Automated segmentation of murine lung tumors in x-ray micro-CT images

2014 ◽  
Author(s):  
Joshua K. Y. Swee ◽  
Clare Sheridan ◽  
Elza de Bruin ◽  
Julian Downward ◽  
Francois Lassailly ◽  
...  
2007 ◽  
Author(s):  
Suguru Kawajiri ◽  
Xiangrong Zhou ◽  
Xuejin Zhang ◽  
Takeshi Hara ◽  
Hiroshi Fujita ◽  
...  

2008 ◽  
Author(s):  
Teruhiko Kitagawa ◽  
Xiangrong Zhou ◽  
Takeshi Hara ◽  
Hiroshi Fujita ◽  
Ryujiro Yokoyama ◽  
...  

PLoS ONE ◽  
2013 ◽  
Vol 8 (12) ◽  
pp. e83806 ◽  
Author(s):  
Minxing Li ◽  
Artit Jirapatnakul ◽  
Alberto Biancardi ◽  
Mark L. Riccio ◽  
Robert S. Weiss ◽  
...  

2012 ◽  
Vol 36 (1) ◽  
pp. 54-65 ◽  
Author(s):  
Samantha J. Polak ◽  
Salvatore Candido ◽  
Sheeny K. Lan Levengood ◽  
Amy J. Wagoner Johnson

2021 ◽  
Author(s):  
Evropi Toulkeridou ◽  
Carlos Enrique Gutierrez ◽  
Daniel Baum ◽  
Kenji Doya ◽  
Evan P Economo

Three-dimensional (3D) imaging, such as micro-computed tomography (micro-CT), is increasingly being used by organismal biologists for precise and comprehensive anatomical characterization. However, the segmentation of anatomical structures remains a bottleneck in research, often requiring tedious manual work. Here, we propose a pipeline for the fully-automated segmentation of anatomical structures in micro-CT images utilizing state-of-the-art deep learning methods, selecting the ant brain as a testcase. We implemented the U-Net architecture for 2D image segmentation for our convolutional neural network (CNN), combined with pixel-island detection. For training and validation of the network, we assembled a dataset of semi-manually segmented brain images of 94 ant species. The trained network predicted the brain area in ant images fast and accurately; its performance tested on validation sets showed good agreement between the prediction and the target, scoring 80% Intersection over Union(IoU) and 90% Dice Coefficient (F1) accuracy. While manual segmentation usually takes many hours for each brain, the trained network takes only a few minutes.Furthermore, our network is generalizable for segmenting the whole neural system in full-body scans, and works in tests on distantly related and morphologically divergent insects (e.g., fruit flies). The latter suggest that methods like the one presented here generally apply across diverse taxa. Our method makes the construction of segmented maps and the morphological quantification of different species more efficient and scalable to large datasets, a step toward a big data approach to organismal anatomy.


Author(s):  
A S Kornilov ◽  
I V Safonov ◽  
A V Goncharova ◽  
I V Yakimchuk

We present an algorithm for processing of X-ray microtomographic (micro-CT) images that allows automatic selection of a sub-volume having the best visual quality for further mathematical simulation, for example, flow simulation. Frequently, an investigated sample occupies only a part of a volumetric image or the sample can be into a holder; a part of the image can be cropped. For each 2D slice across the Z-axis of an image, the proposed method locates a region corresponding to the sample. We explored applications of several existing blind quality measures for an estimation of the visual quality of a micro-CT image slice. Some of these metrics can be applied to ranking the image regions according to their quality. Our method searches for a cubic area located inside regions belonging to the sample and providing the maximal sum of the quality measures of slices crossing the cube across the Z-axis. The proposed technique was tested on synthetic and real micro-CT images of rocks.


2008 ◽  
Vol 28-1 (2) ◽  
pp. 1127-1127
Author(s):  
Satoshi TOMIOKA ◽  
Shusuke NISlYAMA ◽  
Tamotsu KOZAKI ◽  
Seichi SATO
Keyword(s):  
Micro Ct ◽  
X Ray ◽  

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