McDonald Anthony D, Lee John D, Aksan Nazan S, Dawson Jeffrey D, Tippin Jon, Rizzo Matthew
Texas A&M University, College Station, TX, USA.
University of Wisconsin-Madison, Madison, WI, USA.
J Intell Transp Syst. 2017;21(5):422-434. doi: 10.1080/15472450.2017.1369060. Epub 2017 Sep 13.
People spend a significant amount of time behind the wheel of a car. Recent advances in data collection facilitate continuously monitoring this behavior. Previous work demonstrates the importance of this data in driving safety but does not extended beyond the driving domain. One potential extension of this data is to identify driver states related to health conditions such as obstructive sleep apnea (OSA). We collected driving data and medication adherence from a sample of 75 OSA patients over 3.5 months. We converted speed and acceleration behaviors to symbols using symbolic aggregate approximation and converted these symbols to pattern frequencies using a sliding window. The resulting frequency data was matched with treatment adherence information. A random forest model was trained on the data and evaluated using a held-aside test dataset. The random forest model detects lapses in treatment adherence. An assessment of variable importance suggests that the important patterns of driving in classification correspond to route decisions and patterns that may be associated with drowsy driving. The success of this approach suggests driving data may be valuable for evaluating new treatments, analyzing side effects of medications, and that the approach may benefit other drowsiness detection algorithms.
人们在驾驶汽车时会花费大量时间。数据收集方面的最新进展有助于持续监测这种行为。先前的研究表明了这些数据在驾驶安全中的重要性,但并未超出驾驶领域。这些数据的一个潜在扩展是识别与诸如阻塞性睡眠呼吸暂停(OSA)等健康状况相关的驾驶员状态。我们在3.5个月内从75名OSA患者的样本中收集了驾驶数据和药物依从性信息。我们使用符号聚合近似将速度和加速度行为转换为符号,并使用滑动窗口将这些符号转换为模式频率。所得的频率数据与治疗依从性信息进行匹配。在这些数据上训练了一个随机森林模型,并使用一个预留的测试数据集进行评估。随机森林模型可检测治疗依从性的失误。对变量重要性的评估表明,分类中重要的驾驶模式对应于路线决策以及可能与困倦驾驶相关的模式。这种方法的成功表明,驾驶数据对于评估新治疗方法、分析药物副作用可能具有价值,并且该方法可能会使其他困倦检测算法受益。