Journal Article10.1016/j.mex.2024.102581
Improved Method for Stress Detection Using Bio-Sensor Technology and Machine Learning Algorithms
Mohd Nazeer,Shailaja Salagrama,Pardeep Kumar,Kanhaiya Sharma,Deepak Parashar,Mohammed Qayyum,Gouri Patil +6 more
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TL;DR: A state-of-the-art stress detection device with Galvanic Skin Response (GSR) sweat sensors, outperforming traditional Electrocardiogram (ECG) methods while remaining non-invasive is introduced and integrating machine learning, particularly XG-Boost algorithms, enhances detection accuracy and reliability.
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Abstract: Maintaining an optimal stress level is vital in our lives, yet many individuals struggle to identify the sources of their stress. As emotional stability and mental awareness become increasingly important, wearable medical technology has gained popularity in recent years. This technology enables real-time monitoring, providing medical professionals with crucial physiological data to enhance patient care. Current stress-detection methods, such as ECG, BVP, and body movement analysis, are limited by their rigidity and susceptibility to noise interference. To overcome these limitations, we introduce STRESS-CARE, a versatile stress detection sensor employing a hybrid approach. This innovative system utilizes a sweat sensor, cutting-edge context identification methods, and machine learning algorithms. STRESS-CARE processes sensor data and models environmental fluctuations using an XG Boost classifier. By combining these advanced techniques, we aim to revolutionize stress detection, offering a more adaptive and robust solution for improved stress management and overall well-being.•In the proposed method, we introduce a state-of-the-art stress detection device with Galvanic Skin Response (GSR) sweat sensors, outperforming traditional Electrocardiogram (ECG) methods while remaining non-invasive•Integrating machine learning, particularly XG-Boost algorithms, enhances detection accuracy and reliability.•This study sheds light on noise context comprehension for various wearable devices, offering crucial guidance for optimizing stress detection in multiple contexts and applications.
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Citations
Evolving Health Monitoring: Nanoscale Flexible Electronics for Noninvasive Uric Acid Analysis in Sweat
C Ma,Xudong Shang,Ziyu Zhu,Zhanwen Liu,Mimi Sun,Mengzhu Cao,Jing Bai,Yan Du,Ming Zhou +8 more
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AI to V2X Privacy and Security Issues in Autonomous Vehicles: Survey
Mohammed Ahmed Mohiuddin,K. Nirosha,D. Anusha,Mohd Nazeer,Ganapathi Raju NV,Sorabh Lakhanpal +5 more
TL;DR: AI-powered V2X privacy and security issues in autonomous vehicles surveyed. Attacks and challenges explored.
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QuadTPat: Quadruple Transition Pattern-based explainable feature engineering model for stress detection using EEG signals
Veysel Yusuf ÇAMBAY,İrem Taşçı,Gülay TAŞCI,Rena Hajiyeva,Şengül Doğan,Türker Tuncer +5 more
TL;DR: This study proposes QuadTPat, an explainable feature engineering model for stress detection using EEG signals, achieving 92.95% and 73.63% classification accuracy with 10-fold and LOSO cross-validations, utilizing a quadruple transition pattern-based approach and symbolic language for explainable results.
Artificial Intelligence-Assisted Stress Detection Using Physiological Signals and Wearable Technologies
C M Naveen Kumar,Ramesh B.,Dhanush N,Bindya S +3 more
- 22 Aug 2025
TL;DR: This study develops AI-assisted stress detection methods using physiological signals and wearable technologies, achieving 99.8% accuracy with multimodal fusion, and proposes a framework for explainable, personalized, and scalable stress detection systems for healthcare and workplace applications.
AI-Driven Stress Detection: Exploring Deep Learning Techniques for Real-Time Analysis
Apoorva Tangri,Nitin Tripathi,Fateh Bahadur Kunwar,Vikas Misra,Jaspal Singh +4 more
- 27 Oct 2025
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cStress: towards a gold standard for continuous stress assessment in the mobile environment
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