Skip to main content

Pro- and anti-inflammatory cytokines and osteoclastogenesis-related factors in peri-implant diseases: systematic review and meta-analysis

Abstract

Background

Pro- and anti-inflammatory cytokines are acknowledged, during inflammatory bone destruction, as key regulators of osteoclast and osteoblast differentiation and activity. However, evidence regarding the exact role of pro- and anti-inflammatory cytokines and osteoclastogenesis-related factors in peri-implant diseases is unclear. We aimed to execute a systematic review and meta-analysis about the pro- and anti-inflammatory cytokines and osteoclastogenesis-related factors levels in peri-implant diseases.

Methods

The focused question was elaborated to summarize the levels of pro-and anti-inflammatory cytokines and osteoclastogenesis-related factors in tissue samples (mRNA) and biofluids (protein levels) of patients with/without peri-implant diseases. Electronic searches of the PubMed, Cochrane Controlled Trials Registry, Web of Science, EMBASE, Scopus and Google scholar databases were conducted for publications up to March 2023. Meta-analysis evaluating the mediator´s levels (protein levels by ELISA) in peri-implant crevicular fluid (PICF) were made. The effect size was estimated and reported as the mean difference. The 95% confidence interval was estimated for each mediator, and the pooled effect was determined significant if two-sided p-values < 0.05 were obtained.

Results

Twenty-two publications were included in the systematic review (qualitative analysis), with nine of these subjected to meta-analyses (quantitative analysis). In the qualitative analysis, higher pro-inflammatory cytokines [Interleukin (IL)-1β, IL-6] and pro-osteoclastogenic mediator [Receptor Activator of Nuclear Factor-Kappa B ligand (RANKL)] levels were observed in PICF of individuals with peri-implant diseases in comparison to healthy individuals. Higher RANKL/osteoprotegerin (OPG) ratios were observed in PICF from individuals with peri-implant diseases in comparison to healthy individuals. Meta-analysis showed higher RANKL levels in diseased groups compared to controls.

Conclusions

The results showed that the levels of IL-1β, IL-6, IL-10, and RANKL/OPG are not balanced in peri-implant disease, suggesting that these mediators are involved in the host osteo-immunoinflammatory response related to peri-implantitis.

Peer Review reports

Introduction

Dental implants have been widely used to ensure the quality of life in partially and fully edentulous patients. Prospective studies with long follow-up periods showed survival rates varying from 89.5 to 99.2% [1,2,3]. However, peri-implant mucositis and peri-implantitis are chronic inflammatory conditions that can reduce dental implant predictability [4]. Peri-implant mucositis is a reversible condition caused by an inflammatory process restricted to peri-implant soft tissues, while peri-implantitis exhibits a progressive supporting bone loss [5]. The general prevalence of both conditions was estimated in a meta-analysis, being 42.9% for peri-implant mucositis and 21.7% for peri-implantitis [6].

The peri-implant tissue breakdown seems to be associated with a cytokine response to bacterial products, including endotoxins and lipopolysaccharides, that results in a local immunological response at the infection tissue [7, 8]. This immune reaction to infection is adjusted by the balance between pro-and anti-inflammatory cytokines that are acknowledged, during inflammatory bone destruction, as key regulators of osteoclast and osteoblast differentiation and activity [9,10,11].

In this context, the production of the pro-inflammatory cytokines, such as interleukin (IL)-1β, -6, and -12, interferon-gamma and tumor necrosis factor-alpha (TNF-a), in reaction to a periodontal infection, are responsible to stimulate tissue damage by activation of collagenase and other pro-inflammatory factors [12,13,14,15]. IL-1β manages the prostaglandin E2 production associated with hard tissue breakdown induction in periodontitis [16]. Higher levels of both mediators were found in the gingival crevicular fluid of patients with periodontal disease [17, 18]. Similarly, IL-6 increase T-lymphocyte proliferation and B-lymphocyte differentiation/immunoglobulin secretion as reported by in vitro studies [19, 20]. Moreover, IL-6 also induces bone resorption by itself and in conjunction with other bone-resorbing mediators and acts synergistically with IL-1β. The levels of both proinflammatory cytokines in peri-implant crevicular fluid (PICF) were significantly higher in sites with peri-implantitis in comparison to healthy sites [8, 21].

Anti-inflammatory cytokines, such as IL-10, IL-4 and IL-1 receptor antagonist (IL1-RA), are produced to limit the inflammatory events, revealing protective functions during tissue destruction as reported by in vitro studies [22, 23]. IL-10 is produced by T-helper 2 cells (TH2), macrophages, and B cells and acts to reduce the production of the pro-inflammatory cytokines [24, 25]. Furthermore, IL-10 acts enhanced the B cell proliferation and differentiation and favored immunoglobulins production in vitro, balancing the immune response [26]. A previous study [27] showed that higher IL-10 and lower IL-1β levels in PICF are related, clinically and radiographically, to peri-implant health.

The alveolar bone loss around dental implants seems to be controlled by the interaction of the Receptor Activator of Nuclear Factor-Kappa B ligand (RANKL), also named as TNF Receptor Superfamily Member 11 (TNFRSF11), with osteoprotegerin (OPG) whose expressions are strongly controlled by immune cell-derived inflammatory cytokines and bacterial products [28]. RANKL interacts with RANK, also named as TNF Receptor Superfamily Member 11A (TNFRSF11A), and the binding of RANKL to RANK takes place in the osteoclast precursor cells, inducing osteoclast formation and activation resulting in bone resorption, therefore, RANKL is a pro-osteoclastogenic protein [29, 30]. Instead, OPG is a decoy receptor for RANKL which inhibit osteoclastogenesis [30, 31]. A RANKL/OPG ratio was associated with bone damage by inducing osteoclast formation during the inflammation process [32]. This suggests that osteoclast activity is associated with a RANKL and OPG equilibrium [28].

Current evidence suggests that a complex set of chemokine/cytokine signaling pathways are associated with inflammation and bone resorption, the hallmarks of peri-implantitis. [31]. A greater understanding of this microenvironment around dental implants may help to monitor the health state of surrounding tissues. However, evidence regarding the exact role of pro and anti-inflammatory cytokines and osteoclastogenesis-related factors in peri-implant diseases is incomplete and unclear [33]. Based on that, we aimed to execute a systematic review and meta-analysis focusing on the levels of pro-and anti-inflammatory cytokines and osteoclastogenesis-related factors in peri-implant diseases.

Material and methods

Protocol

The present systematic review with meta-analysis was guided by the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) statement and a protocol was registered in PROSPERO (ID: CRD42020213627).

Focused question

The focused question was elaborated by PECO [population (patients containing implants with peri-implant diseases); exposure (peri-implant diseases); comparator (patients containing implants without peri-implant diseases); outcome (pro- and anti-inflammatory cytokines and osteoclastogenesis-related factors levels in tissue sample or biofluids)] principles to summarize the levels of pro- and anti-inflammatory cytokines and osteoclastogenesis-related factors in patients with/without peri-implant diseases: “Do implants with peri-implant diseases have different levels of pro- and anti-inflammatory mediators, or osteoclastogenesis-related factors compared with implants without peri-implant diseases?”.

Eligibility criteria

The original research articles were selected according to these inclusion criteria: (i) longitudinal studies and cross-sectional studies (cohort and case–control studies); (ii) describing data about pro- and anti-inflammatory mediator profiles in a tissue sample or the subsequent biofluid PICF, saliva and blood of patients with and without peri-implant diseases; (iii) studies including statistical methods and numerical values of mean and standard deviation, with the units for quantifying mediators levels; (iv) articles published only in the English language. To include studies in the systematic review and meta-analyses, they should report both related pro- and anti-inflammatory, as well as pro-and anti-osteoclastogenic factors evaluated in the same group of individuals. Studies that evaluated only one mediator were excluded. For the systematic review (qualitative analysis), studies that investigated protein levels of modulators by ELISA and Multiplex methods were considered, because they are both immunoassays (ELISA is a single plex, while the Multiplex assess multiple different proteins simultaneously). Original research articles that did not follow all the criteria defined above were eliminated from this systematic review. Moreover, letters to the editor, historical reviews, experimental studies (animal and cellular models) and unpublished articles were also eliminated.

Outcome measures

To assess the levels of both pro-and anti-inflammatory cytokines, or bone osteoclastogenesis-related factors levels, in individuals with and without peri-implant diseases, the primary outcome measure was the pro-and anti-inflammatory modulators levels (IL-1 and IL-10, IL-6 and IL-10, IL-1 and IL-1RA or RANKL and OPG) in sample tissue (mRNA) and biofluids (protein levels) of individuals with peri-implant diseases in comparison to healthy individuals. The secondary outcome measure was the ratio between pro-and anti-inflammatory modulators levels (IL-1/IL-10, IL-6/IL-10, IL-1/IL-1RA and RANKL/OPG) in sample tissue (mRNA) and biofluids (protein levels) of individuals with peri-implant diseases in comparison to healthy individuals.

Literature search

Detailed search strategies were conducted on the PubMed, Cochrane Controlled Trials Registry, Web of Science, EMBASE and Scopus databases for publications up to March 2023. Grey literature was also searched through Google scholar. Search restrictions, including language and publication period, were not made. Publications were found using a combination of terms shown in supplementary materials. The publications found in all electronic databases was transferred to the EndNote Program™ X7 version (Thomson Reuters, New York, NY, USA) to remove duplicate references.

Data selection and extraction

Two investigators (J.A.O. and R.O.A.) made the initial search for the evaluation of titles and abstracts independently, and the results were checked for agreement. The full text of the articles included based on title and abstract were independently read and evaluated based on the selection criteria (J.A.O. and R.O.A.). A discussion including a third investigator (S.C.P.) was reached for conflicting evaluations.

Two investigators (J.A.O. and R.O.A.) independently read all studies and extracted the following data: (i) the number of individuals comprised in each group; (ii) mean age and standard deviation of patients of each group; (iii) study groups (control, peri-implant mucositis and peri-implantitis); (iv) diagnostic criteria for peri-implant diseases; (v) assay method (RT-qPCR, ELISA, Multiplex); (vi) biological material evaluated (tissue sample or biofluids [PICF and saliva]); (vii) mediators evaluated in the study; and (viii) concentration of modulators molecules chosen to focus on this investigation, including the units for quantifying it. Relevant information from the selected studies according to the eligibility criteria is summarized in Table 1.

Table 1 Characteristics of studies and participants included in the systematic review according to the PECO´s principles

Quality assessment

Two authors (J.A.O. and R.O.A.) separately evaluated the quality of the included studies. No disagreement between both evaluators were observed. The Newcastle–Ottawa scale was used to evaluated case–control studies [50]. Using this scale, the studies were judged on three general perspectives: the selection of the study groups [case definition (peri-implantitis or peri-implant mucositis) with independent validation; representativeness of the cases: consecutive or obviously representative series of cases; selection of controls: community controls; definition of controls: no history of disease], the comparability of the groups [study controls for smoke; study controls for systemic disease], and the ascertainment of either the exposure or outcome of interest for case–control [ascertainment of exposure: secure record; same method of ascertainment for cases and controls; nonresponse rate: same rate for both groups]. Studies with the highest quality received nine points. A total score lower than 3 was classified as “low quality”, a score of 4 or 5 was classified as “moderate quality,” and a score of 6 or more was classified to be “high quality”.

For cross-sectional studies, the Risk of Bias Assessment Tool for Nonrandomized Studies scale (RoBANS) was used [51]. The RoBANS comprises 6 domains including the selection of participants (selection bias caused by inadequate participants selection), confounding variables [selection bias caused by inadequate confirmation and consideration of confounding variable (smoking habits and systemic diseases)], measurement of exposure (performance bias caused by inadequate measurement of exposure), blinding of outcome assessment (Detection bias caused by inadequate blinding of outcome assessment), incomplete outcome data (Attrition bias caused by inadequate handling of incomplete outcome data) and selective outcome reporting (Reporting bias caused by selective outcome reporting). The domains were classified with low, unclear or high risk of bias.

Data synthesis- meta-analysis

Only studies using the same assay method was included in the meta-analysis. Consequently, for meta-analysis evaluating the mediator´s levels in PICF (protein levels), only studies using ELISA were included. The measure unit used was pg/ml. Two studies [35, 41] used pg/μL and one study [41] used pmol/μL as measure unit. The mediators’ levels from these studies were converted to pg/ml using an online conversion website (http://www.endmemo.com/convert/). The effect size was estimated and reported as the mean difference. The 95% confidence interval was estimated for each mediator, and the pooled effect was determined significant if two-sided p-values < 0.05 were obtained. The forest plots were produced using statistical software (Review Manager [RevMan], Version 5.1. Copenhagen: The Nordic Cochrane Centre, The Cochrane Collaboration, 2011).

Forest plots for each meta-analysis showed the raw data (i.e., means, standard deviations, and sample sizes), point estimates (displayed as blocks) and confidence intervals (displayed as lines) for the chosen effect. Moreover, the heterogeneity statistics, the total number of participants per group, the overall average effect (mean difference and Z-statistics), and percent weight assigned to each study were also showed [52]. Chi-square (x2) and inconsistency index (I2) tests were used to evaluate the heterogeneity of the studies included in this meta-analysis. The I2 value was shown as a percentage of the total variation across studies. When I2 > 50%, the assumption of homogeneity was deemed invalid, and the random-effects model (DerSimonian-Laird method) was applied; otherwise, the fixed model (Mantel–Haenszel method) was used for the meta-analysis [53]. Publication bias was evaluated by using funnel plots.

Results

In electronic search a total of 9404 hits were found, being 4060 unique citations. A total of 53 publications were evaluated as full-text copies and 31 of these publications were excluded based on priori criteria (Fig. 1). The exclusion motivation for each excluded study was shown in Table S1 (supplementary materials). The remaining 22 publications were included in the systematic review (qualitative analysis). From those 22 publications, 11 studies included the ratios between RANKL/OPG and OPG/RANKL (qualitative analysis) and 9 publications composed the meta-analyses (quantitative analysis).

Fig. 1
figure 1

Flow chart of the search strategy of the study

Qualitative analysis

For quality assessment analysis, all case–control studies (12 studies) were considered as high quality (Table 2). Concerning cross-sectional studies (10 studies), all studies was classified with low risk of bias for domains 1, 3 and 6. For domain 2 (confounding variable presence), seven studies were classified as high risk of bias and three studies as low risk of bias. For domain 4, only one study described information about outcome assessment blinding (Table 3).

Table 2 Quality assessment of the case–control studies using the Newcastle Ottawa scale
Table 3 Quality assessment of the cross-sectional studies using the non-randomized studies scale

Tables S2-S19 (supplementary materials) support the systematic review which utilized qualitative analysis. Data from each study is summarized presented, only intending to show the levels of pro-and anti-inflammatory cytokines (IL-1 and IL-10; IL-6 and IL-10) and osteoclastogenesis-related factors (RANKL and OPG) in a tissue sample (gene expression) and biofluids (protein measurement). No studies evaluating the mediators in blood were found. Because the methodologies to assess protein measurement are different, these tables did not intend to compare the methods, but just to widely present the reported levels of the peri-implantitis modulators. Table S20 (supplementary materials) reports the data extracted about the limitations and funding data of included studies.

Findings of the IL-1 and IL-10 levels

For IL-1β and IL-10 levels, all studies included in qualitative analysis evaluated both cytokines only in PICF (Table 4; Tables S2-S4). Higher levels of both cytokines were found in individuals with mucositis [21, 41] and peri-implantitis in comparison to healthy individuals [8, 21, 40] (Table 4; Tables S2 and S3). One study showed higher IL-1β levels and lower levels of IL-10 in individuals with mucositis and peri-implantitis in comparison to healthy [27] (Table 4; Tables S2 and S3). Comparing mucositis and peri-implantitis, three studies showed higher IL-1β levels and lower levels of IL-10 in peri-implantitis individuals [21, 27, 39] (Table 4; Table S4). One study showed lower levels of both cytokines in peri-implantitis individuals [33] (Table 4; Table S4).

Table 4 Summarized findings of qualitative analysis (systematic review) for IL-1 versus IL-10, IL-6 versus IL-10, IL-1 versus IL-1Ra, and RANKL versus OPG

Findings of the IL-1 and IL-Ra levels

For IL-1β and IL-Ra levels, only one study [47] was included and observed higher levels of IL-1β and lower levels of IL-Ra in PICF of individuals with peri-implantitis in comparison to healthy individuals (Table 4; Table S5).

Findings of the IL-6 and IL-10 levels

Higher IL-6 and IL-10 levels in PICF of individuals with mucositis in comparison to healthy individuals were observed [4, 21] (Table 4; Table S6). Three studies also showed higher IL-6 and IL-10 levels in PICF of individuals with peri-implantitis in comparison with healthy individuals [4, 8, 21] (Table 4; Table S7). Contrariwise, two studies observed higher IL-6 levels and lower levels of IL-10 in peri-implantitis in comparison to healthy individuals [39, 48] (Table 4; Table S7). Comparing mucositis and peri-implantitis, three studies were included and showed lower levels of IL-10 in peri-implantitis subjects [4, 21, 33] (Table 4; Table S8).

Considering the evaluation in the saliva, higher levels of IL-6 and IL-10 were found in individuals with mucositis in comparison to healthy individuals [4] (Table 4; Table S9). Higher levels of IL-6 and lower levels of IL-10 were found in peri-implantitis individuals in comparison to mucositis and healthy individuals [4] (Table 4; Table S10 and S11).

Findings of the RANKL and OPG levels

In general, the studies showed higher levels of RANKL and OPG in PICF of individuals with mucositis [37, 41, 42, 46] and peri-implantitis [36, 43,44,45,46, 49] in comparison to healthy individuals (Table 4; Tables S12 e S13). Seven studies compared RANKL and OPG levels in PICF of individuals with mucositis and peri-implantitis [34, 36,37,38, 42, 44, 46] (Table 4; Table S14); from them, six studies [34, 38, 42, 44] found higher levels of RANKL in peri-implantitis individuals. For OPG, higher levels in peri-implantitis individuals were observed in two studies [34, 44] and lower levels in peri-implantitis individuals were found in five studies [36,37,38, 42, 46].

For tissue samples obtained from peri-implant pocket sites, higher levels of RANKL were found in individuals with peri-implant mucositis [28] and peri-implantitis compared with healthy individuals (Table 4; Tables S15 and S16). For OPG, lower levels were found in individuals with mucositis [28] and peri-implantitis [28, 40] in comparison to healthy individuals (Table 4; Tables S15 and S16). Higher levels of RANKL and OPG were found in individuals with peri-implantitis in comparison to mucositis individuals [28] (Table 4; Table S18). Only one study [28] divided the tissue samples in healthy, mucositis, initial peri-implantitis (involving four threads) and severe peri-implantitis (involving more than four threads). Severe peri-implantitis individuals showed higher levels of RANKL and OPG in comparison to health and mucositis individuals (Tables S17 and S19).

Findings of ratios between osteoclastogenesis-related factors

Higher RANKL/OPG ratios were observed in PICF from individuals with mucositis [36, 44, 46] and peri-implantitis [35, 36, 40, 43,44,45,46, 49] in comparison to healthy individuals (Table 5). Also, higher RANKL/OPG ratio levels were showed in PICF from individuals with peri-implantitis in comparison to mucositis individuals [44, 46] (Table 5).

Table 5 RANKL: OPG and OPG: RANKL ratio in peri-implant crevicular fluid and tissue samples from mucositis, peri-implantitis, and health patients

In the different analyses of the OPG/RANKL ratio, lower levels were observed in PICF from individuals with mucositis and peri-implantitis in comparison to healthy individuals [38] and individuals with peri-implantitis in comparison to mucositis [38] (Table 5). For tissue samples, one study [28] found a lower OPG/RANKL ratio in peri-implantitis individuals in comparison to healthy individuals (Table 5).

Meta-analysis

Figure 2 show the meta-analysis results in which no significant differences were found in the IL-1 and IL-10 levels in PICF of mucositis individuals in comparison to healthy controls. Higher levels of RANKL were found in PICF of mucositis and peri-implantitis individuals in comparison to healthy controls in studies with (Fig. 3A and 4A) and without measure unit conversion (Fig. 3B and 4B). However, no differences were observed for OPG levels in PICF of mucositis and peri-implantitis individuals in comparison to healthy controls in studies with (Fig. 3A and 4A) and without measure unit conversion (Fig. 3B and 4B). For peri-implantitis individuals in comparison to mucositis, higher levels of RANKL were found in individuals with peri-implantitis considering only the studies without measure unit conversion (Fig. 5B). For the other analysis, no differences were observed for RANKL and OPG levels in PICF of peri-implantitis individuals in comparison to mucositis (Fig. 5).

Fig. 2
figure 2

Meta-analyses forest plots of IL-1 and IL-10 levels in PICF found by ELISA (pg/mL) in individuals with mucositis in comparison with controls

Fig. 3
figure 3

Meta-analyses forest plots of RANKL and OPG levels in PICF found by ELISA (pg/mL) in individuals with mucositis in comparison with controls. A: Including studies with measure unit conversion; B: Without studies with measure unit conversion

Fig. 4
figure 4

Meta-analyses forest plots of RANKL and OPG levels in PICF found by ELISA (pg/mL) in individuals with peri-implantitis in comparison with controls. A: Including studies with measure unit conversion; B: Without studies with measure unit conversion

Fig. 5
figure 5

Meta-analyses forest plots of RANKL and OPG levels in PICF found by ELISA (pg/mL) in individuals with peri-implantitis in comparison with mucositis. A: Including studies with measure unit conversion; B: Without studies with measure unit conversion

Discussion

Even though several studies investigated the peri-implant disease process, the association between pro and anti-inflammatory cytokines and osteoclastogenesis-related factors in healthy and diseased individuals seems to be still uncertain. Pro-inflammatory cytokines appear to stimulate a disproportionate inflammatory response that prejudices osseointegration success [27, 54]. The pro-inflammatory cytokines should be regulated by anti-inflammatory mediators, such as the IL-10, in an orchestrated and balanced way to adequately promote osseointegration [27]. Therefore, it seems reasonable to evaluate whether there would be disequilibrium between pro and anti-inflammatory cytokines, as well as between osteoclastogenesis-related factors, with the predominance of pro-inflammatory mediators, which could trigger a destructive reaction affecting the peri-implant disease progression and severity [27, 28]. Hence, we developed this systematic review with meta-analysis to better understand the complex networks of mediators involved in the inflammatory peri-implant disease pathogenesis.

In this meta-analysis, no differences were found in the IL-1β and IL-10 levels in PICF of individuals with mucositis in comparison to healthy individuals. Unlike, higher levels of both cytokines were found in individuals with peri-implantitis in comparison to healthy individuals [8, 40] in the qualitative analysis. This result is expected based on the role of IL-1 and IL-10 in the host's immune response. IL-1β production induces the release of a cascade of inflammatory mediators that result in soft and hard tissue destruction [27]. It has been shown that IL-1 plays an important role in the bone resorption associated with periodontitis inflammation by stimulating osteoclastogenesis [55, 56]. On the other hand, IL-10 acts suppressing macrophage activation and the production of the pro-inflammatory cytokines including TNF, IL-6 and IL-1 [55, 57,58,59]. In this way, IL-10 can act limiting the duration and magnitude of the immune and inflammatory responses [60,61,62].

In the same cascade way, the IL-6 production up-regulates the IL-1β and TNF-α production that may produce an inflammation amplification loop [63, 64] with a subsequent increase of RANKL expression [63], leading to increased bone resorption [48]. In the qualitative analysis, higher IL-6 levels in PICF and saliva of individuals with mucositis and peri-implantitis in comparison to health individuals were observed. Unlike, in general, the IL-10 levels in PICF and saliva were reduced in peri-implantitis disease in comparison to health and mucositis status. Collectively, these results suggest that the lower IL-10 levels in peri-implantitis individuals result in higher IL-6 cytokines levels potentially promoting a destructive inflammatory response around dental implants.

As revised by Cavalla, Letra [65], proinflammatory cytokines directly modulate RANKL and OPG expression and consequently drive inflammatory lesion progression, along with pro-osteoclastogenic support provided by T and B cells. It is known that the RANKL binds directly to RANK on the surface of preosteoclasts and osteoclasts, stimulating both the differentiation of osteoclast progenitors and the activity of mature osteoclasts [66, 67]. Conversely, OPG is a soluble molecule inhibiting osteoclast differentiation [34]. In both qualitative and quantitative analysis, higher RANKL levels were observed in PICF of peri-implantitis individuals in comparison to health and peri-implant mucositis in the present review. Therefore, based on the studies included in this review, it can be speculated that local upregulation of IL-1β, IL-6 and RANKL levels are linked with the local signs of inflammation in peri-implant tissues since they increase the osteoclast differentiation pathway. In addition, a higher RANKL/OPG ratio (as well as a lower OPG/RANKL ratio) was also observed in the PICF of peri-implantitis individuals in comparison to health and peri-implant mucositis. The results observed by the analyses of ratio levels suggested upregulation of RANKL and down-regulation of OPG, favoring the peri-implant bone resorption [28]. Also, up-regulated RANKL/OPG ratio was previously described in osteoblastic cells and periodontal ligament cells in response to immune cell-derived inflammatory cytokines and bacterial components [32].

Histopathology differences between periodontitis and peri-implantitis lesions are well accepted. Peri-implantitis inflammatory lesions are characteristically larger, with a higher density of plasma cells, neutrophils, and macrophages [68]. As a consequence, peri-implantitis is commonly identified to be more destructive than periodontitis [69] with more rapid progression and less predictable treatment outcomes [68]. A superior quantity of bone resorption has been observed around implants in comparison to natural teeth in experimental peri-implantitis and periodontitis when both disease models were initiated at the same time [70, 71]. According to Liu, Liu [72], the higher RANKL/ OPG ratio in peri-implantitis might contribute to the faster rate of bone resorption observed in peri-implantitis progression in comparison to periodontitis, suggesting that the proinflammatory cytokine-mediated bone resorption is relatively more central.

Most of the included studies evaluated the mediators’ levels in PICF. PICF is a serum derivate transude in health or exudate in disease which is located in the peri-implant crevice. It reproduces the degree of inflammatory reaction in peri-implant tissues [49]. According to Casado, Canullo [27], the PICF is in close contact with the bone/implant interface and can reproduce the real immunological events that occur in peri-implant tissue. Noteworthy, in this review, higher IL-1β, IL-6 and RANKL/OPG ratio levels were observed in the PICF of peri-implant mucositis individuals in comparison to healthy individuals. The establishment of an early diagnosis is essential to peri-implantitis prevention since peri-implant mucositis represents the precursor of peri-implantitis [73, 74]. Therefore, the analysis of these modulators in PICF may offer a non-invasive advanced diagnostic method useful for early peri-implant mucositis diagnosis. Further studies focused on these modulators are necessary to confirm these findings. In agreement, lower proinflammatory cytokines (IL-1β and IL-6) and RANKL/OPG ratio were observed in peri-implant mucositis individuals in comparison to peri-implantitis individuals; this could be due to the lower peri-implant mucositis severity compared to peri-implantitis [75].

The main limitations of this review are associated with the quantitative analysis (meta-analysis). Despite the efforts to select high-quality studies comprising with the high comparable aspects possible, high heterogeneity was found between the included studies. The high heterogeneity could be minimized whether there would be studies in the literature with similar criteria to classify an individual as diseased or healthy. Moreover, three studies had their data converted to pg/ml to be included in the meta-analysis. Moreover, unfortunately, few studies evaluating both IL-1β/IL-10, IL-1β/IL-1Ra and IL-6/IL-10 were found in the literature and no studies including the ratio between these cytokines were found. In addition, more studies evaluating these mediators enrolling a larger number of individuals need to be developed to enforce the data shown in the present review.

The challenge for future meta-analyses studies is to find studies designed as similar as possible regarding clinical parameters used for the utilized sampling, selecting patients and the unit of cytokine measurement. Following the new classification of periodontal and peri-implant diseases and conditions published in 2018, the diagnosis of peri-implantitis involves the presence of bleeding and/or suppuration after gentle probing, probing depths of ≥ 6 mm and bone levels ≥ 3 mm apical of the most coronal portion of the intraosseous part of the implant [5].

Summarizing, the present review showed strong evidence that IL-1β, IL-6, IL-10 and RANKL/OPG act in networks in the pathophysiology of peri-implant disease. Increased awareness of peri-implant inflammatory response against microbial infection is important for new therapeutic strategies establishment, as adjuncts for anti-infectious therapies, to modulate the host response [28]. Moreover, the investigation of the inflammatory mediators’ levels has been suggested to detect active sites with peri-implantitis, which may be an instrument for early diagnosis and prevention of this disease [48, 76]. Early diagnosis of peri-implant diseases, mainly the peri-implant mucositis, avoids the need for surgical treatment, thus increasing treatment success with better cost-effectiveness [46].

In conclusion, this systematic review and meta-analysis study showed higher pro-inflammatory (IL-1β, IL-6) and pro-osteoclastogenic (RANKL) levels in PICF of individuals with peri-implant diseases in comparison to healthy individuals. Considering the RANKL/OPG ratio, it was also found a higher level of RANKL and a lower level of OPG in PICF of individuals with peri-implant diseases.

Availability of data and materials

The datasets used and/or analyzed during the current study are available from the corresponding author on reasonable request.

References

  1. Adell R, Lekholm U, Rockler B, Branemark PI. A 15-year study of osseointegrated implants in the treatment of the edentulous jaw. Int J Oral Surg. 1981;10(6):387–416.

    Article  PubMed  Google Scholar 

  2. Collaert B, De Bruyn H. Immediate functional loading of TiOblast dental implants in full-arch edentulous maxillae: a 3-year prospective study. Clin Oral Implants Res. 2008;19(12):1254–60.

    Article  PubMed  Google Scholar 

  3. Misch CE, Perel ML, Wang HL, Sammartino G, Galindo-Moreno P, Trisi P, et al. Implant success, survival, and failure: the International Congress of Oral Implantologists (ICOI) Pisa consensus conference. Implant Dent. 2008;17(1):5–15.

    Article  PubMed  Google Scholar 

  4. Severino VO, Beghini M, de Araújo MF, de Melo MLR, Miguel CB, Rodrigues WF, et al. Expression of IL-6, IL-10, IL-17 and IL-33 in the peri-implant crevicular fluid of patients with peri-implant mucositis and peri-implantitis. Arch Oral Biol. 2016;72:194–9.

    Article  PubMed  Google Scholar 

  5. Berglundh T, Armitage G, Araujo MG, Avila-Ortiz G, Blanco J, Camargo PM, et al. Peri-implant diseases and conditions: consensus report of workgroup 4 of the 2017 world workshop on the classification of periodontal and peri-implant diseases and conditions. J Periodontol. 2018;89(Suppl 1):S313–8.

    Article  PubMed  Google Scholar 

  6. Derks J, Tomasi C. Peri-implant health and disease A systematic review of current epidemiology. J Clin Periodontol. 2015;42(Suppl 16):S158-71.

    Article  PubMed  Google Scholar 

  7. Montes CC, Alvim-Pereira F, de Castilhos BB, Sakurai ML, Olandoski M, Trevilatto PC. Analysis of the association of IL1B (C+3954T) and IL1RN (intron 2) polymorphisms with dental implant loss in a Brazilian population. Clin Oral Implants Res. 2009;20(2):208–17.

    Article  PubMed  Google Scholar 

  8. Ata-Ali J, Flichy-Fernandez AJ, Alegre-Domingo T, Ata-Ali F, Palacio J, Penarrocha-Diago M. Clinical, microbiological, and immunological aspects of healthy versus peri-implantitis tissue in full arch reconstruction patients: a prospective cross-sectional study. BMC Oral Health. 2015;15:43.

    Article  PubMed  PubMed Central  Google Scholar 

  9. Chaplin DD. 1. Overview of the human immune response. J Allergy Clin Immunol. 2006;117(2 Suppl Mini-Primer):430–5.

    Article  Google Scholar 

  10. Medzhitov R. Recognition of microorganisms and activation of the immune response. Nature. 2007;449(7164):819–26.

    Article  PubMed  Google Scholar 

  11. Weitzmann MN, Pacifici R. The role of T lymphocytes in bone metabolism. Immunol Rev. 2005;208:154–68.

    Article  PubMed  Google Scholar 

  12. Seymour GJ, Gemmell E. Cytokines in periodontal disease: where to from here? Acta Odontol Scand. 2001;59(3):167–73.

    Article  PubMed  Google Scholar 

  13. Wajant H, Pfeffer K, Pfizenmaier K, Scheurich P. Tumor necrosis factors in 1998. Cytokine Growth Factor Rev. 1998;9(3–4):297–302.

    PubMed  Google Scholar 

  14. Boyce BF, Li P, Yao Z, Zhang Q, Badell IR, Schwarz EM, et al. TNF-alpha and pathologic bone resorption. Keio J Med. 2005;54(3):127–31.

    Article  PubMed  Google Scholar 

  15. Gately MK, Renzetti LM, Magram J, Stern AS, Adorini L, Gubler U, et al. The interleukin-12/interleukin-12-receptor system: role in normal and pathologic immune responses. Annu Rev Immunol. 1998;16:495–521.

    Article  PubMed  Google Scholar 

  16. Offenbacher S, Heasman PA, Collins JG. Modulation of host PGE (2) secretion as a determinant of periodontal disease expression. J Periodontol. 1993;64(Suppl 5S):432–44.

    PubMed  Google Scholar 

  17. Masada MP, Persson R, Kenney JS, Lee SW, Page RC, Allison AC. Measurement of interleukin-1 alpha and -1 beta in gingival crevicular fluid: implications for the pathogenesis of periodontal disease. J Periodontal Res. 1990;25(3):156–63.

    Article  PubMed  Google Scholar 

  18. Offenbacher S, Odle BM, Van Dyke TE. The use of crevicular fluid prostaglandin E2 levels as a predictor of periodontal attachment loss. J Periodontal Res. 1986;21(2):101–12.

    Article  PubMed  Google Scholar 

  19. Uyttenhove C, Coulie PG, Van Snick J. T cell growth and differentiation induced by interleukin-HP1/IL-6, the murine hybridoma/plasmacytoma growth factor. J Exp Med. 1988;167(4):1417–27.

    Article  PubMed  Google Scholar 

  20. Beagley KW, Eldridge JH, Lee F, Kiyono H, Everson MP, Koopman WJ. nterleukins and IgA synthesis. Human and murine interleukin 6 induce high rate IgA secretion in IgA-committed B cells. J Exp Med. 1989;169(6):2133–48.

    Article  PubMed  Google Scholar 

  21. Kandaswamy E, Sakulpaptong W, Guo X, Ni A, Powell HM, Tatakis DN, et al. Titanium as a possible modifier of inflammation around dental implants. Int J Oral Maxillofac Implants. 2022;37(2):381–90.

    Article  PubMed  Google Scholar 

  22. te Velde AA, Huijbens RJ, Heije K, de Vries JE, Figdor CG. Interleukin-4 (IL-4) inhibits secretion of IL-1 beta, tumor necrosis factor alpha, and IL-6 by human monocytes. Blood. 1990;76(7):1392–7.

    Article  Google Scholar 

  23. Fiorentino DF, Zlotnik A, Mosmann TR, Howard M, O’Garra A. Pillars article: IL-10 Inhibits cytokine production by activated macrophages. J. Immunol. 1991. 147: 3815–3822. J Immunol. 2016;197(5):1539–46.

  24. Chernoff AE, Granowitz EV, Shapiro L, Vannier E, Lonnemann G, Angel JB, et al. A randomized, controlled trial of IL-10 in humans. Inhibition of inflammatory cytokine production and immune responses. J Immunol. 1995;154(10):5492–9.

    Article  PubMed  Google Scholar 

  25. Fiorentino DF, Zlotnik A, Mosmann TR, Howard M, O’Garra A. IL-10 inhibits cytokine production by activated macrophages. J Immunol. 1991;147(11):3815–22.

  26. Rousset F, Garcia E, Defrance T, Peronne C, Vezzio N, Hsu DH, et al. Interleukin 10 is a potent growth and differentiation factor for activated human B lymphocytes. Proc Natl Acad Sci U S A. 1992;89(5):1890–3.

    Article  PubMed  PubMed Central  Google Scholar 

  27. Casado PL, Canullo L, de Almeida FA, Granjeiro JM, Barboza EP, Leite Duarte ME. Interleukins 1beta and 10 expressions in the periimplant crevicular fluid from patients with untreated periimplant disease. Implant Dent. 2013;22(2):143–50.

    Article  PubMed  Google Scholar 

  28. Duarte PM, De Mendonça AC, Máximo MBB, Santos VR, Bastos MF, Nociti Júnior FH. Differential cytokine expressions affect the severity of peri-implant disease. Clin Oral Implant Res. 2009;20(5):514–20.

    Article  Google Scholar 

  29. Yasuda H, Shima N, Nakagawa N, Yamaguchi K, Kinosaki M, Mochizuki S, et al. Osteoclast differentiation factor is a ligand for osteoprotegerin/osteoclastogenesis-inhibitory factor and is identical to TRANCE/RANKL. Proc Natl Acad Sci U S A. 1998;95(7):3597–602.

    Article  PubMed  PubMed Central  Google Scholar 

  30. Boyle WJ, Simonet WS, Lacey DL. Osteoclast differentiation and activation. Nature. 2003;423(6937):337–42.

    Article  PubMed  Google Scholar 

  31. Troen BR. Molecular mechanisms underlying osteoclast formation and activation. Exp Gerontol. 2003;38(6):605–14.

    Article  PubMed  Google Scholar 

  32. Tsukasaki M, Takayanagi H. Osteoimmunology: evolving concepts in bone-immune interactions in health and disease. Nat Rev Immunol. 2019;19(10):626–42.

    Article  PubMed  Google Scholar 

  33. Teixeira MKS, Lira-Junior R, Telles DM, Lourenço EJV, Figueredo CM. Th17-related cytokines in mucositis: is there any difference between peri-implantitis and periodontitis patients? Clin Oral Implant Res. 2017;28(7):816–22.

    Article  Google Scholar 

  34. Arıkan F, Buduneli N, Kütükçüler N. Osteoprotegerin levels in peri-implant crevicular fluid. Clin Oral Implant Res. 2008;19(3):283–8.

    Article  Google Scholar 

  35. Arikan F, Buduneli N, Lappin DF. C-telopeptide pyridinoline crosslinks of type I collagen, soluble RANKL, and osteoprotegerin levels in crevicular fluid of dental implants with peri-implantitis: a case-control study. Int J Oral Maxillofac Implants. 2011;26(2):282–9.

    PubMed  Google Scholar 

  36. Chaparro A, Sanz A, Wolnitzky A, Realini O, Bendek MJ, Betancur D, et al. Lymphocyte B and Th17 chemotactic cytokine levels in peri-implant crevicular fluid of patients with healthy, peri-mucositis, and peri-implantitis implants. J Oral Res 2020;S1(1):20–5.

  37. Chaparro A, Beltran V, Betancur D, Sam YH, Moaven H, Tarjomani A, et al. Molecular biomarkers in peri-implant health and disease: a cross-sectional pilot study. Int J Mol Sci. 2022;23(17):9802.

    Article  PubMed  PubMed Central  Google Scholar 

  38. Duarte PM, de Mendonça AC, Máximo MBB, Santos VR, Bastos MF, Nociti FH Jr. Effect of anti-infective mechanical therapy on clinical parameters and cytokine levels in human peri-implant diseases. J Periodontol. 2009;80(2):234–43.

    Article  PubMed  Google Scholar 

  39. Fonseca FJ, Moraes Junior M, Lourenco EJ, Teles Dde M, Figueredo CM. Cytokines expression in saliva and peri-implant crevicular fluid of patients with peri-implant disease. Clin Oral Implant Res. 2014;25(2):e68-72.

    Article  Google Scholar 

  40. Ghighi M, Llorens A, Baroukh B, Chaussain C, Bouchard P, Gosset M. Differences between inflammatory and catabolic mediators of peri-implantitis and periodontitis lesions following initial mechanical therapy: an exploratory study. J Periodontal Res. 2018;53(1):29–39.

    Article  PubMed  Google Scholar 

  41. Guncu GN, Akman AC, Gunday S, Yamalik N, Berker E. Effect of inflammation on cytokine levels and bone remodelling markers in peri-implant sulcus fluid: a preliminary report. Cytokine. 2012;59(2):313–6.

    Article  PubMed  Google Scholar 

  42. Milinkovic I, Djinic Krasavcevic A, Nikolic N, Aleksic Z, Carkic J, Jezdic M, et al. Notch down-regulation and inflammatory cytokines and RANKL overexpression involvement in peri-implant mucositis and peri-implantitis: a cross-sectional study. Clin Oral Implant Res. 2021;32(12):1496–505.

    Article  Google Scholar 

  43. Rakic M, Lekovic V, Nikolic-Jakoba N, Vojvodic D, Petkovic-Curcin A, Sanz M. Bone loss biomarkers associated with peri-implantitis. A cross-sectional study. Clin Oral Implants Res. 2013;24(10):1110–6.

    Article  PubMed  Google Scholar 

  44. Rakic M, Struillou X, Petkovic-Curcin A, Matic S, Canullo L, Sanz M, et al. Estimation of bone loss biomarkers as a diagnostic tool for peri-implantitis. J Periodontol. 2014;85(11):1566–74.

    Article  PubMed  Google Scholar 

  45. Rakic M, Petkovic-Curcin A, Struillou X, Matic S, Stamatovic N, Vojvodic D. CD14 and TNFα single nucleotide polymorphisms are candidates for genetic biomarkers of peri-implantitis. Clin Oral Invest. 2015;19(4):791–801.

    Article  Google Scholar 

  46. Rakic M, Monje A, Radovanovic S, Petkovic-Curcin A, Vojvodic D, Tatic Z. Is the personalized approach the key to improve clinical diagnosis of peri-implant conditions? The role of bone markers. J Periodontol. 2020;91(7):859–69.

    Article  PubMed  Google Scholar 

  47. Song L, Jiang J, Li J, Zhou C, Chen Y, Lu H, et al. The characteristics of microbiome and cytokines in healthy implants and peri-implantitis of the same individuals. J Clin Med. 2022;11(19):5817.

    Article  PubMed  PubMed Central  Google Scholar 

  48. Severino VO, Napimoga MH, de Lima Pereira SA. Expression of IL-6, IL-10, IL-17 and IL-8 in the peri-implant crevicular fluid of patients with peri-implantitis. Arch Oral Biol. 2011;56(8):823–8.

    Article  PubMed  Google Scholar 

  49. Yakar N, Guncu GN, Akman AC, Pınar A, Karabulut E, Nohutcu RM. Evaluation of gingival crevicular fluid and peri-implant crevicular fluid levels of sclerostin, TWEAK RANKL and OPG. Cytokine. 2019;113:433–9.

    Article  PubMed  Google Scholar 

  50. Wells GA, Shea B, O’Connell D, Peterson J, Welch V, Losos M, et al. The Newcastle-Ottawa Scale (NOS) for assessing the quality of non randomised studies in meta analysis. https://www.ohri.ca/programs/clinical_epidemiology/oxford.asp. Acessed 02 June 2023.

  51. Kim SY, Park JE, Lee YJ, Seo HJ, Sheen SS, Hahn S, et al. Testing a tool for assessing the risk of bias for nonrandomized studies showed moderate reliability and promising validity. J Clin Epidemiol. 2013;66(4):408–14.

    Article  PubMed  Google Scholar 

  52. Finoti LS, Nepomuceno R, Pigossi SC, Corbi SC, Secolin R, Scarel-Caminaga RM. Association between interleukin-8 levels and chronic periodontal disease: A PRISMA-compliant systematic review and meta-analysis. Medicine. 2017;96(22): e6932.

    Article  PubMed  PubMed Central  Google Scholar 

  53. Kwon A, Kwak BO, Kim K, Ha J, Kim SJ, Bae SH, et al. Cytokine levels in febrile seizure patients: a systematic review and meta-analysis. Seizure. 2018;59:5–10.

    Article  PubMed  Google Scholar 

  54. Moheng P, Feryn JM. Clinical and biologic factors related to oral implant failure: a 2-year follow-up study. Implant Dent. 2005;14(3):281–8.

    Article  PubMed  Google Scholar 

  55. Ari VC, Ilarslan YD, Erman B, Sarkarati B, Tezcan I, Karabulut E, et al. Statins and IL-1 beta, IL-10, and MPO levels in gingival crevicular fluid: preliminary results. Inflammation. 2016;39(4):1547–57.

    Article  Google Scholar 

  56. Stashenko P, Jandinski JJ, Fujiyoshi P, Rynar J, Socransky SS. Tissue levels of bone resorptive cytokines in periodontal disease. J Periodontol. 1991;62(8):504–9.

    Article  PubMed  Google Scholar 

  57. Moore KW, O’garra A, Malefyt RD, Vieira P, Mosmann TR. Interleukin-10. Ann Rev Immunol. 1993;11(1):165–90.

    Article  Google Scholar 

  58. Cassatella MA, Meda L, Bonora S, Ceska M, Constantin G. Interleukin 10 (IL-10) inhibits the release of proinflammatory cytokines from human polymorphonuclear leukocytes. Evidence for an autocrine role of tumor necrosis factor and IL-1 beta in mediating the production of IL-8 triggered by lipopolysaccharide. J Exp Med. 1993;178(6):2207–11.

    Article  PubMed  Google Scholar 

  59. Mastromatteo-Alberga P, Escalona LA, Correnti M. Cytokines and MMPs levels in gingival crevicular fluid from patients with chronic periodontitis before and after non-surgical periodontal therapy. J Oral Res. 2018;7(3):98–101.

    Article  Google Scholar 

  60. Escalona LA, Mastromatteo-Alberga P, Correnti M. Cytokine and metalloproteinases in gingival fluid from patients with chronic periodontitis. Invest Clin (Venezuela). 2016;57(2):131–42.

    Google Scholar 

  61. Garlet G. Destructive and protective roles of cytokines in periodontitis: a re-appraisal from host defense and tissue destruction viewpoints. J Dent Res. 2010;89(12):1349–63.

    Article  PubMed  Google Scholar 

  62. Pestka S, Krause CD, Sarkar D, Walter MR, Shi Y, Fisher PB. Interleukin-10 and related cytokines and receptors. Annu Rev Immunol. 2004;22:929–79.

    Article  PubMed  Google Scholar 

  63. Beklen A, Ainola M, Hukkanen M, Gürgan C, Sorsa T, Konttinen YT. MMPs, IL-1, and TNF are regulated by IL-17 in periodontitis. J Dent Res. 2007;86(4):347–51.

    Article  PubMed  Google Scholar 

  64. Zhang F, Koyama Y, Sanuki R, Mitsui N, Suzuki N, Kimura A, et al. IL-17A stimulates the expression of inflammatory cytokines via celecoxib-blocked prostaglandin in MC3T3-E1 cells. Arch Oral Biol. 2010;55(9):679–88.

    Article  PubMed  Google Scholar 

  65. Cavalla F, Letra A, Silva RM, Garlet GP. Determinants of periodontal/periapical lesion stability and progression. J Dent Res. 2021;100(1):29–36.

    Article  PubMed  Google Scholar 

  66. Lacey DL, Timms E, Tan HL, Kelley MJ, Dunstan CR, Burgess T, et al. Osteoprotegerin ligand is a cytokine that regulates osteoclast differentiation and activation. Cell. 1998;93(2):165–76.

    Article  PubMed  Google Scholar 

  67. Hsu H, Lacey DL, Dunstan CR, Solovyev I, Colombero A, Timms E, et al. Tumor necrosis factor receptor family member RANK mediates osteoclast differentiation and activation induced by osteoprotegerin ligand. Proc Natl Acad Sci U S A. 1999;96(7):3540–5.

    Article  PubMed  PubMed Central  Google Scholar 

  68. Carcuac O, Berglundh T. Composition of human peri-implantitis and periodontitis lesions. J Dent Res. 2014;93(11):1083–8.

    Article  PubMed  PubMed Central  Google Scholar 

  69. Berglundh T, Zitzmann NU, Donati M. Are peri-implantitis lesions different from periodontitis lesions? J Clin Periodontol. 2011;38(Suppl 11):188–202.

    Article  PubMed  Google Scholar 

  70. Tzach-Nahman R, Mizraji G, Shapira L, Nussbaum G, Wilensky A. Oral infection with Porphyromonas gingivalis induces peri-implantitis in a murine model: evaluation of bone loss and the local inflammatory response. J Clin Periodontol. 2017;44(7):739–48.

    Article  PubMed  Google Scholar 

  71. Charalampakis G, Abrahamsson I, Carcuac O, Dahlén G, Berglundh T. Microbiota in experimental periodontitis and peri-implantitis in dogs. Clin Oral Implants Res. 2014;25(9):1094–8.

    Article  PubMed  Google Scholar 

  72. Liu Y, Liu Q, Li Z, Acharya A, Chen D, Chen Z, et al. Long non-coding RNA and mRNA expression profiles in peri-implantitis vs periodontitis. J Periodontal Res. 2020;55(3):342–53.

    Article  PubMed  Google Scholar 

  73. Ata-Ali J, Flichy-Fernandez AJ, Ata-Ali F, Penarrocha-Diago M, Penarrocha-Diago M. Clinical, microbiologic, and host response characteristics in patients with peri-implant mucositis. Int J Oral Maxillofac Implants. 2013;28(3):883–90.

    Article  PubMed  Google Scholar 

  74. Lang NP, Mombelli A, Tonetti MS, Brägger U, Hämmerle CH. Clinical trials on therapies for peri-implant infections. Ann Periodontol. 1997;2(1):343–56.

    Article  PubMed  Google Scholar 

  75. Berglundh T, Persson L, Klinge B. A systematic review of the incidence of biological and technical complications in implant dentistry reported in prospective longitudinal studies of at least 5 years. J Clin Periodontol. 2002;29(Suppl 3):197–212 (discussion 32-3).

    Article  PubMed  Google Scholar 

  76. Petković AB, Matić SM, Stamatović NV, Vojvodić DV, Todorović TM, Lazić ZR, et al. Proinflammatory cytokines (IL-1beta and TNF-alpha) and chemokines (IL-8 and MIP-1alpha) as markers of peri-implant tissue condition. Int J Oral Maxillofac Surg. 2010;39(5):478–85.

    Article  PubMed  Google Scholar 

Download references

Acknowledgements

Not applicable.

Funding

Not applicable.

Author information

Authors and Affiliations

Authors

Contributions

JAO: studies search, studies selection, data extraction and quality assessment;ROA: studies search, studies selection, data extraction and quality assessment;IMN: studies search, studies selection, data extraction and quality assessment;MARH: data synthesis – meta-analysis; RMSC: study design, studies selection, data synthesis – meta-analysis and write the article;SCP: study design, studies search, studies selection, data extraction, quality assessment and write the article. All authors read and approved the final manuscript.

Corresponding author

Correspondence to Suzane Cristina Pigossi.

Ethics declarations

Ethics approval and consent to participate

Not applicable.

Consent for publication

Not applicable.

Competing interests

The authors declare no competing interests.

Additional information

Publisher’s Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Supplementary Information

Additional file 1.

Supplementary materials – Search strategy.

Additional file 2:

Table S1. Excluded studies with exclusion reasons after full-text assessment.

Additional file 3:

Table S2. Qualitative analysis of studies which focused on: IL-1β versus IL-10 in peri-implant crevicular fluid; Control versus Mucositis. Table S3. Qualitative analysis of studies which focused on: IL-1β versus IL-10 in peri-implant crevicular fluid; Control versus Peri-implantitis. Table S4. Qualitative analysis of studies which focused on: IL-1β versus IL-10 in peri-implantar crevicular fluid; Mucositis versus Peri-implantitis. Table S5. Qualitative analysis of studies which focused on: IL-1 versus IL-1Ra in saliva; Control versus Peri-implantitis. Table S6. Qualitative analysis of studies which focused on: IL-6 versus IL-10 in peri-implant crevicular fluid; Control versus Mucositis. Table S7. Qualitative analysis of studies which focused on: IL-6 versus IL-10 in peri-implant crevicular fluid; Control versus Peri-implantitis. Table S8. Qualitative analysis of studies which focused on: IL-6 versus IL-10 in peri-implant crevicular fluid; Mucositis versus Peri-implantitis. Table S9. Qualitative analysis of studies which focused on: IL-6 versus IL-10 in saliva; Control versus Mucositis. Table S10. Qualitative analysis of studies which focused on: IL-6 versus IL-10 in saliva; Control versus Peri-implantitis. Table S11. Qualitative analysis of studies which focused on: IL-6 versus IL-10 in saliva; Mucositis versus Peri-implantitis. Table S12. Qualitative analysis of studies which focused on: RANKL versus OPG in peri-implant crevicular fluid; Control versus Mucositis. Table S13. Qualitative analysis of studies which focused on: RANKL versus OPG in peri-implant crevicular fluid; Control versus Peri-implantitis. Table S14. Qualitative analysis of studies which focused on: RANKL versus OPG in peri-implant crevicular fluid; Mucositis versus Peri-implantitis. Table S15. Qualitative analysis of studies which focused on: RANKL versus OPG in tissue sample; Control versus Mucositis. Table S16. Qualitative analysis of studies which focused on: RANKL versus OPG in tissue sample; Control versus Peri-implantitis. Table S17. Qualitative analysis of studies which focused on: RANKL versus OPG in tissue sample; Control versus Peri-implantitis Severe. Table S18. Qualitative analysis of studies which focused on: RANKL versus OPG in tissue sample; Mucositis versus Peri-implantitis. Table S19. Qualitative analysis of studies which focused on: RANKL versus OPG in tissue sample; Mucositis versus Peri-implantitis Severe.

Additional file 4: Table S20

. Datas funding and limitations studies.

Rights and permissions

Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated in a credit line to the data.

Reprints and permissions

About this article

Check for updates. Verify currency and authenticity via CrossMark

Cite this article

Oliveira, J.A., de Oliveira Alves, R., Nascimento, I.M. et al. Pro- and anti-inflammatory cytokines and osteoclastogenesis-related factors in peri-implant diseases: systematic review and meta-analysis. BMC Oral Health 23, 420 (2023). https://doi.org/10.1186/s12903-023-03072-1

Download citation

  • Received:

  • Accepted:

  • Published:

  • DOI: https://doi.org/10.1186/s12903-023-03072-1

Keywords