Using Explainable AI Risk Predictions to Nudge Influenza Vaccine Uptake
Influenza, Vaccination, Health Promotion
About this trial
This is an interventional prevention trial for Influenza focused on measuring Flu Vaccine, Choice Architecture, Machine Learning, Perceived Credibility, Personalized Risk Factors, Flu Complications
Eligibility Criteria
Inclusion Criteria:
- Aged 18 or older
- Current Geisinger patient at the time of study
- Falls in the top 10% of patients at highest risk, as identified by the flu-complication risk scores of machine learning algorithm (which operates on coded EHR data)
Exclusion Criteria:
- Has contraindications for flu vaccination
- Has opted out of receiving communications from Geisinger via all of the modalities being tested
Sites / Locations
- Geisinger Clinic
Arms of the Study
Arm 1
Arm 2
Arm 3
Arm 4
Arm 5
No Intervention
Experimental
Experimental
Experimental
Experimental
No-Contact Control
Reminder Control
High Risk Only
High Risk with Explanation Based on Medical Records
High Risk with Explanation Based on Algorithm
Subjects in the no-contact control arm will receive no additional pro-vaccination intervention beyond the health system's normal efforts. Although some patients are currently targeted for flu vaccination encouragement due to a conventional non-ML assessment that they are at high risk for complications, these patients are not told that they are at high risk or that they have been targeted.
Subjects in the reminder control arm will receive messages reminding them to get the flu shot without being advised of their risk status.
Subjects in this treatment arm will receive messages telling them they have been identified to be at high risk for flu complications, without specifying how or why the health system believes this to be the case.
Subjects in this treatment arm will receive messages telling them they have been identified to be at high risk for flu complications via review of their medical records and will be provided a human-understandable short list of the top factors from their medical record that explain their risk.
Subjects in this treatment arm will receive messages telling them they have been identified to be at high risk for flu complications via analysis of their medical records by a computer algorithm and will be provided a human-understandable short list of the top factors from their medical record that explain their risk.