Taha B H, Dempsey J A, Weber S M, Badr M S, Skatrud J B, Young T B, Jacques A J, Seow K C
Department of Preventive Medicine, University of Wisconsin-Madison 53705, USA.
Sleep. 1997 Nov;20(11):991-1001. doi: 10.1093/sleep/20.11.991.
Efficient automated detection of sleep-disordered breathing (SDB) from routine polysomnography (PSG) data is made difficult by the availability of only indirect measurements of breathing. The approach we used to overcome this limitation was to incorporate pulse oximetry into the definitions of apnea and hypopnea. In our algorithm, 1) we begin with the detection of desaturation as a fall in oxyhemoglobin saturation level of 2% or greater once a rate of descent greater than 0.1% per second (but less than 4% per second) has been achieved and then ask if an apnea or hypopnea was responsible; 2) an apnea is detected if there is a period of no breathing, as indicated by sum respiratory inductive plethysmography (RIP), lasting at least 10 seconds and coincident with the desaturation event; and 3) if there is breathing, a hypopnea is defined as a minimum of three breaths showing at least 20% reduction in sum RIP magnitude from the immediately preceding breath followed by a return to at least 90% of that "baseline" breath. Our evaluation of this algorithm using 10 PSG records containing 1,938 SDB events showed strong event-by-event agreement with manual scoring by an experienced polysomnographer. On the basis of manually verified computer desaturations, detection sensitivity and specificity percentages were, respectively, 73.6 and 90.8% for apneas and 84.1 and 86.1% for hypopneas. Overall, 93.1% of the manually detected events were detected by the algorithm. We have designed an efficient algorithm for detecting and classifying SDB events that emulates manual scoring with high accuracy.
由于呼吸的测量仅为间接测量,因此从常规多导睡眠图(PSG)数据中高效自动检测睡眠呼吸紊乱(SDB)具有一定难度。我们用来克服这一限制的方法是将脉搏血氧饱和度测定纳入呼吸暂停和呼吸不足的定义中。在我们的算法中,1)我们首先检测血氧饱和度下降,即一旦血氧饱和度下降速率大于每秒0.1%(但小于每秒4%)且下降幅度达到2%或更大,然后判断是否由呼吸暂停或呼吸不足引起;2)如果呼吸感应体积描记法(RIP)总和显示无呼吸持续至少10秒且与血氧饱和度下降事件同时发生,则检测到呼吸暂停;3)如果有呼吸,呼吸不足定义为至少三次呼吸,其RIP总和幅度比前一次呼吸至少降低20%,随后恢复到该“基线”呼吸的至少90%。我们使用10份包含1938个SDB事件的PSG记录对该算法进行评估,结果显示与经验丰富的多导睡眠图分析师的手动评分在逐个事件上具有很强的一致性。基于人工验证的计算机检测到的血氧饱和度下降情况,呼吸暂停的检测灵敏度和特异度分别为73.6%和90.8%,呼吸不足的检测灵敏度和特异度分别为84.1%和86.1%。总体而言,该算法检测到了93.1%的人工检测事件。我们设计了一种高效的算法来检测和分类SDB事件,该算法能高精度地模拟人工评分。