OMB Individually Reported

Automated Analysis of Injury Control Research Center (ICRC) Annual Progress Reports (APRs) using Large Language Models

Low riskExact public inventory row

Description

The AI is designed to streamline the review process of Annual Progress Reports (APRs) submitted by Injury Control Research Centers (ICRCs), improve efficiency, and support the evaluation of the performance and progress of ICRC-funded activities.

Detailed example

The AI analyzes the textual content of APRs, focusing initially on sections detailing the challenges faced by ICRCs. It identifies key themes, trends, and critical information that may require further attention. The AI methodology extracts insights and patterns from the data, which can then be compared with manual qualitative analysis outcomes. In subsequent stages, the AI will be expanded to analyze other sections of the APRs, such as progress toward goals and program impact.

AI / analytics pattern

Natural Language Processing: AI that processes, interprets, and shares information in human language.

Automation level / stage

b) Pilot – The use case has been deployed in a limited test or pilot capacity.

Expected benefit

The AI will help quickly and efficiently identify key challenges and insights from ICRC APRs, enabling more effective decision-making in the review process. By automating the extraction and analysis of critical information, the AI allows the ICRC team to focus on higher-level evaluation and strategic planning. This will reduce the time and resources needed for manual review, improve the consistency and accuracy of assessments, and facilitate faster responses to ICRC needs. Ultimately, this will support ICRCs in overcoming challenges and achieving their research and injury control goals, benefiting the public health system as a whole.

Controls / human review

ATO: Yes; PIA: Not published

Data needed

Injury Control Research Center Annual Progress Reports