2023
DOI: 10.1371/journal.pone.0285378
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Artificially-generated consolidations and balanced augmentation increase performance of U-net for lung parenchyma segmentation on MR images

Abstract: Purpose To improve automated lung segmentation on 2D lung MR images using balanced augmentation and artificially-generated consolidations for training of a convolutional neural network (CNN). Materials and methods From 233 healthy volunteers and 100 patients, 1891 coronal MR images were acquired. Of these, 1666 images without consolidations were used to build a binary semantic CNN for lung segmentation and 225 images (187 without consolidations, 38 with consolidations) were used for testing. To increase CNN … Show more

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