Improve Data Sharing, Analysis, and Monitoring

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Return to Opioid Top-Level Strategy Map Data collection and analysis represents a critical component to community efforts to improve response to drug misuse and substance use disorder.  Data collection across local government and community partners builds knowledge and informs decision making.  Comprehensive, accurate data enables more effective interventions and strategies.  Making certain data publicly available helps informs residents about the scope of the problem and can encourage engagement.   The continued collection and monitoring of critical data provides needed information regarding the effectiveness of a given set of strategies undertaken in each community. 

 


Understanding the Problem - Data Collection and Analysis

A key goal of any effort to address the current epideic is to use multi-sector data to inform response strategies and decision making.  Most communities need to break down data silos so that various public, privaate, and community partners can engage effectively.  This process also increases understanding and fosters collaboration.  All participants need to understand what is happening in their community in order to have agreement about what strategies would be most effective.

Questions to Consider

Substance use disorder and drug misuse are complex problems requiring a comple set of solutions.  Most communities will start their exploration of data by looking at the most severe harms - including fatal and non-fatal overdoses.  Knowing the numbers is important to understand the scope of the problem, but to guide response more data is required.  For example, where are the overdoses occuring?  What are the demographics?  What type of substance, or combination, is involved?

This starting point typically leads to other questions that require additional data in order to identify gaps in services and implementation of strategies to fill such gaps.  Some examples include:

 

 

Potential Data Sources

 

Building and Sharing Data

 

Data Sharing Agreements

 

Reporting Data

 

Public Reporting

 

Making Data Informed Decisions

 

Tracking Progress through Data Collection



 

Additional Resources

 

 

 

PAGE MANAGER: [insert name here] SUBJECT MATTER EXPERT: [fill out table below]

Reviewer Date Comments
     

Sources

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