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Discriminant Function Analysis Based on Principal Components for Rapid Discrimination of Metabolic Capabilities of New Isolates

B. Sariyar-Akbulut ; Department of Bioengineering, Marmara University, Kadikoy 34722, Istanbul, Turkey


Puni tekst: engleski pdf 604 Kb

str. 119-127

preuzimanja: 671

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Sažetak

The growing need for new microorganisms with novel metabolic capabilities has urged scientists to searchfor life in extreme environments. With the rapid progress in experimental methods, it is possible to isolate new microorganisms at high speeds but the
bottleneck in this process is the biochemical characterization due to time and financial limitations. Inferential hierarchical clustering of new isolates may help to overcome this problem. In this work, discriminant function analysis, used in conjunction with principal
component analysis (PCA) was able to rapidly discriminate eight new isolates using metabolic footprints (spectral data from electrospray injection mass spectrometry) and the results were compared with clustering based on the Euclidean distances computed both in the domain of original data and in the domain of PCA-transformed data. The presence of the replicates on the adjacent leaf nodes of dendrograms obtained by hierarchical cluster analysis confirmed the reliability of the method. This attractive tool is applicable to a chemical/biological system, which involves complex samples that can be analyzed by high-throughput instruments.

Ključne riječi

Hierarchical clustering; discriminant function analysis; principal component analysis; metabolic capability

Hrčak ID:

49494

URI

https://hrcak.srce.hr/49494

Datum izdavanja:

25.3.2010.

Posjeta: 1.156 *