ECG‐free cine MRI with data‐driven clustering of cardiac motion for quantification of ventricular function

Author:

Ming Zhengyang12,Pogosyan Arutyun3,Gao Chang12,Colbert Caroline M.123,Wu Holden H.124,Finn J. Paul12,Ruan Dan145,Hu Peng124,Christodoulou Anthony G.46,Nguyen Kim‐Lien1234ORCID

Affiliation:

1. Physics and Biology in Medicine Graduate Program University of California Los Angeles California USA

2. Department of Radiological Sciences David Geffen School of Medicine at UCLA Los Angeles California USA

3. Division of Cardiology David Geffen School of Medicine at UCLA and VA Greater Los Angeles Healthcare System Los Angeles California USA

4. Department of Bioengineering University of California Los Angeles California USA

5. Department of Radiation Oncology David Geffen School of Medicine at UCLA Los Angeles California USA

6. Biomedical Imaging Research Institute Cedars‐Sinai Medical Center Los Angeles California USA

Abstract

BackgroundDespite the widespread use of cine MRI for evaluation of cardiac function, existing real‐time methods do not easily enable quantification of ventricular function. Moreover, segmented cine MRI assumes periodicity of cardiac motion. We aim to develop a self‐gated, cine MRI acquisition scheme with data‐driven cluster‐based binning of cardiac motion.MethodsA Cartesian golden‐step balanced steady‐state free precession sequence with sorted k‐space ordering was designed. Image data were acquired with breath‐holding. Principal component analysis and k‐means clustering were used for binning of cardiac phases. Cluster compactness in the time dimension was assessed using temporal variability, and dispersion in the spatial dimension was assessed using the Caliński–Harabasz index. The proposed and the reference electrocardiogram (ECG)‐gated cine methods were compared using a four‐point image quality score, SNR and CNR values, and Bland–Altman analyses of ventricular function.ResultsA total of 10 subjects with sinus rhythm and 8 subjects with arrhythmias underwent cardiac MRI at 3.0 T. The temporal variability was 45.6 ms (cluster) versus 24.6 ms (ECG‐based) (p < 0.001), and the Caliński–Harabasz index was 59.1 ± 9.1 (cluster) versus 22.0 ± 7.1 (ECG based) (p < 0.001). In subjects with sinus rhythm, 100% of the end‐systolic and end‐diastolic images from both the cluster and reference approach received the highest image quality score of 4. Relative to the reference cine images, the cluster‐based multiphase (cine) image quality consistently received a one‐point lower score (p < 0.05), whereas the SNR and CNR values were not significantly different (p = 0.20). In cases with arrhythmias, 97.9% of the end‐systolic and end‐diastolic images from the cluster approach received an image quality score of 3 or more. The mean bias values for biventricular ejection fraction and volumes derived from the cluster approach versus reference cine were negligible.ConclusionECG‐free cine cardiac MRI with data‐driven clustering for binning of cardiac motion is feasible and enables quantification of cardiac function.

Funder

National Institutes of Health

Publisher

Wiley

Subject

Spectroscopy,Radiology, Nuclear Medicine and imaging,Molecular Medicine

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