Department of Biomedical Engineering, Schulich School of Engineering, University of Calgary, Canada; Department of Electrical & Software Engineering, Schulich School of Engineering, University of Calgary, Canada; Department of Radiology, Cumming School of Medicine, University of Calgary, Canada; Hotchkiss Brain Institute, Cumming School of Medicine, University of Calgary, Canada.
Data Science and Artificial Intelligence, International Institute of Information Technology, Naya Raipur, India.
Neuroimage. 2023 Apr 1;269:119904. doi: 10.1016/j.neuroimage.2023.119904. Epub 2023 Jan 26.
In many functional magnetic resonance imaging (fMRI) studies, respiratory signals are unavailable or do not have acceptable quality due to issues with subject compliance, equipment failure or signal error. In large databases, such as the Human Connectome Projects, over half of the respiratory recordings may be unusable. As a result, the direct removal of low frequency respiratory variations from the blood oxygen level-dependent (BOLD) signal time series is not possible. This study proposes a deep learning-based method for reconstruction of respiratory variation (RV) waveforms directly from BOLD fMRI data in pediatric participants (aged 5 to 21 years old), and does not require any respiratory measurement device. To do this, the Lifespan Human Connectome Project in Development (HCP-D) dataset, which includes respiratory measurements, was used to both train a convolutional neural network (CNN) and evaluate its performance. Results show that a CNN can capture informative features from the BOLD signal time course and reconstruct accurate RV timeseries, especially when the subject has a prominent respiratory event. This work advances the use of direct estimation of physiological parameters from fMRI, which will eventually lead to reduced complexity and decrease the burden on participants because they may not be required to wear a respiratory bellows.
在许多功能磁共振成像(fMRI)研究中,由于受试者顺应性、设备故障或信号错误等问题,呼吸信号不可用或质量不可接受。在大型数据库(如人类连接组计划)中,超过一半的呼吸记录可能无法使用。因此,直接从血氧水平依赖(BOLD)信号时间序列中去除低频呼吸变化是不可能的。本研究提出了一种基于深度学习的方法,用于直接从儿科参与者(5 至 21 岁)的 BOLD fMRI 数据中重建呼吸变化(RV)波形,且不需要任何呼吸测量设备。为此,使用包含呼吸测量的生命期人类连接组计划发展(HCP-D)数据集来训练卷积神经网络(CNN)并评估其性能。结果表明,CNN 可以从 BOLD 信号时间序列中捕获有信息的特征,并重建准确的 RV 时间序列,尤其是当受试者有明显的呼吸事件时。这项工作推进了直接从 fMRI 估计生理参数的应用,这最终将降低复杂性并减轻参与者的负担,因为他们可能不需要佩戴呼吸波纹管。