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 state anxiety


WatchAnxiety: A Transfer Learning Approach for State Anxiety Prediction from Smartwatch Data

Ahmed, Md Sabbir, French, Noah, Rucker, Mark, Wang, Zhiyuan, Myers-Brower, Taylor, Petz, Kaitlyn, Boukhechba, Mehdi, Teachman, Bethany A., Barnes, Laura E.

arXiv.org Artificial Intelligence

Social anxiety is a common mental health condition linked to significant challenges in academic, social, and occupational functioning. A core feature is elevated momentary (state) anxiety in social situations, yet little prior work has measured or predicted fluctuations in this anxiety throughout the day. Capturing these intra-day dynamics is critical for designing real-time, personalized interventions such as Just-In-Time Adaptive Interventions (JITAIs). To address this gap, we conducted a study with socially anxious college students (N=91; 72 after exclusions) using our custom smartwatch-based system over an average of 9.03 days (SD = 2.95). Participants received seven ecological momentary assessments (EMAs) per day to report state anxiety. We developed a base model on over 10,000 days of external heart rate data, transferred its representations to our dataset, and fine-tuned it to generate probabilistic predictions. These were combined with trait-level measures in a meta-learner. Our pipeline achieved 60.4% balanced accuracy in state anxiety detection in our dataset. To evaluate generalizability, we applied the training approach to a separate hold-out set from the TILES-18 dataset-the same dataset used for pretraining. On 10,095 once-daily EMAs, our method achieved 59.1% balanced accuracy, outperforming prior work by at least 7%.


Personalized State Anxiety Detection: An Empirical Study with Linguistic Biomarkers and A Machine Learning Pipeline

Wang, Zhiyuan, Tang, Mingyue, Larrazabal, Maria A., Toner, Emma R., Rucker, Mark, Wu, Congyu, Teachman, Bethany A., Boukhechba, Mehdi, Barnes, Laura E.

arXiv.org Artificial Intelligence

Individuals high in social anxiety symptoms often exhibit elevated state anxiety in social situations. Research has shown it is possible to detect state anxiety by leveraging digital biomarkers and machine learning techniques. However, most existing work trains models on an entire group of participants, failing to capture individual differences in their psychological and behavioral responses to social contexts. To address this concern, in Study 1, we collected linguistic data from N=35 high socially anxious participants in a variety of social contexts, finding that digital linguistic biomarkers significantly differ between evaluative vs. non-evaluative social contexts and between individuals having different trait psychological symptoms, suggesting the likely importance of personalized approaches to detect state anxiety. In Study 2, we used the same data and results from Study 1 to model a multilayer personalized machine learning pipeline to detect state anxiety that considers contextual and individual differences. This personalized model outperformed the baseline F1-score by 28.0%. Results suggest that state anxiety can be more accurately detected with personalized machine learning approaches, and that linguistic biomarkers hold promise for identifying periods of state anxiety in an unobtrusive way.


Anxiety hinders ability to read emotions, claims study

Daily Mail - Science & tech

From tingling in the limbs to increased heart rate and blood pressure - anxiety has been said to do a range of unusual things to the body. Now, a new study has found that this nervous disorder can also hinder your ability to interpret other people's emotions. Researchers have discovered that those in a heightened state of anxiety were unable to determine whether a person was happy or angry - and many people reported seeing the latter regardless of the facial expression. A new study has found that this nervous disorder can also hinder your ability to interpret facial expressions. Following the first two portions of the study, researcher had discovered that when individuals inhaled the carbon-dioxide rich air, or had an anxiety attack, they were eight percent worse at correctly identifying facial expressions.