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Highway Healthcare: How Naturalistic Driving Data Index Adherence to CPAP Therapy in Obstructive Sleep Apnea

机译:公路医疗:阻塞性睡眠呼吸暂停如何以自然驾驶数据指标遵守CPAP治疗

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摘要

Drowsy driving is a major factor in many vehicle crashes around the world. Sleep disorders, such as obstructive sleep apnea (OSA), underpin many of these crashes. Continuous positive airway pressure (CPAP) therapy is an effective treatment for sleep apnea but it requires consistent use and is often rejected by OSA patients. Rejection of CPAP treatment creates a dangerous on-road environment for both OSA sufferers and the general public. Algorithms capable of detecting CPAP use and its effects on driving are integral to identifying and mitigating this danger. This work uses naturalistic kinematic driving data to develop an algorithm which can detect nightly CPAP abstinence and adequate CPAP use. Speed and lateral acceleration data were collected using a data recorder in participant's primary vehicle and CPAP data were collected by downloading adherence data from participant CPAP machines. The speed and acceleration data were reduced to a set of symbols using Symbolic Aggregate approximation (SAX) time-series analysis. The symbols were converted into a sequence frequency dataset using sliding windows of size 1 to 10 s with a 1 Hz sampling rate. A Random Forest classifier was trained on the data to create a classification algorithm. On a held aside testing set, the Random Forest algorithm correctly identified 71% of the instances and had an area under the receiver operating characteristic curve of 0.76. The variable importance of the algorithm suggested that kinematic patterns associated with common drowsy driver crash types were key features in the algorithm's prediction performance.
机译:昏昏欲睡的驾驶是世界各地许多车祸的主要因素。诸如阻塞性睡眠呼吸暂停(OSA)之类的睡眠障碍是许多此类崩溃的基础。持续气道正压通气疗法(CPAP)是治疗睡眠呼吸暂停的有效方法,但需要持续使用,并且经常被OSA患者拒绝。拒绝接受CPAP治疗会给OSA病人和广大公众造成危险的道路环境。能够检测CPAP使用及其对驾驶的影响的算法对于识别和缓解这种危险是必不可少的。这项工作使用自然运动学驾驶数据来开发可以检测夜间CPAP戒断和适当使用CPAP的算法。使用参与者主要车辆中的数据记录器收集速度和横向加速度数据,并通过从参与者CPAP机器下载依从性数据收集CPAP数据。使用符号集合近似(SAX)时间序列分析将速度和加速度数据简化为一组符号。使用大小为1到10 s的滑动窗口(采样率为1 Hz)将符号转换为序列频率数据集。对随机森林分类器进行了数据训练以创建分类算法。在备用测试集上,Random Forest算法正确识别了71%的实例,并且在接收器工作特性曲线下的面积为0.76。该算法重要性的可变性表明,与常见的困倦驾驶员碰撞类型相关的运动学模式是算法预测性能的关键特征。

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