CVLGIVJan 27, 2021

Effects of Image Size on Deep Learning

arXiv:2101.11508v866 citations
Originality Synthesis-oriented
AI Analysis

This work addresses improving automated medical image analysis for myocardial infarction diagnosis, but it is incremental as it focuses on image size optimization within an existing domain.

The study tackled optimizing deep learning for myocardial infarction quantification in MRI images by determining the best image size, finding that larger images improved automated results to be 55.5% closer to manual results compared to 22.2% for smaller images.

In this work, the best size for late gadolinium enhancement (LGE) magnetic resonance imaging (MRI) images in the training dataset was determined to optimize deep learning training outcomes. Non-extra pixel and extra pixel interpolation algorithms were used to determine the new size of the LGE-MRI images. A novel strategy was introduced to handle interpolation masks and remove extra class labels in interpolated ground truth (GT) segmentation masks. The expectation maximization, weighted intensity, a priori information (EWA) algorithm was used for quantification of myocardial infarction (MI) in automatically segmented LGE-MRI images. Arbitrary threshold, comparison of the sums, and sums of differences are methods used to estimate the relationship between semi-automatic or manual and fully automated quantification of myocardial infarction (MI) results. The relationship between semi-automatic and fully automated quantification of MI results was found to be closer in the case of bigger LGE MRI images (55.5% closer to manual results) than in the case of smaller LGE MRI images (22.2% closer to manual results).

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