S.T.A.N.D. Alacrity Center Signature Project

Purpose

The purpose of this study is to evaluate clinical decision-making algorithms for (a) triaging to level of care and (b) adapting level of care in a low income, highly diverse sample of community college students at East Los Angeles College (ELAC). The target enrollment is 200 participants per year, for five years (N=1000). Participants are between the ages of 18 and 40 years and will be randomized into either symptom severity decision-making (SSD) or data-driven decision-making (DDD). Participants in each condition will be triaged to one of three levels of care, including self-guided online prevention, coach-guided online cognitive behavioral therapy, and clinician-delivered care. After initial triaging, level of care will be adapted throughout the entire time of the study enrollment. Participants will complete computerized assessments and self-report questionnaires as part of the study. Recruitment will take place in the first two to four months of each academic year. The total length of participation is 40 weeks.

Conditions

  • Depression
  • Anxiety

Eligibility

Eligible Ages
Between 18 Years and 40 Years
Eligible Genders
All
Accepts Healthy Volunteers
No

Inclusion Criteria

  • Currently enrolled in the East Los Angeles College - Either uninsured or covered by California Medicaid - Own or have private access to internet to complete the assessments and online prevention and therapy programs

Exclusion Criteria

  • Unable to fully comprehend the consent form, respond adequately to screening questions, or maintain focus or to sit still during assessment - Diagnosed with disorders requiring more specialized care (e.g., psychotic disorder, severe eating disorder, severe substance use disorder, severe neurological disorder), or marked cognitive impairment - Currently treated by psychiatrist or psychologist during timeframe that the treatment is offered through STAND and is unwilling to fully transfer care to STAND

Study Design

Phase
N/A
Study Type
Interventional
Allocation
Randomized
Intervention Model
Parallel Assignment
Primary Purpose
Treatment
Masking
Single (Outcomes Assessor)

Arm Groups

ArmDescriptionAssigned Intervention
Active Comparator
Symptom Severity Decision-Making
Using current symptom severity level to guide triaging and adapting level of care.
  • Behavioral: Self-Guided Online Prevention
    An online wellness program that contains self-guided online CBT prevention strategies with demonstrated efficacy for depression and anxiety in college samples. Participants can learn skills for coping with common stressful experiences and build resilience at their own pace.
  • Behavioral: Coach-Guided Online Cognitive Behavioral Therapy
    An online digital therapy program that consists of online CBT modules supported by coaches through video chats. The modules are evidence-based and formatted into a unified approach for depression, anxiety and worry, panic, social anxiety, trauma and sleep dysregulation (developed as part of the University of California, Los Angeles (UCLA) Depression Grand Challenge). Lessons are designed to respond to participants' specific symptoms. Participants can access the system through any personal device (phone, tablet or computer) and speak to a certified student coach through remote video chat.
  • Behavioral: Clinician-Delivered Psychological and Psychiatric Care
    Evidence-based clinician-delivered CBT modules. Participants are connected to a team of clinicians who will evaluate participants' specific symptoms and create an individualized and tailored treatment plan. Treatment will include weekly sessions delivered through telehealth, and if deemed appropriate, participants may also have medication appointments.
Experimental
Data-Driven Decision-Making
Using data-driven algorithm that considers social determinants of mental health, early life adversity/stress, predisposing, enabling and need influences upon health services use, and comprehensive mental health status to guide triaging and adapting level of care.
  • Behavioral: Self-Guided Online Prevention
    An online wellness program that contains self-guided online CBT prevention strategies with demonstrated efficacy for depression and anxiety in college samples. Participants can learn skills for coping with common stressful experiences and build resilience at their own pace.
  • Behavioral: Coach-Guided Online Cognitive Behavioral Therapy
    An online digital therapy program that consists of online CBT modules supported by coaches through video chats. The modules are evidence-based and formatted into a unified approach for depression, anxiety and worry, panic, social anxiety, trauma and sleep dysregulation (developed as part of the University of California, Los Angeles (UCLA) Depression Grand Challenge). Lessons are designed to respond to participants' specific symptoms. Participants can access the system through any personal device (phone, tablet or computer) and speak to a certified student coach through remote video chat.
  • Behavioral: Clinician-Delivered Psychological and Psychiatric Care
    Evidence-based clinician-delivered CBT modules. Participants are connected to a team of clinicians who will evaluate participants' specific symptoms and create an individualized and tailored treatment plan. Treatment will include weekly sessions delivered through telehealth, and if deemed appropriate, participants may also have medication appointments.

Recruiting Locations

More Details

Status
Recruiting
Sponsor
University of California, Los Angeles

Study Contact

Andrew J Sanders, Ph.D.
310-206-4662
ajsanders@mednet.ucla.edu

Detailed Description

Community colleges provide a critical pathway for workforce development and socio-economic gain, but this opportunity is mitigated by unmet need for mental health services, particularly for depression and anxiety, and particularly for racial/ethnic minority students. A scalable and effective system of care that manages mental health needs in concert with social mental health determinants is sorely needed. The Alacrity Center aims to implement the STAND system of care, which screens and treats anxiety and depression, for a highly diverse community college population. STAND triages to various level of care, ranging from self-guided online prevention, to coach-guided online cognitive behavioral therapy (CBT), to clinician-delivered care. After initial triaging, STAND makes adaptations to level of care throughout the entire time of study enrollment (e.g., moved up to a higher level of care during acute treatment). These triaging and adaptation decisions currently are based on current symptom severity. Such decisions can be optimized by comprehensive data-driven algorithms that predict the need for a particular level of care and for adaptation to level of care throughout treatment, and especially algorithms that are suited to the needs of underserved community college students who face substantial life stressors. The overarching aim of the Signature Project is to evaluate clinical decision-making algorithms for (a) triaging to level of care and (b) adapting level of care in a low income, highly diverse sample of community college students at East Los Angeles College (ELAC). The end goal is to improve the effectiveness of STAND and to advance the science of personalized mental health. To do this, we will compare the standard approach that relies solely upon symptom severity to a data-driven approach to decision making that uses multivariate predictive algorithms comprised of baseline static and time-varying features from four overlapping and mutually reinforcing theoretical constructs: (1) social determinants of mental health (employment, income, housing & food security, discrimination, social support, race/ethnicity, acculturation, immigration status, gender, sexual orientation); (2) early adversity and life stressors; (3) predisposing, enabling and need influences upon health services use; and (4) comprehensive mental health status (depression, anxiety and suicide severity, comorbidities, neurocognitive functioning, emotion dysregulation, regulatory strategy use, treatment history and preferences, social, occupational, home and academic functioning). The overarching design is to randomize ELAC students to either symptom severity decision-making (SSD) or data-driven decision-making (DDD), and evaluate whether DDD improves adherence to treatment, symptoms, and functioning. Other aims of this project are to (a) identify distal and proximal risk factors for suicide and self-harm and (b) examine effects of the decision-making condition (SSD, DDD) on suicidality and self-harm outcomes. Participants will be enrolled in the first two to four months of the academic year at ELAC. The target enrollment is 200 participants per year over five years (n = 1000 total). Participants are current ELAC student between the ages of 18-40. Predictors and outcomes will be assessed at baseline and either weekly or every 8 weeks until week 40. Multivariate prediction models will be used for initial level of care triaging and later adaptations of level of care based on a comprehensive set of variables that have been shown to drive current mental health needs. Participants will complete computerized assessments and self-report questionnaires. The total length of participation is 40 weeks.