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Optimizing Deep Learning for Cardiac MRI Segmentation: The Impact of Automated Slice Range Classification.

Authors :
Priya, Sarv
Dhruba, Durjoy D.
Perry, Sarah S.
Aher, Pritish Y.
Gupta, Amit
Nagpal, Prashant
Jacob, Mathews
Source :
Academic Radiology; Feb2024, Vol. 31 Issue 2, p503-513, 11p
Publication Year :
2024

Abstract

Cardiac magnetic resonance imaging is crucial for diagnosing cardiovascular diseases, but lengthy postprocessing and manual segmentation can lead to observer bias. Deep learning (DL) has been proposed for automated cardiac segmentation; however, its effectiveness is limited by the slice range selection from base to apex. In this study, we integrated an automated slice range classification step to identify basal to apical short-axis slices before DL-based segmentation. We employed publicly available Multi-Disease, Multi-View & Multi-Center Right Ventricular Segmentation in Cardiac MRI data set with short-axis cine data from 160 training, 40 validation, and 160 testing cases. Three classification and seven segmentation DL models were studied. The top-performing segmentation model was assessed with and without the classification model. Model validation to compare automated and manual segmentation was performed using Dice score and Hausdorff distance and clinical indices (correlation score and Bland-Altman plots). The combined classification (CBAM-integrated 2D-CNN) and segmentation model (2D-UNet with dilated convolution block) demonstrated superior performance, achieving Dice scores of 0.952 for left ventricle (LV), 0.933 for right ventricle (RV), and 0.875 for myocardium, compared to the stand-alone segmentation model (0.949 for LV, 0.925 for RV, and 0.867 for myocardium). Combined classification and segmentation model showed high correlation (0.92-0.99) with manual segmentation for biventricular volumes, ejection fraction, and myocardial mass. The mean absolute difference (2.8-8.3 mL) for clinical parameters between automated and manual segmentation was within the interobserver variability range, indicating comparable performance to manual annotation. Integrating an initial automated slice range classification step into the segmentation process improves the performance of DL-based cardiac chamber segmentation. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
10766332
Volume :
31
Issue :
2
Database :
Supplemental Index
Journal :
Academic Radiology
Publication Type :
Academic Journal
Accession number :
175604915
Full Text :
https://doi.org/10.1016/j.acra.2023.07.008