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STATISTICAL CHARACTERIZATION OF ACTIGRAPHY DATA DURING SLEEP AND WAKEFULNESS STATES. Ondrej Adamec Faculty of Electrical Engineering VSB Technical University, Ostrava, Czech Republic. Teresa Paiva Centro de Electroencefalografia e Neurofisiologia Clínica
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STATISTICAL CHARACTERIZATION OF ACTIGRAPHY DATA DURING SLEEP AND WAKEFULNESS STATES Ondrej Adamec Faculty of Electrical EngineeringVSB Technical University, Ostrava, Czech Republic Teresa Paiva Centro de Electroencefalografia e Neurofisiologia Clínica Faculdade de Medicina da Universidade de Lisboa Lisboa, Portugal Alexandre Domingues, J.M. Sanches Instituto de Sistemas e RobóticaInstituto Superior Técnico, Lisboa, Portugal 32nd Annual International Conference of the IEEE Engineering in Medicine and Biology Society Abstract Methods (cont.) • The diagnosis of Sleep disorders, highly prevalent in the western countries, typically involves sophisticated procedures and equipments that are intrusive to the patient. • Wrist actigraphy, on the contrary, is a non-invasive and low cost solution to gather data which can provide valuable information in the diagnosis of these disorders. • In this work, actigraphy data, acquired from 20 healthy patients and manually segmented by trained technicians, is described by a weighted mixture of two distributions where the weight evolves along the day according to the patient circadian cycle. • Several mixture combinations are tested and statistically validated with conformity measures. It is shown that both distributions can co-exist at a certain time with varying importance along the circadian cycle. Raw data analysis • Estimation of the SW state, from the variation of the weight α along the circadian cycle, from non-segmented data . Results Single distribution • Sleep state • Gamma Distribution and Inverse Gaussian lead to a minimum fitting error Motivation Sleep disorders • Afect a significative percentage of adult population. • Related with diabetes, obesity, depression, cardiovascular diseases. • The diagnosis envolves complex and intrusive procedures such as the ones in a Polysomnography (PSG). • Many individuals never seek medical care. • Wakefulness state • Rician and Maxwell – Boltzan distributions lead to a minimum fitting error. These tools do not replace the accuracy of a PSG!! Alternative diagnosis tools • Sleep diary • Portable ECG monitoring • Temperature monitoring • Actigraphy Typical Polysomnography setup Actigraph
Methods Mixture distribution • The mixture of Gamma (sleep state) and Rician (wakefulnessstate) distributions lead to a minimum fitting error Data sets • Actigraphy data collected from 20 healthy patients during a period of approximatly 14 days in normal quotidian life. • Segmentation into sleep/wakefulness (SW) periods by trained technicians Non-segmented data Data processing: • Data segments were grouped according to the corresponding sleep or wakefulness state and the two histograms were computed. Single distribution fitting • Single distribution fitting: • Several different distributions were fitted to assess the best representation for each data type, per patient, according to: • The fitting error was computed according to: Evolution of α along the circadian cycle Conclusions • This work proposes a description for actigraphy data based on the different statistical characteristics of the movements during sleep and wakefulness states. • It is shown that the global activity can be described by a mixture of two distributions; one associated with movements during sleep state (Gamma distribution) and other associated with movements during wakefulness state (Rician distribution ). • The weight coefficient of the mixture,α, evolves along the circadian cycle and may be used to help in the estimation of the Sleep/Wakefulness state. • Future work will join α with other physiological/environmental features to build a robust tool to aid the diagnosis of sleep disorders References Mixture distribution fitting • Mixture distribution fitting: • Probability distribution function for the mixture distribution: [1] João Sanches, Pedro Pires and Teresa Paiva, ”Cell Phone based Sleep electronic Diary (SeD),” in 20th Congress of the European Sleep Research Society, 14-18 September, Lisbon, Portugal 2010. [2] J. Lotjonen at al., ”Automatic Sleep-Wake and Nap Analysis with a New Wrist Worn Online Activity Monitoring Device Vivago Wrist- Care,” SLEEP, vol. 26, pp 86-90, 2003. [3] C. A. Kushida at al., ”Comparison of actigraphic, polysomnographic, and subjective assessment of sleep parameters in sleep-disordered patients,” leep Medicine, vol. 2, no. 5, pp 389 - 396, 2001. [4] P. Pires, T. Paiva, J. Sanches, ”Sleep/Wakefulness state from actigraphy,” in 4th Iberian Conference on Pattern Recognition and Image Analysis, Póvoa de Varzim, Portugal, 2009, pp. 362-369. [5] G. Jean-Louis et al., ”Sleep estimation from wrist movement quantified by different actigraphic modalities,” Journal of Neuroscience Methods, vol. 105, no. 2, pp 185 - 191, 2001. [6] J. Paquet, A. Kawinska, J. Carrier, ”Wake Detection Capacity of Actigraphy During Sleep,” SLEEP, vol. 30, pp 1362-1369, 2007. [7] V. Gimeno et al., ”The Statistical Distribution of Wrist Movements during Sleep,” Neuropsychobiology, vol. 38, no. 2, pp 108-112, 1998. [8] H. Shinkoda et al., ”Evaluation of human activities and sleep-wake identification using wrist actigraphy,” Psychiatry and Clinical Neurosciences, vol. 52, no. 2, pp 157-159, 1998. [9] Vasickova, Z., Augustynek, M., ”New method for detection of epileptic seizure,” Journal of Vibroengineering, pp 209, 2009. [10] Augustynek, M., Penhaker, M., Korpas, D., ”Controlling Peacemakers by Accelerometers,” The 2nd International Conference on Telecom Technology and Applications, Bali Island, Indonesia, pp 161-163, 2010.