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Glioma subtype classification from histopathological images using in-domain and out-of-domain transfer learning: An experimental study.
Despotovic, Vladimir; Kim, Sang-Yoon; Hau, Ann-Christin; Kakoichankava, Aliaksandra; Klamminger, Gilbert Georg; Borgmann, Felix Bruno Kleine; Frauenknecht, Katrin B M; Mittelbronn, Michel; Nazarov, Petr V.
Affiliation
  • Despotovic V; Bioinformatics Platform, Department of Medical Informatics, Luxembourg Institute of Health, Strassen, Luxembourg.
  • Kim SY; Bioinformatics Platform, Department of Medical Informatics, Luxembourg Institute of Health, Strassen, Luxembourg.
  • Hau AC; Dr. Senckenberg Institute of Neurooncology, University Hospital Frankfurt, Frankfurt am Main, Germany.
  • Kakoichankava A; Edinger Institute, Institute of Neurology, Goethe University, Frankfurt am Main, Germany.
  • Klamminger GG; Frankfurt Cancer Institute, Goethe University, Frankfurt am Main, Germany.
  • Borgmann FBK; University Cancer Center Frankfurt, Frankfurt am Main, Germany.
  • Frauenknecht KBM; University Hospital, Goethe University, Frankfurt am Main, Germany.
  • Mittelbronn M; Laboratoire national de santé, National Center of Pathology, Dudelange, Luxembourg.
  • Nazarov PV; Multi-Omics Data Science group, Department of Cancer Research, Luxembourg Institute of Health, Strassen, Luxembourg.
Heliyon ; 10(5): e27515, 2024 Mar 15.
Article in En | MEDLINE | ID: mdl-38562501
ABSTRACT
We provide in this paper a comprehensive comparison of various transfer learning strategies and deep learning architectures for computer-aided classification of adult-type diffuse gliomas. We evaluate the generalizability of out-of-domain ImageNet representations for a target domain of histopathological images, and study the impact of in-domain adaptation using self-supervised and multi-task learning approaches for pretraining the models using the medium-to-large scale datasets of histopathological images. A semi-supervised learning approach is furthermore proposed, where the fine-tuned models are utilized to predict the labels of unannotated regions of the whole slide images (WSI). The models are subsequently retrained using the ground-truth labels and weak labels determined in the previous step, providing superior performance in comparison to standard in-domain transfer learning with balanced accuracy of 96.91% and F1-score 97.07%, and minimizing the pathologist's efforts for annotation. Finally, we provide a visualization tool working at WSI level which generates heatmaps that highlight tumor areas; thus, providing insights to pathologists concerning the most informative parts of the WSI.
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