Expanding Access to Depression Treatment in Kenya Through Automated Psychological Support: Protocol for a Single-Case Experimental Design Pilot Study.

Journal: JMIR research protocols

Volume: 8

Issue: 4

Year of Publication: 

Affiliated Institutions:  Duke Global Health Institute, Duke University, Durham, NC, United States. Jacaranda Health, Nairobi, Kenya. X AI Inc, San Francisco, CA, United States. Moi Teaching and Referral Hospital, Eldoret, Kenya. Africa Mental Health Research and Training Foundation, Nairobi, Kenya.

Abstract summary 

Depression during pregnancy and in the postpartum period is associated with a number of poor outcomes for women and their children. Although effective interventions exist for common mental disorders that occur during pregnancy and the postpartum period, most cases in low- and middle-income countries go untreated because of a lack of trained professionals. Task-sharing models such as the Thinking Healthy Program have shown great potential in feasibility and efficacy trials as a strategy for expanding access to treatment in low-resource settings, but there are significant barriers to scale-up. We are addressing this gap by adapting Thinking Healthy for automated delivery via a mobile phone. This new intervention, Healthy Moms, uses an existing artificial intelligence system called Tess (Zuri in Kenya) to drive conversations with users.The objective of this pilot study is to test the Healthy Moms perinatal depression intervention using a single-case experimental design with pregnant women and new mothers recruited from public hospitals outside of Nairobi, Kenya.We will invite patients to complete a brief, automated screening delivered via text messages to determine their eligibility. Enrolled participants will be randomized to a 1- or 2-week baseline period and then invited to begin using Zuri. Participants will be prompted to rate their mood via short message service every 3 days during the baseline and intervention periods. We will review system logs and conduct in-depth interviews with participants to study engagement with the intervention, feasibility, and acceptability. We will use visual inspection, in-depth interviews, and Bayesian estimation to generate preliminary data about the potential response to treatment.Our team adapted the intervention content in April and May 2018 and completed an initial prepilot round of formative testing with 10 women from a private maternity hospital in May and June. In preparation for this pilot study, we used feedback from these users to revise the structure and content of the intervention. Recruitment for this protocol began in early 2019. Results are expected toward the end of 2019.The main limitation of this pilot study is that we will recruit women who live in urban and periurban centers in one part of Kenya. The results of this study may not generalize to the broader population of Kenyan women, but that is not an objective of this phase of work. Our primary objective is to gather preliminary data to know how to build and test a more robust service. We are working toward a larger study with a more diverse population.DERR1-10.2196/11800.

Authors & Co-authors:  Green Pearson Rajasekharan Rauws Joerin Kwobah Musyimi Bhat Jones Lai

Study Outcome 

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Statistics
Citations :  Gavin NI, Gaynes BN, Lohr KN, Meltzer-Brody S, Gartlehner G, Swinson T. Perinatal depression: a systematic review of prevalence and incidence. Obstet Gynecol. 2005 Nov;106(5 Pt 1):1071–83. doi: 10.1097/01.AOG.0000183597.31630.db.106/5/1071
Authors :  10
Identifiers
Doi : e11800
SSN : 1929-0748
Study Population
Women,Mothers
Mesh Terms
Other Terms
Kenya;artificial intelligence;chatbot;conversational agent;depression;mental health;telemedicine;text messaging
Study Design
Study Approach
Country of Study
Kenya
Publication Country
Canada