Background: Mental health status assessment is mostly limited to clinical or research settings, but recent technological advances provide new opportunities for measurement using more ecological approaches. Leveraging apps already in use by individuals on their smartphones, such as chatbots, could be a useful approach to capture subjective reports of mood in the moment.
Objective: This study aimed to describe the development and implementation of the Identifying Depression Early in Adolescence Chatbot (IDEABot), a WhatsApp-based tool designed for collecting intensive longitudinal data on adolescents' mood.
Methods: The IDEABot was developed to collect data from Brazilian adolescents via WhatsApp as part of the Identifying Depression Early in Adolescence Risk Stratified Cohort (IDEA-RiSCo) study. It supports the administration and collection of self-reported structured items or questionnaires and audio responses. The development explored WhatsApp's default features, such as emojis and recorded audio messages, and focused on scripting relevant and acceptable conversations. The IDEABot supports 5 types of interactions: textual and audio questions, administration of a version of the Short Mood and Feelings Questionnaire, unprompted interactions, and a snooze function. Six adolescents (n=4, 67% male participants and n=2, 33% female participants) aged 16 to 18 years tested the initial version of the IDEABot and were engaged to codevelop the final version of the app. The IDEABot was subsequently used for data collection in the second- and third-year follow-ups of the IDEA-RiSCo study.
Results: The adolescents assessed the initial version of the IDEABot as enjoyable and made suggestions for improvements that were subsequently implemented. The IDEABot's final version follows a structured script with the choice of answer based on exact text matches throughout 15 days. The implementation of the IDEABot in 2 waves of the IDEA-RiSCo sample (140 and 132 eligible adolescents in the second- and third-year follow-ups, respectively) evidenced adequate engagement indicators, with good acceptance for using the tool (113/140, 80.7% and 122/132, 92.4% for second- and third-year follow-up use, respectively), low attrition (only 1/113, 0.9% and 1/122, 0.8%, respectively, failed to engage in the protocol after initial interaction), and high compliance in terms of the proportion of responses in relation to the total number of elicited prompts (12.8, SD 3.5; 91% out of 14 possible interactions and 10.57, SD 3.4; 76% out of 14 possible interactions, respectively).
Conclusions: The IDEABot is a frugal app that leverages an existing app already in daily use by our target population. It follows a simple rule-based approach that can be easily tested and implemented in diverse settings and possibly diminishes the burden of intensive data collection for participants by repurposing WhatsApp. In this context, the IDEABot appears as an acceptable and potentially scalable tool for gathering momentary information that can enhance our understanding of mood fluctuations and development.
Download full-text PDF |
Source |
---|---|
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10442728 | PMC |
http://dx.doi.org/10.2196/44388 | DOI Listing |
J Am Psychiatr Nurses Assoc
January 2025
Ahmad Rayan, RN, CNS, PhD, Zarqa University, Zarqa, Jordan.
Background: Studies have found that trait mindfulness is associated with lower levels of depressive symptoms among people diagnosed with schizophrenia. Still, the role of the perceived public stigma in this association has yet to be established.
Aims: The purpose of this study was to assess the association between mindfulness and depressive symptoms experienced by people diagnosed with schizophrenia, controlling for the impact of their demographics and their perceived public stigma against mental illness.
BMC Public Health
January 2025
School of Medical Humanities and Management, Wenzhou Medical University, Wenzhou, Zhejiang, China.
Background: The influence of different dimensions of intergenerational support on depression in older adults has a configuration effect. Existing researches have only used linear analyses to examine the independent effects of each dimension of intergenerational support on depression in older adults, resulting in the nature of the effects of each dimension of intergenerational support on the presence of depression in older adults remaining highly controversial.
Objective: To explore the synergy and substitution effects (configurational effects) of dimensions of intergenerational support on depression in older adults.
Sci Rep
January 2025
School of Medicine, Yan'an University, Yan'an, 716000, China.
The study aims to develop and validate an effective model for predicting frailty risk in individuals with mild cognitive impairment (MCI). The cross-sectional analysis employed nationally representative data from CHARLS 2013-2015. The sample was randomly divided into training (70%) and validation sets (30%).
View Article and Find Full Text PDFDisabil Health J
January 2025
Centre for Disability Research and Policy, Faculty of Medicine and Health, University of Sydney, Sydney, NSW, 2006, Australia; Centre of Research Excellence in Disability and Health, University of Melbourne, Melbourne, VIC, 3010, Australia. Electronic address:
Background: The Washington Group Short Set on Functioning (WG-SS) is frequently used to identify disability among adults in national surveys. Concerns have been raised about the utility of the WG-SS given that it fails to include any items relating to psychosocial disability.
Objective: To compare prevalence estimates for adolescents and young adults derived from the Washington Group's Child Functioning Module (WG-CFM; age 15-17) and the WG-SS (age 18-25).
Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!