ISSN 2410-7751 (Print)
ISSN 2410-776X (Online)
"Biotechnologia Acta" V. 10, No 6, 2017
https://doi.org/10.15407/biotech10.06.005
Р. 5-17 , Bibliography 98 , English
Universal Decimal Classification: 004:591.5:612:616-006
TECHNOLOGIES OF BRAIN IMAGES PROCESSING
Kavetsky Institute of Experimental Pathology, Oncology and Radiobiology of the National Academy of Sciences of Ukraine, Kyiv
The purpose of present research was to analyze modern methods of processing biological images implemented before storage in databases for biotechnological purposes. The databases further were incorporated into web-based digital systems. Examples of such information systems were described in the work for two levels of biological material organization; databases for storing data of histological analysis and of whole brain were described. Methods of neuroimaging processing for electronic brain atlas were considered. It was shown that certain pathological features can be revealed in histological image processing. Several medical diagnostic techniques (for certain brain pathologies, etc.) as well as a few biotechnological methods are based on such effects. Algorithms of image processing were suggested. Electronic brain atlas was conveniently for professionals in different fields described in details. Approaches of brain atlas elaboration, “composite” scheme for large deformations as well as several methods of mathematic images processing were described as well.
Key words: mathematical methods, biotechnology, image processing methods information and computer technologies, software, databases.
© Palladin Institute of Biochemistry of National Academy of Sciences of Ukraine, 2017
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