Automated left atrial time-resolved segmentation in MRI long-axis cine images using active contours
Fecha
2021-06-19Autor(es)
Gonzales Vera, Ricardo Alonso
Seemann, Felicia
Lamy, Jérôme
Arvidsson, Per M.
Heiberg, Einar
Peters, Dana C.
Metadatos
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Background: Segmentation of the left atrium (LA) is required to evaluate atrial size and function, which are
important imaging biomarkers for a wide range of cardiovascular conditions, such as atrial fbrillation, stroke, and diastolic dysfunction. LA segmentations are currently being performed manually, which is time-consuming and observer-dependent.
Methods: This study presents an automated image processing algorithm for time-resolved LA segmentation in
cardiac magnetic resonance imaging (MRI) long-axis cine images of the 2-chamber (2ch) and 4-chamber (4ch) views using active contours. The proposed algorithm combines mitral valve tracking, automated threshold calculation, edge detection on a radially resampled image, edge tracking based on Dijkstra’s algorithm, and post-processing involving smoothing and interpolation. The algorithm was evaluated in 37 patients diagnosed mainly with paroxysmal atrial fibrillation. Segmentation accuracy was assessed using the Dice similarity coefcient (DSC) and Hausdorf distance (HD), with manual segmentations in all time frames as the reference standard. For inter-observer variability analysis, a second observer performed manual segmentations at end-diastole and end-systole on all subjects.
Results: The proposed automated method achieved high performance in segmenting the LA in long-axis cine
sequences, with a DSC of 0.96 for 2ch and 0.95 for 4ch, and an HD of 5.5 mm for 2ch and 6.4 mm for 4ch. The manual inter-observer variability analysis had an average DSC of 0.95 and an average HD of 4.9 mm.
Conclusion: The proposed automated method achieved performance on par with human experts analyzing MRI
images for evaluation of atrial size and function.