Department of Physical Therapy, Georgia Health Sciences University, Augusta, GA 30912, USA.
Mult Scler. 2013 Mar;19(3):344-50. doi: 10.1177/1352458512451944. Epub 2012 Jul 3.
We previously reported that performance on the Stroke Driver Screening Assessment (SDSA), a battery of four cognitive tests that takes less than 30 min to administer, predicted the driving performance of participants with multiple sclerosis (MS) on a road test with 86% accuracy, 80% sensitivity, and 88% specificity.
In this study, we further investigated if the addition of driving-related physical and visual tests and other previously identified cognitive predictors, including performance on the Useful Field of View test, will result in a better accuracy of predicting participants' on-road driving performance.
Forty-four individuals with relapsing-remitting MS (age = 46 ± 11 years, 37 females) and Expanded Disability Status Scale values between 1 and 7 were administered selected physical, visual and cognitive tests including the SDSA. The model that explained the highest variance of participants' performance on a standardized road test was identified using multiple regression analysis. A discriminant equation containing the tests included in the best model was used to predict pass or fail performance on the test.
Performance on 12 cognitive and three visual tests were significantly associated with performance on the road test. Five of the tests together explained 59% of the variance and predicted the pass or fail outcome of the road test with 91% accuracy, 70% sensitivity, and 97% specificity.
Participants' on-road performance was more accurately predicted by the model identified in this study than using only performance on the SDSA test battery. The five psychometric/off-road tests should be used as a screening battery, after which a follow-up road test should be conducted to finally decide the fitness to drive of individuals with relapsing-remitting MS. Future studies are needed to confirm and validate the findings in this study.
我们之前报道过,在一项认知测试中,SDSA(Stroke Driver Screening Assessment)的表现,即四项认知测试的综合表现,用时不到 30 分钟,对多发性硬化症(MS)患者的道路测试驾驶表现的预测准确率为 86%,敏感度为 80%,特异性为 88%。
在这项研究中,我们进一步探讨了是否可以通过添加与驾驶相关的身体和视觉测试以及其他之前确定的认知预测因素,包括有用视野测试的表现,从而提高对参与者道路驾驶表现的预测准确性。
对 44 名复发缓解型多发性硬化症(年龄=46±11 岁,37 名女性)和扩展残疾状况量表值在 1 到 7 之间的患者进行了包括 SDSA 在内的选择物理、视觉和认知测试。使用多元回归分析确定了能够解释参与者在标准化道路测试中表现的最佳模型。使用包含最佳模型中包含的测试的判别方程来预测测试中的通过或失败表现。
12 项认知测试和 3 项视觉测试的表现与道路测试的表现显著相关。五项测试一起解释了 59%的方差,并以 91%的准确率、70%的敏感度和 97%的特异性预测了道路测试的通过或失败结果。
与仅使用 SDSA 测试组合相比,本研究确定的模型更准确地预测了参与者的道路表现。这五项心理测试/非道路测试应作为筛选测试,然后进行后续的道路测试,最终决定复发缓解型多发性硬化症患者的驾驶能力。需要进一步的研究来确认和验证本研究中的发现。