2021
DOI: 10.3390/app12010013
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A Whole-Slide Image Managing Library Based on Fastai for Deep Learning in the Context of Histopathology: Two Use-Cases Explained

Abstract: Background: Processing whole-slide images (WSI) to train neural networks can be intricate and labor intensive. We developed an open-source library dealing with recurrent tasks in the processing of WSI and helping with the training and evaluation of neuronal networks for classification tasks. Methods: Two histopathology use-cases were selected and only hematoxylin and eosin (H&E) stained slides were used. The first use case was a two-class classification problem. We trained a convolutional neuronal network … Show more

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Cited by 2 publications
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“…Processing WSIs to train neural networks is often intricate and labor-intensive. Neuner et al [9] developed an opensource library dealing with recurrent tasks in the processing of WSIs and helped with the training and evaluation of neuronal networks for classification tasks. First, a large WSI is divided into multiple small tiles.…”
Section: Sthardnet Improved the Accuracy And Speed Of Mri Image-based...mentioning
confidence: 99%
“…Processing WSIs to train neural networks is often intricate and labor-intensive. Neuner et al [9] developed an opensource library dealing with recurrent tasks in the processing of WSIs and helped with the training and evaluation of neuronal networks for classification tasks. First, a large WSI is divided into multiple small tiles.…”
Section: Sthardnet Improved the Accuracy And Speed Of Mri Image-based...mentioning
confidence: 99%