TY - JOUR
T1 - Noninvasive Detection of Stress by Biochemical Profiles from the Skin
AU - Mansour, Elias
AU - Palzur, Eilam
AU - Broza, Yoav Y.
AU - Saliba, Walaa
AU - Kaisari, Sharon
AU - Goldstein, Pavel
AU - Shamir, Alon
AU - Haick, Hossam
N1 - Funding Information: The authors would like to acknowledge the financial help of the Neubauer Family Foundation. The authors would also like to acknowledge support from Dr. Rotem Vishinkin for guidance on the sampler preparation. Support from Yaseen Awad-Igbaria for his contribution to the understanding of behavioral measures and Tali Reuven in caring for the rats in the animal shelter is acknowledged. The TOC graphic was created with BioRender.com . Publisher Copyright: © 2023 American Chemical Society.
PY - 2023
Y1 - 2023
N2 - Stress is a leading cause of several disease types, yet it is underdiagnosed as current diagnostic methods are mainly based on self-reporting and interviews that are highly subjective, inaccurate, and unsuitable for monitoring. Although some physiological measurements exist (e.g., heart rate variability and cortisol), there are no reliable biological tests that quantify the amount of stress and monitor it in real time. In this article, we report a novel way to measure stress quickly, noninvasively, and accurately. The overall detection approach is based on measuring volatile organic compounds (VOCs) emitted from the skin in response to stress. Sprague Dawley male rats (n = 16) were exposed to underwater trauma. Sixteen naive rats served as a control group (n = 16). VOCs were measured before, during, and after induction of the traumatic event, by gas chromatography linked with mass spectrometry determination and quantification, and an artificially intelligent nanoarray for easy, inexpensive, and portable sensing of the VOCs. An elevated plus maze during and after the induction of stress was used to evaluate the stress response of the rats, and machine learning was used for the development and validation of a computational stress model at each time point. A logistic model classifier with stepwise selection yielded a 66-88% accuracy in detecting stress with a single VOC (2-hydroxy-2-methyl-propanoic acid), and an SVM (support vector machine) model showed a 66-72% accuracy in detecting stress with the artificially intelligent nanoarray. The current study highlights the potential of VOCs as a noninvasive, automatic, and real-time stress predictor for mental health.
AB - Stress is a leading cause of several disease types, yet it is underdiagnosed as current diagnostic methods are mainly based on self-reporting and interviews that are highly subjective, inaccurate, and unsuitable for monitoring. Although some physiological measurements exist (e.g., heart rate variability and cortisol), there are no reliable biological tests that quantify the amount of stress and monitor it in real time. In this article, we report a novel way to measure stress quickly, noninvasively, and accurately. The overall detection approach is based on measuring volatile organic compounds (VOCs) emitted from the skin in response to stress. Sprague Dawley male rats (n = 16) were exposed to underwater trauma. Sixteen naive rats served as a control group (n = 16). VOCs were measured before, during, and after induction of the traumatic event, by gas chromatography linked with mass spectrometry determination and quantification, and an artificially intelligent nanoarray for easy, inexpensive, and portable sensing of the VOCs. An elevated plus maze during and after the induction of stress was used to evaluate the stress response of the rats, and machine learning was used for the development and validation of a computational stress model at each time point. A logistic model classifier with stepwise selection yielded a 66-88% accuracy in detecting stress with a single VOC (2-hydroxy-2-methyl-propanoic acid), and an SVM (support vector machine) model showed a 66-72% accuracy in detecting stress with the artificially intelligent nanoarray. The current study highlights the potential of VOCs as a noninvasive, automatic, and real-time stress predictor for mental health.
KW - behavioral
KW - sensor
KW - skin
KW - stress
KW - volatile organic compound
UR - http://www.scopus.com/inward/record.url?scp=85149105828&partnerID=8YFLogxK
U2 - https://doi.org/10.1021/acssensors.3c00011
DO - https://doi.org/10.1021/acssensors.3c00011
M3 - Article
SN - 1424-3210
JO - ACS Sensors
JF - ACS Sensors
ER -