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A Sociolinguistic-enabled Web Application to Develop Precision Health Intervention for African Americans

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University of Florida

Status

Completed

Conditions

Colorectal Cancer

Treatments

Behavioral: Text-only
Behavioral: Low Dialectal
Behavioral: High Dialectal
Behavioral: Non-Dialectal

Study type

Interventional

Funder types

Other
NIH

Identifiers

NCT04705363
IRB202001790-N
UL1TR001427 (U.S. NIH Grant/Contract)

Details and patient eligibility

About

This pilot study will explore the preliminary efficacy of a colorectal cancer (CRC) screening intervention delivered by Virtual Human Agents (VHAs). Seven hundred fifty participants aged 45 to 75 will be recruited through Qualtrics panels. The study examines how different levels of dialectal linguistic features willingness to be screened for colorectal cancer. Participants will be randomly assigned to interact with one of four VHA conditions: a VHA using non-dialectal linguistic features, a VHA with a low level of dialectal linguistic features integrated, a VHA with a high level of dialectal linguistic features integrated, or a text-only control condition. Following the interaction, participants will complete survey measures to assess perceived willingness to be screened.

Full description

African Americans experience significant health inequities, including higher morbidity and mortality rates due to colorectal cancer (CRC) compared to White Americans. While the causes of these disparities are complex, regular screening can help reduce them. However, adherence to CRC screening guidelines remains low, particularly among African Americans.

One strategy to reduce CRC screening disparities is using strategic communication interventions to promote the fecal immunochemical test (FIT). FIT is a low-cost, non-invasive screening method that alleviates common patient barriers to CRC screening and is as effective as colonoscopy in reducing CRC incidence and mortality.

Tailored messaging interventions have been shown to improve CRC screening rates. However, two critical questions must be addressed before implementing tailored screening interventions within healthcare systems: (1) To what extent must message content be tailored to be effective? and (2) How can participants be effectively engaged?

This study builds upon an existing project that utilizes mobile Virtual Human Technology (VHT) to deliver tailored CRC screening messages. Virtual Human Agents (VHAs) provide a unique opportunity to customize communication strategies, including linguistic adaptation, to align with patient preferences. Such interventions can help mitigate CRC screening barriers such as cultural mismatch and low self-efficacy.

This study investigates explicitly the role of dialectal linguistic features in shaping willingness to be screened for CRC. The pilot study is exploratory in nature and seeks to examine the following aim: To assess how tailoring the dialectal variety of VHA speech affects willingness to be screened for CRC.

We aim to recruit 750 participants, each of whom will interact with a VHA that varies in speech style across four conditions: (1) non-dialectal linguistic features, (2) a low-level integration of dialectal linguistic features, (3) a high-level integration of dialectal linguistic features, or (4) a voiceless, text-only control. Following the interaction, participants will assess the VHA's credibility using survey-based measures.

Enrollment

751 patients

Sex

All

Ages

45 to 75 years old

Volunteers

No Healthy Volunteers

Inclusion criteria

  • Out of guidelines for colorectal cancer screening
  • No fecal immunochemical test within the last 12 months
  • No colonoscopy within the last ten years)

Exclusion criteria

  • Must meet inclusion criteria

Trial design

Primary purpose

Screening

Allocation

Randomized

Interventional model

Parallel Assignment

Masking

Double Blind

751 participants in 4 patient groups

Text-only
Active Comparator group
Description:
A virtual health assistant that will consist of photos of the computer-generated doctor with text that will guide participants through the interaction. No voice will accompany the photos or text.
Treatment:
Behavioral: Text-only
High Dialectal
Experimental group
Description:
A virtual health assistant that will consist of an interactive computer-generated doctor with voice that used high dialectal variation that will guide participants through the interaction.
Treatment:
Behavioral: High Dialectal
Low Dialectal
Experimental group
Description:
A virtual health assistant that will consist of an interactive computer-generated doctor with voice that used low dialectal variation that will guide participants through the interaction.
Treatment:
Behavioral: Low Dialectal
Non-Dialectal
Experimental group
Description:
A virtual health assistant that will consist of an interactive computer-generated doctor with voice that used no dialectal variation that will guide participants through the interaction.
Treatment:
Behavioral: Non-Dialectal

Trial documents
2

Trial contacts and locations

1

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Central trial contact

Janice Krieger, PhD; Kevin Tang

Data sourced from clinicaltrials.gov

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