International Journal of Health Statistics

International Journal of Health Statistics

International Journal of Health Statistics – Article Processing Charges

Open Access & Peer-Reviewed

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Article Processing Charges

Transparent APC guidance for health statistics research.

Open Access Publishing Support

APCs sustain rigorous peer review and ensure global access to statistical methods and evidence.

Our team provides documentation to support funder and institutional compliance.

40%Max Fee Discount
3Free Publications
48hrPriority Review
500+Global Members

APC Overview

Article Processing Charges support peer review coordination, production, metadata registration, and online hosting. APCs are applied only after acceptance and enable open access to health statistics research.

There are no submission fees. Authors retain copyright while enabling broad reuse under open access licensing.

What the APC Covers

APCs support the publishing services that keep statistical research accessible and citable:

  • Editorial screening and peer review management
  • Copyediting and layout preparation
  • DOI registration and metadata distribution
  • Online hosting and archiving support
  • Author support during production

Waivers and Discounts

We evaluate waiver requests for authors from low and lower middle income economies and for projects with strong public health impact. Requests are reviewed case by case.

Contact the editorial office early if you anticipate the need for a waiver.

  • Equity focused research considerations
  • Institutional partnership discounts
  • Early career and trainee support

Submission Options

Select the submission route that aligns with your workflow. Both routes are reviewed equally.

  • ManuscriptZone submission: https://oap.manuscriptzone.net/
  • Simple submission form: https://openaccesspub.org/manuscript-submission-form

Additional Context

APCs support sustainable open access publishing and ensure statistical advances reach global audiences without access barriers.

Many funders and institutions cover APCs for open access dissemination; confirm coverage during project planning.

Waiver requests are considered for authors from low and lower middle income economies or for equity focused research programs.

Invoices include payment instructions and documentation for grant compliance and institutional reporting needs.

If you require a formal quote, contact [email protected] before acceptance.

For multi institution collaborations, consolidated invoicing can be arranged to simplify administrative processes.

Institutional library agreements may cover APCs; confirm eligibility with your open access office.

Waiver considerations prioritize research with direct public health relevance or health equity impact.

APC payments should be completed promptly to avoid delays in production scheduling.

Clear statistical reporting improves the interpretability of health evidence for clinicians, policymakers, and research funders.

We encourage authors to document assumptions and sensitivity analyses so conclusions remain robust across populations.

Transparent reporting of data provenance and governance supports reproducibility and ethical compliance in health statistics.

Well structured manuscripts accelerate peer review and help readers apply statistical insights to real world health decisions.

Describe cohort selection, inclusion criteria, and data exclusions to reduce ambiguity in analytic interpretation.

Provide uncertainty measures such as confidence intervals or credible intervals for key estimates and model outputs.

Explain how missing data were handled and why chosen strategies were appropriate for the study design.

When presenting predictive models, report calibration, discrimination, and decision curve metrics where relevant.

Define statistical terminology clearly for multidisciplinary readers who apply methods in clinical settings.

Summaries that connect statistical findings to health outcomes improve translation to policy and practice.

Report software versions and packages to support reproducibility across analytic environments.

When combining datasets, document linkage procedures and quality checks for matching accuracy.

Highlight ethical safeguards for patient privacy, especially when working with linked or sensitive datasets.

Include brief rationale for study design choices to support reviewer understanding and methodological transparency.

Use tables and figures to communicate effect sizes, uncertainty, and subgroup comparisons clearly.

If external validation is performed, describe population differences and implications for generalizability.

Describe any model tuning or hyperparameter selection to support reproducibility in machine learning workflows.

If data access is restricted, describe the approval process for qualified researchers and expected timelines.

For time series analyses, describe seasonality handling and any interventions or policy changes considered.

When reporting health disparities, describe how social determinants and contextual factors are measured.

Include data dictionary summaries or variable definitions for key covariates to improve interpretability.

Manuscripts benefit from concise discussion of clinical relevance and potential implications for health systems.

Provide transparency about funding sources and potential conflicts of interest affecting analytic decisions.

Ensure titles and abstracts reflect the statistical contribution and health domain application accurately.

A clear narrative of methods to results supports readers who are translating findings into practice.

Explain how sampling weights or survey design elements were applied in national or regional datasets.

Sensitivity analyses for key assumptions increase confidence in the robustness of conclusions.

When applicable, provide code or pseudo code to clarify analytic steps for replication.

Include brief discussion of how statistical uncertainty affects decision thresholds or policy interpretation.

For diagnostic accuracy studies, report sensitivity, specificity, and confidence intervals with clear thresholds.

Describe any weighting adjustments or post stratification steps used for population level inference.

If models are updated over time, explain monitoring plans and criteria for recalibration.

Summarize key data limitations and how they might influence interpretation of results.

For health services research, describe care setting context and organizational factors influencing outcomes.

When using hierarchical models, report variance components and interpret them for applied audiences.

Report transformation or normalization steps used for biomarkers or laboratory measures.

Plan Your Submission

Understand APC coverage and choose the right submission path.