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  3. Benchmarking weakly-supervised deep learning pipelines for whole slide classification in computational pathology.
 

Benchmarking weakly-supervised deep learning pipelines for whole slide classification in computational pathology.

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BORIS DOI
10.48350/170129
Publisher DOI
10.1016/j.media.2022.102474
PubMed ID
35588568
Description
Artificial intelligence (AI) can extract visual information from histopathological slides and yield biological insight and clinical biomarkers. Whole slide images are cut into thousands of tiles and classification problems are often weakly-supervised: the ground truth is only known for the slide, not for every single tile. In classical weakly-supervised analysis pipelines, all tiles inherit the slide label while in multiple-instance learning (MIL), only bags of tiles inherit the label. However, it is still unclear how these widely used but markedly different approaches perform relative to each other. We implemented and systematically compared six methods in six clinically relevant end-to-end prediction tasks using data from N=2980 patients for training with rigorous external validation. We tested three classical weakly-supervised approaches with convolutional neural networks and vision transformers (ViT) and three MIL-based approaches with and without an additional attention module. Our results empirically demonstrate that histological tumor subtyping of renal cell carcinoma is an easy task in which all approaches achieve an area under the receiver operating curve (AUROC) of above 0.9. In contrast, we report significant performance differences for clinically relevant tasks of mutation prediction in colorectal, gastric, and bladder cancer. In these mutation prediction tasks, classical weakly-supervised workflows outperformed MIL-based weakly-supervised methods for mutation prediction, which is surprising given their simplicity. This shows that new end-to-end image analysis pipelines in computational pathology should be compared to classical weakly-supervised methods. Also, these findings motivate the development of new methods which combine the elegant assumptions of MIL with the empirically observed higher performance of classical weakly-supervised approaches. We make all source codes publicly available at https://github.com/KatherLab/HIA, allowing easy application of all methods to any similar task.
Date of Publication
2022-07
Publication Type
Article
Subject(s)
500 - Science::570 - Life sciences; biology
600 - Technology::610 - Medicine & health
Keyword(s)
Artificial intelligence Computational pathology Convolutional neural networks Multiple-Instance Learning Vision transformers Weakly-supervised deep learning
Language(s)
en
Contributor(s)
Ghaffari Laleh, Narmin
Muti, Hannah Sophie
Loeffler, Chiara Maria Lavinia
Echle, Amelie
Saldanha, Oliver Lester
Mahmood, Faisal
Lu, Ming Y
Trautwein, Christian
Langer, Rupert
Dislich, Bastianorcid-logo
Institut für Pathologie
Buelow, Roman D
Grabsch, Heike Irmgard
Brenner, Hermann
Chang-Claude, Jenny
Alwers, Elizabeth
Brinker, Titus J
Khader, Firas
Truhn, Daniel
Gaisa, Nadine T
Boor, Peter
Hoffmeister, Michael
Schulz, Volkmar
Kather, Jakob Nikolas
Additional Credits
Institut für Pathologie
Series
Medical image analysis
Publisher
Elsevier
ISSN
1361-8423
Related URL(s)
https://boris.unibe.ch/173152
Access(Rights)
open.access
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