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基于深度学习的使用 fNIRS 的老年人行走任务分类。

Deep Learning Based Walking Tasks Classification in Older Adults Using fNIRS.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2023;31:3437-3447. doi: 10.1109/TNSRE.2023.3306365. Epub 2023 Aug 30.

Abstract

Decline in gait features is common in older adults and an indicator of increased risk of disability, morbidity, and mortality. Under dual task walking (DTW) conditions, further degradation in the performance of both the gait and the secondary cognitive task were found in older adults which were significantly correlated to falls history. Cortical control of gait, specifically in the pre-frontal cortex (PFC) as measured by functional near infrared spectroscopy (fNIRS), during DTW in older adults has recently been studied. However, the automatic classification of differences in cognitive activations under single and dual task gait conditions has not been extensively studied yet. In this paper, by considering single task walking (STW) as a lower attentional walking state and DTW as a higher attentional walking state, we aimed to formulate this as an automatic detection of low and high attentional walking states and leverage deep learning methods to perform their classification. We conduct analysis on the data samples which reveals the characteristics on the difference between HbO2 and Hb values that are subsequently used as additional features. We perform feature engineering to formulate the fNIRS features as a 3-channel image and apply various image processing techniques for data augmentation to enhance the performance of deep learning models. Experimental results show that pre-trained deep learning models that are fine-tuned using the collected fNIRS dataset together with gender and cognitive status information can achieve around 81% classification accuracy which is about 10% higher than the traditional machine learning algorithms. We present additional sensitivity metrics such as confusion matrix, precision and F score, as well as accuracy on two-way classification between condition pairings. We further performed an extensive ablation study to evaluate factors such as the voxel locations, channels of input images, zero-paddings and pre-training of deep learning model on their contribution or impact to the classification task. Results showed that using pre-trained model, all the voxel locations, and HbO2 - Hb as the third channel of the input image can achieve the best classification accuracy.

摘要

步态特征的下降在老年人中很常见,是残疾、发病率和死亡率增加的指标。在双重任务行走(DTW)条件下,老年人的步态和次要认知任务的表现进一步恶化,这与跌倒史显著相关。最近,人们研究了皮质对步态的控制,特别是使用功能近红外光谱(fNIRS)测量前额叶皮层(PFC)中的控制。然而,在单任务和双重任务步态条件下,认知激活的自动分类尚未得到广泛研究。在本文中,我们将单任务行走(STW)视为低注意力行走状态,将 DTW 视为高注意力行走状态,旨在将其自动检测为低和高注意力行走状态,并利用深度学习方法对其进行分类。我们对数据样本进行了分析,揭示了 HbO2 和 Hb 值之间差异的特征,随后将这些特征用作附加特征。我们进行了特征工程,将 fNIRS 特征表示为 3 通道图像,并应用各种图像处理技术进行数据增强,以提高深度学习模型的性能。实验结果表明,使用收集的 fNIRS 数据集以及性别和认知状态信息对预训练的深度学习模型进行微调,可以实现约 81%的分类准确率,比传统机器学习算法高约 10%。我们还提出了其他敏感性指标,如混淆矩阵、精度和 F 分数,以及条件配对之间的双向分类的准确性。我们进一步进行了广泛的消融研究,以评估体素位置、输入图像的通道、零填充和深度学习模型的预训练等因素对分类任务的贡献或影响。结果表明,使用预训练模型、所有体素位置以及将 HbO2-Hb 作为输入图像的第三通道,可以实现最佳的分类准确率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7123/11044905/ea8f8f2022da/nihms-1928451-f0001.jpg

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