Sleep/wake measurement using a non-contact biomotion sensor

被引:82
作者
de Chazal, Philip [1 ]
Fox, Niall [1 ]
O'Hare, Emer [1 ]
Heneghan, Conor [1 ]
Zaffaroni, Alberto [1 ]
Boyle, Patricia [2 ]
Smith, Stephanie [2 ]
O'Connell, Caroline [2 ]
McNicholas, Walter T. [2 ]
机构
[1] NovaUCD, BiancaMed, Dublin 4, Ireland
[2] St Vincents Univ Healthcare Grp, Resp Sleep Disorders Unit, Dublin 4, Ireland
关键词
actigraphy; apnoea; biomotion; sleep disturbance; sleep staging; OLDER-ADULTS; ACTIGRAPHY; CLASSIFICATION; WAKE; VALIDATION; MOVEMENT; PATTERNS; INSOMNIA; THERAPY; STAGE;
D O I
10.1111/j.1365-2869.2010.00876.x
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
P>We studied a novel non-contact biomotion sensor, which has been developed for identifying sleep/wake patterns in adult humans. The biomotion sensor uses ultra low-power reflected radiofrequency waves to determine the movement of a subject during sleep. An automated classification algorithm has been developed to recognize sleep/wake states on a 30-s epoch basis based on the measured movement signal. The sensor and software were evaluated against gold-standard polysomnography on a database of 113 subjects [94 male, 19 female, age 53 +/- 13 years, apnoea-hypopnea index (AHI) 22 +/- 24] being assessed for sleep-disordered breathing at a hospital-based sleep laboratory. The overall per-subject accuracy was 78%, with a Cohen's kappa of 0.38. Lower accuracy was seen in a high AHI group (AHI > 15, 63 subjects) than in a low AHI group (74.8% versus 81.3%); however, most of the change in accuracy can be explained by the lower sleep efficiency of the high AHI group. Averaged across subjects, the overall sleep sensitivity was 87.3% and the wake sensitivity was 50.1%. The automated algorithm slightly overestimated sleep efficiency (bias of +4.8%) and total sleep time (TST; bias of +19 min on an average TST of 288 min). We conclude that the non-contact biomotion sensor can provide a valid means of measuring sleep-wake patterns in this patient population, and also allows direct visualization of respiratory movement signals.
引用
收藏
页码:356 / 366
页数:11
相关论文
共 38 条
[21]   Respiratory and body movements as indicators of sleep stage and wakefulness in infants and young children [J].
Kirjavainen, T ;
Cooper, D ;
Polo, O ;
Sullivan, CE .
JOURNAL OF SLEEP RESEARCH, 1996, 5 (03) :186-194
[22]   Comparison of actigraphic, polysomnographic, and subjective assessment of sleep parameters in sleep-disordered patients [J].
Kushida, Clete A. ;
Chang, Arthur ;
Gadkary, Chirag ;
Guilleminault, Christian ;
Carrillo, Oscar ;
Dement, William C. .
SLEEP MEDICINE, 2001, 2 (05) :389-396
[23]  
Li Changzhi, 2006, Conf Proc IEEE Eng Med Biol Soc, V2006, P2235
[24]   MICROWAVE SENSING OF PHYSIOLOGICAL MOVEMENT AND VOLUME CHANGE - A REVIEW [J].
LIN, JC .
BIOELECTROMAGNETICS, 1992, 13 (06) :557-565
[25]  
Lötjönen J, 2003, SLEEP, V26, P86
[26]   How accurately does wrist actigraphy identify the states of sleep and wakefulness? [J].
Pollak, CP ;
Tryon, WW ;
Nagaraja, H ;
Dzwonczyk, R .
SLEEP, 2001, 24 (08) :957-965
[27]  
Popovic D, 2008, SLEEP, V31, pA332
[28]  
Rechtschaffen A., 1968, A manual of standard terminology, techniques and scoring system for sleep stages of human subjects
[29]  
Redmond StephenJ., 2007, Somnologie-Schlafforschung und Schlafmedizin, V11, P245
[30]  
Ripley B. D., 2007, Pattern recognition and neural networks