Towards Fully Automated Segmentation of Rat Cardiac MRI by Leveraging Deep Learning Frameworks
Daniel Fernandez-Llaneza, Andrea Gondova, Harris Vince, Arijit Patra,, Magdalena Zurek, Peter Konings, Patrik Kagelid, Leif Hultin

TL;DR
This paper introduces deep learning models for automated rat cardiac MRI segmentation, achieving near-human accuracy and enabling phase selection, advancing preclinical cardiac analysis automation.
Contribution
Developed novel deep learning models based on U-Net for rat cardiac MRI segmentation, incorporating Gaussian Process calibration for phase selection, marking a significant step towards full automation.
Findings
Models approach human segmentation quality (Dice scores ~0.91-0.93)
Achieved low error in ejection fraction estimation (~3.5-4.1%)
Gaussian Process calibration enables automated phase selection
Abstract
Automated segmentation of human cardiac magnetic resonance datasets has been steadily improving during recent years. However, these methods are not directly applicable in preclinical context due to limited datasets and lower image resolution. Successful application of deep architectures for rat cardiac segmentation, although of critical importance for preclinical evaluation of cardiac function, has to our knowledge not yet been reported. We developed segmentation models that expand on the standard U-Net architecture and evaluated separate models for systole and diastole phases, 2MSA, and one model for all timepoints, 1MSA. Furthermore, we calibrated model outputs using a Gaussian Process (GP)-based prior to improve phase selection. Resulting models approach human performance in terms of left ventricular segmentation quality and ejection fraction (EF) estimation in both 1MSA and 2MSA…
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Taxonomy
TopicsMolecular Biology Techniques and Applications · Cardiac Imaging and Diagnostics · Cardiovascular Function and Risk Factors
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Concatenated Skip Connection · Max Pooling · Convolution · U-Net · Gaussian Process
