Objective: Alzheimer's disease (AD) is a neurodegenerative disorder that initially presents'/> Deep Convolutional Neural Networks and Transfer Learning for Measuring Cognitive Impairment Using Eye-Tracking in a Distributed Tablet-Based Environment
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Deep Convolutional Neural Networks and Transfer Learning for Measuring Cognitive Impairment Using Eye-Tracking in a Distributed Tablet-Based Environment

机译:基于分布式平板电脑环境中的眼睛跟踪测量认知障碍的深度卷积神经网络与转移学习

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Objective: Alzheimer's disease (AD) is a neurodegenerative disorder that initially presents with memory loss in the presence of underlying neurofibrillary tangle and amyloid plaque pathology. Mild cognitive impairment is the initial symptomatic stage, which is an early window for detecting cognitive impairment prior to progressive decline and dementia. We recently developed the Visuospatial Memory Eye-Tracking Test (VisMET), a passive task capable of classifying cognitive impairment in AD in under five minutes. Here we describe the development of a mobile version of VisMET to enable efficient and widespread administration of the task. Methods: We delivered VisMET on iPad devices and used a transfer learning approach to train a deep neural network to track eye gaze. Eye movements were used to extract memory features to assess cognitive status in a population of 250 individuals. Results: Mild to severe cognitive impairment was identifiable with a test accuracy of 70%. By enforcing a minimal eye tracking calibration error of 2 cm, we achieved an accuracy of 76% which is equivalent to the accuracy obtained using commercial hardware for eye-tracking. Conclusion: This work demonstrates a mobile version of VisMET capable of estimating the presence of cognitive impairment. Significance: Given the ubiquity of tablet devices, our approach has the potential to scale globally.
机译:<斜体xmlns:mml =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org/1999/xlink”>目标:阿尔茨海默疾病(AD)是一种神经变性疾病,其最初在潜在的神经纤维缠结和淀粉样噬斑病理学存在下呈现内存损失。轻度认知障碍是初始症状阶段,这是一种早期窗口,用于检测进展性下降和痴呆前的认知障碍。我们最近开发了探测器内存眼跟踪测试(Vismet),这是一种被动任务,能够在五分钟内进行分类广告中的认知障碍。在这里,我们描述了移动版Vismet的开发,以实现对任务的高效和广泛管理。 方法:我们在iPad设备上交付了Vismet,并使用了转移学习方法来培训深度神经网络以跟踪眼睛凝视。眼睛运动用于提取内存特征,以评估250人群中的认知状态。 结果:温和严重的认知障碍是可识别的,测试精度为70%。通过强制执行2厘米的最小眼睛跟踪校准误差,我们实现了76%的精度,这相当于使用商业硬件进行眼睛跟踪所获得的精度。 <斜体XMLNS:mml =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org/1999/xlink”>结论:这工作展示了能够估计认知障碍的存在的移动版Vismet。 意义:给出平板电脑设备的无处不在,我们的方法具有全球范围的潜力。

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