Dynamic Chiropractic | |
Self-organizing maps as a good tool for classification of subfamily Astereoideae | |
关键词: Asteraceae; Asteroideae; self-organizing maps; secondary metabolites.; | |
DOI : 10.5897/JMPR11.942 | |
学科分类:医学(综合) | |
来源: MPA Media | |
【 摘 要 】
Artificial neural network (ANN) is defined as computational models with structures derived from the simplified concept of the brain in which a number of nodes are interconnected in a network-like structure. The most used ANNs architecture for pattern recognition and classification is the self-organizing map (SOM). SOM is a powerful visualization tool as it is able to reduce dimensions of projections and displays similarities among objects and was successfully used in several applications with chemistry database. In this work, we used SOM as good methodology of classification of a database containing various types of compounds from theAsteroideaesubfamily (Asteraceae). The Kohonen neural network was trained using Matlab version 6.5 with the package Somtoolbox 2.0. Some chemical evolutionary descriptors and the numbers of occurrences of 12 chemical classes in different taxa of the subfamily were used as variables. The study shows that SOM applied to chemical data can contribute to differentiate genera, tribes, and branches of subfamily, as well as to tribal and subfamily classifications ofAsteroideae,exhibiting a high hit percentage comparable to that of an expert performance, and in agreement with the previous tribe classification proposed by Funk.
【 授权许可】
Unknown
【 预 览 】
Files | Size | Format | View |
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RO201902024156565ZK.pdf | 441KB | download |