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ECG-based gating in ultra high field cardiovascular magnetic resonance using an independent component analysis approach

机译:使用独立成分分析方法在超高场心血管磁共振中基于ECG的门控

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BackgroundIn Cardiovascular Magnetic Resonance (CMR), the synchronization of image acquisition with heart motion is performed in clinical practice by processing the electrocardiogram (ECG). The ECG-based synchronization is well established for MR scanners with magnetic fields up to 3 T. However, this technique is prone to errors in ultra high field environments, e.g. in 7 T MR scanners as used in research applications. The high magnetic fields cause severe magnetohydrodynamic (MHD) effects which disturb the ECG signal. Image synchronization is thus less reliable and yields artefacts in CMR images.MethodsA strategy based on Independent Component Analysis (ICA) was pursued in this work to enhance the ECG contribution and attenuate the MHD effect. ICA was applied to 12-lead ECG signals recorded inside a 7 T MR scanner. An automatic source identification procedure was proposed to identify an independent component (IC) dominated by the ECG signal. The identified IC was then used for detecting the R-peaks. The presented ICA-based method was compared to other R-peak detection methods using 1) the raw ECG signal, 2) the raw vectorcardiogram (VCG), 3) the state-of-the-art gating technique based on the VCG, 4) an updated version of the VCG-based approach and 5) the ICA of the VCG.ResultsECG signals from eight volunteers were recorded inside the MR scanner. Recordings with an overall length of 87 min accounting for 5457 QRS complexes were available for the analysis. The records were divided into a training and a test dataset. In terms of R-peak detection within the test dataset, the proposed ICA-based algorithm achieved a detection performance with an average sensitivity (Se) of 99.2%, a positive predictive value (+P) of 99.1%, with an average trigger delay and jitter of 5.8 ms and 5.0 ms, respectively. Long term stability of the demixing matrix was shown based on two measurements of the same subject, each being separated by one year, whereas an averaged detection performance of Se = 99.4% and +P = 99.7% was achieved.Compared to the state-of-the-art VCG-based gating technique at 7 T, the proposed method increased the sensitivity and positive predictive value within the test dataset by 27.1% and 42.7%, respectively.ConclusionsThe presented ICA-based method allows the estimation and identification of an IC dominated by the ECG signal. R-peak detection based on this IC outperforms the state-of-the-art VCG-based technique in a 7 T MR scanner environment.
机译:背景技术在心血管磁共振(CMR)中,在临床实践中通过处理心电图(ECG)来实现图像采集与心脏运动的同步。基于ECG的同步非常适用于磁场高达3 T的MR扫描仪。但是,这种技术在超高磁场环境(例如磁场)中容易出错。在研究应用中使用的7 T MR扫描仪中。高磁场会导致严重的磁流体动力学(MHD)效应,从而干扰ECG信号。因此,图像同步的可靠性较差,并且会在CMR图像中产生伪影。 ICA用于记录在7 T MR扫描仪内部的12导联心电信号。提出了一种自动源识别程序,以识别以ECG信号为主的独立成分(IC)。然后将识别出的IC用于检测R峰。使用1)原始ECG信号,2)原始心电图(VCG),3)基于VCG的最新门控技术,将提出的基于ICA的方法与其他R峰检测方法进行了比较)基于VCG的方法的更新版本和5)VCG的ICA。结果来自8位志愿者的ECG信号记录在MR扫描器中。分析的总记录为87分钟,记录了5457个QRS络合物。记录分为培训和测试数据集。在测试数据集中的R峰检测方面,基于ICA的算法实现了检测性能,平均灵敏度(Se)为99.2%,正预测值(+ P)为99.1%,平均触发延迟抖动分别为5.8 ms和5.0 ms。基于对同一对象的两次测量(每项相隔一年)显示了混合矩阵的长期稳定性,而Se的平均检测性能为99.4%和+ P = 99.7%。先进的基于VCG的7 T门控技术,该方法将测试数据集中的灵敏度和阳性预测值分别提高了27.1%和42.7%。心电图信号占主导地位。在7 T MR扫描器环境中,基于该IC的R峰检测优于基于VCG的最新技术。

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