PROJECT SUMMARY
Depression and anxiety are highly comorbid and costly diseases. Evidence-based psychotherapy is the first-line
treatment but is underutilized and not scalable. Digital mental health interventions (DMHIs), delivered via the
internet and/or mobile apps, have evolved as efficacious and potentially scalable treatments. To date, however,
effectiveness in routine care is limited by insufficient patient engagement. In order to achieve the transformative
potential of DMHIs, we must identify strategies to keep patients engaged without adding human support in a
form that would limit scalability. Automated motivational push messaging (AMM) and light-touch human coach
support (CS) offer two such strategies. The proposed research tests these strategies, while drawing preliminary
conclusions about a hypothesized model of DMHI engagement based on the technology adoption and treatment
adherence literature. The model posits that two systems-level constructs (social influence and facilitating
conditions) and three patient-level constructs (attitude, self-efficacy, habit strength) drive DMHI engagement. In
Study 1 (N=20), I will employ user-centered design to develop and refine a set AMMs targeting the three
hypothesized patient-level engagement-driving constructs (Aim 1). In Study 2, I will recruit N=76 primary care
patients with depression and/or anxiety via provider referral to an 8-week 2x2 factorial clinical trial whereby
participants will all receive access to a DMHI with known efficacy and be randomized to an engagement strategy
condition (i.e., a previously-validated CS protocol, newly-developed AMM, both or neither). To further understand
how AMMs function, message delivery in the AMM arms will be micro-randomized: each day participants will be
randomized to receive a message or not, such that they receive an average of 4.2 messages/week.
Microrandomization allows causal inference about the near-term impact of message delivery (i.e., are AMMs a
cue to action) and the relationship between message impact and context (e.g., time of day the message is
delivered). Measured outcome data will comprise level of engagement (operationalized as minutes of DMHI
use), weekly self-reports on the five engagement-driving constructs, and weekly self-reports of clinical outcomes.
I will test impacts of each strategy on measured outcome data (Aim 2) and explore the hypothesized relationships
between engagement-driving constructs and DMHI engagement (Aim 3). Clinical outcomes will be assessed,
however, consistent with the experimental therapeutics model, this research leverages a DMHI with known
efficacy, allowing the focus to be an upstream target (patient engagement) rather than the clinical outcomes
themselves. The overarching goal is to influence the target so as to ultimately enhance clinical effectiveness.
This project will build my expertise in clinical trial design and build my proficiency in user-centered design (i.e.,
rapid, prototype testing via field studies) and data science (i.e., analysis of intensive, correlated longitudinal data)
methods commonly applied in DMHI optimization research. Findings will lay a foundation for R01s aimed at
optimizing DMHIs for engagement, and ultimately effectiveness, when integrated into routine care.