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RSC Advances ◽  
2017 ◽  
Vol 7 (28) ◽  
pp. 16977-16983 ◽  
Author(s):  
Yang Zou ◽  
Hongqing Feng ◽  
Han Ouyang ◽  
Yiming Jin ◽  
Min Yu ◽  
...  

The convexity of topological nanostructures, as analyzed by grey-level histogram and fast Fourier transformation, has important modulation effects on the size expansion and filopodia generation of mesenchymal stem cells.


2004 ◽  
Vol 47 (4) ◽  
pp. 305-308
Author(s):  
Zuzana Hlinomazová ◽  
Ivo Hrazdira

Disadvantage of ultrasonography is its dependence on subjective assessment of displayed images. The way how to minimize both intraobserver and interobserver differences is creation of standard conditions for examination including a quantitative approach to evaluation of tissue reflectivity. The oldest mode of standardisation is standardised A- scan, used in ophthalmology. It enables differentiation of echoes, reflected from different ocular structures and is helpful in assessment of extraocular muscle thickness. Standardisation of B- scan depends on the type of diagnostic device and is based on quantification of image echogenicity. In our study reference values of grey-level histogram were established for some thyroid diseases using standard setting of imaging parameters. Results indicate that both standardised A- and B- scan should be helpful in differential diagnostics.


Author(s):  
E S Gadelmawla ◽  
M M Koura ◽  
T M A Maksoud ◽  
I M Elewa ◽  
H H Soliman

1999 ◽  
Vol 25 (2) ◽  
pp. 201-208 ◽  
Author(s):  
Kazuo Maeda ◽  
Masaji Utsu ◽  
Nobuhiro Yamamoto ◽  
Mariko Serizawa

Author(s):  
YATEEN CHITRE ◽  
ATAM P. DHAWAN ◽  
MYRON MOSKOWITZ

Mammography associated with clinical breast examination and breast self-examination is the only effective and viable method for mass breast screening. Most of the minimal breast cancers are detected by the presence of microcalcifications. It is however difficult to distinguish between benign and malignant microcalcifications associated with breast cancer. Most of the techniques used in the computerized analysis of mammographic microcalcifications segment the digitized grey-level image into regions representing microcalcifications. Since mammographic images usually suffer from poorly defined microcalcification features, the extraction of microcalcification features based on segmentation process is not reliable and accurate. We present a second-order grey-level histogram based feature extraction approach which does not require the segmentation of microcalcifications into binary regions to extract features to be used in classification. The image structure features, computed from the second-order grey-level histogram statistics, are used for classification of microcalcifications. Several image structure features were computed for 100 cases of “difficult to diagnose” microcalcification cases with known biopsy results. These features were analyzed in a correlation study which provided a set of five best image structure features. A feedforward backpropagation neural network was used to classify mammographic microcalcifications using the image structure features. Four networks were trained for different combinations of training and test cases, and number of nodes in hidden layers. False Positive (FP) and True Positive (TP) rates for microcalcification classification were computed to compare the performance of the trained networks. The results of the neural network based classification were compared with those obtained using multivariate Baye’s classifiers, and the k-nearest neighbor classifier. The neural network yielded good results for classification of “difficult-to-diagnose” micro-calcifications into benign and malignant categories using the selected image structure features.


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