JMIR Public Health and Surveillance

A multidisciplinary journal that focuses on the intersection of public health and technology, public health informatics, mass media campaigns, surveillance, participatory epidemiology, and innovation in public health practice and research.

Editor-in-Chief:

Travis Sanchez, DVM, MPH, Emory University Rollins School of Public Health, USA


Impact Factor 3.9 CiteScore 6.3

JMIR Public Health and Surveillance (JPHS, Editor-in-chief: Travis Sanchez, Emory University/Rollins School of Public Health) is a top-ranked (Q1) Clarivate (SCIE, SSCI etc), ScopusPubMed, PubMed CentralMEDLINE, Sherpa/Romeo, DOAJ, Embase, CABI, and EBSCO/EBSCO essentials indexed, peer-reviewed international multidisciplinary journal with a unique focus on the intersection of innovation and technology in public health, and includes topics like public health informatics, surveillance (surveillance systems and rapid reports), participatory epidemiology, infodemiology and infoveillance, digital disease detection, digital epidemiology, electronic public health interventions, mass media/social media campaigns, health communication, and emerging population health analysis systems and tools. 

JMIR Public Health and Surveillance received a Journal Impact Factor of 3.9ranked Q1 #59/419 journals in the category Public, Environmental & Occupational Health (Journal Citation Reports 2025 from Clarivate).

JMIR Public Health and Surveillance received a Scopus CiteScore of 6.3 (2024), placing it in the 84th percentile (#110/687) as a Q1 journal in the field of Public Health, Environmental and Occupational Health.

JPHS has an international author- and readership and welcomes submissions from around the world.

We publish regular articles, reviews, protocols/system descriptions and viewpoint papers on all aspects of public health, with a focus on innovation and technology in public health. The main themes/topics covered by this journal can be found here.

Apart from publishing traditional public health research and viewpoint papers as well as reports from traditional surveillance systems, JPH was one of the first (if not the only) peer-reviewed journals to publish papers with surveillance or pharmacovigilance data from non-traditional, unstructured big data and text sources such as social media and the Internet (infoveillance, digital disease detection), or reports on novel participatory epidemiology projects, where observations are solicited from the public.  

Among other innovations, JPHS is also dedicated to support rapid open data sharing and rapid open access to surveillance and outbreak data. As one of the novel features we plan to publish rapid or even real-time surveillance reports and open data. The methods and description of the surveillance system may be peer-reviewed and published only once in detail, in a  "baseline report" (in a JMIR Res Protoc or a JMIR Public Health & Surveill paper), and authors then have the possibility to publish data and reports in frequent intervals rapidly and with only minimal additional peer-review (we call this article type "Rapid Surveillance Reports"). JMIR Publications may even work with authors/researchers and developers of selected surveillance systems on APIs for semi-automated reports (e.g. weekly reports to be automatically published in JPHS and indexed in PubMed, based on data-feeds from surveillance systems and minimal narratives and abstracts).

Furthermore, during epidemics and public health emergencies, submissions with critical data will be processed with expedited peer-review to enable publication within days or even in real-time.

We also publish descriptions of open data resources and open source software. Where possible, we can and want to publish or even host the actual software or dataset on the journal website.

Recent Articles

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Vulnerable Populations in Health Research

The triglyceride-glucose (TyG) index and blood pressure (BP) status are key indicators associated with coronary heart disease (CHD). While limited research has focused on individuals with disabilities.

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GIS (Geographic Information Systems) Applications in Public Health and Spatial Epidemiology

Condyloma acuminata (CA), the clinical manifestation of infection with low-risk human papillomaviruses (HPV 6 and 11), is a common sexually transmitted infection (STI) with recurrent lesions and notable psychosocial and health system burden. Recent evidence indicates a substantial global burden, with prevalence ranging from 0.5% to 33.1% and incidence from 24 to 2940 per 100,000 person-years, varying by age, sex, time, and geography. In South Korea, national insurance data show sustained increases in patients receiving care for CA during 2010 to 2019. Beyond individual behaviors, spatial proximity and contextual factors can produce clustered STI risk. However, the municipal-level spatial distribution of CA in Korea and its contextual correlates remain understudied.

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Health Services in Resource-Poor Settings and LMICs

Chronic kidney disease and end-stage renal disease are major contributors to the disease burden in low- and middle-income countries, including Indonesia. Despite the expansion of universal health coverage through Badan Penyelenggara Jaminan Sosial (BPJS) Kesehatan, Indonesia’s national health insurance program, disparities in access to hemodialysis persist across different socioeconomic and geographic groups. Understanding these inequities is critical to advancing equitable health care access.

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Longitudinal and Cohort Studies in Public Health

Interpersonal violence (IV) has an extensive and profound impact on health, representing a public health concern. Different health outcomes have been identified based on the characteristics of the survivor and the abuser, their relationship, the type of violence perpetrated, and the cumulative effect of multiple violent experiences.

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Protocols for Public Health Research and Surveillance

Despite the proven efficacy of pre-exposure prophylaxis (PrEP) in reducing the risk of HIV transmission, uptake remains suboptimal among populations with limited access and availability to PrEP-prescribing locations, particularly in the Southern United States. The accessibility of pharmacies positions them as a promising resource for expanding PrEP delivery and access and supporting uptake and adherence through HIV prevention programs to reduce geographic disparities.

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Surveillance Systems

Timely surveillance of diabetes mellitus remains a challenge for public health agencies. In this study, researchers compared Type 2 Diabetes (T2D) prevalence estimates using electronic health record (EHR) data and computable phenotypes (CPs) as defined and applied by two independent networks. One network, Assessing the Burden of Diabetes by Type in Children, Adolescents, and Young Adults (DiCAYA) was a research consortium, and the other, the Multi-State EHR-Based Network for Disease Surveillance (MENDS), was designed to be a practice-based public health surveillance network.

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Descriptive Epidemiology and Population Size Estimates

Electronic healthcare databases are widely used for epidemiological studies. However, they may contain inactive records of individuals no longer participating in the healthcare system. These inactive records create a methodological challenge as they systematically appear as unexposed with no recorded outcomes. Given the widespread healthcare system engagement during the COVID-19 pandemic, the English National Health Service (NHS) which hosts a national pandemic planning and research dataset, with linkage to COVID-19 vaccination and emergency care data make it an ideal setting to identify the extent of overrepresentation due to inactive healthcare records, and assess ways to mitigate them.

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Viewpoint and Opinions on Technology and Innovation in Public Health

Machine learning (ML), a subset of artificial intelligence, uses large datasets to identify patterns between potential predictors and outcomes. ML involves iterative learning from data and is increasingly used in population and public health. Examples include early warning of infectious disease outbreaks, predicting the future burden of non-communicable diseases, and assessing public health interventions. However, ML can inadvertently produce biased outputs related to the quality and quantity of data, who is engaged and helping direct the analysis, and how findings are interpreted. Specific guidelines for using ML in population and public health have not yet been created. We assembled a diverse team of experts in computer science, statistical modeling, clinical and population health epidemiology, health economics, ethics, sociology, and public health. Drawing on literature reviews and a modified Delphi process, we identified five key recommendations: (1) prioritize partnerships and interventions to support structurally disadvantaged communities; (2) use ML for dynamic situations, such as public health emergencies, while adhering to ethical standards; (3) conduct risk assessments and bias mitigation strategies aligned with identified risks; (4) ensure technical transparency and reproducibility by publicly sharing data sources and methodologies; (5) foster multidisciplinary dialogue to discuss the potential harms of ML-related bias and raise awareness among the public and public health community. The proposed guidelines provide operational steps for stakeholders, ensuring that ML tools are not only effective but also ethically grounded and feasible in real-world scenarios.

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Behavioural Surveillance for Public Health

A particular challenge during the Covid-19 pandemic was to provide testing and treatment for already disadvantaged and vulnerable populations. Many states implemented testing in a sporadic and disorganized way, and it is unclear to what extent this disproportionally affected populations experienced barriers to accessing care. It is also unclear that if potential barriers to testing were due to systemic challenges, such as rurality, or whether there were underlying individuals’ motivations for not getting tested.

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Longitudinal and Cohort Studies in Public Health

The major drawback of a cohort study design is the loss to follow-up, which increases selection bias and threatens external validity, particularly in online surveys. It is important to identify factors beyond population or demographics that influence nonresponse rates in cohort studies.

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Cross-Sectional Studies in Public Health

Ultraprocessed food (UPF) consumption is very common among adolescents. Previous studies have suggested an association between UPF consumption and adolescent mental health problems, but studies on multiethnic adolescents in China are rare.

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Prevention and Health Promotion

Human papillomavirus (HPV) is a primary causative agent of cervical cancer, accounting for over 90% of cases worldwide. Epidemiological data on regional HPV prevalence and genotype distribution are critical for tailoring targeted cervical cancer prevention strategies, particularly in regions with limited population-based studies.

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Preprints Open for Peer-Review

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