AI-Enhanced Mental Health Support: Innovations and Challenges
Abstract
This paper investigates the use of artificial intelligence in mental health support, focusing on chatbots and machine learning algorithms designed to provide therapeutic interventions. By analyzing various AI-driven platforms, the study highlights their effectiveness in offering immediate support, monitoring user behavior, and identifying potential mental health issues. Case studies from healthcare providers illustrate how these technologies can complement traditional therapeutic practices. However, the paper also addresses ethical concerns, including privacy, data security, and the limitations of AI in understanding human emotions, ultimately advocating for a hybrid approach that combines AI tools with human oversight.
References
Miller, A., & Thompson, J. (2021). Ethical considerations in the deployment of AI technologies. Ethics and Information Technology, 23(4), 243-256. https://doi.org/10.1007/s10676-021-09567-4
Nguyen, T. (2023). AI in healthcare: Revolutionizing diagnostics and treatment. Journal of Health Informatics, 29(1), 12-25. https://doi.org/10.1109/JHI.2023.00123
O’Reilly, P., & Choi, S. (2020). The implications of AI on labor markets: A global perspective. Journal of Labor Economics, 38(3), 677-704. https://doi.org/10.1086/705068
Patel, V., & Kumar, R. (2022). AI and climate change: Strategies for mitigation and adaptation. Climate Policy, 22(5), 789-803. https://doi.org/10.1080/14693062.2021.1940595
Qureshi, A., & Mehta, K. (2020). AI-powered customer experience: The new frontier in retail. Journal of Retailing and Consumer Services, 53, 101870. https://doi.org/10.1016/j.jretconser.2019.101870
Reddy, S., & Awasthi, S. (2021). Data privacy and security in AI: Challenges and solutions. Information Systems Journal, 31(2), 200-220. https://doi.org/10.1111/isj.12345
Singh, R. (2023). Artificial intelligence in education: Opportunities and challenges for teachers. Teaching and Teacher Education, 115, 103-116. https://doi.org/10.1016/j.tate.2022.103116
Dhiman, V. (2022). INTELLIGENT RISK ASSESSMENT FRAMEWORK FOR SOFTWARE SECURITY COMPLIANCE USING AI. International Journal of Innovation Studies, 6(3).
Aghera, S. (2011). Design and Development of Video Acquisition System for Aerial. Management, 41(4), 605-615.
Aghera, S. (2011). Design and development of video acquisition system for aerial surveys of marine animals. Florida Atlantic University.
Kalva, H., Marques, O., Aghera, S., Reza, W., Giusti, R., & Rahman, A. Design and Development of a System for Aerial Video Survey of Large Marine Animals.
Maturi, M. H., Gonaygunta, H., Nadella, G. S., & Meduri, K. (2023). Fault Diagnosis and Prognosis using IoT in Industry 5.0. International Numeric Journal of Machine Learning and Robots, 7(7), 1-21.
Dhiman, V. (2023). AUTOMATED VULNERABILITY PRIORITIZATION AND REMEDIATION USING DEEP LEARNING. JOURNAL OF BASIC SCIENCE AND ENGINEERING, 20(1), 86-97.
Nadella, G. S., Satish, S., Meduri, K., & Meduri, S. S. (2023). A Systematic Literature Review of Advancements, Challenges and Future Directions of AI And ML in Healthcare. International Journal of Machine Learning for Sustainable Development, 5(3), 115-130.
Maturi, M. H., Satish, S., Gonaygunta, H., & Meduri, K. (2022). The Intersection of Artificial Intelligence and Neuroscience: Unlocking the Mysteries of the Brain. International Journal of Creative Research In Computer Technology and Design, 4(4), 1-21.
Nadella, G. S., Meduri, S. S., Gonaygunta, H., & Podicheti, S. (2023). Understanding the Role of Social Influence on Consumer Trust in Adopting AI Tools. International Journal of Sustainable Development in Computing Science, 5(2), 1-18
Satish, S., Gonaygunta, H., Meduri, K., & Maturi, M. H. (2022). A Comprehensive Analysis of Security and Privacy Concerns in Healthcare Applications of Fog Computing. International Numeric Journal of Machine Learning and Robots, 6(6), 1-25.
Aghera, S. (2022). IMPLEMENTING ZERO TRUST SECURITY MODEL IN DEVOPS ENVIRONMENTS. JOURNAL OF BASIC SCIENCE AND ENGINEERING, 19(1).
Muthu, P., Mettikolla, P., Calander, N., Luchowski, R., Gryczynski, I., Gryczynski, Z., ... & Borejdo, J. (2010). Single molecule kinetics in the familial hypertrophic cardiomyopathy D166V mutant mouse heart. Journal of molecular and cellular cardiology, 48(5), 989-998.
Krupa, A., Fudala, R., Stankowska, D., Loyd, T., Allen, T. C., Matthay, M. A., ... & Kurdowska, A. K. (2009). Anti-chemokine autoantibody: chemokine immune complexes activate endothelial cells via IgG receptors. American journal of respiratory cell and molecular biology, 41(2), 155-169.
Mettikolla, P., Calander, N., Luchowski, R., Gryczynski, I., Gryczynski, Z., Zhao, J., ... & Borejdo, J. (2011). Cross-bridge kinetics in myofibrils containing familial hypertrophic cardiomyopathy R58Q mutation in the regulatory light chain of myosin. Journal of theoretical biology, 284(1), 71-81.
Mettikolla, P., Calander, N., Luchowski, R., Gryczynski, I., Gryczynski, Z., & Borejdo, J. (2010). Kinetics of a single cross-bridge in familial hypertrophic cardiomyopathy heart muscle measured by reverse Kretschmann fluorescence. Journal of Biomedical Optics, 15(1), 017011-017011.
Mettikolla, P., Luchowski, R., Gryczynski, I., Gryczynski, Z., Szczesna-Cordary, D., & Borejdo, J. (2009). Fluorescence lifetime of actin in the familial hypertrophic cardiomyopathy transgenic heart. Biochemistry, 48(6), 1264-1271.
Mettikolla, P., Calander, N., Luchowski, R., Gryczynski, I., Gryczynski, Z., & Borejdo, J. (2010). Observing cycling of a few cross‐bridges during isometric contraction of skeletal muscle. Cytoskeleton, 67(6), 400-411.
Muthu, P., Mettikolla, P., Calander, N., & Luchowski, R. 458 Gryczynski Z, Szczesna-Cordary D, and Borejdo J. Single molecule kinetics in, 459, 989-998.
Borejdo, J., Mettikolla, P., Calander, N., Luchowski, R., Gryczynski, I., & Gryczynski, Z. (2021). Surface plasmon assisted microscopy: Reverse kretschmann fluorescence analysis of kinetics of hypertrophic cardiomyopathy heart.
Mettikolla, Y. V. P. (2010). Single molecule kinetics in familial hypertrophic cardiomyopathy transgenic heart. University of North Texas Health Science Center at Fort Worth.
Mettikolla, P., Luchowski, R., Chen, S., Gryczynski, Z., Gryczynski, I., Szczesna-Cordary, D., & Borejdo, J. (2010). Single Molecule Kinetics in the Familial Hypertrophic Cardiomyopathy RLC-R58Q Mutant Mouse Heart. Biophysical Journal, 98(3), 715a.
Dhiman, V. (2020). PROACTIVE SECURITY COMPLIANCE: LEVERAGING PREDICTIVE ANALYTICS IN WEB APPLICATIONS. JOURNAL OF BASIC SCIENCE AND ENGINEERING, 17(1).
Dhiman, V. (2019). DYNAMIC ANALYSIS TECHNIQUES FOR WEB APPLICATION VULNERABILITY DETECTION. JOURNAL OF BASIC SCIENCE AND ENGINEERING, 16(1).
Refbacks
- There are currently no refbacks.
Copyright (c) 2024 International Journal of Machine Learning for Sustainable Development
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Impact Factor :
JCR Impact Factor: 5.9 (2020)
JCR Impact Factor: 6.1 (2021)
JCR Impact Factor: 6.7 (2022)
JCR Impact Factor: 7.6 (2023)
JCR Impact Factor: 8.6 (2024)
JCR Impact Factor: Under Evaluation (2025)
A Double-Blind Peer-Reviewed Refereed Journal