TL;DR
This paper introduces a novel, annotation-free deep learning system for automatic cardiac MRI view planning that leverages spatial relationships between views, eliminating manual annotations and improving accuracy.
Contribution
The work presents a clinic-compatible, self-contained approach that uses spatial relationships and multi-view aggregation to automatically prescribe cardiac MRI planes without manual annotations.
Findings
Achieves mean angular difference of 5.68 degrees
Attains point-to-plane distance of 3.12 mm
Outperforms existing atlas-based and deep learning methods
Abstract
Background: View planning for the acquisition of cardiac magnetic resonance (CMR) imaging remains a demanding task in clinical practice. Purpose: Existing approaches to its automation relied either on an additional volumetric image not typically acquired in clinic routine, or on laborious manual annotations of cardiac structural landmarks. This work presents a clinic-compatible, annotation-free system for automatic CMR view planning. Methods: The system mines the spatial relationship, more specifically, locates the intersecting lines, between the target planes and source views, and trains deep networks to regress heatmaps defined by distances from the intersecting lines. The intersection lines are the prescription lines prescribed by the technologists at the time of image acquisition using cardiac landmarks, and retrospectively identified from the spatial relationship. As the spatial…
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