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Nursing, Professional Curiosity and Big Data CoCreating eHealth.

Paula M Procter1, Marisa L Wilson2

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Summary
This summary is machine-generated.

This study tracks how big data, especially population health and social determinants of health data, influences co-created electronic health (eHealth) in nursing over three years. It highlights evolving themes and personal development in distributed think tanks.

Keywords:
Nursingcontext based carehealth inequalitiespopulation health dataprofessional curiositysocial determinants of health

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Area of Science:

  • Nursing Informatics
  • Health Data Science
  • Digital Health

Background:

  • Annual deep dive study tracks within a national conference setting over three years.
  • Exploration of the evolving influence of big data on eHealth generation.
  • Focus on population health and social determinants of health data in nursing.

Purpose of the Study:

  • To analyze the changing influence of big data on co-created eHealth in the nursing domain.
  • To report on discussion themes and evolving ideas from delegates over time.
  • To present the work as an example of connected reasoning and personal development.

Main Methods:

  • Longitudinal study design over three consecutive years.
  • Qualitative analysis of discussion themes and delegate feedback.
  • Collaborative approach involving conference delegates in a think tank setting.

Main Results:

  • Identification of key themes and evolving ideas regarding big data's impact on nursing eHealth.
  • Demonstration of personal and collective development through sustained engagement.
  • Establishment of a distributed think tank model for ongoing discourse.

Conclusions:

  • Big data, particularly population and social determinants of health data, significantly shapes co-created eHealth in nursing.
  • Sustained engagement and collaborative environments foster innovation and development in digital health.
  • The study provides a model for distributed knowledge generation and debate in the field.