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来自健康日常活动的无监督预训练模型改善帕金森病步态模式分类

Unsupervised Pre-trained Models from Healthy ADLs Improve Parkinson's Disease Classification of Gait Patterns.

作者信息

Som Anirudh, Krishnamurthi Narayanan, Buman Matthew, Turaga Pavan

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:784-788. doi: 10.1109/EMBC44109.2020.9176572.

Abstract

Application and use of deep learning algorithms for different healthcare applications is gaining interest at a steady pace. However, use of such algorithms can prove to be challenging as they require large amounts of training data that capture different possible variations. This makes it difficult to use them in a clinical setting since in most health applications researchers often have to work with limited data. Less data can cause the deep learning model to over-fit. In this paper, we ask how can we use data from a different environment, different use-case, with widely differing data distributions. We exemplify this use case by using single-sensor accelerometer data from healthy subjects performing activities of daily living - ADLs (source dataset), to extract features relevant to multi-sensor accelerometer gait data (target dataset) for Parkinson's disease classification. We train the pre-trained model using the source dataset and use it as a feature extractor. We show that the features extracted for the target dataset can be used to train an effective classification model. Our pretrained source model consists of a convolutional autoencoder, and the target classification model is a simple multi-layer perceptron model. We explore two different pre-trained source models, trained using different activity groups, and analyze the influence the choice of pre-trained model has over the task of Parkinson's disease classification.

摘要

深度学习算法在不同医疗保健应用中的应用和使用正稳步受到关注。然而,使用此类算法可能具有挑战性,因为它们需要大量能捕捉不同可能变化的训练数据。这使得在临床环境中使用它们变得困难,因为在大多数健康应用中,研究人员通常不得不使用有限的数据。数据较少可能会导致深度学习模型过度拟合。在本文中,我们探讨如何使用来自不同环境、不同用例且数据分布差异很大的数据。我们通过使用来自进行日常生活活动(ADL)的健康受试者的单传感器加速度计数据(源数据集)来举例说明这个用例,以提取与用于帕金森病分类的多传感器加速度计步态数据(目标数据集)相关的特征。我们使用源数据集训练预训练模型,并将其用作特征提取器。我们表明,为目标数据集提取的特征可用于训练有效的分类模型。我们的预训练源模型由一个卷积自动编码器组成,目标分类模型是一个简单的多层感知器模型。我们探索了两种使用不同活动组训练的不同预训练源模型,并分析了预训练模型的选择对帕金森病分类任务的影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b326/7545260/720c7ae7ea1f/nihms-1605050-f0001.jpg

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