Back

The React & Rebound Model: Capturing Emotion Regulation Dynamics from Passive Wearable Data

Heusser, A. C.; Simon, T. J.; Elliot, E.; James, C.; Gazzaley, A.; Gibson, N.

2026-03-10 neuroscience
10.64898/2026.03.07.710099 bioRxiv
Show abstract

BackgroundEmotion regulation--the ability to respond to and restore equilibrium after emotional perturbations--is central to mental health. Yet objective measurement remains limited to lab-based studies with group-level results, while consumer wearables focus on physical activity-related metrics rather than emotional dynamics. ObjectiveWe aimed to develop computational models that extract personalized, interpretable emotion regulation parameters from continuous heart rate variability (HRV) data collected via consumer wearables during everyday life, and validate these parameters against self-reported anxiety symptoms. MethodsWe analyzed 4 weeks of continuous HRV data from N = 49 healthy adults wearing Samsung Galaxy Active 2 smartwatches. We derived a continuous autonomic balance signal and developed three computational modeling approaches of increasing sophistication: (1) a static sympathetic load metric, (2) an Ornstein-Uhlenbeck (OU) dynamical systems model capturing continuous restoration dynamics, and (3) a discrete-state Markov transition model--the React & Rebound model-- capturing reactivity and rebound dynamics. All models were estimated using joint hierarchical Bayesian models that simultaneously extract subject-specific parameters from HRV time series and estimate their association with Generalized Anxiety Disorder 7-item scale (GAD-7) scores. The validity of extracted parameters was evaluated against anxiety symptom severity. ResultsStatic sympathetic load correlated modestly with GAD-7 (r = 0.39, R2 = 0.16). The OU model captured 69% of variance (R2 = 0.69), and the React & Rebound model captured 60% (R2 = 0.60) with substantially fewer parameters. Both models revealed that anxiety symptom severity is associated with the interaction between activation and restoration parameters--not either alone. Fast rebound appeared protective even for highly reactive individuals, who scored comparably to low-reactivity groups when restoration was rapid (Cohens d = 1.17 between highest- and lowest-risk quadrants). In the OU model, the interaction effect was specific to GAD-7 scores versus PHQ-9 and ISI scores; in the React & Rebound model, the interaction was credible across all three symptom measures. Both models were unchanged after controlling for physical activity ({Delta}R2 < 0.002). ConclusionsComputational models can extract interpretable emotion regulation parameters from naturalistic wearable data. The React & Rebound model yields two personalized parameters--reactivity and rebound--that are strongly associated with anxiety symptoms and define meaningful autonomic profiles. These parameters bridge autonomic dynamics measurable via consumer devices to neural circuit models of emotion regulation, with implications for characterizing individual autonomic profiles via consumer wearables.

Matching journals

The top 5 journals account for 50% of the predicted probability mass.

1
Scientific Reports
3102 papers in training set
Top 2%
14.9%
2
PLOS ONE
4510 papers in training set
Top 16%
10.8%
3
Journal of Medical Internet Research
85 papers in training set
Top 0.3%
10.5%
4
eneuro
389 papers in training set
Top 0.8%
7.4%
5
PLOS Computational Biology
1633 papers in training set
Top 5%
6.6%
50% of probability mass above
6
npj Digital Medicine
97 papers in training set
Top 0.9%
4.5%
7
JMIR mHealth and uHealth
10 papers in training set
Top 0.1%
4.3%
8
Frontiers in Psychiatry
83 papers in training set
Top 0.9%
4.1%
9
Philosophical Transactions of the Royal Society B: Biological Sciences
53 papers in training set
Top 0.2%
2.2%
10
Frontiers in Physiology
93 papers in training set
Top 2%
2.0%
11
Psychophysiology
64 papers in training set
Top 0.1%
2.0%
12
Frontiers in Human Neuroscience
67 papers in training set
Top 2%
1.3%
13
Translational Psychiatry
219 papers in training set
Top 3%
1.3%
14
Sensors
39 papers in training set
Top 1%
1.1%
15
IEEE Journal of Biomedical and Health Informatics
34 papers in training set
Top 2%
1.0%
16
BMC Bioinformatics
383 papers in training set
Top 6%
1.0%
17
iScience
1063 papers in training set
Top 24%
1.0%
18
Nature Human Behaviour
85 papers in training set
Top 4%
0.8%
19
Physiological Reports
35 papers in training set
Top 0.9%
0.8%
20
Journal of Affective Disorders
81 papers in training set
Top 1%
0.8%
21
Journal of Neural Engineering
197 papers in training set
Top 2%
0.8%
22
Behavior Research Methods
25 papers in training set
Top 0.2%
0.8%
23
Biological Psychology
18 papers in training set
Top 0.1%
0.7%
24
eBioMedicine
130 papers in training set
Top 5%
0.7%
25
Frontiers in Psychology
49 papers in training set
Top 1%
0.7%
26
Computers in Biology and Medicine
120 papers in training set
Top 6%
0.5%
27
Communications Biology
886 papers in training set
Top 31%
0.5%