Fully automated inline analysis of left ventricular function correlated highly with manual segmentation for ejection fraction (r=0.89) with no significant difference (58.0% vs 58.6%; P=0.5).
Observational (n=50)
Does unsupervised fully automated inline analysis accurately measure global left ventricular function and myocardial mass compared to manual segmentation in patients with cardiac disorders?
Fully automated inline analysis of CINE MRI provides accurate evaluation of global systolic cardiac function comparable to manual segmentation, potentially saving significant postprocessing time.
Effect estimate: r = 0.89
Absolute Event Rate: 58% vs 58.6%
p-value: p=0.5
OBJECTIVES: To implement and evaluate the accuracy of unsupervised fully automated inline analysis of global ventricular function and myocardial mass (MM). To compare automated with manual segmentation in patients with cardiac disorders. MATERIALS AND METHODS: In 50 patients, cine imaging of the left ventricle was performed with an accelerated retrogated steady state free precession sequence (GRAPPA; R = 2) on a 1.5 Tesla whole body scanner (MAGNETOM Avanto, Siemens Healthcare, Germany). A spatial resolution of 1.4 x 1.9 mm was achieved with a slice thickness of 8 mm and a temporal resolution of 42 milliseconds. Ventricular coverage was based on 9 to 12 short axis slices extending from the annulus of the mitral valve to the apex with 2 mm gaps. Fully automated segmentation and contouring was performed instantaneously after image acquisition. In addition to automated processing, cine data sets were also manually segmented using a semi-automated postprocessing software. Results of both methods were compared with regard to end-diastolic volume (EDV), end-systolic volume (ESV), ejection fraction (EF), and MM. A subgroup analysis was performed in patients with normal (> or =55%) and reduced EF (<55%) based on the results of the manual analysis. RESULTS: Thirty-two percent of patients had a reduced left ventricular EF of <55%. Volumetric results of the automated inline analysis for EDV (r = 0.96), ESV (r = 0.95), EF (r = 0.89), and MM (r = 0.96) showed high correlation with the results of manual segmentation (all P < 0.001). Head-to-head comparison did not show significant differences between automated and manual evaluation for EDV (153.6 +/- 52.7 mL vs. 149.1 +/- 48.3 mL; P = 0.05), ESV (61.6 +/- 31.0 mL vs. 64.1 +/- 31.7 mL; P = 0.08), and EF (58.0 +/- 11.6% vs. 58.6 +/- 11.6%; P = 0.5). However, differences were significant for MM (150.0 +/- 61.3 g vs. 142.4 +/- 59.0 g; P < 0.01). The standard error was 15.6 (EDV), 9.7 (ESV), 5.0 (EF), and 17.1 (mass). The mean time for manual analysis was 15 minutes. CONCLUSIONS: Unsupervised fully automated segmentation and contouring during image reconstruction enables an accurate evaluation of global systolic cardiac function.
Theisen et al. (Tue,) conducted a observational in Cardiac disorders (n=50). Unsupervised fully automated inline analysis vs. Manual segmentation was evaluated on Ejection fraction (EF) (r = 0.89, p=0.5). Fully automated inline analysis of left ventricular function correlated highly with manual segmentation for ejection fraction (r=0.89) with no significant difference (58.0% vs 58.6%; P=0.5).
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