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Clinical Trial Summary

Veterans with bipolar disorders (BD) experience recurrent and seemingly unpredictable periods of severe impairments in psychosocial functioning, such as participation in social roles and activities. Many effective treatments for BD emphasize early detection of bipolar episodes, in order to make necessary treatment adjustments and prevent psychosocial impairments associated with acute mood episodes. Unfortunately, acute mood episodes in BD are also associated with a decrease in a patient's insight into their own symptoms, which can prevent one's ability to self-report first signs of symptoms and functional declines. Moreover, routine care visits for BD are typically too infrequent to capture and effectively monitor day-to-day changes in a patient's mood and functioning. Objective, low-effort, and continuous methods of tracking symptoms and social participation of Veterans with BD in real-time and in-situ are needed to provide early (i.e., days in advance) warning signs of acute bipolar episodes and functional declines, which in turn would enable well-timed interventions to prevent poor psychosocial outcomes. mHealth refers to the use of mobile and wireless devices as part of patient care and offers many potential opportunities for early detection of and intervention for acute mood states in this population. However, these mHealth approaches have not been investigated in Veterans with BD. In a Small Projects in Rehabilitation Research (SPiRE)-funded pilot study, the investigator team established high feasibility and acceptability of one such innovative passive mHealth approach using a smartphone program, or an app, in a small sample of Veterans with BD to track their smartphone's GPS/location. The pilot study used a priori location context ratings of visited places (e.g., a priori ratings on types of activities usually engaged in at a frequently visited location) to derive unobtrusive measures of social participation (e.g., time spent at work-related locations). The goal of this Merit Review proposal is to establish reliable and valid machine-learning algorithms using the same types of mHealth data to prospectively (days in advance) detect declines in social participation and prospective onset of mania and depression in Veterans with BD. This proposal has three aims: Aim 1. To establish a machine learning algorithm using GPS/location data for predicting prospective declines in social participation in Veterans with BD. Aim 2. To establish machine learning algorithms using GPS/location data for predicting prospective acute BD clinical states. The investigators will explore whether adding more burdensome daily self-report and voice diaries' speech analysis features improves the models' precision using statistical indices of prediction precision or accuracy. Aim 3. To explore clinical implementation of the mHealth-based algorithms in treatment of BD. Focus groups of VA providers and administrators will assess feasibility of algorithms' implementation in clinical care.


Clinical Trial Description

Veterans with bipolar disorders (BD) experience recurrent and seemingly unpredictable periods of severe impairments in psychosocial functioning, which lead to poor outcomes over their lifetime, such as incarceration, homelessness, and death by suicide. Studies support a link between greater severity and frequency of BD symptoms and worse psychosocial functioning. Veterans with BD often drop out of care at times when treatment would be most beneficial for preventing deterioration in psychosocial functioning-when new manic and depressive episodes onset. Thus, despite the availability of evidence-based treatments, BD is among the leading causes of disability worldwide. Effective tools for prospectively detecting manic and depressive episode onset could provide clinicians with the opportunity to intervene more efficiently and prevent poor psychosocial outcomes and loss of life. Unsurprisingly, psychotherapeutic interventions often focus on teaching patients mood-monitoring techniques for episode relapse prevention. However, these self-report techniques require insight and high patient effort, which may be lacking during acute BD episodes. Real-world measures of both BD symptoms and social functioning in Veterans with BD that are objective and do not require high insight or high effort are missing. Thus, passive mHealth methods that are feasible and acceptable to Veterans with BD and effective in prospectively detecting onsets of both mania and depression could prevent psychosocial functioning declines by ensuring evidence-based care is provided at the times of greatest need. The overarching goal of this Merit Award project is to establish reliable and valid machine-learning algorithms using mHealth data to prospectively detect declines in social participation and prospective onset of mania and depression in Veterans with BD. The study's specific aims are: Aim #1. To establish a machine learning algorithm using GPS/location data for predicting prospective declines in social participation in Veterans with BD. The investigators will provide novel, real-world GPS-based machine learning models that predict days in advance changes in social participation in Veterans. Based on pilot data, the investigators expect GPS data predictors/features to include time spent at residence, work, and daily routine locations. Aim #2. To establish machine learning algorithms using GPS/location data for predicting prospective acute BD clinical states. The investigators will explore whether adding more burdensome daily self-report and voice dairy features improves the models' accuracy using positive prediction and other statistical indices. The investigators predict passive GPS/location data alone will provide accurate prediction of prospective changes in BD symptoms. Aim #3. To explore clinical implementation of the mHealth-based algorithms in treatment of BD. Focus groups of VA providers and administrators will assess feasibility of algorithms' implementation in clinical care. To accomplish the aims, the study will recruit 200 Veterans with a BD diagnosis who receive care in the Minneapolis VA Health Care System through direct mailings to patients, flyers in the medical center, and referrals by clinicians. The study will use stratified sampling recruitment strategies for enrolling at least 20 Veterans in the age ranges 18-35, 36-45, 46-55, 56-65, and 66 and older. Participants will be followed for 14 weeks using three smartphone apps (i.e., VA mPRO, FollowMee, and Recorder Plus or ASR Voice Recorder). Daily, participants will complete an 8-question assessment of their current symptoms and provide voice data for speech analysis to a fixed prompt about their planned activities for the day. Another app will continuously and passively monitor location using the smartphone GPS features to detect deviations in daily routine. Biweekly, participants will complete a brief phone screen assessing social and community participation, symptoms of mania and depression, and suicidality. mHealth data from days prior to the biweekly interviews will be used as features in a small number of candidate machine learning models with outcome measures being biweekly interview assessments of bipolar symptoms and social participation. Project staff will also hold two focus groups-one of 8 VA mental health providers and one of 8 VA administrators-representing diverse disciplines and use guided discussion questions to elicit feedback about implementation of mHealth-based algorithms in future clinical care of Veterans with BD. Impact: The study goal is to provide clinical tools for real-time, unobtrusive, and prospective signals about imminent depressive and manic episode relapses in Veterans with BD to their clinicians for more rapid, less costly, and more effective use of existing evidence-based treatments to prevent poor psychosocial functional outcomes. Moreover, the current study will yield objective, low effort, and unobtrusive measures for tracking social participation in-situ and in real-time in both Veterans with BD and other Veteran populations. ;


Study Design


Related Conditions & MeSH terms


NCT number NCT06204705
Study type Observational
Source VA Office of Research and Development
Contact Snezana Urosevic, PhD
Phone (612) 467-3897
Email Snezana.Urosevic@va.gov
Status Not yet recruiting
Phase
Start date July 1, 2024
Completion date September 30, 2027

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