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Oncology Letters logoLink to Oncology Letters
. 2023 Jan 16;25(2):83. doi: 10.3892/ol.2023.13669

Association between multiple sclerosis and prostate cancer risk: A systematic review and meta‑analysis

Zhiya Hu 1, Yongxin Fu 1, Jiawu Wang 1, Yisen Li 1, Qing Jiang 1,
PMCID: PMC9877503  PMID: 36760514

Abstract

Prostate cancer (PCa) risk in patients with multiple sclerosis (MS) remains to be elucidated. The present study conducted a meta-analysis to assess the relationship between MS and PCa. PubMed, EMBASE, Web of Science, and Cochrane Library databases were searched to identify studies on the PCa risk in patients with MS up to September 2022. A random effects meta-analyses model was performed to estimate the relative risk (RR) and the 95% confidence intervals (CI). All eight studies involving 210,943 patients with MS were identified and included in the meta-analysis. The present study revealed that there was no significant association between MS and the risk of PCa (RR=0.78, 95% CI: 0.56-1.08, P<0.0001). Subgroup analyses verified this conclusion when stratified by regions. However, after adjusting for potential confounders, the findings suggested conflicting results. The current evidence shows that compared with the population control, patients with MS have no relationship with PCa risk and further large samples and long-term trials are needed to verify these results.

Keywords: multiple sclerosis, prostate cancer, meta-analysis

Introduction

Prostate cancer (PCa) is one of the most common cancers and the fifth leading cause of cancer death in men (1). In 2022, the American Cancer Society estimated 268,490 new cases of prostate cancer and 34,500 mortalities (2).

Multiple sclerosis (MS) is an immune-related disease of the central nervous system (3), with a high rate of teratogenicity (4) and mortality (5) and its associated complications are the leading causes of mortality, including infections, respiratory failure, and cardiovascular diseases. Previous studies have shown a strong relationship between immune-related disorders and cancer (6,7). While some studies show an increase risk of cancer in individuals with MS, others show the opposite or no association at all (8,9).

Results on the association between MS and PCa are conflicting. For instance, Bosco-Lévy et al (10) suggested that MS was associated with an increased risk of PCa [hazard ratio (HR)=2.08; 95% CI: 1.68-2.58], while Kingwell et al (11) showed that MS was not associated with the risk of PCa [standardized incidence ratio (SIR)=0.91; 95% CI: 0.64-1.27]. Marrie et al (12) showed different results. To address this problem, a meta-analysis was performed to clarify the relationship between MS and risk of PCa.

Materials and methods

The present study followed the PRISMA statement (13). A systematic review and meta-analysis was conducted.

Search strategy

PubMed (http://www.ncbi.nlm.nih.gov/pubmed), EMBASE (http://www.embase.com), Web of Science (https://www.webofscience.com/) and Cochrane Library databases (https://www.cochranelibrary.com/) were searched for related studies that investigated the PCa risk in patients with MS up to September 2022. The following search terms were used (multiple sclerosis) OR (Sclerosis, Multiple) OR (Sclerosis, Disseminated) OR (Disseminated Sclerosis) OR (MS (Multiple Sclerosis) OR (Multiple Sclerosis, Acute Fulminating) OR (Multiple Sclerosis, Relapsing-Remitting) OR (Multiple Sclerosis, Chronic Progressive) AND (Prostatic Neoplasms) OR (Prostate Cancer) OR (Prostatic Cancer) OR (cancer).

Data extraction

The titles and abstracts of all articles retrieved from the initial search were screened to determine their relevance and all relevant articles were further evaluated to determine their qualifications for inclusion in the meta-analysis. Two authors independently extracted data according to the standardized process, including the author's name, year of publication, country, follow-up time, number of patients and adjusted confounding factors, Any differences arising during the study were resolved through discussion with the third Examiner (Jiawu Wang).

Quality assessment

Two authors evaluated the quality of the included studies according to the Newcastle Ottawa Scale (14), Based on the different quality scores, each study could obtain up to nine points, with total scores ranging from 0 to 9, including high quality (8–9 points), medium quality (6–7 points), and low quality (≤5 points). Third party reviewers resolved differences.

Statistical analysis

The data on all outcomes of interest were analyzed using Stata software version 12.0 (StataCorp LLC). Consistency indication, the incidence rate ratios, the odds ratios, the SIRs and the HRs, were directly considered as RRs in the meta-analysis. Heterogeneity was given by I2, When I2≥ 50%, it indicates that the heterogeneity is high, and the random effect model should be used; otherwise, a fixed effect model should be used. Subgroup analyses was stratified by country and confounding factors. Sensitivity analysis was used to evaluate the stability and consistency of the results. The Egger test and Begg test was used to determine publication deviations. P<0.05 was considered to indicate a statistically significant difference.

Results

Study selection process

Based on the search strategy, the database search yielded 4,062 results. After excluding duplicate results and preliminary screening, 187 studies remained. After excluding non-relevant articles again, eight articles were included in the meta-analysis. The screening process is shown in the PRISMA flow chart (Fig. 1).

Figure 1.

Figure 1.

Flow diagram of study selection. PCa, prostate cancer.

Study characteristics and methodological quality

The main characteristics of the included studies are summarized in Table I. These studies included seven cohorts studies (1012,1518) and one case-control study (19), summing 210,943 patients with MS. A total of two studies (16,17) from Sweden, two (11,12) from Canada, one (15) from Denmark, one (18) from Norway, one (19) from Finland and one (10) from France were included. Among these studies included in the meta-analysis, three studies were of high quality, and five were of moderate quality.

Table I.

Characteristics of the included studies.

First author, year Country Study source Study design Population (MS/control) PCa cases (MS/control) Follow up duration PCa risk (95% CI) Adjusted confounding factors (Refs.)
Nielsen, 2006 Denmark Population-based CS 11,817/NA 20/37.67 / SIR (95% CI): 0.53 (0.34-0.82) NA (15)
Bahmanyar, 2009 Sweden Population-based CS 20,276/203,951 159/2,923 35 years HR (95% CI): 0.80 (0.69-0.94) Age, region of residence and socioeconomic index (16)
Liu, 2013 Sweden Population-based CS 14,616/NA 86/NA 44 years SIR (95% CI): 0.73 (0.58-0.90) Obesity, chronic obstructive pulmonary disease (17)
Kingwell, 2012 Canada Population-based CS 6,820/NA 35/NA / SIR (95% CI): 0.91 (0.64-1.27) NA (11)
Hongell, 2019 Finland Hospital-based CCS 1,074/10,740 2/86 / OR (95% CI): 0.2 (0.1-0.8) NA (19)
Grytten, 2020 Norway Population-based CS 6,883/37,919 66/493 65 years HR (95% CI): 0.80 (0.62-1.03) Age, residence, and attained educational level (18)
Marrie, 2021 Canada Population-based CS 53,983/269,915 NA/NA 10 years IRR (95% CI): 0.62 (0.52-0.75) Age, region, SES and comorbidity (12)
Bosco-Lévy, 2022 France Population-based CS 95,474/95,474 253/122 / HR (95% CI): 2.08 (1.68-2.58) NA (10)

CS, cohort study; CCS, control-case study; NA, not applicable; MS, multiple sclerosis; PCa, prostate cancer; CI, confidence intervals; SIR, standardized incidence ratio; HR, hazard ratio; OR, odds ratio; SES, socioeconomic status.

MS and PCa risk

Random-effects meta-analysis showed MS was not associated with the risk of PCa (RR=0.78; 95% CI: 0.56-1.08), with substantial heterogeneity (I2=92.4%; P<0.001; Fig. 2). The present study was unable to perform a subgroup analysis based on study design because of limited data. A subgroup analysis based on the distinct regions showed that RR of 0.78 (95% CI: 0.51-1.19) among European countries and the RR of 0.73 (95% CI: 0.50-1.06) among other countries (Table II). The studies that adjusted for potential confounders gave a RR of 0.73 (95% CI: 0.64-0.83), while the RR of other unadjusted studies was 0.75 (95% CI: 0.33-1.67) (Table II).

Figure 2.

Figure 2.

Meta-analysis on association between multiple sclerosis and prostate cancer risk. CI, confidence interval, HR, Hazard Ratio.

Table II.

PCa risk in patients with multiple sclerosis.

PCa risk

Group n RR (95% CI) Model
Overall 8 0.78 (0.56-1.08) Random
Country
  European 6 0.78 (0.51-1.19) Random
  Other 2 0.73 (0.50-1.56) Random
Adjustment for other factors
  Yes 4 0.73 (0.64-0.83) Random
  No 4 0.75 (0.33-1.67) Random

PCa, prostate cancer; RR, relative risk.

The Begg and Egger tests and funnel plot (Fig. 3) was used to determine publication bias, the results of Begg and Egger tests (Pb=0.711 and Pe=0.612) and almost symmetrical funnel plots showed there was no publication bias. Sensitivity analysis (Fig. 4) found that no individual study would significantly change the pooled RRs after removal, indicating that the results were reliable.

Figure 3.

Figure 3.

Funnel plot assessing of publication bias about the association between multiple sclerosis and prostate cancer risk. S.E., standard error; RR, relative risk.

Figure 4.

Figure 4.

Sensitivity analysis investigating the influence of each individual study on the overall prostate cancer risk.

Discussion

The first comprehensive meta-analysis on the relationship between MS and PCa risk was published in 2015 (20), suggesting that MS reduced PCa risk. Notably, a study published in Cancer Hematology Review in 2016 also reported MS is associated with the reduction of PCa risk (21), while a cohort study in 2020 summing up more than 6,800 patients showed that during an average follow-up of 65 years, MS was not associated with PCa risk. However, a recent cohort study in 2022 found that MS increased the risk of PCa (10).

The risk of PCa in patients with MS is unknown and may be related to genetic and environmental factors, such as chronic inflammation and infection (22), which can cause tumor growth and escape by interfering with normal immune surveillance. Previous studies have shown that regulatory T-cell function is significantly impaired in patients with MS compared to normal function (23) and that regulatory T-cells can both promote tumorigenesis and inhibit the growth of some inflammatory tumors (24). Hormones also play an important role in patients with MS; studies have shown that testosterone levels are significantly lower in patients with MS and due to the significant anti-inflammatory properties of testosterone, some patients with MS opt for testosterone supplementation therapy, which may also have a relevant impact on PCa development due to the complex mechanism of action of testosterone (2528). The treatment of MS may lead to the loss of immune protection against cancer or the activation of the immune system, making it a primary tumor (29). Moreover, the possible reasons include that studies conducted in different countries may have different factors that affect the results. For example, common risk factors for PCa include being elderly (30), diet (31) and independent protective factors including regular screening for PCa.

The present meta-analysis builds on previous meta-studies. Ghajarzadeh et al (32) summarized studies up to September 2019 and calculated a pooled RR estimate of 0.79 for cancer in patients with MS, thus they concluded that patients with MS would have a reduced risk of cancer. Nevertheless, due to the small number of studies, they did not summarize the PCa risk data, and no subgroup analysis was performed. Therefore the present study became necessary and it found a significant negative association between MS and PCa risk in subgroup analysis adjusted for confounders, suggesting that some of the confounders may also confound the results.

The present study found strong heterogeneity. Possible reasons for this are: First, the number of studies was relatively small (eight studies). Second, the sample sizes were different across the studies. Finally, the reasons may be related to geographic region, with no reports of PCa risk in Asia. In addition, different types of studies, including cohort studies and controlled case studies, and differences in study populations may be other sources of heterogeneity.

Overall, the present study was the most recent and comprehensive study on the association between MS and PCa risk. Its conclusions are meaningful, and the results of the subgroup and sensitivity analyses further validate the reasonableness and reliability of the findings.

However, the present study had several limitations. First, the number of studies was relatively small. Second, different study methods and social factors of different study populations may also cause heterogeneity. Finally, observational studies themselves may be subject to information bias. Therefore, future high-quality studies should address these issues comprehensively.

In summary, the present study demonstrated there was no significant association between MS and PCa risk, and the correlation between treatment modalities and PCa needs to be further explored in the future.

Acknowledgements

Not applicable.

Glossary

Abbreviations

CS

cohort study

CCS

control-case study

NA

not applicable

MS

multiple sclerosis

PCa

prostate cancer

Funding Statement

Funding: No funding was received.

Availability of data and materials

All data generated or analyzed during this study are included in this published article.

Authors' contributions

QJ contributed to the study conception and design. Data collection and analysis were performed by ZH, YF, JW and YL. The first draft of the manuscript was written by ZH and all authors commented on previous versions of the manuscript. All authors read and approved the final manuscript. ZH and YF confirm the authenticity of all the raw data.

Ethics approval and consent to participate

Not applicable.

Patient consent for publication

Not applicable.

Competing interests

The authors declare that they have no competing interests.

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Data Availability Statement

All data generated or analyzed during this study are included in this published article.


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