Deep learning for robust segmentation of corneal endothelium images in the presence of cornea guttata

Author(s):  
Juan S. Sierra ◽  
Jesús D. Pineda Castro ◽  
Jhacson Meza ◽  
Daniela Rueda ◽  
Rúben D. Berrospi ◽  
...  
2019 ◽  
Vol 2019 ◽  
pp. 1-14 ◽  
Author(s):  
Kun Zhang ◽  
Hongbin Zhang ◽  
Huiyu Zhou ◽  
Danny Crookes ◽  
Ling Li ◽  
...  

Zebrafish embryo fluorescent vessel analysis, which aims to automatically investigate the pathogenesis of diseases, has attracted much attention in medical imaging. Zebrafish vessel segmentation is a fairly challenging task, which requires distinguishing foreground and background vessels from the 3D projection images. Recently, there has been a trend to introduce domain knowledge to deep learning algorithms for handling complex environment segmentation problems with accurate achievements. In this paper, a novel dual deep learning framework called Dual ResUNet is developed to conduct zebrafish embryo fluorescent vessel segmentation. To avoid the loss of spatial and identity information, the U-Net model is extended to a dual model with a new residual unit. To achieve stable and robust segmentation performance, our proposed approach merges domain knowledge with a novel contour term and shape constraint. We compare our method qualitatively and quantitatively with several standard segmentation models. Our experimental results show that the proposed method achieves better results than the state-of-art segmentation methods. By investigating the quality of the vessel segmentation, we come to the conclusion that our Dual ResUNet model can learn the characteristic features in those cases where fluorescent protein is deficient or blood vessels are overlapped and achieves robust performance in complicated environments.


2021 ◽  
Author(s):  
Archana Machireddy ◽  
Guillaume Thibault ◽  
Kevin G. Loftis ◽  
Kevin Stoltz ◽  
Cecilia E. Bueno ◽  
...  

A deeper understanding of the cellular and subcellular organization of tumor cells and their interactions with the tumor microenvironment will shed light on how cancer evolves and guide effective therapy choices. Electron microscopy (EM) images can provide detailed view of the cellular ultrastructure and are being generated at an ever-increasing rate. However, the bottleneck in their analysis is the delineation of the cellular structures to enable interpretable rendering. We have mitigated this limitation by using deep learning, specifically, the ResUNet architecture, to segment cells and subcellular ultrastructure. Our initial prototype focuses on segmenting nuclei and nucleoli in 3D FIB-SEM images of tumor biopsies obtained from patients with metastatic breast and pancreatic cancers. Trained with sparse manual labels, our method results in accurate segmentation of nuclei and nucleoli with best Dice score of 0.99 and 0.98 respectively. This method can be extended to other cellular structures, enabling deeper analysis of inter- and intracellular state and interactions.


2002 ◽  
Vol 34 (3) ◽  
pp. 135-138 ◽  
Author(s):  
Kazuko Kitagawa ◽  
Masami Kojima ◽  
Hiroshi Sasaki ◽  
Ying-Bo Shui ◽  
Sek Jin Chew ◽  
...  

Energies ◽  
2021 ◽  
Vol 14 (6) ◽  
pp. 1716
Author(s):  
Julius Großkopf ◽  
Jörg Matthes ◽  
Markus Vogelbacher ◽  
Patrick Waibel

The energetic usage of fuels from renewable sources or waste material is associated with controlled combustion processes with industrial burner equipment. For the observation of such processes, camera systems are increasingly being used. With additional completion by an appropriate image processing system, camera observation of controlled combustion can be used for closed-loop process control giving leverage for optimization and more efficient usage of fuels. A key element of a camera-based control system is the robust segmentation of each burners flame. However, flame instance segmentation in an industrial environment imposes specific problems for image processing, such as overlapping flames, blurry object borders, occlusion, and irregular image content. In this research, we investigate the capability of a deep learning approach for the instance segmentation of industrial burner flames based on example image data from a special waste incineration plant. We evaluate the segmentation quality and robustness in challenging situations with several convolutional neural networks and demonstrate that a deep learning-based approach is capable of producing satisfying results for instance segmentation in an industrial environment.


Author(s):  
Juan S. Sierra ◽  
Jesús Pineda Castro ◽  
Eduardo Viteri ◽  
Daniela Rueda ◽  
Beatriz Tibaduiza ◽  
...  

2021 ◽  
Author(s):  
Clarence Yapp ◽  
Edward Novikov ◽  
Won-Dong Jang ◽  
Yu-An Chen ◽  
Marcelo Cicconet ◽  
...  

Abstract Newly developed technologies have made it feasible to routinely collect highly multiplexed (20-60 channel) images at subcellular resolution from human tissues for research and diagnostic purposes. Extracting single cell data from such images requires efficient and accurate image segmentation. This starts with identification of nuclei, a challenging problem in tissue imaging that has recently benefited from the use of deep learning. In this paper, we demonstrate two generally applicable approaches to improving segmentation accuracy for multiple human tissues. The first involves the use of “real augmentations” during training. These augmentations comprise defocused and saturated image data and improve model accuracy whereas computational augmentation (Gaussian blurring) does not. The second involves collection of nuclear envelope data to better identify nuclear outlines. The two approaches cumulatively and substantially improve segmentation with three different deep learning frameworks, yielding a set of highly accurate segmentation models. We speculate that the use of real augmentations may have applications in image processing outside of microscopy.


2021 ◽  
Author(s):  
Archana Machireddy ◽  
Guillaume Thibault ◽  
Kevin G. Loftis ◽  
Kevin Stoltz ◽  
Cecilia E. Bueno ◽  
...  

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