Litcius/Paper detail

A jerk-based algorithm ACCEL for the accurate classification of sleep–wake states from arm acceleration

Koji L. Ode, Shoi Shi, Machiko Katori, Kentaro Mitsui, Shin Takanashi, Ryo Oguchi, Daisuke Aoki, Hiroki R. Ueda

2022iScience26 citationsDOIOpen Access PDF

Abstract

Arm acceleration data have been used to measure sleep-wake rhythmicity. Although several methods have been developed for the accurate classification of sleep-wake episodes, a method with both high sensitivity and specificity has not been fully established. In this study, we developed an algorithm, named ACceleration-based Classification and Estimation of Long-term sleep-wake cycles (ACCEL) that classifies sleep and wake episodes using only raw accelerometer data, without relying on device-specific functions. The algorithm uses a derivative of triaxial acceleration (jerk), which can reduce individual differences in the variability of acceleration data. Applying a machine learning algorithm to the jerk data achieved sleep-wake classification with a high sensitivity (>90%) and specificity (>80%). A jerk-based analysis also succeeded in recording periodic activities consistent with pulse waves. Therefore, the ACCEL algorithm will be a useful method for large-scale sleep measurement using simple accelerometers in real-world settings.

Topics & Concepts

JerkAccelerometerAccelerationWakeComputer scienceAlgorithmSensitivity (control systems)Sleep (system call)Artificial intelligencePhysicsEngineeringElectronic engineeringThermodynamicsClassical mechanicsOperating systemNon-Invasive Vital Sign MonitoringSleep and related disordersObstructive Sleep Apnea Research