The burden of mental illnesses, especially depression and anxiety, is high in the world, and in most cases, it results in severe losses of quality-adjusted life years. This paper describes advancements and initial estimates for an artificial intelligence (AI) system expected to diagnose mental health risks early and provide individual-level support. The technique impacts Natural Language Processing (NLP) and emotion analysis to identify emotional structures in user-posted text, such as daily diaries and mood journals. An emotional tone Bidirectional Encoder Representations from Transformers (BERT) model is fine-tuned, and the system suggests self-care options (e.g., mindfulness exercises, breathing) in response to the context, towards an adaptive recommendation engine. One notable aspect is a userfriendly visual dashboard that enables users to monitor their mood patterns over time. More importantly, the system is entirely offline, and the users privacy is guaranteed, as all data is processed locally on the machine. The data simulation tests the system's functionality for sentiment classification and recommendation delivery. The results indicate that this platform may be a promising, ethics-driven, proactive mental health support tool and may be applied in educational, workplace, and personal contexts. The next phase of work will be long-term real-world validation and efficacy studies.
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Student, Education Sector, Royal Commission for Yanbu project, Saudi Arabia.
Yousef Basuni
Emad Abaalkhail
International Journal of Soft Computing and Engineering
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Arabia. et al. (Wed,) studied this question.
synapsesocial.com/papers/69a75be4c6e9836116a2409f — DOI: https://doi.org/10.35940/ijsce.f3708.15060126