Establishing a predictive model for unsafe driving in the elderly using artificial intelligence and elucidating the neural basis

B. Yamagata
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Abstract

In Japan, there is a social issue associated with accidents caused by elderly drivers. Although mandatory cognitive function tests when renewing driving lessons screen for dementia, they cannot account for risk of unsafe driving due to the natural ageing process. In his work, Associate Professor Bun Yamagata, Department of Neuropsychiatry, Keio University School of Medicine, has been using imaging techniques such as MRI and NIRS and combining the data obtained with neuropsychological evaluations and artificial intelligence (AI) technology to better understand brain function and structural abnormalities within the brain. In partnership with ergonomics and mechanical engineering specialist Associate Professor Motoki Shino, from The University of Tokyo, he is conducting an innovative study on driving behaviours and brain atrophy patterns. By combining engineering and neuropsychology techniques the researchers will develop algorithms that predict the risk of dangerous driving behaviours in elderly drivers. In research exploring the relationship between the structural connectivity of white matter in the brain and the driving ability of healthy older people Yamagata found that changes in the white matter within the dorsal attention network may contribute to a higher risk of unsafe driving behaviours in healthy elderly people. The researchers have used machine learning to develop a model that predicts the risk of unsafe driving in healthy older people with high accuracy from neuropsychological tests and practical visual acuity.
运用人工智能技术建立老年人不安全驾驶预测模型,阐明其神经基础
在日本,老年司机引发的交通事故是一个社会问题。虽然更新驾驶课程时的强制性认知功能测试可以筛查痴呆症,但它们无法解释由于自然衰老过程而导致的不安全驾驶风险。在他的工作中,庆应义塾大学医学院神经精神学系副教授Bun Yamagata一直在使用MRI和NIRS等成像技术,并将获得的数据与神经心理学评估和人工智能(AI)技术相结合,以更好地了解大脑功能和大脑内的结构异常。他与东京大学的人体工程学和机械工程专家信野元木副教授合作,正在进行一项关于驾驶行为和脑萎缩模式的创新研究。通过结合工程学和神经心理学技术,研究人员将开发出预测老年司机危险驾驶行为风险的算法。在探索健康老年人脑白质结构连通性与驾驶能力关系的研究中,Yamagata发现,健康老年人背侧注意网络白质的变化可能导致不安全驾驶行为的风险增加。研究人员利用机器学习开发了一种模型,可以通过神经心理测试和实际视力来预测健康老年人不安全驾驶的风险,准确率很高。
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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