Unsupervised segmentation and quantification of COVID-19 lesions on computed Tomography scans using CycleGAN

[Display omitted] •We trained a modified CycleGAN to segment pulmonary lesions on COVID-19 CT scans.•Our unsupervised model performed similarly to weakly supervised models. Our model preserved normal physiology in generated images. Lesion segmentation is a critical step in medical image analysis, an...

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Veröffentlicht in:Methods (San Diego, Calif.) Calif.), 2022-09, Vol.205, p.200-209
Hauptverfasser: Connell, Marc, Xin, Yi, Gerard, Sarah E., Herrmann, Jacob, Shah, Parth K., Martin, Kevin T., Rezoagli, Emanuele, Ippolito, Davide, Rajaei, Jennia, Baron, Ryan, Delvecchio, Paolo, Humayun, Shiraz, Rizi, Rahim R., Bellani, Giacomo, Cereda, Maurizio
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Sprache:eng
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Zusammenfassung:[Display omitted] •We trained a modified CycleGAN to segment pulmonary lesions on COVID-19 CT scans.•Our unsupervised model performed similarly to weakly supervised models. Our model preserved normal physiology in generated images. Lesion segmentation is a critical step in medical image analysis, and methods to identify pathology without time-intensive manual labeling of data are of utmost importance during a pandemic and in resource-constrained healthcare settings. Here, we describe a method for fully automated segmentation and quantification of pathological COVID-19 lung tissue on chest Computed Tomography (CT) scans without the need for manually segmented training data. We trained a cycle-consistent generative adversarial network (CycleGAN) to convert images of COVID-19 scans into their generated healthy equivalents. Subtraction of the generated healthy images from their corresponding original CT scans yielded maps of pathological tissue, without background lung parenchyma, fissures, airways, or vessels. We then used these maps to construct three-dimensional lesion segmentations. Using a validation dataset, Dice scores were computed for our lesion segmentations and other published segmentation networks using ground truth segmentations reviewed by radiologists. The COVID-to-Healthy generator eliminated high Hounsfield unit (HU) voxels within pulmonary lesions and replaced them with lower HU voxels. The generator did not distort normal anatomy such as vessels, airways, or fissures. The generated healthy images had higher gas content (2.45 ± 0.93 vs 3.01 ± 0.84 L, P 
ISSN:1046-2023
1095-9130
DOI:10.1016/j.ymeth.2022.07.007