Peran Kecerdasan Buatan terhadap Diagnosis dan Penanggulanan Masalah Kesehatan Mental

Authors

  • Andri Sahata Sitanggang Universitas Komputer Indonesia
  • Muhammad Restu Aufa Cahyadin Universitas Komputer Indonesia
  • Muhammad Dzikri Maulaarif Universitas Komputer Indonesia
  • Muhammad Lutfhi Khaeri Ihsan Universitas Komputer Indonesia
  • Septian Muqtiyana Universitas Komputer Indonesia

DOI:

https://doi.org/10.61132/merkurius.v3i5.1021

Keywords:

Artificial Intelligence, Chatbot, Diagnosis, Mental Health, Problem Solving.

Abstract

The increasing number of mental health disorders in various countries has created an urgent need for innovation in the diagnosis and treatment process. This problem not only impacts individuals' quality of life but also creates a significant social and economic burden. One solution that is beginning to be widely researched is the use of artificial intelligence (AI) in the field of mental health. This research used a literature review of various previous studies discussing the role, application, and impact of AI. The results of the review indicate that AI technology, particularly in the form of digital applications such as chatbots, has great potential to support the recovery process for patients with mental disorders. AI-based chatbots can provide responsive, two-way interactions, so users feel heard and receive initial emotional support. One technical approach used is Natural Language Processing (NLP), which enables the system to understand natural human language. Simultaneously, Long Short-Term Memory (LSTM) algorithms are used to analyze language patterns and detect symptoms of depression more accurately. Various studies have reported that the application of NLP and LSTM can improve the reliability of diagnoses and provide responses tailored to user needs. Furthermore, AI can provide personalized recommendations, tailor interventions to the user's condition, and monitor mental health developments in real time. This has the potential to assist mental health practitioners in making faster and more informed decisions. However, the adoption of AI among practitioners remains relatively low. Influencing factors include limited technological understanding, limited infrastructure, and debates over ethical aspects and data privacy. Therefore, while AI has significant potential to improve the quality of mental health services, regulations, ethical guidelines, and synergy between technology and healthcare professionals are needed to ensure safe and effective implementation.

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Published

2025-08-22

How to Cite

Andri Sahata Sitanggang, Muhammad Restu Aufa Cahyadin, Muhammad Dzikri Maulaarif, Muhammad Lutfhi Khaeri Ihsan, & Septian Muqtiyana. (2025). Peran Kecerdasan Buatan terhadap Diagnosis dan Penanggulanan Masalah Kesehatan Mental. Merkurius : Jurnal Riset Sistem Informasi Dan Teknik Informatika, 3(5), 29–40. https://doi.org/10.61132/merkurius.v3i5.1021

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