End-to-end Learning for Image-based Detection of Molecular Alterations
in Digital Pathology
- URL: http://arxiv.org/abs/2207.00095v1
- Date: Thu, 30 Jun 2022 20:30:33 GMT
- Title: End-to-end Learning for Image-based Detection of Molecular Alterations
in Digital Pathology
- Authors: Marvin Teichmann, Andre Aichert, Hanibal Bohnenberger, Philipp
Str\"obel, Tobias Heimann
- Abstract summary: Current approaches for classification of whole slide images (WSI) in digital pathology predominantly utilize a two-stage learning pipeline.
A major drawback of such approaches is the requirement for task-specific auxiliary labels which are not acquired in clinical routine.
We propose a novel learning pipeline for WSI classification that is trainable end-to-end and does not require any auxiliary annotations.
- Score: 1.916179040410189
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Current approaches for classification of whole slide images (WSI) in digital
pathology predominantly utilize a two-stage learning pipeline. The first stage
identifies areas of interest (e.g. tumor tissue), while the second stage
processes cropped tiles from these areas in a supervised fashion. During
inference, a large number of tiles are combined into a unified prediction for
the entire slide. A major drawback of such approaches is the requirement for
task-specific auxiliary labels which are not acquired in clinical routine. We
propose a novel learning pipeline for WSI classification that is trainable
end-to-end and does not require any auxiliary annotations. We apply our
approach to predict molecular alterations for a number of different use-cases,
including detection of microsatellite instability in colorectal tumors and
prediction of specific mutations for colon, lung, and breast cancer cases from
The Cancer Genome Atlas. Results reach AUC scores of up to 94% and are shown to
be competitive with state of the art two-stage pipelines. We believe our
approach can facilitate future research in digital pathology and contribute to
solve a large range of problems around the prediction of cancer phenotypes,
hopefully enabling personalized therapies for more patients in future.
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