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Comparing the performance of a deep learning-based lung gross tumour volume segmentation algorithm before and after transfer learning in a new hospital.

Chaitanya KulkarniUmesh SherkhaneVinay JaiswarSneha MithunDinesh Mysore SidduVenkatesh RangarajanAndre DekkerAlberto TraversoAshish JhaLeonard Wee
Published in: BJR open (2023)
Caution is needed when using models trained on large volumes of international data in a local clinical setting, even when that training data set is of good quality. Minor differences in scan acquisition and clinician delineation preferences may result in an apparent drop in performance. However, DL models have the advantage of being efficiently "adapted" from a generic to a locally specific context, with only a small amount of fine-tuning by means of transfer learning on a small local institutional data set.
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