Classification of Drivers with HIV-Associated Neurocognitive Disorders using Virtual Driving Test Performance Data

David Grethlein, Venk Kandadai, W. Dampier
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Abstract

In this work we focus on the problem of identifying drivers with neurocognitive impairment (NCI), specifically an NCI specific to people with HIV (PWH) called HIV-associated neurocognitive disorders (HAND) directly from driving simulator data. Since NCI-screening is typically only effective for more progressed forms of HAND, there is a critical need to identify individuals that should be referred to specialists in order to mitigate potentially dangerous driving behaviors and improve their quality of life. Data collected from (n = 81) study participants that used the virtual driving test (VDT) platform were analyzed in order to predict which drivers had NCI. Of the (n = 62) PWH participants recruited, (n = 35) had HAND; of the remaining (n = 19) HIV negative participants, (n = 7) had non-HAND NCI (e.g., Parkinson’s Disease, Alzheimer’s, etc.). In three separate experiments, subsets of VDT data were first selected via Kruskal-Wallis feature ranking and then used as ensemble inputs to classify whether or not drivers had NCI. Within the PWH population, HAND could be classified with 69.4% accuracy and a risk ratio of 2.09 (95% CI 1.52, 2.65); within the HIV negative population, non-HAND NCI could be classified with 84.2% accuracy, risk ratio of 8.25 (6.34, 10.16); and within the combined population, NCI (regardless of causation) could be classified with 63.0% accuracy, risk ratio of 1.67 (1.22, 2.11).
利用虚拟驾驶测试数据对hiv相关神经认知障碍驾驶员进行分类
在这项工作中,我们专注于识别驾驶员神经认知障碍(NCI)的问题,特别是直接从驾驶模拟器数据中识别HIV相关神经认知障碍(HAND)的NCI患者(PWH)。由于nci筛查通常只对进展更严重的HAND有效,因此迫切需要识别应该转介给专家的个体,以减轻潜在的危险驾驶行为并改善他们的生活质量。从使用虚拟驾驶测试(VDT)平台的研究参与者(n = 81)收集的数据进行分析,以预测哪些驾驶员患有NCI。在招募的(n = 62) PWH参与者中,(n = 35)患有HAND;其余(n = 19)名HIV阴性参与者(n = 7)患有非hand NCI(如帕金森病、阿尔茨海默病等)。在三个独立的实验中,首先通过Kruskal-Wallis特征排序选择VDT数据子集,然后将其作为集成输入来分类驾驶员是否具有NCI。在PWH人群中,HAND的分类准确率为69.4%,风险比为2.09 (95% CI 1.52, 2.65);在HIV阴性人群中,non-HAND NCI分类准确率为84.2%,风险比为8.25 (6.34,10.16);在联合人群中,NCI(无论因果关系如何)分类准确率为63.0%,风险比为1.67(1.22,2.11)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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