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基于光纤布拉格光栅可穿戴设备在非约束条件下呼吸流预测的元学习算法。

A meta-learning algorithm for respiratory flow prediction from FBG-based wearables in unrestrained conditions.

机构信息

The BioRobotics Institute, Scuola Superiore Sant'Anna, Pisa, Italy; Department of Excellence in Robotics & A.I., Scuola Superiore Sant'Anna, Pisa, Italy.

The BioRobotics Institute, Scuola Superiore Sant'Anna, Pisa, Italy; Department of Excellence in Robotics & A.I., Scuola Superiore Sant'Anna, Pisa, Italy.

出版信息

Artif Intell Med. 2022 Aug;130:102328. doi: 10.1016/j.artmed.2022.102328. Epub 2022 May 29.

Abstract

The continuous monitoring of an individual's breathing can be an instrument for the assessment and enhancement of human wellness. Specific respiratory features are unique markers of the deterioration of a health condition, the onset of a disease, fatigue and stressful circumstances. The early and reliable prediction of high-risk situations can result in the implementation of appropriate intervention strategies that might be lifesaving. Hence, smart wearables for the monitoring of continuous breathing have recently been attracting the interest of many researchers and companies. However, most of the existing approaches do not provide comprehensive respiratory information. For this reason, a meta-learning algorithm based on LSTM neural networks for inferring the respiratory flow from a wearable system embedding FBG sensors and inertial units is herein proposed. Different conventional machine learning approaches were implemented as well to ultimately compare the results. The meta-learning algorithm turned out to be the most accurate in predicting respiratory flow when new subjects are considered. Furthermore, the LSTM model memory capability has been proven to be advantageous for capturing relevant aspects of the breathing pattern. The algorithms were tested under different conditions, both static and dynamic, and with more unobtrusive device configurations. The meta-learning results demonstrated that a short one-time calibration may provide subject-specific models which predict the respiratory flow with high accuracy, even when the number of sensors is reduced. Flow RMS errors on the test set ranged from 22.03 L/min, when the minimum number of sensors was considered, to 9.97 L/min for the complete setting (target flow range: 69.231 ± 21.477 L/min). The correlation coefficient r between the target and the predicted flow changed accordingly, being higher (r = 0.9) for the most comprehensive and heterogeneous wearable device configuration. Similar results were achieved even with simpler settings which included the thoracic sensors (r ranging from 0.84 to 0.88; test flow RMSE = 10.99 L/min, when exclusively using the thoracic FBGs). The further estimation of respiratory parameters, i.e., rate and volume, with low errors across different breathing behaviors and postures proved the potential of such approach. These findings lay the foundation for the implementation of reliable custom solutions and more sophisticated artificial intelligence-based algorithms for daily life health-related applications.

摘要

个体呼吸的连续监测可以作为评估和增强人体健康的工具。特定的呼吸特征是健康状况恶化、疾病发作、疲劳和压力环境的独特标志。高危情况的早期可靠预测可以导致实施适当的干预策略,这些策略可能具有救生作用。因此,用于监测连续呼吸的智能可穿戴设备最近引起了许多研究人员和公司的兴趣。然而,现有的大多数方法都不能提供全面的呼吸信息。出于这个原因,本文提出了一种基于 LSTM 神经网络的元学习算法,用于从嵌入 FBG 传感器和惯性单元的可穿戴系统中推断呼吸流量。此外,还实现了不同的传统机器学习方法来最终比较结果。元学习算法在考虑新对象时,在预测呼吸流量方面最为准确。此外,LSTM 模型的记忆能力已被证明有利于捕获呼吸模式的相关方面。算法在不同的静态和动态条件下,以及更不显眼的设备配置下进行了测试。元学习结果表明,一次性短时间校准可以提供针对特定对象的模型,这些模型可以高精度地预测呼吸流量,即使传感器数量减少。在测试集中,流量 RMS 误差范围从考虑最少传感器时的 22.03 L/min 到完整设置(目标流量范围:69.231 ± 21.477 L/min)的 9.97 L/min。目标流量和预测流量之间的相关系数 r 相应地变化,对于最全面和异构的可穿戴设备配置,r 值较高(r=0.9)。即使使用包括胸部传感器在内的更简单设置,也可以获得类似的结果(r 范围从 0.84 到 0.88;仅使用胸部 FBG 时,测试流量 RMSE 为 10.99 L/min)。在不同的呼吸行为和姿势下,以较低的误差进一步估计呼吸参数,即呼吸率和呼吸量,证明了这种方法的潜力。这些发现为实施可靠的定制解决方案和更复杂的基于人工智能的日常生活健康相关应用算法奠定了基础。

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