circStudio is a Python package for preprocessing, modeling, and analyzing actigraphy time series. It enables users to read activity, light and temperature recordings collected by a wide range of actigraphy devices, and provides conversion modules for commonly used systems (e.g., ActTrust, Actiwatch).
In addition to signal processing and common actigraphy-derived metrics, circStudio incorporates mathematical models of circadian rhythms and algorithms for automatic sleep detection. This enables users not only to characterize rest-activity patterns, but also to simulate circadian phase dynamics, predicting sleep timing, and link actigraphy-derived signals to underlying physiological processes.
- Format-agnostic and flexible
Rawclass for importing actigraphy recordings - Dedicated conversion modules for commonly used actigraphy file formats
- Automatic truncation of invalid or incomplete sequences at the beginning and/or end of recordings
- Detection of non-wear periods with optional imputation strategies for missing data
Compute standard activity- and light-derived metrics, including:
- Interdaily Stability (IS)
- Intradaily Variability (IV)
- Rest–activity rhythm metrics
- Time Above Threshold (TAT)
- Mean Light Timing (MLiT)
A defining feature of circStudio is the inclusion of several mathematical models of
of circadian rhythms. Implemented models include:
- Forger model
- Jewett model
- Hannay Single-Population (HannaySP)
- Hannay Two-Population (HannayTP)
- Hilaire 2007 model
- Skeldon 2023 model
- Breslow 2013 model (melatonin dynamics)
These models enable users to:
- Predict circadian phase (Dim Light Melatonin Onset, DLMO) given a light schedule
- Model melatonin dynamics
- Infer sleep timing and circadian misalignment
- Integrate physiology-driven modeling with actigraphy-derived data
circStudio unifies two complementary approaches to circadian research: data-driven actigraphy analysis and
mechanistic circadian modeling.
The package integrates preprocessing, rhythm quantification, and sleep detection capabilities from pyActigraphy
with mathematical models of circadian dynamics provided by the circadian package.
By bridging actigraphy signal processing, rhythm metrics, and physiology-based modeling, circStudio enables
researchers to move seamlessly from raw actigraphy recordings to predictions of circadian phase, sleep timing, and
circadian misalignment.
Citation of the original papers:
Hammad G, Reyt M, Beliy N, Baillet M, Deantoni M, Lesoinne A, et al. (2021) pyActigraphy: Open-source python package for actigraphy data visualization and analysis. PLoS Comput Biol 17(10): e1009514. https://doi.org/10.1371/journal.pcbi.1009514
Hammad, G., Wulff, K., Skene, D. J., Münch, M., & Spitschan, M. (2024). Open-Source Python Module for the Analysis of Personalized Light Exposure Data from Wearable Light Loggers and Dosimeters. LEUKOS, 20(4), 380–389. https://doi.org/10.1080/15502724.2023.2296863
Tavella, F., Hannay, K., & Walch, O. (2023). Arcascope/circadian: Refactoring of readers and metrics modules, Zenodo, v1.0.2. https://doi.org/10.5281/zenodo.8206871
This project keeps the same license as pyActigraphy, the GNU GPL-3.0 License.
Sincere thanks to the following teams:
- The developers of the original pyActigraphy package, whose work laid the foundation for this project (https://github.com/ghammad/pyActigraphy).
- The authors of the circadian package, whose original implementation of light-informed models was crucial for our implementation (https://github.com/Arcascope/circadian).