Abstract
BackgroundMitral annular plane systolic excursion (MAPSE) and left ventricular (LV) early diastolic velocity (e’) are key metrics of systolic and diastolic function, but not often measured by cardiovascular magnetic resonance (CMR). Its derivation is possible with manual, precise annotation of the mitral valve (MV) insertion points along the cardiac cycle in both two and four-chamber long-axis cines, but this process is highly time-consuming, laborious, and prone to errors. A fully automated, consistent, fast, and accurate method for MV plane tracking is lacking. In this study, we propose MVnet, a deep learning approach for MV point localization and tracking capable of deriving such clinical metrics comparable to human expert-level performance, and validated it in a multi-vendor, multi-center clinical population.MethodsThe proposed pipeline first performs a coarse MV point annotation in a given cine accurately enough to apply an automated linear transformation task, which standardizes the size, cropping, resolution, and heart orientation, and second, tracks the MV points with high accuracy. The model was trained and evaluated on 38,854 cine images from 703 patients with diverse cardiovascular conditions, scanned on equipment from 3 main vendors, 16 centers, and 7 countries, and manually annotated by 10 observers. Agreement was assessed by the intra-class correlation coefficient (ICC) for both clinical metrics and by the distance error in the MV plane displacement. For inter-observer variability analysis, an additional pair of observers performed manual annotations in a randomly chosen set of 50 patients.ResultsMVnet achieved a fast segmentation (<1 s/cine) with excellent ICCs of 0.94 (MAPSE) and 0.93 (LV e’) and a MV plane tracking error of −0.10 ± 0.97 mm. In a similar manner, the inter-observer variability analysis yielded ICCs of 0.95 and 0.89 and a tracking error of −0.15 ± 1.18 mm, respectively.ConclusionA dual-stage deep learning approach for automated annotation of MV points for systolic and diastolic evaluation in CMR long-axis cine images was developed. The method is able to carefully track these points with high accuracy and in a timely manner. This will improve the feasibility of CMR methods which rely on valve tracking and increase their utility in a clinical setting.
Highlights
Mitral annular plane systolic excursion (MAPSE) and left ventricular (LV) early diastolic velocity (e’) are key metrics of systolic and diastolic function, but not often measured by cardiovascular magnetic resonance (CMR)
mitral valve (MV) plane tracking has been used to enable slice-following for assessment of valvular flow with a phase-contrast sequence, either retrospectively [4] or prospectively [5], where it allows an evaluation of mitral regurgitation, which would not be possible without valve tracking
Implementation MVnet was implemented in the medical image analysis software Segment v3.1 R8109 [34], which is freely available for research purposes, and uploaded to https://github.com/ra-gonzales/MVnet
Summary
Mitral annular plane systolic excursion (MAPSE) and left ventricular (LV) early diastolic velocity (e’) are key metrics of systolic and diastolic function, but not often measured by cardiovascular magnetic resonance (CMR). Its measurement yields peak displacement of the plane during systole, known as mitral annular plane systolic excursion (MAPSE), and the LV early diastolic velocity, known as LV e’, which is itself a key metric of diastolic function in echocardiography [2]. Its accuracy and reliability hold promise for serial examinations of MAPSE and LV e’, as already reported in our previous work [3] These metrics were obtained by tracking the MV insertion points in every frame in long-axis cine images. MV plane dynamics could be useful in providing information on the timing of the cardiac rest-periods, which is important in CMR [8,9,10]
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