual studies increased the sample size, significant association might be revealed. Second, meta-analysis is a means of increasing the effective sample size under investigation through pooling data from individual association studies, and can overcome the limitations of individual studies, resolve inconsistencies, and reduce the likelihood that random errors are responsible for false-positive or false-negative associations, therefore, meta-analysis can enhance the statistical power of the analysis for estimating genetic effects.
Compared with the previous meta-analysis [22], the present study included 11 studies on association of −308A/G polymorphism and silicosis, and 8 studies on association of −238A/G polymorphism and silicosis, which is larger than the data from the previous meta-analysis. Furthermore, this is the first study to confirm the association between the TNF −238A/G polymorphism and silicosis susceptibility. Besides, subgroup analyses by ethnicity were performed to discuss ethnic effect of both gene polymorphisms on risk of silicosis. Thus, our meta-analysis might enhance the statistical power and draw a more reliable conclusion.
Several limitations of the present study should be considered. First, the present study could not analyze the potential gene–environment interactions and gene susceptibility haplotypes owing to lack of relevant data. Second, our literature search was dependent on English and Chinese, language bias might be considered. Third, meta-analysis remains a retrospective research, which is subject to the methodological deficiencies of the included studies.
In summary, this updated meta-analysis suggests that TNF −308A/G and −238A/G polymorphisms are associated with susceptibility to silicosis. However, large sample size studies including more ethnic groups should be considered in future association studies to confirm the results of our meta-analysis.
Abbreviations
- CI
confidence interval
- HWE
Hardy–Weinberg equilibrium
- NOS
Newcastle–Ottawa scale
- OR
odds ratio
- TNF
tumor necrosis factor
Author Contribution
G.P.G. designed the study. L.L.P. and X.L.J. did the systematic literature search and extracted the data. R.S.Z. and H.B.Y. performed the statistical analysis and made all forms in the manuscript. M.Z. wrote the manuscript. All contributed to and approved the final version of the manuscript.
Competing Interests
The authors declare that there are no competing interests associated with the manuscript.
Funding
This work was partly supported by program of health technology of Suzhou National New and Hi-tech Industrial Development Zone [grant numbers 2016F001 and 2017Q014].
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