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Building flexible data structure for disaster response.

Margaret S Wright1

  • 1Department of Nursing, Kean University, New Jersey, Union, USA.

The International Journal of Health Planning and Management
|November 4, 2023
PubMed
Summary
This summary is machine-generated.

Public health emergencies require community-led data. This plan outlines how public health and communities can collaborate to develop and use real-time local data for evidence-based decision-making during crises.

Keywords:
competenciesdecision support systemsdisasterdisaster relief planningpublic healthstandards of care

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Area of Science:

  • Public Health
  • Data Science
  • Emergency Management

Background:

  • Communities increasingly lead public health emergency responses.
  • Existing data systems often lack real-time, localized data crucial for community decision-making.
  • This data gap leads to contested and erratic emergency response decisions.

Purpose of the Study:

  • To develop a collaborative plan for public health and communities to create, understand, and utilize real-time data during public health emergencies.
  • To define roles and activities for public health agencies, community decision-makers, and community members.
  • To focus on communities lacking in-house data support.

Main Methods:

  • Proposed actions to build data infrastructure for public health disaster response, emphasizing local data needs.
  • Utilized 'crisis standards of care' and National Planning Frameworks as guiding principles.
  • Focused on communities without dedicated data providers.

Main Results:

  • Actions organized within the 'crisis standards of care' framework.
  • Proposed actions align with Public Health Accreditations Board (PHAB) domains and core public health competencies.
  • Many proposed actions are scalable to larger, well-resourced responses.

Conclusions:

  • Forward planning and practice using 'crisis standards of care' and National Planning Frameworks can build essential data-access relationships for immediate decision-making.
  • The 'crisis standards of care' model provides a framework for adapting to shifting needs and resource access during emergencies.
  • This approach enhances transparency, community focus, and equitable response, leading to better outcomes and community engagement.