TL;DR
CardiSort is a deep learning model that accurately classifies cardiac MRI images by sequence type and imaging plane across multiple vendors and centers, streamlining clinical post-processing workflows.
Contribution
This study introduces CardiSort, a convolutional neural network capable of cross-vendor automated classification of cardiac MRI sequences and planes, validated on external multi-center data.
Findings
High accuracy in sequence and plane classification for multi-vendor data
External validation showed robust performance on unseen vendor data
Potential to automate and improve cardiac MRI workflow
Abstract
Objectives: To develop an image-based automatic deep learning method to classify cardiac MR images by sequence type and imaging plane for improved clinical post-processing efficiency. Methods: Multi-vendor cardiac MRI studies were retrospectively collected from 4 centres and 3 vendors. A two-head convolutional neural network ('CardiSort') was trained to classify 35 sequences by imaging sequence (n=17) and plane (n=10). Single vendor training (SVT) on single centre images (n=234 patients) and multi-vendor training (MVT) with multicentre images (n = 479 patients, 3 centres) was performed. Model accuracy was compared to manual ground truth labels by an expert radiologist on a hold-out test set for both SVT and MVT. External validation of MVT (MVTexternal) was performed on data from 3 previously unseen magnet systems from 2 vendors (n=80 patients). Results: High sequence and plane…
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