Abstract

In this article, we delve into applying Convolutional Neural Networks (CNNs) and big data in predicting and intervening in mental health issues, emphasizing the potential for early detection and personalized treatment. By analyzing patterns in social media data, CNNs can identify indicators of mental health conditions, offering insights for tailored interventions. The discussion highlights the importance of addressing privacy, data security, and algorithmic bias to ensure ethical implementation. Future directions include enhancing predictive accuracy, expanding AI applications in therapy, fostering interdisciplinary collaborations, developing ethical frameworks, and engaging the public. Embracing these technologies in mental health care promises significant advancements but necessitates careful consideration of ethical imperatives to maximize benefits while safeguarding patient welfare.

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