Clustering Metagenome Fragments Using Growing Self Organizing Map
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Date
2013-09Author
Overbeek., Marlinda Vasty
Kusuma, Wisnu Ananta
Buono, Agus
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Abstract=- The microorganism sarnples taken
directly from environment are not easy to
assemble because they contains mixtures of
microorganism. If sampie cornplexity is very high
and comes from highly diverse environment, the
difficulty of assembling DNA sequences is
increasing since the interspecies chimeras can
happen, To avoid this problem, in this research, we
proposed binning based on cornposition using
unsupcrvised learning. We ernployed trinucleotide
and tetranucleotide frequency as Ieatures and
GSOM algorithm as clustering method. GSOM
was implemented to map featurcs into high
dimension feature space. We tested our method
using small microbial community dataset. The
quality of cluster was evaluated based on the
folIowing parameters topographic error.
quantization error, and error percentage. The
evaluation results show that the best cluster can be
obtained using GSOM and tetranucleotide.
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