automated quantification
Recently Published Documents


TOTAL DOCUMENTS

525
(FIVE YEARS 138)

H-INDEX

37
(FIVE YEARS 5)

2022 ◽  
pp. 108429
Author(s):  
Cathy Yea Won Sung ◽  
Melanie Barzik ◽  
Tucker Costain ◽  
Lizhen Wang ◽  
Lisa L. Cunningham

Author(s):  
Hazem Abuzeid Yousef ◽  
Ehab Mansour Mohmad Moussa ◽  
Mohamed Zidan Mohamed Abdel-Razek ◽  
Maha Mohamed Said Ahmed El-Kholy ◽  
Lamiaa Hasan Shaaban Hasan ◽  
...  

Abstract Background Chest computed tomography (CT) has proven its critical importance in detection, grading, and follow-up of lung affection in COVID-19 pneumonia. There is a close relationship between clinical severity and the extent of lung CT findings in this potentially fatal disease. The extent of lung lesions in CT is an important indicator of risk stratification in COVID-19 pneumonia patients. This study aims to explore automated histogram-based quantification of lung affection in COVID-19 pneumonia in volumetric computed tomography (CT) images in comparison to conventional semi-quantitative severity scoring. This retrospective study enrolled 153 patients with proven COVID-19 pneumonia. Based on the severity of clinical presentation, the patients were divided into three groups: mild, moderate and severe. Based upon the need for oxygenation support, two groups were identified as follows: common group that incorporated mild and moderate severity patients who did not need intubation, and severe illness group that included patients who were intubated. An automated multi-level thresholding histogram-based quantitative analysis technique was used for evaluation of lung affection in CT scans together with the conventional semi-quantitative severity scoring performed by two expert radiologists. The quantitative assessment included volumes, percentages and densities of ground-glass opacities (GGOs) and consolidation in both lungs. The results of the two evaluation methods were compared, and the quantification metrics were correlated. Results The Spearman’s correlation coefficient between the semi-quantitative severity scoring and automated quantification methods was 0.934 (p < 0.0001). Conclusions The automated histogram-based quantification of COVID-19 pneumonia shows good correlation with conventional severity scoring. The quantitative imaging metrics show high correlation with the clinical severity of the disease.


2021 ◽  
Vol 1 (12) ◽  
Author(s):  
Romina L. Filippelli ◽  
Amr Omer ◽  
Shulei Li ◽  
Chloë Oostende‐Triplet ◽  
Imed E. Gallouzi ◽  
...  

Sensors ◽  
2021 ◽  
Vol 21 (22) ◽  
pp. 7598
Author(s):  
Kazimieras Buškus ◽  
Evaldas Vaičiukynas ◽  
Antanas Verikas ◽  
Saulė Medelytė ◽  
Andrius Šiaulys ◽  
...  

Underwater video surveys play a significant role in marine benthic research. Usually, surveys are filmed in transects, which are stitched into 2D mosaic maps for further analysis. Due to the massive amount of video data and time-consuming analysis, the need for automatic image segmentation and quantitative evaluation arises. This paper investigates such techniques on annotated mosaic maps containing hundreds of instances of brittle stars. By harnessing a deep convolutional neural network with pre-trained weights and post-processing results with a common blob detection technique, we investigate the effectiveness and potential of such segment-and-count approach by assessing the segmentation and counting success. Discs could be recommended instead of full shape masks for brittle stars due to faster annotation among marker variants tested. Underwater image enhancement techniques could not improve segmentation results noticeably, but some might be useful for augmentation purposes.


Author(s):  
A. Deprêtre ◽  
F. Jacquinod

Abstract. Urban planning is a very complex task, especially considering the many challenges it faces, including an increasing need for housing in response to demographic growth and a need to limit abusive land artificialisation. As part of an interdisciplinary action-research project focused on experimenting with various uses of an existing City Information Model (CIM) for urban design, we are developing a new indicator to characterize urban intensity and a method to quantify it through the City Information Model (CIM) of a French eco-district. Our project is ongoing, and, in this paper, we present intermediate results on the potential of this CIM to support the automated quantification of our urban intensity indicator. We also describe the solutions currently implemented so that our experimental CIM can provide the necessary information for a more complete and automated urban intensity analysis. Finally, we shed light on key issues regarding the use of CIM, specifically CIM made up of various BIM models (of buildings lots and public spaces) for urban analysis at the district scale during the design phase. These issues include the need to generalize BIM entities and to manage property sets and nomenclatures to allow automation of analyses at the district scale, as long as there is no BIM+ data model allowing for urban analysis.


Author(s):  
A. Arjmand ◽  
M. Pappas ◽  
O. Tsakai ◽  
V. Christon ◽  
A. T. Tzallas ◽  
...  

Sign in / Sign up

Export Citation Format

Share Document