利用深度学习和定时上下(TUG)测试数据预测老年人跌倒风险。

IF 3.8 3区 医学 Q2 ENGINEERING, BIOMEDICAL
Josu Maiora, Chloe Rezola-Pardo, Guillermo García, Begoña Sanz, Manuel Graña
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引用次数: 0

摘要

跌倒是老年人的主要健康隐患;因此,在人口老龄化的背景下,预测患者在不久的将来发生跌倒的风险对医疗保健系统具有重大影响。目前,标准的前瞻性跌倒风险评估工具依赖于一套临床和功能性活动能力评估工具,其中之一就是定时起立行走(TUG)测试。最近,有人提出使用可穿戴惯性测量单元(IMU)来捕捉运动数据,从而对跌倒风险做出估计。本研究的假设是,患者在进行 TUG 测试时从 IMU 读数中收集到的数据可用于建立预测模型,该模型将提供近期内跌倒概率的估计值,即评估预期跌倒风险。本研究应用深度学习卷积神经网络(CNN)和递归神经网络(RNN),根据从 TUG 测试实现过程中获取的 IMU 数据中提取的特征建立此类预测模型。数据来自一组 106 名老年人,他们在进行 TUG 测试时佩戴了采样频率为 100 Hz 的无线 IMU 传感器。因变量是一个二进制变量,如果患者在 6 个月的随访期内发生跌倒,则该变量为真。该变量被用作深度学习架构和竞争机器学习方法的监督训练和验证的输出变量。为了获得对模型性能的稳健估计,我们使用 75 个受试者进行训练,31 个受试者进行测试,重复进行了 100 次暂缓验证过程。双向长短时记忆(BLSTM)取得了最佳结果,准确率为 0.83,AUC 为 0.73,具有良好的灵敏度和特异性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Older Adult Fall Risk Prediction with Deep Learning and Timed Up and Go (TUG) Test Data.

Falls are a major health hazard for older adults; therefore, in the context of an aging population, predicting the risk of a patient suffering falls in the near future is of great impact for health care systems. Currently, the standard prospective fall risk assessment instrument relies on a set of clinical and functional mobility assessment tools, one of them being the Timed Up and Go (TUG) test. Recently, wearable inertial measurement units (IMUs) have been proposed to capture motion data that would allow for the building of estimates of fall risk. The hypothesis of this study is that the data gathered from IMU readings while the patient is performing the TUG test can be used to build a predictive model that would provide an estimate of the probability of suffering a fall in the near future, i.e., assessing prospective fall risk. This study applies deep learning convolutional neural networks (CNN) and recurrent neural networks (RNN) to build such predictive models based on features extracted from IMU data acquired during TUG test realizations. Data were obtained from a cohort of 106 older adults wearing wireless IMU sensors with sampling frequencies of 100 Hz while performing the TUG test. The dependent variable is a binary variable that is true if the patient suffered a fall in the six-month follow-up period. This variable was used as the output variable for the supervised training and validations of the deep learning architectures and competing machine learning approaches. A hold-out validation process using 75 subjects for training and 31 subjects for testing was repeated one hundred times to obtain robust estimations of model performances At each repetition, 5-fold cross-validation was carried out to select the best model over the training subset. Best results were achieved by a bidirectional long short-term memory (BLSTM), obtaining an accuracy of 0.83 and AUC of 0.73 with good sensitivity and specificity values.

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来源期刊
Bioengineering
Bioengineering Chemical Engineering-Bioengineering
CiteScore
4.00
自引率
8.70%
发文量
661
期刊介绍: Aims Bioengineering (ISSN 2306-5354) provides an advanced forum for the science and technology of bioengineering. It publishes original research papers, comprehensive reviews, communications and case reports. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. All aspects of bioengineering are welcomed from theoretical concepts to education and applications. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. There are, in addition, four key features of this Journal: ● We are introducing a new concept in scientific and technical publications “The Translational Case Report in Bioengineering”. It is a descriptive explanatory analysis of a transformative or translational event. Understanding that the goal of bioengineering scholarship is to advance towards a transformative or clinical solution to an identified transformative/clinical need, the translational case report is used to explore causation in order to find underlying principles that may guide other similar transformative/translational undertakings. ● Manuscripts regarding research proposals and research ideas will be particularly welcomed. ● Electronic files and software regarding the full details of the calculation and experimental procedure, if unable to be published in a normal way, can be deposited as supplementary material. ● We also accept manuscripts communicating to a broader audience with regard to research projects financed with public funds. Scope ● Bionics and biological cybernetics: implantology; bio–abio interfaces ● Bioelectronics: wearable electronics; implantable electronics; “more than Moore” electronics; bioelectronics devices ● Bioprocess and biosystems engineering and applications: bioprocess design; biocatalysis; bioseparation and bioreactors; bioinformatics; bioenergy; etc. ● Biomolecular, cellular and tissue engineering and applications: tissue engineering; chromosome engineering; embryo engineering; cellular, molecular and synthetic biology; metabolic engineering; bio-nanotechnology; micro/nano technologies; genetic engineering; transgenic technology ● Biomedical engineering and applications: biomechatronics; biomedical electronics; biomechanics; biomaterials; biomimetics; biomedical diagnostics; biomedical therapy; biomedical devices; sensors and circuits; biomedical imaging and medical information systems; implants and regenerative medicine; neurotechnology; clinical engineering; rehabilitation engineering ● Biochemical engineering and applications: metabolic pathway engineering; modeling and simulation ● Translational bioengineering
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