Bhopi Rashmi, Nagy David, Erichsen Daniel
Department of Pediatrics, Albert Einstein College of Medicine, Bronx, NY, USA.
Stud Health Technol Inform. 2012;182:36-42.
Periodic limb movements (PLMs) are repetitive, stereotypical and unconscious movements, typically of the legs, that occur in sleep and are associated with several sleep disorders. The gold standard for detecting PLMs is overnight electromyography which, although highly sensitive and specific, is time and labour consuming. The current generation of smart phones is equipped with tri-axial accelerometers that record movement.
To develop a smart phone application that can detect PLMs remotely.
A leg movement sensing application (LMSA) was programmed in iOS 5x and incorporated into an iPhone 4S (Apple INC.). A healthy adult male subject underwent simultaneous EMG and LMSA measurements of voluntary stereotypical leg movements. The mean number of leg movements recorded by EMG and by the LMSA was compared.
A total of 403 leg movements were scored by EMG of which the LMSA recorded 392 (97%). There was no statistical difference in mean number of leg movements recorded between the two modalities (p = 0.3).
These preliminary results indicate that a smart phone application is able to accurately detect leg movements outside of the hospital environment and may be a useful tool for screening and follow up of patients with PLMs.
周期性肢体运动(PLMs)是重复性、刻板且无意识的运动,通常发生在腿部,出现在睡眠中并与多种睡眠障碍相关。检测PLMs的金标准是夜间肌电图检查,尽管其具有高度的敏感性和特异性,但耗时且费力。当前一代智能手机配备了可记录运动的三轴加速度计。
开发一款能够远程检测PLMs的智能手机应用程序。
在iOS 5x系统中编写了一款腿部运动传感应用程序(LMSA),并将其安装到iPhone 4S(苹果公司)中。一名健康成年男性受试者同时接受了肌电图和LMSA对自愿性刻板腿部运动的测量。比较了肌电图和LMSA记录的腿部运动平均次数。
肌电图共记录到403次腿部运动,其中LMSA记录到392次(97%)。两种方式记录的腿部运动平均次数无统计学差异(p = 0.3)。
这些初步结果表明,一款智能手机应用程序能够在医院环境之外准确检测腿部运动,可能是筛查和随访PLMs患者的有用工具。