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青光眼患者机动车碰撞风险的预测:一项纵向研究。

Predicting Risk of Motor Vehicle Collisions in Patients with Glaucoma: A Longitudinal Study.

作者信息

Gracitelli Carolina P B, Tatham Andrew J, Boer Erwin R, Abe Ricardo Y, Diniz-Filho Alberto, Rosen Peter N, Medeiros Felipe A

机构信息

Visual Performance Laboratory, Department of Ophthalmology, University of California, San Diego, California, United States of America; Department of Ophthalmology, Federal University of São Paulo, São Paulo, São Paulo, Brazil.

Visual Performance Laboratory, Department of Ophthalmology, University of California, San Diego, California, United States of America; Princess Alexandra Eye Pavilion and Department of Ophthalmology, University of Edinburgh, Edinburgh, United Kingdom.

出版信息

PLoS One. 2015 Oct 1;10(10):e0138288. doi: 10.1371/journal.pone.0138288. eCollection 2015.

Abstract

PURPOSE

To evaluate the ability of longitudinal Useful Field of View (UFOV) and simulated driving measurements to predict future occurrence of motor vehicle collision (MVC) in drivers with glaucoma.

DESIGN

Prospective observational cohort study.

PARTICIPANTS

117 drivers with glaucoma followed for an average of 2.1 ± 0.5 years.

METHODS

All subjects had standard automated perimetry (SAP), UFOV, driving simulator, and cognitive assessment obtained at baseline and every 6 months during follow-up. The driving simulator evaluated reaction times to high and low contrast peripheral divided attention stimuli presented while negotiating a winding country road, with central driving task performance assessed as "curve coherence". Drivers with MVC during follow-up were identified from Department of Motor Vehicle records.

MAIN OUTCOME MEASURES

Survival models were used to evaluate the ability of driving simulator and UFOV to predict MVC over time, adjusting for potential confounding factors.

RESULTS

Mean age at baseline was 64.5 ± 12.6 years. 11 of 117 (9.4%) drivers had a MVC during follow-up. In the multivariable models, low contrast reaction time was significantly predictive of MVC, with a hazard ratio (HR) of 2.19 per 1 SD slower reaction time (95% CI, 1.30 to 3.69; P = 0.003). UFOV divided attention was also significantly predictive of MVC with a HR of 1.98 per 1 SD worse (95% CI, 1.10 to 3.57; P = 0.022). Global SAP visual field indices in the better or worse eye were not predictive of MVC. The longitudinal model including driving simulator performance was a better predictor of MVC compared to UFOV (R2 = 0.41 vs R2 = 0.18).

CONCLUSIONS

Longitudinal divided attention metrics on the UFOV test and during simulated driving were significantly predictive of risk of MVC in glaucoma patients. These findings may help improve the understanding of factors associated with driving impairment related to glaucoma.

摘要

目的

评估纵向有用视野(UFOV)和模拟驾驶测量预测青光眼患者未来机动车碰撞(MVC)发生的能力。

设计

前瞻性观察队列研究。

参与者

117名青光眼患者,平均随访2.1±0.5年。

方法

所有受试者在基线时以及随访期间每6个月进行标准自动视野计检查(SAP)、UFOV检查、驾驶模拟器检查和认知评估。驾驶模拟器评估在蜿蜒乡村道路行驶时对高对比度和低对比度周边分心刺激的反应时间,中央驾驶任务表现评估为“曲线连贯性”。通过机动车部门记录确定随访期间发生MVC的驾驶员。

主要观察指标

使用生存模型评估驾驶模拟器和UFOV随时间预测MVC的能力,并对潜在混杂因素进行调整。

结果

基线时的平均年龄为64.5±12.6岁。117名驾驶员中有11名(9.4%)在随访期间发生了MVC。在多变量模型中,低对比度反应时间显著预测MVC,反应时间每慢1个标准差,风险比(HR)为2.19(95%CI,1.30至3.69;P = 0.003)。UFOV分心也显著预测MVC,每差1个标准差,HR为1.98(95%CI,从1.10至3.57;P = 0.022)。较好或较差眼的整体SAP视野指数不能预测MVC。与UFOV相比,包括驾驶模拟器表现的纵向模型是MVC的更好预测指标(R2 = 0.41对R2 = 0.18)。

结论

UFOV测试和模拟驾驶期间的纵向分心指标显著预测青光眼患者发生MVC的风险。这些发现可能有助于更好地理解与青光眼相关的驾驶障碍因素。

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