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Automatic lung segmentation in routine imaging is primarily a data diversity problem, not a methodology problem.

Johannes HofmanningerForian PrayerJeanny PanSebastian RöhrichHelmut ProschGeorg Langs
Published in: European radiology experimental (2020)
The accuracy and reliability of lung segmentation algorithms on demanding cases primarily relies on the diversity of the training data, highlighting the importance of data diversity compared to model choice. Efforts in developing new datasets and providing trained models to the public are critical. By releasing the trained model under General Public License 3.0, we aim to foster research on lung diseases by providing a readily available tool for segmentation of pathological lungs.
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