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A Feasibility and Acceptability Study of a Large Language Model-based Chatbot for Brief Alcohol Intervention Among Emerging Adults

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Mass General Brigham

Status

Begins enrollment in a year or more

Conditions

Alcohol Use Disorder

Treatments

Behavioral: Large language model-based chatbot brief alcohol intervention session

Study type

Interventional

Funder types

Other
NIH

Identifiers

NCT07214831
R34AA032472 (U.S. NIH Grant/Contract)
2025P001459

Details and patient eligibility

About

American emerging adults (EAs; aged 18-29 years) have the highest rates of alcohol use disorder (AUD) and the lowest levels of treatment engagement of any age group. Innovative, scalable, and cost-effective strategies are needed to expand early detection and intervention for EAs engaged in patterns of drinking associated with AUD. Because digital technology use is frequent among EAs, digital interventions may be a particularly suitable way to reach this population. Prior studies of digital alcohol interventions demonstrate modest but consistent reductions in alcohol use, but these tools are often limited by a lack of interactivity and personalization. Large language model (LLM)-based chatbots, such as ChatGPT, may address these limitations by enabling personalized, adaptive, and human-like engagement. These features have the potential to increase uptake and engagement with screening and brief interventions among EAs. This study will develop, validate, and conduct an open trial of an LLM-based chatbot-delivered brief intervention designed to reduce alcohol use and problems among EAs, with the primary goal of establishing preliminary feasibility and acceptability.

Full description

This feasibility and acceptability study will develop, validate, and conduct a Phase I single-arm open trial of a large language model (LLM)-based chatbot-delivered brief intervention designed to reduce alcohol use and problems among EAs. To develop the augmented LLM, the investigators will use instruction fine-tuning to enhance conversational abilities within the context of brief interventions based on high-fidelity recordings of sessions from prior clinical trials and simulated patient-provider interactions. A retrieval augmented generation system will be developed to ensure the model delivers accurate information. The augmented LLM will be incorporated into a chatbot interface delivered through a user-friendly web application. To validate the chatbot's capability for delivering brief alcohol interventions, patient actors (clinical or counseling psychology PhD students) will be assigned clinical vignettes depicting diverse EAs with patterns of drinking associated with alcohol use disorder. Patient actors will engage in two randomly ordered online text-based brief intervention sessions for each vignette (one with the chatbot and one with a human clinician). Blinded transcripts from sessions will be reviewed by experts to assess treatment fidelity. To maximize and test initial feasibility and acceptability of the intervention, the investigators will conduct semi-structured interviews with 20 EAs who report hazardous drinking, followed by an open trial with another 20 EAs.

Enrollment

20 estimated patients

Sex

All

Ages

18 to 29 years old

Volunteers

No Healthy Volunteers

Inclusion criteria

  • 18-29 years old
  • Engaged in past-month hazardous drinking (consuming ≥ 5/4 drinks for men/women on two or more occasions in the past month) or exceeded recommended guidelines for risky drinking (> 14/7 drinks per week for men/women)
  • Able to read and comprehend English at a 5th grade level

Exclusion criteria

  • Report a history of or active psychosis
  • Previous or current engagement in alcohol or drug treatment
  • Risk for alcohol withdrawal as evidenced by very heavy weekly drinking reports on the alcohol screener (> 40 standard drinks in a typical week in the past month)
  • Demonstrate inability or unwillingness to attend in-person office visits
  • Demonstrate inability or unwillingness to identify an emergency contact who could be contacted in case the participant becomes lost to follow-up

Trial design

Primary purpose

Treatment

Allocation

N/A

Interventional model

Single Group Assignment

Masking

None (Open label)

20 participants in 1 patient group

Large language model-based chatbot brief alcohol intervention
Experimental group
Description:
All participants will interact with a large language model-based chatbot designed to deliver a brief alcohol intervention session.
Treatment:
Behavioral: Large language model-based chatbot brief alcohol intervention session

Trial contacts and locations

1

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Central trial contact

Alex M Russell, PhD; Samuel F Acuff, PhD

Data sourced from clinicaltrials.gov

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