Improved AI-based segmentation of apical and basal slices from clinical cine CMR
Jorge Mariscal-Harana, Naomi Kifle, Reza Razavi, Andrew P. King, Bram, Ruijsink, Esther Puyol-Ant\'on

TL;DR
This study improves AI segmentation of basal and apical cardiac MRI slices by using region-specific models and sampling strategies, reducing variability and enhancing accuracy across diverse datasets.
Contribution
Introduces a region-specific segmentation approach and sampling method that significantly enhances AI performance on challenging cardiac MRI slices.
Findings
Region-specific models outperform baseline in segmentation accuracy.
Non-uniform sampling improves training efficiency and results.
Enhanced classification leads to better segmentation performance.
Abstract
Current artificial intelligence (AI) algorithms for short-axis cardiac magnetic resonance (CMR) segmentation achieve human performance for slices situated in the middle of the heart. However, an often-overlooked fact is that segmentation of the basal and apical slices is more difficult. During manual analysis, differences in the basal segmentations have been reported as one of the major sources of disagreement in human interobserver variability. In this work, we aim to investigate the performance of AI algorithms in segmenting basal and apical slices and design strategies to improve their segmentation. We trained all our models on a large dataset of clinical CMR studies obtained from two NHS hospitals (n=4,228) and evaluated them against two external datasets: ACDC (n=100) and M&Ms (n=321). Using manual segmentations as a reference, CMR slices were assigned to one of four regions:…
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Taxonomy
TopicsCardiac Imaging and Diagnostics · Cardiac Valve Diseases and Treatments · Cardiovascular Function and Risk Factors
