论文标题

1型糖尿病的停止交叉口处的葡萄糖控制,睡眠,肥胖和现实世界驱动器安全

Glucose Control, Sleep, Obesity, and Real-World Driver Safety at Stop Intersections in Type 1 Diabetes

论文作者

Barnwal, Ashirwad, Sharma, Anuj, Riera-Garcia, Luis, Ozcan, Koray, Davami, Sayedomidreza, Sarkar, Soumik, Desouza, Cyrus, Rizzo, Matthew, Merickel, Jennifer

论文摘要

背景:糖尿病与肥胖,葡萄糖控制不良和睡眠功能障碍有关,这些功能会损害认知和精神运动功能,进而增加驾驶员风险。这种风险在现实世界中的驾驶环境中如何发挥作用是Terra Incognita。解决此知识差距需要在挑战性的环境中对糖尿病驱动因素行为和生理的全面观察,在这种情况下,发生崩溃的可能性更可能发生,例如停止控制的交通交叉点,就像当前对1型糖尿病驾驶员(T1DM)的驱动程序的研究一样。方法:来自NE的奥马哈附近的32个活跃驱动因素参加了为期4周的现实研究。每位参与者自己的车辆都用高级远程信息处理和摄像头系统进行仪器,收集驾驶传感器数据和视频。使用计算机视觉模型来分析视频,以检测流量元素以识别停车标志。停止符号检测和驱动器停止轨迹被聚集,以地理位置并提取驾驶员访问的停止交叉点。然后注释驾驶员视频以记录停止行为和关键流量特征。根据交通法,停车被归类为安全或不安全。结果:混合效应逻辑回归模型检查了T1DM驱动因素中停止行为(安全与不安全)如何受到1)睡眠异常,2)肥胖症的影响。模型结果表明,与类似对照组相比,T1DM驱动因素中BMI(〜7点)的标准偏差增加与不安全的停止率增加了14.96。异常的睡眠和葡萄糖控制与不安全停止的增加无关。结论:这项研究将异常T1DM驱动器生理,睡眠和健康状况的慢性模式与十字路口的驾驶员安全风险联系起来,以鉴定糖尿病驱动因素的现实安全风险,以识别临床干预和开发车内安全安全疗养技术的现实安全风险。

Background: Diabetes is associated with obesity, poor glucose control and sleep dysfunction which impair cognitive and psychomotor functions, and, in turn, increase driver risk. How this risk plays out in the real-world driving settings is terra incognita. Addressing this knowledge gap requires comprehensive observations of diabetes driver behavior and physiology in challenging settings where crashes are more likely to occur, such as stop-controlled traffic intersections, as in the current study of drivers with Type 1 Diabetes (T1DM). Methods: 32 active drivers from around Omaha, NE participated in 4-week, real-world study. Each participant's own vehicle was instrumented with an advanced telematics and camera system collecting driving sensor data and video. Videos were analyzed using computer vision models detecting traffic elements to identify stop signs. Stop sign detections and driver stopping trajectories were clustered to geolocate and extract driver-visited stop intersections. Driver videos were then annotated to record stopping behavior and key traffic characteristics. Stops were categorized as safe or unsafe based on traffic law. Results: Mixed effects logistic regression models examined how stopping behavior (safe vs. unsafe) in T1DM drivers was affected by 1) abnormal sleep, 2) obesity, and 3) poor glucose control. Model results indicate that one standard deviation increase in BMI (~7 points) in T1DM drivers associated with a 14.96 increase in unsafe stopping odds compared to similar controls. Abnormal sleep and glucose control were not associated with increased unsafe stopping. Conclusion: This study links chronic patterns of abnormal T1DM driver physiology, sleep, and health to driver safety risk at intersections, advancing models to identify real-world safety risk in diabetes drivers for clinical intervention and development of in-vehicle safety assistance technology.

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