2019
DOI: 10.7287/peerj.8242v0.1/reviews/1
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Peer Review #1 of "Resolution-agnostic tissue segmentation in whole-slide histopathology images with convolutional neural networks (v0.1)"

Abstract: Modern pathology diagnostics is being driven towards large scale digitization of microscopic tissue sections. A prerequisite for its safe implementation is the guarantee that all tissue present on a glass slide can also be found back in the digital image. Whole-slide scanners perform a tissue segmentation in a low resolution overview image to prevent inefficient high-resolution scanning of empty background areas. However, currently applied algorithms can fail in detecting all tissue regions. In this study, we … Show more

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