2 results match your criteria: "Center for Holographic Imaging Informatics[Affiliation]"
J Biomed Opt
July 2017
Chosun University, Department of Computer Engineering, Dong-gu, Gwangju, Republic of KoreabChosun University, Center for Holographic Imaging Informatics, Dong-gu, Gwangju, Republic of Korea.
We present unsupervised clustering methods for automatic grouping of human red blood cells (RBCs) extracted from RBC quantitative phase images obtained by digital holographic microscopy into three RBC clusters with regular shapes, including biconcave, stomatocyte, and sphero-echinocyte. We select some good features related to the RBC profile and morphology, such as RBC average thickness, sphericity coefficient, and mean corpuscular volume, and clustering methods, including density-based spatial clustering applications with noise, k-medoids, and k-means, are applied to the set of morphological features. The clustering results of RBCs using a set of three-dimensional features are compared against a set of two-dimensional features.
View Article and Find Full Text PDFJ Biomed Opt
December 2016
Chosun University, Department of Computer Engineering, 309 Pilmun-daero, Dong-gu, Gwangju 501-759, Republic of KoreabChosun University, Center for Holographic Imaging Informatics, 309 Pilmun-daero, Dong-gu, Gwangju 501-759, Republic of Korea.
The classification of erythrocytes plays an important role in the field of hematological diagnosis, specifically blood disorders. Since the biconcave shape of red blood cell (RBC) is altered during the different stages of hematological disorders, we believe that the three-dimensional (3-D) morphological features of erythrocyte provide better classification results than conventional two-dimensional (2-D) features. Therefore, we introduce a set of 3-D features related to the morphological and chemical properties of RBC profile and try to evaluate the discrimination power of these features against 2-D features with a neural network classifier.
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