Detection and Prediction of Future Mental Disorder from Social Media Data Using Machine Learning, Ensemble Learning and Large Language Models
DOI:
https://doi.org/10.32628/CSEIT2511318Keywords:
Mental stress detection, Machine learning, Physiological signals, Wearable sensor, Feature ExtractionAbstract
Stress is an escalated psycho-physiological state of the human body emerging in response to a challenging event or a demanding condition. Environmental factors that trigger stress are called stressors. In case of prolonged exposure to multiple stressors impacting simultaneously, a person’s mental and physical health can be adversely affected which can further lead to chronic health issues? To prevent stress-related issues, it is necessary to detect them in the nascent stages which are possible only by continuous monitoring of stress. Wearable devices promise real-time and continuous data collection, which helps in personal stress monitoring. In this paper, a comprehensive review has been presented, which focuses on stress detection using wearable sensors and applied machine learning techniques. This paper investigates the stress detection approaches adopted in accordance with the sensory devices such as wearable sensors, Electrocardiogram (ECG), Electroencephalography (EEG), and Photoplethysmography (PPG), and also depending on various environments like during driving, studying, and working. The stressors, techniques, results, advantages, limitations, and issues for each study are highlighted and expected to provide a path for future research studies. Also, a multimodal stress detection system using a wearable sensor-based deep learning technique has been proposed at the end.
Downloads
References
S. A Singh, P. K. Gupta, M. Rajeshwari, and T. Janumala, “Detection of Stress Using Biosensors,” Materials Today: Proceedings 5, 2018, pp. 21003–21010.
J.Ogorevc, A. Podlesek, G. Gersak, and J. Drnovsek, “The effect of mental stress on psychophysiological parameters,”inInt.Symp.Medical Measurements and Applications, Italy, 2011.
Fernandes, R. Helawar, R. Lokesh, T. Tari, and A. V. Shahapurkar, “Determination of stress using blood pressure and Galvanic skin response,” in Proc. IEEE Int. Conf. Communication and Network Technologies, pp. 165–168, 2014.
Massot, N. Baltenneck, C. Gehin, A. Dittmar, and E. McAdams, “Objective Evaluation of Stress with the Blind by the Monitoring of Autonomic Nervous System Activity,” in Proc. IEEE Int. Conf. IEEE EMBS, Argentina, 2010, pp. 1429-1432.
Santos, C. S. Avila, and G. Bailador, “Secure access control by means of human stress detection,” in Carnahan Conf. on Security Technology, Spain, 2011.
U. Pluntke, S. Gerke, A. Sridhar, J. Weiss, and B. Michel, “Evaluation and Classification of Physical and Psychological Stress in Firefighters using Heart Rate Variability,” in Proc. Int. Conf. IEEE Engineering in Medicine & Biology Society. (EMBC), 2019, pp.2207-2212.
Alberdi , A. Aztiria, and A. Basarab, “Towards an automatic early stress recognition system for office environments based on multimodal measurements: A review,” J. of Biomedical Informatics, 2016, pp. 49–75.
J. Wijsman, R. Vullers, S. Polito, and H. Hermens, “Towards Ambulatory Mental Stress Measurement from Physiological Parameters,” in Proc. IEEE Humaine Association Conf. Affective Computing and Intelligent Interaction, 2013.
S. Shanmugasundaram , S. Yazhini, E. Hemapratha, and S. Nithya, “A Comprehensive Review on Stress Detection Techniques,” in Proc. Int. Conf. Systems, Computation, Automation and Networking. (ICSCAN), 2019.
S. Elzeiny and M. Qaraqe, “Blueprint to Workplace Stress Detection Approaches,” in Proc. Int. Conf. Computer and Applications (ICCA), 2018, pp. 407-412.
Downloads
Published
Issue
Section
License
Copyright (c) 2025 International Journal of Scientific Research in Computer Science, Engineering and Information Technology

This work is licensed under a Creative Commons Attribution 4.0 International License.