NeuralGait: Assessing Brain Health Using Your Smartphone

Huining Li, Huan Chen, Chenhan Xu, Zhengxiong Li, Han-Zhe Zhang, Xiaoye Qian, Dongmei Li, Ming-chun Huang, Wenyao Xu
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引用次数: 1

Abstract

Brain health attracts more recent attention as the population ages. Smartphone-based gait sensing and analysis can help identify the risks of brain diseases in daily life for prevention. Existing gait analysis approaches mainly hand-craft temporal gait features or developing CNN-based feature extractors, but they are either prone to lose some inconspicuous pathological information or are only dedicated to a single brain disease screening. We discover that the relationship between gait segments can be used as a principle and generic indicator to quantify multiple pathological patterns. In this paper, we propose NeuralGait , a pervasive smartphone-cloud system that passively captures and analyzes principle gait segments relationship for brain health assessment. On the smartphone end, inertial gait data are collected while putting the smartphone in the pants pocket. We then craft local temporal-frequent gait domain features and develop a self-attention-based gait segment relationship encoder. Afterward, the domain features and relation features are fed to a scalable RiskNet in the cloud for brain health assessment. We also design a pathological hot update protocol to efficiently add new brain diseases in the RiskNet. NeuralGait is practical as it provides brain health assessment with no burden in daily life. In the experiment, we recruit 988 healthy people and 417 patients with a single or combination of PD, TBI, and stroke, and evaluate the brain health assessment using a set of specifically designed metrics including global accuracy, exact accuracy, sensitivity, and false alarm rate. We also demonstrate the generalization (e.g., analysis of feature effectiveness and model efficiency) and inclusiveness of NeuralGait . CCS Concepts: • Human-centered computing → Ubiquitous and mobile computing systems and tools ; • Applied computing → Life and medical sciences .
neural步态:用智能手机评估大脑健康
随着人口老龄化,大脑健康最近引起了更多的关注。基于智能手机的步态传感和分析可以帮助识别日常生活中脑部疾病的风险,以进行预防。现有的步态分析方法主要是手工制作时间步态特征或开发基于cnn的特征提取器,但它们要么容易丢失一些不明显的病理信息,要么只专注于单一的脑部疾病筛查。我们发现步态段之间的关系可以作为量化多种病理模式的原则和通用指标。在本文中,我们提出了neural步态,一个无处不在的智能手机云系统,被动捕获和分析主要步态段关系,用于大脑健康评估。在智能手机端,将智能手机放在裤子口袋中,同时收集惯性步态数据。然后,我们制作了局部时间频率的步态域特征,并开发了一个基于自注意的步态片段关系编码器。然后,将领域特征和关系特征馈送到云中的可扩展RiskNet中进行大脑健康评估。我们还设计了病理学热点更新协议,以有效地将新的脑疾病添加到风险网络中。neural步态是实用的,因为它提供了大脑健康评估,在日常生活中没有负担。在实验中,我们招募了988名健康人和417名患有单一或合并PD、TBI和中风的患者,并使用一套专门设计的指标来评估大脑健康评估,包括全局准确性、精确准确性、灵敏度和误报率。我们还展示了neural步态的泛化(例如,特征有效性和模型效率的分析)和包容性。CCS概念:•以人为中心的计算→无处不在的移动计算系统和工具;•应用计算→生命和医学科学。
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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