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Author(s):  
S Sumijan ◽  
Y Yuhandri ◽  
Wendi Boy

Brain bleeding can occur because of the outbreak of the blood vessels in the brain which culminated into hemorrhagic stroke or stroke due to bleeding. Hemorrhagic Stroke occurs when there is a burst of blood vessels result from some trigger factor. Segmentation techniques to Scanner computed tomography images (CT scan of the brain) is one of the methods used by the radiologist to detect brain bleeding or congenital abnormalities that occur in the brain. This research will determine the area of the brain bleeding on each image slice CT - scan every patient, to detect and extract brain bleeding, so it can calculate the volume of the brain bleeding. The detection and extraction bleeding area of the brain is based on the hybrid thresholding method.



2021 ◽  
Author(s):  
Yueh-Shan Shih

This thesis explores the effectiveness of a novel interaction model for visualizing 3D image data. The interaction model is based on user-sketched line segments known as



2021 ◽  
Author(s):  
Yueh-Shan Shih

This thesis explores the effectiveness of a novel interaction model for visualizing 3D image data. The interaction model is based on user-sketched line segments known as



2020 ◽  
Author(s):  
Keyword(s):  


Author(s):  
Agus Zainal Arifin ◽  
Evan Tanuwijaya ◽  
Baskoro Nugroho ◽  
Arif Mudi Priyatno ◽  
Rarasmaya Indraswari ◽  
...  
Keyword(s):  




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.



Author(s):  
Muhammad Ismail Mat Isham ◽  
Farhan Mohamed ◽  
Chan Vei Siang ◽  
Yusman Azimi Yusoff ◽  
Ahmad Ashraf Abd Aziz ◽  
...  


2017 ◽  
Vol 30 (4) ◽  
pp. 339-346 ◽  
Author(s):  
Jonathan Y Li ◽  
Dana M Middleton ◽  
Steven Chen ◽  
Leonard White ◽  
N Matthew Ellinwood ◽  
...  

Purpose We describe a novel technique for measuring diffusion tensor imaging metrics in the canine brain. We hypothesized that a standard method for region of interest placement could be developed that is highly reproducible, with less than 10% difference in measurements between raters. Methods Two sets of canine brains (three seven-week-old full-brains and two 17-week-old single hemispheres) were scanned ex-vivo on a 7T small-animal magnetic resonance imaging system. Strict region of interest placement criteria were developed and then used by two raters to independently measure diffusion tensor imaging metrics within four different white-matter regions within each specimen. Average values of fractional anisotropy, radial diffusivity, and the three eigenvalues (λ1, λ2, and λ3) within each region in each specimen overall and within each individual image slice were compared between raters by calculating the percentage difference between raters for each metric. Results The mean percentage difference between raters for all diffusion tensor imaging metrics when pooled by each region and specimen was 1.44% (range: 0.01–5.17%). The mean percentage difference between raters for all diffusion tensor imaging metrics when compared by individual image slice was 2.23% (range: 0.75–4.58%) per hemisphere. Conclusion Our results indicate that the technique described is highly reproducible, even when applied to canine specimens of differing age, morphology, and image resolution. We propose this technique for future studies of diffusion tensor imaging analysis in canine brains and for cross-sectional and longitudinal studies of canine brain models of human central nervous system disease.



2016 ◽  
Vol 32 (1) ◽  
pp. 128-139 ◽  
Author(s):  
Meghan E. Vidt ◽  
Anthony C. Santago ◽  
Christopher J. Tuohy ◽  
Gary G. Poehling ◽  
Michael T. Freehill ◽  
...  


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