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BMJ Open logoLink to BMJ Open
. 2019 Feb 11;9(2):e023647. doi: 10.1136/bmjopen-2018-023647

Risk factors associated with premature myocardial infarction: a systematic review protocol

Sagar B Dugani 1,2, Ana Patricia Ayala Melendez 3, Roger Reka 3, Yousif M Hydoub 4, Shannon N McCafferty 5, M Hassan Murad 6, Alawi A Alsheikh-Ali 7,8, Samia Mora 2,9,10
PMCID: PMC6377544  PMID: 30755446

Abstract

Introduction

Premature myocardial infarction (MI) generally refers to MI in men ≤55 years or women ≤65 years. Premature MI is a major contributor to cardiovascular disease (CVD), which claimed 17.6 million lives globally in 2016. Reducing premature MI and CVD is a key priority for all nations; however, there is sparse synthesis of information on risk factors associated with premature MI. To address this knowledge gap, we are conducting a systematic review to describe the association between risk factors (demographics, lifestyle factors and biomarkers) and premature MI.

Methods and analysis

The following databases were searched from inception to June 2018: CENTRAL, CINAHL, Clinical Trials, EMBASE and MEDLINE. We will include original research articles (case–control, cohort and cross-sectional studies) that report a quantitative relationship between at least one risk factor and premature MI. Two investigators will use predetermined selection criteria and independently screen articles based on title and abstract (primary screening). Articles that meet selection criteria will undergo full-text screening based on criteria used for primary screening (secondary screening). Data will be extracted using predetermined data extraction forms. The Newcastle-Ottawa Scale for case–control and cohort studies will be used to evaluate the risk of bias and will be adapted for cross-sectional studies. Whenever feasible, data will be summarised into a random-effects meta-analysis.

Ethics and dissemination

To our knowledge, this will be the first study to synthesise results on the relationship between risk factors and premature MI. These findings will inform healthcare providers on factors associated with risk of premature MI and potentially improve primary prevention efforts by guiding development of interventions. These findings will be summarised and presented at conferences and through publication in a peer-reviewed journal.

PROSPERO registration number

CRD42018076862.

Keywords: myocardial infarction, coronary heart disease, ischaemic heart disease, preventive medicine


Strengths and limitations of this study.

  • This will be the first comprehensive, systematic review of diverse risk factors associated with premature myocardial infarction (MI).

  • The broad search strategy will identify infrequently reported risk factors and identify new strategies to predict risk of premature MI.

  • This study will categorise results by world region, thereby identifying regional variation in association of risk factors with premature MI.

  • This study will only identify English-language articles from the peer-reviewed literature.

  • This study will exclude articles with fewer than 100 cases of premature MI.

Introduction

Non-communicable diseases (NCDs), which generally include cardiovascular disease (CVD), diabetes, respiratory disease and cancer, are a major driver of global mortality.1 The WHO estimated that NCDs annually claim approximately 15 million lives within the age group of 30–70 years (termed ‘premature mortality’), with the major burden concentrated in low-income and middle-income countries.2

CVD is the major contributor to NCD-related morbidity and mortality, and in 2016, it claimed 17.6 million lives globally.3 The majority of CVD-related deaths comes from ischaemic heart disease, which is composed of acute myocardial infarction (MI) and ischaemic heart failure.4 In 2016, ischaemic heart disease (IHD) claimed 9.5 million lives, a 19% increase over the prior decade, attributed to ageing and a growing population.3 The high burden of IHD, particularly among young adults, adversely affects personal and economic productivity, health of caregivers and increases healthcare costs.1 5 6 Reducing the burden of IHD is a key priority for all countries.

Although premature mortality refers to mortality in the age group of 30–70 years, premature MI generally refers to MI in men ≤55 years or women ≤65 years.7–9 Although diagnosis, management and treatment of MI have improved, results on IHD mortality in young adults have been mixed. A US study showed that IHD mortality in young women (<55 years) has remained unchanged over a 20-year period from 1990 to 2011.10 Similarly, in countries including Australia, Canada and Scotland, young adults have shown minimal to no improvement, higher IHD mortality, or different IHD mortality for men versus women.11–16 The reasons for suboptimal IHD mortality in young adults are incompletely understood and require further characterisation.

There are limited international studies on the relationship between risk factors (demographics, lifestyle factors, clinical risk factors and biomarkers) and premature MI. The INTERHEART study used a case–control design on 27 098 adults from 52 countries to assess the relationship between risk factors and acute MI. Although not designed to exclusively study premature MI, this study showed that the population attributable risk of nine risk factors (lifestyle factors (smoking; consumption of fruit and vegetables; exercise; consumption of alcohol; psychosocial stress); clinical risk factors (hypertension; diabetes; abdominal obesity) and, biomarkers (ratio of blood levels of apolipoprotein B/apolipoprotein A1 (apoB/apoA)) was higher among younger (≤55 years for men and ≤65 years for women) versus older adults.17 The Global Registry of Acute Coronary Events (GRACE) study evaluated 24 165 individuals from 14 countries presenting with acute coronary syndrome (ACS; comprised of MI and unstable angina) and assessed prevalence of risk factors in 10-year age groups (<45 years up to ≥85 years). They showed variable age-related trends for different risk factors (demographics (higher proportion of men in younger age groups); lifestyle factors (higher prevalence of smoking in younger individuals); clinical risk factors (lower prevalence of hypertension in younger individuals; prevalence of diabetes peaked in the 65–74 years age group); biomarkers (prevalence of hyperlipidaemia peaked in the 55–64 years age group).18

In addition to INTERHEART and GRACE, other studies have evaluated the relationship between select risk factors and ACS. With respect to lifestyle factors, studies based in Spain and the Middle East have shown higher prevalence of smoking in younger individuals with ACS.19–22 Smoking was generally more prevalent in men versus women, although this was not observed in a large study based in Canada.23 In addition to lifestyle factors, few studies have examined the relationship between biomarkers and premature MI. Higher levels of low-density lipoprotein (LDL) cholesterol and triglycerides, and lower levels of high-density lipoprotein (HDL) cholesterol were observed in younger versus older individuals with ACS in the Middle East20; levels of high-sensitivity C reactive protein (hsCRP), a marker of inflammation, were persistently higher in younger women versus younger men24 and levels of ferritin were higher among individuals with premature MI versus controls.25

To our knowledge, there are no published systematic reviews that describe the association between risk factors and premature MI. To address this gap, we have developed a protocol for a systematic review to describe the relationship between risk factors (demographics, lifestyle factors and biomarkers) and premature MI. From these articles, we also describe the relationship between clinical risk factors and premature MI.

Methods and analysis

Standards

We will adhere to the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) Statement for the completion of the systematic review. We have adhered to PRISMA protocols (PRISMA-P) for the reporting of this protocol (online supplementary appendix A).26

Supplementary data

bmjopen-2018-023647supp001.pdf (164.9KB, pdf)

Protocol and registration

This review protocol is registered online with the International Prospective Register of Systematic Reviews. The online profile will be revised for major protocol amendments.

We searched OVID MEDLINE (1946 to June 2018, including epub ahead of print, in process and other non-indexed citations), OVID EMBASE (1947 to June 2018), EBSCO CINAHL Plus with full text (1981 to June 2018), OVID AMED (1985 to June 2018), ClinicalTrials.gov and Cochrane Central to identify articles on premature MI. The search strategy was developed by an academic health sciences librarian (APAM) with input from the study investigators. The search strategy was translated using each database platform’s command language, controlled vocabulary and search fields. MeSH terms, EMTREE terms, CINAHL headings and text words were used for the search concepts of MI, young adults and middle-aged adults. The concept of premature was captured using text words. MeSH headings included: MI, ACS, young adult, adult and middle aged.

A multi-stranded approach was used to search the concept of MI in MEDLINE, EMBASE, CINAHL and Cochrane Central: search terms for MI, heart attack, ST segment elevation MI (STEMI), non-ST segment elevation MI (NSTEMI) and ACS were combined with Boolean OR (strand 1). Search terms for young adults, adults, middle aged were combined with the Boolean OR (strand 2). Search terms for the concept of premature, untimeliness and early onset were combined with the Boolean OR (string 3). Finally, all strings were combined with the Boolean AND. Our search strategy intentionally did not include risk factors to allow for identification of infrequently described risk factors. All searches were limited to the English language.

Searches were completed by June 2018. The MEDLINE search strategy is shown in online supplementary appendix B.

Supplementary data

bmjopen-2018-023647supp002.pdf (87.5KB, pdf)

Eligibility criteria

Participants

Men (18–55 years) and women (18–65 years) who have experienced an MI.

Risk factors

Demographics, lifestyle factors, clinical risk factors and biomarkers. Demographics include sex, race or ethnicity, education, income, living area (urban vs rural) and family history of cardiac disease. Lifestyle factors include exercise or physical activity, diet, alcohol consumption, tobacco use including shisha and khat, recreational drug use and psychological stress. Clinical risk factors include diabetes, hypertension, obesity and dyslipidaemia. Biomarkers include, but are not restricted to, serum cholesterol (total cholesterol, HDL cholesterol, non-HDL cholesterol, LDL cholesterol), triglycerides, lipoprotein (a), apolipoprotein (apo) A, apoB, liver enzymes (aspartate transaminase, alanine transaminase), inflammatory markers (erythrocyte sedimentation rate, C reactive protein, hsCRP), fasting glucose, haemoglobin A1c (HbA1c) and other markers, including kallikrein, matrix metallopeptidase 9 (MMP9), galectin-3, protein S, protein C, citrate, valine, leucine, isoleucine, alanine, homocysteine, fibrinogen and iron.

Myocardial infarction

The following events will be included: ACS, STEMI, non-ST elevation–ACS, or NSTEMI. The following events will be excluded: stable coronary heart disease, stable atherosclerosis, stable coronary artery disease and heart failure.

Study design

Research articles published in English and that report a quantitative relationship between at least one risk factor (demographics, lifestyle factors, or biomarkers) and premature MI. From these studies, we will also assess the relationship between clinical risk factors and premature MI. Articles that exclusively evaluate clinical risk factors but no other risk factors (demographics, lifestyle factors, or biomarkers) will be described qualitatively but will not be included in quantitative analyses. We will include case–control, cohort and cross-sectional studies. The following article types will be excluded: conference abstracts, review papers, systematic reviews, reports from organisations, research thesis (eg, post-graduate, graduate, or undergraduate theses or reports), qualitative articles (eg, focus groups, interviews, or articles that do not provide a quantitative relationship between risk factors and premature MI), editorials, commentaries, opinion pieces, letters to the editor, viewpoints and case reports. We will exclude articles with fewer than 100 cases of premature MI.

Creation of database

We used search terms (developed in consultation with an academic health sciences librarian) to identify articles from electronic research databases. Duplicate results were removed and articles from different databases were merged into a single database and imported to Covidence, an online software product for systematic reviews based on the Cochrane Review process.

Screening, data extraction and risk of bias

For primary screening, the title and abstract were used to identify eligible studies based on selection criteria described above. For secondary screening, full-text articles were screened using selection criteria for primary screening. If an article meets selection criteria, but is not available online, we will make two attempts to contact authors by electronic mail and obtain the full text. Despite this, if the full-text is not available, we will exclude the study. Only English-language articles will be included, which may influence the precision of pooled estimates but not necessarily result in systematic bias.27 Dual abstract and full-text screening will be done using standardised forms.

After a final set of articles is obtained, information will be extracted independently by two investigators using a standardised data extraction form. The form will include the following information: study type, study sites (countries), year of study, year of publication, number of participants, risk factor examined and relationship of risk factor with premature MI (eg, prevalence, incidence rate, relative risk, odds ratio). We will include risk factors prior to and up to 4 weeks following premature MI, as risk factors, particularly biomarkers, following that period may not reflect the acute MI phase and also may be modified by pharmacological treatment. Where possible, we will analyse studies by sex and segregate by world regions defined by the World Bank.28

For the final set of articles, the Newcastle-Ottawa Scale for case–control and cohort studies will be used to evaluate the risk of bias, and will be adapted for cross-sectional studies.29 Studies that do not adjust risk factors for potentially confounding variables will be considered to have higher risk of bias.

For primary and secondary screening, data extraction and risk of bias assessment, conflicts between reviewers will be resolved by discussion between reviewers, and through consultation with a third reviewer, if necessary.

Data synthesis

Based on the quality of the studies that meet final study criteria, we will determine feasibility to conduct a meta-analysis to determine the relationship between risk factors and premature MI. Where applicable, we will present sex-stratified analyses.

If the relative association measures have similar or close adjustment, we will conduct a random-effects meta-analysis (as implemented in the DerSimonian and Laird method) to pool across studies.30 The random-effects model is chosen a priori due to expected variation of studies populations and settings. We will use the I2 index and Cochrane Q test to determine the extent of heterogeneity and whether it is attributable to chance.31 We will use STATA V.15 or higher to conduct analyses. Subgroup analyses based on sex or other relevant factors will be conducted and tested using an interaction test as described.32

Although publication bias assessment methods have been developed for randomised controlled trials, we will attempt to evaluate publication bias in cases where we have more than 10 studies in a meta-analysis. We will visually inspect the funnel plots for symmetry and conduct the Egger regression test.33

Summarising evidence

Based on the Grading of Recommendations, Assessment, Development and Evaluations (GRADE) Working Group recommendations, we will use GRADEpro (https://community.cochrane.org/help/tools-and-software/gradepro-gdt) to build evidence of profiles that meet final eligibility criteria. We will evaluate the quality of evidence (certainty in estimates) using the GRADE approach for each association separately. We will examine the limitations of inclusion studies and whether any elements of indirectness, inconsistency, imprecision or publication bias were present. We will consider increasing the certainty level if the association is strong (ie, large relative effect size over 2.0).

We will include the following elements: number of participants and country where the study is based; type of study (eg, case–control, prospective cohort); prevalence and association of risk factors with premature MI, including relationships that are not statistically significant; analysis of prevalence and association of risk factors by sex and by world region and additional comments or notes related to the study. If data are available, we will conduct a subgroup analysis based on different age thresholds or other factors.

Current study status

At the time of writing this manuscript, primary and secondary screening was completed independently by two investigators and data extraction was in progress.

Ethics and dissemination

This study involves analysis of data from published literature and does not involve individual-level identifiable data. Given this, there were no privacy concerns that required ethical approval.

Results from this study will be presented at conferences and through publication in a peer-reviewed journal.

Patient and public involvement

There was no patient or public involvement in this study.

Discussion

To our knowledge, this will be the first systematic review on the relationship between risk factors and premature MI. Information from this study may be useful for policy makers, government and non-government stakeholders and healthcare providers to develop and implement strategies to reduce the burden of risk factors, and consequently, of premature MI, IHD and CVD.

Several global declarations have focused on tackling the growing NCD burden. For instance, the United Nations World Health Assembly adopted the ꞌ25 ×25ꞌ resolution to reduce premature NCD-related mortality by 25% by the year 20252 and the United Nations sustainable development goals aim to reduce premature NCD-related mortality by one-third by the year 2030.34 35 In this context, our study will identify knowledge gaps with sparse information on risk factors. This will guide development of a strategic research programme to address the rising burden of premature MI and CVD. This is particularly relevant given the sobering update that many countries are not on track to achieve their NCD targets.2 36

Supplementary Material

Reviewer comments
Author's manuscript

Acknowledgments

We thank Dr Edward Callachan and Dr Arshia Shaikh (both from Sheikh Khalifa Medical City, Abu Dhabi, United Arab Emirates) for initial assistance with the systematic review.

Footnotes

Patient consent for publication: Not required.

Contributors: Conceptualisation: AAA, SBD and SM. Formal analysis: APAM, RR, SBD, SNM and YMH. Investigation: APAM and RR. Methodology: AAA, APAM, MHM, SBD, YMH and SM. Project administration: SBD. Supervision: AAA and SM. Validation: SBD and YMH. Writing–original draft: APAM, RR and SBD. Writing–review and editing: AAA, APAM, MHM, RR, SBD, SM, SNM and YMH. Guarantor: AAA, SBD and SM. All authors contributed to manuscript revisions and approved the draft submitted.

Funding: This study was funded by NHLBI grant K24 HL136852 to SM and by a United Arab Emirates-Harvard Medical School Cooperative Research Award (Dubai, United Arab Emirates) to SM and AAA. The funders' and authors’ institutions were not involved in developing this protocol or in the decision to submit this manuscript for publication.

Competing interests: None declared.

Provenance and peer review: Not commissioned; externally peer reviewed.

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Associated Data

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

Supplementary Materials

Supplementary data

bmjopen-2018-023647supp001.pdf (164.9KB, pdf)

Supplementary data

bmjopen-2018-023647supp002.pdf (87.5KB, pdf)

Reviewer comments
Author's manuscript

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