Literature DB >> 24386167

Reproductive and exogenous hormone factors in relation to risk of meningioma in women: a meta-analysis.

Zhen-Yu Qi1, Chuan Shao1, Yu-Lun Huang1, Guo-Zhen Hui1, You-Xin Zhou1, Zhong Wang1.   

Abstract

BACKGROUND AND
OBJECTIVE: A number of studies have focused on the association between oral contraceptive (OC), hormonal replacement therapy (HRT) and reproductive factors and meningioma risk, but the results were inconsistent. Thus, a meta-analysis was performed to obtain more precise estimates of risk.
METHODS: We conducted a literature search using PubMed and EMBASE databases to July 2013, without any limitations. Random effects models were used to summarize results.
RESULTS: Twelve case-control and six cohort studies were included in this meta-analysis. We found that an increased risk of meningioma was associated with HRT use(RR = 1.19, 95% CI = 1.01-1.40), postmenopausal women(RR = 1.32, 95% CI = 1.07-1.64) and parity(RR = 1.18, 95% CI = 1.00-1.40).No significant associations were observed for OC use (RR = 0.93, 95% CI = 0.83-1.03), age at menarche(RR = 1.06, 95% CI = 0.92-1.21), age at menopause(RR = 1.03, 95% CI = 0.81-1.30), or age at first birth(RR = 0.94, 95% CI = 0.80-1.10).
CONCLUSION: In conclusion, the results of our study support the hypothesis that longer exposure to effect of female sex hormones may increase the risk of meningioma in women, yet additional studies are warranted to confirm our findings and identify the underlying biological mechanisms.

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Mesh:

Year:  2013        PMID: 24386167      PMCID: PMC3873952          DOI: 10.1371/journal.pone.0083261

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

Meningiomas are largely benign tumors, which arise from meningothelial cells of the arachnoid membrane and usually have an extended duration of asymptomatic subclinical disease before presentation to medical attention [1]. The majority of meningiomas are intracranial (around 90%); spinal meningiomas account for about 10% of all meningiomas [2]. Despite decades of research, very little is known about the etiology of meningiomas. The only well-established risk factors, including ionizing radiation and certain rare genetic syndromes, can explain a small proportion of cases [3], [4]. Several other risk factors such as smoking, mobile phone use, head trauma, asthma and occupational exposures, have been suggested as potential risk factors, but the evidence is inconsistent or no definitive conclusion has been drawn [3]–[5]. The incidence of meningioma is about 2 fold higher in women than in men, which implies sex hormones could influence the development and growth of meningioma [5]. Molecular studies have shown progesterone and estrogen receptors are expressed in meningioma in various degrees [6], [7], and progesterone and estrogens together could stimulate the meningioma cells proliferation [8]. Furthermore, some clinical studies reinforced the molecular data: meningioma increases the tumor growth rate during the reproductive life period [9], [10], and an association between meningioma and breast cancer has been reported [11], [12].In recent years, numerous studies have assessed the relationship between meningioma risk and OC, HRT and reproductive factors [13]–[28].However, the results obtained so far were inconsistent and inconclusive. Therefore, a meta-analysis was performed to quantify the effect of OC, HRT and reproductive factors on meningioma incidence.

Methods

Publication Search

PubMed and EMBASE databases were searched with the terms“(“meningioma” OR “brain cancer” OR “brain neoplasms” OR “brain tumor”) AND (“reproductive factors” OR “menstrual factors” OR “age at menarche” OR “menarche” OR “menstruation” OR “parity” OR “gravidity” OR “pregnancy” OR “breastfeeding” OR “miscarriage” OR “abortion” OR “fertility” OR “age at first birth” OR “age at menopause” OR “menopausal status” OR “climacteric” OR “reproductive history” OR “estrogens” OR “sex hormones” OR “ovariectomy” OR “oophorectomy” OR “hysterectomy” OR “sex differences” OR “hormone” OR “exogenous hormones” OR “exogenous hormones use” OR “oral contraceptives” OR “hormone replacement therapy” OR “menopausal hormone therapy”) AND (“risk assessment” OR “risk” OR “risk factors”)”. No restrictions on language or date of publications were imposed. Searches were conducted independently by two reviewers (ZYQ and CS), and the latest search was performed on July 17, 2013.The reference lists of identified articles were also screened for additional studies.

Inclusion criteria

We included studies that met the following inclusion criteria: (1) have cohort or case–control study design; (2) assess the association between OC, HRT, and reproductive factors and meningioma risk; (3) provided ratio (OR),relative risk (RR), or hazard ratio (HR) with corresponding 95% CIs or sufficient data to calculate them; (4) in case of multiple reports of the same study, we selected the most recent publication with the largest number of subjects; (5) we excluded the studies which involved total brain tumors or central nervous system (CNS) tumors, since total brain tumors or CNS tumors contain other types of tumors which are very different from meningioma in a pathological and clinical point of view.

Data extraction

Two authors (ZYQ and CS) independently extracted the following data from each available study: the first author's last name, publication date, country in which performed, study period/follow-up year, age of subjects, study design, number of cases/controls (cohort), methods of data collection and matching or adjustments. Any discrepancies were resolved by discussion.

Statistical analysis

In this meta-analysis, a case-control study nested in a cohort study was considered to be a case-control study. The RR was used as the measure of association across studies. HRs and ORs were directly considered as RRs. We extracted the risk estimates that were adjusted for the greatest number of potential confounders; however, when unavailable, unadjusted RRs were included. The unadjusted RRs were extracted directly from the article or computed from the exposure distributions for cases and controls given in the papers. We used the random rather than fixed-effects model to estimate pooled RRs because in the absence of heterogeneity, the random-effects model exactly equals the fixed-effects model and the results from random-effects model are more conservative [29].Heterogeneity across studies was evaluated by the Q statistic and considered significant when P<0.1[30].We also calculated the I2statistic, which is a quantitative measure of inconsistency across studies. The I2 statistic takes values ranging from 0 to 100% and I2>50% is considered to be indicative of heterogeneity [31].When significant heterogeneity was observed, subgroup analyses were performed according to study design(prospective vs. retrospective) and geographic regions (North America vs. Europe). Potential publication bias was assessed by Egger's regression test and P<0.05 was considered indicative of significant publication bias [32]. Combined risk estimates were calculated for exposure variables that were provided in at least five studies, which included OC, HRT, age at menarche, age at menopause, menopausal status, parity (numbers of live births or full-term pregnancies), and age at first birth. For OC and HRT, the most common definition of exposure among the included studies was “ever use versus never use”. Therefore, this was chosen to be the focus of the main analysis. Seven studies did not provide results for ever versus never use of HRT or OC, but provided the exposure distributions for cases and controls [13], [16], [19], [21], [25], [27], [28]. We calculated the unadjusted risk estimates and used them in our meta-analysis. Concerning reproductive factors, we performed a meta-analysis of the comparison of the highest versus lowest category in each study. For menopausal status, three unadjusted risk estimates[13], [25], [28] were computed and used in our study due to the following reasons: one study used postmenopausal women as the reference group [13], whereas six studies used premenopausal women as the reference group [15], [17]–[19], [25], [28]; the other two studies provided stratified results [25], [28]. For parity (numbers of live births or full-term pregnancies), one study in which parity was defined as the number of pregnancies lasting 6 months or longer [16], was also included in this meta-analysis. Sensitivity analyses were performed to investigate the influence of a single study on the overall risk estimate by excluding one study in each turn. In addition, we conducted an alternative sensitivity analysis which excluded studies that did not adjust for any confounders. All statistical analyses were conducted with the STATA software, version 11.0 (STATA Corporation, College Station, TX, USA).

Results

Literature search

We initially identified 992 potentially eligible studies (416 from PubMed, 576 from EMBASE).8 articles which may be related to the topic were found in article reference lists. Of these1000 studies, 30 records with full text that met the inclusion criteria were assessed. After reading the full-text articles, 12 studies were excluded for the following reasons: two articles have some partially overlapping data [15], [34], and the most recent article was included [15]; two articles did not have available data [35], [36]; eight articles investigated total brain tumor or CNS tumors as subjects [37]–[44]; and one article reported the standardized incidence ratio of meningioma in women who had used postmenopausal hormone therapy [45]. Thus, a final total of 18 studies published from 1995 to 2013 were included in this meta-analysis [13]–[28], [33], [46]. The flow diagram for literature search and selection of articles is presented in Figure 1.
Figure 1

Flow diagram of literature search and selection.

Study characteristics

All studies were published in English. Most of the articles were case-control studies [13]–[15], [17]–[20], [22], [24], [27], [28], [46], whereas six were cohort studies [16], [21], [23], [25], [26], [33]. Studies were conducted in Western countries, which included USA, Australia, Sweden, France, Canada, Finland, Denmark, Germany, Norway, Spain, Italy, Greece, the Netherlands, and the United Kingdom. Of 18 studies, eight studies concerned spinal and intracranial meningioma [14]–[16], , while one only investigated spinal meningioma [13], and nine only involved intracranial meningioma [17], [19], [20], [22], [24], [25], [28], [33], [46].The vast majority of cases were histologically confirmed [13]–[28], [33], [46]. However, in three studies, case definition was on the basis of radiological images for some cases [20], [22], [33].In Jhawar and colleagues' study, the definition of some cases was based on subject self-report [16]. Data were collected by questionnaire, phone interview, in person interview, or reviewing medical records. The additional characteristics of the included studies are presented in Table 1.
Table 1

Characteristic of the included studies in this meta-analysis.

First author, Publication dateCountrya Study period/Follow-up(years)Age(years)Study designCases/controls or cohortMethods of data collectionMatching or adjustmentExposures variables
Preston-Martin, 199511978-198520–74PCC81/155Telephone interviewAgeHRT, OC, menopausal status, age at menarche, age at menopause.
Lambe, 199721958–1990>15NCC1088/5440Data recorded in Fertility Registry and the Swedish Cancer RegistryAgeAge at first birth, parity.
Schlehofer, 19991,2,7,8,9,121980–199120–80PCC237/637Self-administered questionnaire or in-person interviewAge, ethnicity, residential areaMenopausal status,
Hatch, 200511994–1998≥18HCC151/436In-person interviewAge, ethnicity, hospital, residential area, marital status, and educationHRT, OC, menopausal status, age at menarche, age at menopause, age at first birth, parity.
Custer, 200611995–1998≥18PCC143/286In-person interviewAge, education, smoking history, alcohol consumption, BMI, age at menarche, and parity.HRT, OC, menopausal status, age at menarche, age at first birth, parity.
Lee, 200611987–1992Not StatedHCC219/260Self-mailed questionnaireAge, ethnicity, hospital, smoking, pregnancy, thyroid disorders, radiation treatment, menopause,HRT, OC, menopausal status, age at menarche.
Wigertz, 200622000–200220–69PCC178/323In-person interview or phone interview, Self-administered questionnaireAge, residential area, education, and parity.HRT, OC,
Wigertz, 20082,3,4,5,62000–200418–69PCC906/1774In-person interview or phone interviewAge, country, residential area, and educationAge at menarche, age at menopause, age at first birth, parity.
Korhonen, 201042000–200220–69PCC264/505In-person interviewAge, residential area, family history with brain tumorsHRT, OC, age at menarche, parity.
Claus, 201312006–201129–79PCC1127/1109Telephone interviewAge, race, education, smoking, alcohol use, BMIHRT, OC, menopausal status, age at menarche, age at menopause, age at first birth.
Cea-Soriano,201261996–200812–89NCC549/7347Self-administered questionnaire or In-person interviewAge, index year, number of primary care physician visits.HRT, OC,
Jhawar, 200311976–199630–55Cohort125/1,213,522Self-administered questionnaireAge, BMI, menopausal status, PMH useHRT, OC, age at menarche, age at first birth, parity.
Benson, 200861996–2005/6.250–65Cohort390/124,967Self-administered questionnaireAge, height, BMI, strenuous exercise, socioeconomic level, smoking, alcohol intakeOC, age at first birth, parity.
Benson,201061996–2005/5.350–56Cohort311/1,147,894Self-administered questionnaireAge, socioeconomic status, residential area, height, BMIHRT.
Michaud,20102,3,5,6,10, 11,12,13,141992–2008/8.420–83Cohort194/276,212Self-administered questionnaireAge, smoking status, education, BMI, menopausal status.HRT, OC, menopausal status, age at menarche, age at menopause, age at first birth, parity.
Johnson,201111986–2004/10.555–85.7Cohort125/291,021Self-administered questionnaireAgeHRT, OC, age at menarche, age at menopause, age at first birth, parity.
Blitshteyn,200811993–200326–86Cohort1390/355,318Medical recordsAgeHRT
Andersen,201332000–200955–84PCC924/6122Prescription RegistryYears of schooling, histories of diabetes, stroke, allergy or asthma and use of anti-asthma drugs and antihistaminesHRT

PCC, population-based case-control study; HCC, hospital-based case-control study; NCC, nested case-control study; BIM, body mass index.

a Studies were conducted in: (1) USA, (2) Sweden, (3) Denmark, (4) Finland, (5) Norway, (6) the United Kingdom, (7) Australia, (8) France, (9) Canada, (10)Spain, (11)Italy, (12)Germany, (13)Greece, and (14)the Netherlands.

PCC, population-based case-control study; HCC, hospital-based case-control study; NCC, nested case-control study; BIM, body mass index. a Studies were conducted in: (1) USA, (2) Sweden, (3) Denmark, (4) Finland, (5) Norway, (6) the United Kingdom, (7) Australia, (8) France, (9) Canada, (10)Spain, (11)Italy, (12)Germany, (13)Greece, and (14)the Netherlands.

Meta-analysis results

HRT use

Fourteen studies were included the meta-analysis [13], [16]–[20], [23]–[28], [33], [46]. Figure 2 shows the RRs of meningioma and HRT use, overall and by study design. The combined risk estimates were 1.11 (95%CI = 0.83–1.48, p for heterogeneity <0.001, I2 = 87.6%) for retrospective studies and 1.27 (95% CI = 1.16–1.39, p for heterogeneity  = 0.808, I2 = 0.0%) for prospective studies. Combining the retrospective and prospective data, the pooled risk estimate was 1.19 (95%CI = 1.01–1.40, p for heterogeneity <0.001, I2 = 80.8%). When subgroup analyses were conducted according to geographic regions, significant association were observed for European countries (RR = 1.29, 95% CI = 1.18–1.41, p for heterogeneity  = 0.532, I2 = 0.0%), but not for North America (RR = 1.07, 95% CI = 0.78–1.46, p for heterogeneity <0.001, I2 = 88.9%).
Figure 2

Forest plot of HRT use and meningioma risk.

*The risk estimates are computed from raw data or abstracted from original studies.

Forest plot of HRT use and meningioma risk.

*The risk estimates are computed from raw data or abstracted from original studies.

OC use

A total of twelve studies including seven retrospective studies and five prospective studies reported the risk estimates forever versus never OC use [13], [16]–[20], [21], [24]–[28]. Figure 3 shows the forest plots forever versus never OC use, overall and by study design. The cumulative estimated risks associated with ever OC use were 0.93(95% CI = 0.83–1.03, p for heterogeneity  = 0.011, I2 = 54.8%). When subgroup analyses were performed according to study design, no significant link was found in retrospective (RR = 0.86, 95% CI = 0.66–1.13, p for heterogeneity  = 0.003, I2 = 70.0%) or prospective studies (RR = 0.98, 95% CI = 0.92–1.05, p for heterogeneity  = 0.918, I2 = 0.0%). When subgroup analyses were conducted according to geographic regions, a marginal significant correlation was observed in North America (RR = 0.81, 95%CI = 0.66–0.99, p for heterogeneity  = 0.025, I2 = 58.4%), but not in European countries (RR = 1.00, 95% CI = 0.93-1.07-1.30, p for heterogeneity  = 0.565, I2 = 0.0%).
Figure 3

Forest plot of OC use and meningioma risk.

*The risk estimates are computed from raw data or abstracted from original studies.

Forest plot of OC use and meningioma risk.

*The risk estimates are computed from raw data or abstracted from original studies.

Menopausal status

Seven studies analyzed the role of menopausal status on meningioma risk [13], [15], [17]–[19], [25], [28]. Figure 4presents the forest plots for meningioma incidence among postmenopausal women compared with premenopausal women. The summary RR was 1.32 (95%CI = 1.07–1.64, p for heterogeneity  = 0.040, I2 = 54.4%).

Forest plot of menopausal status and meningioma risk.

*The risk estimates are computed from raw data or abstracted from original studies.

Age at menarche

Associations of meningioma risk with age at menarche were reported in ten studies [13], [16]–[19], [22], [24]–[26], [28]. The pooled RR for the oldest age group (≥15 or 14 years) versus the youngest age group (≤11 or 12 years) was 1.06(95%CI = 0.92–1.21, p for heterogeneity  = 0.549, I2 = 0.0%), as is shown in Figure 5.
Figure 5

Forest plot of age at menarche and meningioma risk.

*The risk estimates are computed from raw data or abstracted from original studies.

Forest plot of age at menarche and meningioma risk.

*The risk estimates are computed from raw data or abstracted from original studies.

Age at menopause

Risk estimates for oldest versus youngest age at menopause were reported in six studies [13], [17], [22], [25], [26], [28].The combined RR for the oldest age group (≥50 to ≥55 years) versus the youngest age group (≤40 to ≤47 years) was 1.03(95%CI = 0.81–1.30, p for heterogeneity  = 0.382, I2 = 5.5%), as is shown in Figure 6.
Figure 6

Forest plot of age at menopause and meningioma risk.

Age at first birth

Nine studies examined the relationship between meningioma risk and age at first birth [14], [16], [17], [19], [21], [22], [25], [26], [28]. Figure 7 shows the forest plots for the oldest age group (≥20 to ≥23 years) versus the youngest age group (≥25 to ≥35 years). The pooled RR was 0.94(95%CI = 0.80–1.10, p for heterogeneity  = 0.581, I2 = 0.0%). Of 9 studies, two studies used the nulliparous women as the reference group [17], [25], whereas the others used parous women as reference group. Excluding these two studies [17], [25], the result was not significantly altered (RR = 0.92, 95% CI = 0.78–1.09, for heterogeneity  = 0.448, I2 = 0.0%).
Figure 7

Forest plot of age at first birth and meningioma risk.

Parity

Nine studies provided information on parity [14], [16], [17], [19], [21], [22], [24]–[26]. Figure 8 shows the forest plots for highest number of live births in comparison with the lowest. The summary RR was 1.18(95%CI = 1.00–1.40, p for heterogeneity  = 0.880, I2 = 0.0%). Among these studies, most studies used the nulliparous women as the reference group, whereas two studies used parous women as the reference group [16], [26]. Excluding the two studies, a similar result was observed (RR = 1.24, 95% CI = 1.04–1.49, p for heterogeneity  = 0.939, I2 = 0.0%).
Figure 8

Forest plot of parity and meningioma risk.

Sensitivity analysis

In the sensitivity analysis, we excluded one single study in turn to investigate the influence of a single study on the overall risk estimate. For HRT, no significant or marginal significant correlations were detected after excluding six studies [16], [20], [23], [25], [27], [46], as is shown in Table S1. For parity, no significant or marginal significant associations were observed after excluding six studies [14], [17], [19], [21], [24], [25], as is shown in Table S2. For other risk factors, the outcomes were not significantly altered (data not shown). We also performed a sensitivity analysis restricted to those studies that provided adjusted risk estimates. The combined RRs for menopause status, age at menarche, HRT use, and OC use were 1.53 (95% CI = 1.06–2.21, p for heterogeneity  = 0.320, I2 = 14.4%), 1.04 (95% CI = 0.91–1.20, p for heterogeneity  = 0.498, I2 = 0.0%), 1.33 (95% CI = 1.02–1.72, p for heterogeneity <0.001, I2 = 84.8%), and 1.08 (95% CI = 0.87–1.34, p for heterogeneity  = 0.435, I2 = 0.0%), respectively.

Publication bias

The results of Egger' test suggested there was no evidence of notable publication bias (p = 0.376 for OC; p = 0.057 for HRT; p = 0.410 for menopausal status; p = 0.245 for age at menarche; p = 0.841 for age at menopause; p = 0.079 for age at first birth; p = 0.662 for parity). For HRT, we further employed “trim and fill” method [47], but this analysis suggested the result was unchanged.

Discussion

This meta-analysis included six cohort and twelve case-control studies to evaluate the relationship between OC use, HRT use, reproductive factors and risk of meningioma. Our analysis confirmed that OC use, age at menarche, age at menopause, and age at first birth did not significantly contribute to the risk of developing meningioma. However, this meta-analysis showed that HRT use, postmenopausal status and increasing number of births were associated with an increased risk of meningioma. Our meta-analysis suggested HRT use was correlated with an elevated risk of meningioma in women. This finding is consisted with the newly published meta-analysis, which included six case-control and five cohort studies [48]. Moreover, some interesting findings were shown in the newly published meta-analysis. Fan and colleagues found the significant risk elevation was observed in current users (RR = 1.27, 95% CI = 1.08–1.49), but not in past users (RR = 1.12, 95% CI = 0.95–1.32).The significance of these findings is unclear. However, we should interpret these findings with caution because meningiomas usually have an extended duration of asymptomatic subclinical disease before presentation to medical attention. Lastly, two important issues were not addressed in these two meta-analyses. One is that we were unable to take into account the type of OC and HRT. Several previous studies had suggested progesterone and estrogen receptors are expressed in meningioma in various degrees [6]–[7]. Recently, two studies have reported that women with estrogen/estradiol-alone therapy were associated with a slightly increased risk of meningioma, while this risk was not observed for the users of a combination of estrogen/estradiol and progestin [24], [45]. Another is that the dose-response analysis was not performed. Assessment of dose-response is considered to be a major criterion for determination of the causality for association in observational studies. Therefore, it is unknown whether the results were detected by chance or not. In order to determine which kind of hormones or to what extent hormone use influences the risk of meningioma, further evaluation of hormone use in women with meningioma is needed to pay more attention to stratification by hormone composition (i.e., estrogen and/or progesterone), duration of use, dosage of use, and age at start/end of therapy as well as tumor receptor subtype. In the current study, an increased risk of meningioma was observed among postmenopausal women in comparison with premenopausal women. Our finding seems to be conflicted with the hypothesis that female sex hormones have a promoting effect on meningioma incidence. This could be explained because most studies did not take into account the effect of HRT and length of exposure [49]. Among included studies, only two studies provided a detailed description on definition of postmenopausal status [26], [28]. However, both studies reported that women who implied use of exogenous hormones while still menstruating were also defined as postmenopausal. Thus, it seems difficult here to assess the role of menopause in the incidence of meningioma independently of HRT use. Furthermore, some authors may not take into account exposure occurring shortly prior to the reference date, since it was assumed that it was unlikely to play a role in the disease. Lastly, this finding that meningioma occurred more commonly in postmenopausal women may be due to the bias. Since many meningiomas are asymptomatic, they can be present starting in a younger age and be discovered in an older age. Moreover, older adults tend to have more diagnostic testing for health problems, for example a slip and fall and cardiovascular and cerebrovascular disease, which are completely unrelated to the meningioma [50]. We would therefore see more and more older people with meningioma. Therefore, our finding should be interpreted with caution and further evaluation of menopausal status should take into account the date of exposure occurring before the date of diagnosis (or date of interview for controls) and HRT use. With regard to other reproductive factors, we conducted a meta-analysis for comparison of the highest versus lowest category in each study. No significant correlations were observed for age at menarche, age at menopause or age at first birth. In contrast, an elevated risk of meningioma was found with parity, which is consistent with biological hypothesis. Women with greater numbers of live births or full-term pregnancies would be under a longer period of exposure to high levels of progesterone and estrogen. Thus, these women may bear a larger risk of hormone-induced meningioma than those with fewer numbers of live births or full-term pregnancies. However, the result should also be interpreted with caution because our sensitivity analysis showed the results were not robust. Finding from this meta-analysis showed that female sex hormones play a role in the risk of meningiomas in women, but there is also a study that suggested a hormonal influence on meningiomas in men [51]. Aghi et al found that male patients with meningiomas exhibited a higher average body mass index (BMI) and higher obesity rate in comparison with male patients with aneurysms or gliomas and that obese male patients with meningiomas presented higher rates of postoperative complications (postoperative deep vein thrombosis, pulmonary embolus, and fever) than nonobese male patients with meningiomas [51]. Obesity has been shown to increase serum estradiol and insulin-like growth factor (IGF), which, in turn, link obesity to carcinogenesis [52], [53]. Furthermore, epidemiological evidence suggested obesity increases the risk of several hormone-dependent neoplasms (i.e., endometrial, breast, uterine, ovarian, and prostate cancers) in both men and women [53], [54]. Since meningionas are known to be hormonally sensitive tumors, it would not be surprising that hormones also have an effect on meningiomas in men. Several biological mechanisms explaining how female hormones could possibly increase the risk of hormone-related cancers have been proposed. The female hormones can modulate proliferation and cell cycle progression through transcriptional mechanisms involving the receptors [8], [20]. In addition, estrogens have been postulated to affect the genomic instability of cells [55], [56]. Lastly, estrogens interact with IGF, which stimulates tumor growth and prohibits cells apoptosis [52]. Some limitations of the current study should be considered when interpreting our results. First, this study was limited by the retrospective data and lack of sufficient prospective evidence. The existing recall and selection bias would confound the association between hormone and reproductive factors and risk of meningioma. Most of the studies (n = 12) included in this study were retrospective studies. In the retrospective studies of meningioma, the recall bias may be even greater because patients are often experiencing effects of cerebral lesions and surgery, which affect their cognition or memories. Furthermore, estimation of hormone use or reproductive factors in most studies was through the self-reported and proxy-reported measures. Both methods of assessing the exposure would contribute to recall bias and measurement error. Second, substantial heterogeneity across studies was observed. Finding the source of heterogeneity is often a concern in a meta-analysis. In our study, the heterogeneity contained the following several aspects: (i) the study designs were different. Twelve retrospective and six prospective studies were included in this study. (ii) Studies included in this study were conducted in different geographic regions: either entirely in Europe or entirely in North America, where people share little in the field of genetic background and lifestyle. (iii) Both spinal and intracranial meningiomas were included in this study. Though spinal and intracranial meningiomas arise from meningothelial cells of the arachnoid membrane, spinal meningioma is less common than intracranial meningioma [2]. This may suggest that the etiology of tumors is different, which may, in part, explain some heterogeneity. (iv)The studies used different methods to collect information. Assessment tools to get information of exposure variables consisted of in person interview, telephone interview, self-administered questionnaire, and reviewing medical records. With different methods, the participants may have different attitudes towards the questions. Consequently, the reliability of the answers to question about exposures might be questionable. Third, unmeasured and residual confounders from original studies are always of concern in observational studies. Most risk estimates were derived from multivariable models, but the adjusted factors in each study were different. Therefore, we could not preclude the possibility that other unmeasured or inadequately measured factors have confounded the relationship. Fourth, potential publication bias might influence our findings. Egger's test suggested that no evidence of publication bias was observed in the present meta-analysis, but we cannot exclude the possibility that some unpublished studies may have been missed during our literature search, and that studies with null effects tend to be unpublished. Fifth, some meningiomas were diagnosed on radiological image, without histopathological confirmation. This may contribute to some unclear bias because some meningiomas diagnosed on radiological criteria may be completely independent of the pathogenesis which was proposed to be related to hormonal levels. Finally, ethnic differences could play an important role in the development of neoplasms. In this study, we found that all of the studies involved Western populations. Therefore, additional research in other populations is warranted to extend the findings. In summary, we found an elevated risk of female meningioma with HRT use, postmenopausal status and parity, which is consistent with the hypothesis that female sex hormones could modulate the risk of meningioma in women. Further studies are warranted to extend this finding and clarify the underlying mechanisms. PRISMA Checklist for this meta-analysis. (DOC) Click here for additional data file. Results of sensitivity analysis for HRT. (DOCX) Click here for additional data file. Results of sensitivity analysis for parity. (DOCX) Click here for additional data file.
  55 in total

1.  Risk of brain tumors associated with exposure to exogenous female sex hormones.

Authors:  Annette Wigertz; Stefan Lönn; Tiit Mathiesen; Anders Ahlbom; Per Hall; Maria Feychting
Journal:  Am J Epidemiol       Date:  2006-07-11       Impact factor: 4.897

2.  Association of meningioma with reproductive factors.

Authors:  Eunsuk Lee; James Grutsch; Victoria Persky; Roberta Glick; Juliana Mendes; Faith Davis
Journal:  Int J Cancer       Date:  2006-09-01       Impact factor: 7.396

3.  Sex steroid and growth factor profile of a meningioma associated with pregnancy.

Authors:  Justin S Smith; Alfredo Quiñones-Hinojosa; Miranda Harmon-Smith; Andrew W Bollen; Michael W McDermott
Journal:  Can J Neurol Sci       Date:  2005-02       Impact factor: 2.104

4.  Increased prevalence of obesity and obesity-related postoperative complications in male patients with meningiomas.

Authors:  Manish K Aghi; Emad N Eskandar; Bob S Carter; William T Curry; Fred G Barker
Journal:  Neurosurgery       Date:  2007-10       Impact factor: 4.654

Review 5.  Body-mass index and incidence of cancer: a systematic review and meta-analysis of prospective observational studies.

Authors:  Andrew G Renehan; Margaret Tyson; Matthias Egger; Richard F Heller; Marcel Zwahlen
Journal:  Lancet       Date:  2008-02-16       Impact factor: 79.321

6.  Cancer risk among users of oral contraceptives: cohort data from the Royal College of General Practitioner's oral contraception study.

Authors:  Philip C Hannaford; Sivasubramaniam Selvaraj; Alison M Elliott; Valerie Angus; Lisa Iversen; Amanda J Lee
Journal:  BMJ       Date:  2007-09-11

7.  Reproductive factors and risk of meningioma and glioma.

Authors:  Annette Wigertz; Stefan Lönn; Per Hall; Anssi Auvinen; Helle Collatz Christensen; Christoffer Johansen; Lars Klaeboe; Tiina Salminen; Minouk J Schoemaker; Anthony J Swerdlow; Tore Tynes; Maria Feychting
Journal:  Cancer Epidemiol Biomarkers Prev       Date:  2008-10       Impact factor: 4.254

8.  Sex steroid and epidermal growth factor profile of giant meningiomas associated with pregnancy.

Authors:  Mustafa Aziz Hatiboglu; Murat Cosar; A Celal Iplikcioglu; Deniz Ozcan
Journal:  Surg Neurol       Date:  2007-08-17

9.  Is there an association between meningioma and hormone replacement therapy?

Authors:  Svetlana Blitshteyn; Julia E Crook; Kurt A Jaeckle
Journal:  J Clin Oncol       Date:  2008-01-10       Impact factor: 44.544

10.  Lifestyle factors and primary glioma and meningioma tumours in the Million Women Study cohort.

Authors:  V S Benson; K Pirie; J Green; D Casabonne; V Beral
Journal:  Br J Cancer       Date:  2008-06-17       Impact factor: 7.640

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  25 in total

1.  Progesterone-only contraception is associated with a shorter progression-free survival in premenopausal women with WHO Grade I meningioma.

Authors:  Tessa A Harland; Jacob L Freeman; Monica Davern; D Jay McCracken; Emma C Celano; Kevin Lillehei; Jeffrey J Olson; D Ryan Ormond
Journal:  J Neurooncol       Date:  2017-10-28       Impact factor: 4.130

2.  Birth desires and intentions of women diagnosed with a meningioma.

Authors:  Michelle A Owens; Benjamin M Craig; Kathleen M Egan; Damon R Reed
Journal:  J Neurosurg       Date:  2015-01-27       Impact factor: 5.115

3.  Fetal microchimerism in human brain tumors.

Authors:  Lauren Broestl; Joshua B Rubin; Sonika Dahiya
Journal:  Brain Pathol       Date:  2017-10-17       Impact factor: 6.508

4.  Reproductive factors in relation to risk of brain tumors in women: an updated meta-analysis of 27 independent studies.

Authors:  Hailiang Zong; Hongsheng Xu; Zhongqun Geng; Chong Ma; Xing Ming; Ming Shang; Kai Li; Xiaoguang He; Hai Du; Jianping Zhao; Lei Cao
Journal:  Tumour Biol       Date:  2014-08-19

Review 5.  Brain-invasive meningiomas: molecular mechanisms and potential therapeutic options.

Authors:  Chaoying Qin; Meng Huang; Yimin Pan; Yuzhe Li; Wenyong Long; Qing Liu
Journal:  Brain Tumor Pathol       Date:  2021-04-26       Impact factor: 3.298

Review 6.  Hormone-Dependent Tumors and Sexuality in the Neuro-Oncology of Women (N.O.W.): Women's Brain Tumors, Gaps in Sexuality Considerations, and a Need for Evidence-Based Guidelines.

Authors:  Na Tosha N Gatson; Maria L Boccia; Kerianne R Taylor; Jada K O Mack; Ekokobe Fonkem
Journal:  Curr Oncol Rep       Date:  2021-08-27       Impact factor: 5.075

7.  Consensus core clinical data elements for meningiomas (v2021.1).

Authors:  Farshad Nassiri; Justin Z Wang; Karolyn Au; Jill Barnholtz-Sloan; Michael D Jenkinson; Kate Drummond; Yueren Zhou; James M Snyder; Priscilla Brastianos; Thomas Santarius; Suganth Suppiah; Laila Poisson; Francesco Gaillard; Mark Rosenthal; Timothy Kaufmann; Derek S Tsang; Kenneth Aldape; Gelareh Zadeh
Journal:  Neuro Oncol       Date:  2022-05-04       Impact factor: 13.029

8.  Racial Differences in Disease Presentation and Management of Intracranial Meningioma.

Authors:  C Lane Anzalone; Amy E Glasgow; Jamie J Van Gompel; Matthew L Carlson
Journal:  J Neurol Surg B Skull Base       Date:  2018-12-21

Review 9.  Meningiomas in Gynecology and Reproduction: an Updated Overview for Clinical Practice.

Authors:  Serena Girardelli; Luigi Albano; Giorgia Mangili; Luca Valsecchi; Emanuela Rabaiotti; Paolo Ivo Cavoretto; Pietro Mortini; Massimo Candiani
Journal:  Reprod Sci       Date:  2021-05-10       Impact factor: 2.924

10.  Overweight, obesity and meningioma risk: a meta-analysis.

Authors:  Chuan Shao; Li-Ping Bai; Zhen-Yu Qi; Guo-Zhen Hui; Zhong Wang
Journal:  PLoS One       Date:  2014-02-26       Impact factor: 3.240

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