2023
DOI: 10.3390/cancers15153773
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Vessel Delineation Using U-Net: A Sparse Labeled Deep Learning Approach for Semantic Segmentation of Histological Images

Lukas Glänzer,
Husam E. Masalkhi,
Anjali A. Roeth
et al.

Abstract: Semantic segmentation is an important imaging analysis method enabling the identification of tissue structures. Histological image segmentation is particularly challenging, having large structural information while providing only limited training data. Additionally, labeling these structures to generate training data is time consuming. Here, we demonstrate the feasibility of a semantic segmentation using U-Net with a novel sparse labeling technique. The basic U-Net architecture was extended by attention gates,… Show more

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“…U-Net, originally devised for medical image segmentation, enhances the basic CNN architecture by integrating a symmetric encoder-decoder structure crucial for capturing fine-grained details. Its validation in numerous studies, especially in the semantic segmentation of histological images, underscores its utility ( Glänzer et al, 2023 ).…”
Section: Methodsmentioning
confidence: 99%
“…U-Net, originally devised for medical image segmentation, enhances the basic CNN architecture by integrating a symmetric encoder-decoder structure crucial for capturing fine-grained details. Its validation in numerous studies, especially in the semantic segmentation of histological images, underscores its utility ( Glänzer et al, 2023 ).…”
Section: Methodsmentioning
confidence: 99%