Controlled Breathing Effect on Respiration Quality Assessment Using Machine Learning Approaches

Andrea Rozo, J. Buil, Jonathan Moeyersons, John F. Morales, Roberto Garcia van der Westen, L. Lijnen, C. Smeets, S. Jantzen, V. Monpellier, D. Ruttens, C. Hoof, S. Huffel, W. Groenendaal, C. Varon
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引用次数: 2

Abstract

Thoracic bio-impedance (BioZ) measurements have been proposed as an alternative for respiratory monitoring. Given the ambulatory nature of this modality, it is more prone to noise sources. In this study, two pre-trained machine learning models were used to classify BioZ signals into clean and noisy classes. The models were trained on data from patients suffering from chronic obstructive pulmonary disease, and their performance was evaluated on data from patients undergoing bariatric surgery. Additionally, transfer learning (TL) was used to optimize the models for the new patient cohort. Lastly, the effect of different breathing patterns on the performance of the machine learning models was studied. Results showed that the models performed accurately when applying them to another patient population and their performance was improved by TL. However, different imposed respiratory frequencies were found to affect the performance of the models.
机器学习方法对呼吸质量评估的控制呼吸效果
胸生物阻抗(BioZ)测量已被提议作为呼吸监测的替代方法。鉴于这种模式的流动性质,它更容易受到噪声源的影响。在本研究中,使用两个预训练的机器学习模型将BioZ信号分为干净和嘈杂两类。这些模型是根据慢性阻塞性肺病患者的数据进行训练的,它们的表现是根据接受减肥手术的患者的数据进行评估的。此外,迁移学习(TL)被用于优化新患者队列的模型。最后,研究了不同呼吸模式对机器学习模型性能的影响。结果表明,当将模型应用于其他患者群体时,模型的性能准确,并且TL可以提高模型的性能。然而,不同的呼吸频率会影响模型的性能。
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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