Data

Treatment Barriers for Chronic Pain among Australian Farming Communities

Deakin University
Verma, Iksheta ; Kennedy, Alison ; Cotton, Jacquie ; Webster, Milly Bronwyn
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ctx_ver=Z39.88-2004&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Adc&rfr_id=info%3Asid%2FANDS&rft_id=info:doi10.26187/deakin.30866522.v1&rft.title=Treatment Barriers for Chronic Pain among Australian Farming Communities&rft.identifier=10.26187/deakin.30866522.v1&rft.publisher=Deakin University&rft.description=This dataset contains quantitative survey responses and linked health and lifestyle data used to examine barriers preventing Australian farmers from accessing effective treatment for chronic pain. The research addresses a significant gap in rural health by identifying how pain severity, functional impact, and self-efficacy relate to demographic, occupational, and health characteristics within farming populations. The primary data consists of structured questionnaire responses collected online using Qualtrics on validated instruments including the Pain, Enjoyment of Life and General Activity scale and the Pain Self-Efficacy Questionnaire. The dataset also incorporates selected variables extracted from the National Centre for Farmer Health’s Health and Lifestyle Assessment records, including physiological measures, lifestyle behaviours, psychological distress indicators and self-reported wellbeing. All records are de-identified and stored in standard spreadsheet formats to support statistical analysis. Data cleaning procedures include consistency checks, handling of missing values and preparation of derived variables required for analysis. The combined dataset enables exploration of pain burden, treatment barriers and associations between health characteristics and help-seeking behaviour among farmers. The resulting analyses contribute evidence to inform development of tailored chronic pain support programs and improved rural health service planning.&rft.creator=Verma, Iksheta &rft.creator=Kennedy, Alison &rft.creator=Cotton, Jacquie &rft.creator=Webster, Milly Bronwyn &rft.date=2025&rft.edition=1&rft_rights= https://creativecommons.org/publicdomain/zero/1.0/&rft_subject=Chronic pain&rft_subject=Australian farming communities&rft_subject=Treatment barriers&rft_subject=Rural health&rft.type=dataset&rft.language=English Access the data

Full description

This dataset contains quantitative survey responses and linked health and lifestyle data used to examine barriers preventing Australian farmers from accessing effective treatment for chronic pain. The research addresses a significant gap in rural health by identifying how pain severity, functional impact, and self-efficacy relate to demographic, occupational, and health characteristics within farming populations. The primary data consists of structured questionnaire responses collected online using Qualtrics on validated instruments including the Pain, Enjoyment of Life and General Activity scale and the Pain Self-Efficacy Questionnaire. The dataset also incorporates selected variables extracted from the National Centre for Farmer Health’s Health and Lifestyle Assessment records, including physiological measures, lifestyle behaviours, psychological distress indicators and self-reported wellbeing. All records are de-identified and stored in standard spreadsheet formats to support statistical analysis. Data cleaning procedures include consistency checks, handling of missing values and preparation of derived variables required for analysis. The combined dataset enables exploration of pain burden, treatment barriers and associations between health characteristics and help-seeking behaviour among farmers. The resulting analyses contribute evidence to inform development of tailored chronic pain support programs and improved rural health service planning.

Issued: 17 12 2025

Created: 17 12 2025

Modified: 17 12 2025

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