# Integrating Community Based Participatory Research and Machine Learning Methods to Predict Youth Substance Use Disorders for Urban Cities in New Jersey

> **NIH NIH DP1** · YALE UNIVERSITY · 2024 · $1,172,500

## Abstract

Project Summary
 My lab uses a community-based participatory research approach to reduce health disparities in
substance use among Black and Hispanic youth in urban communities. We primarily work in New Jersey (NJ)
due to our close ties with Paterson and East Orange, NJ which both have the highest number of substance use
disorders in the State and the largest group of racial-ethnic minorities (e.g. Black and Hispanic) in the state. My
lab intentionally works on the community level as we have found that one-size-fits all approaches to ending the
youth substance use epidemic will not work, particularly in communities that have been historically
marginalized. Our recent work has discovered that targeting individual level behaviors to promote behavior
change may not be enough to end the youth substance use epidemic and in fact, understanding the role of
neighborhood characteristics may be a more plausible strategy. In our work, we have shown that
predominantly urban communities such as Paterson, NJ and East Orange, NJ have some of the lowest
neighborhood resources associated with healthy youth development and therefore can contribute to likelihood
of using substances and becoming addicted. In addition, the use of complex statistical methods and study
designs, may contribute to lack of mistrust of researchers, participation in studies and of the data by
community members.
 We hypothesize that within predominantly urban communities, there is variability in structural risk and
asset-based neighborhood characteristics associated with youth substance use. In line with using a social
determinants of health approach, environmental and place-based factors have long been equated with health
outcomes such as respiratory conditions (e.g. asthma) among youth. However, determining the exact
resources within the community that contributes to substance use disorders have not been discovered. The
field of addiction does not know the exact characteristics within a neighborhood that can serve as either
protective or risk factors to substance use disorders within an urban community.
 In this Pioneer proposal which is responding to the RFA-DA-23-026, “NIDA Racial Equity Visionary
Award DP1 mechanism”, we will combine innovative approaches and multiple forms of data to investigate
neighborhood level factors by using participatory methods to co-create machine learning systems to predict
and prevent substance use disorders with community members. We intend for this project to promote co-
learning between community members and researchers that can lead to sustainable solutions for the
community. The proposed work will shed light on the importance of place in addiction and also work towards
eliminating racial bias in data sets and predictive algorithms by incorporating community members in all stages
of the model development process. Findings from this study have the potential to change the way we as
researchers conduct substance use and misuse prevention research and the wa...

## Key facts

- **NIH application ID:** 10894235
- **Project number:** 5DP1DA058982-02
- **Recipient organization:** YALE UNIVERSITY
- **Principal Investigator:** Ijeoma Opara
- **Activity code:** DP1 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2024
- **Award amount:** $1,172,500
- **Award type:** 5
- **Project period:** 2023-08-01 → 2025-06-30

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10894235

## Citation

> US National Institutes of Health, RePORTER application 10894235, Integrating Community Based Participatory Research and Machine Learning Methods to Predict Youth Substance Use Disorders for Urban Cities in New Jersey (5DP1DA058982-02). Retrieved via AI Analytics 2026-05-23 from https://api.ai-analytics.org/grant/nih/10894235. Licensed CC0.

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