masterThesis
Desenvolvimento e uso do corazon: ferramenta para normalização e agrupamento de dados de expressão gênica
Date
2018-05-11Registration in:
RAMOS, Thaís de Almeida Ratis. Desenvolvimento e uso do corazon: ferramenta para normalização e agrupamento de dados de expressão gênica. 2018. 157f. Dissertação (Mestrado em Bioinformática) - Instituto Metrópole Digital, Universidade Federal do Rio Grande do Norte, Natal, 2018.
Author
Ramos, Thaís de Almeida Ratis
Institutions
Abstract
The creation of gene expression encyclopedias possibilities the understanding of gene groups
that are co-expressed in different tissues and comprehend gene clusters according to their
functions and origin. Due to the huge amount of data generated in large-scale transcriptomics
projects, an intense demand to use techniques provided by artificial intelligence became
widely used in bioinformatics. Unsupervised learning is the machine learning task that
analyzes the data provided and tries to determine if some objects can be grouped in some way,
forming clusters. We developed an online tool called CORAZON (Correlation Analyses
Zipper Online), which implements three unsupervised machine learning algorithms (mean
shift, k-means and hierarchical) to cluster gene expression datasets, six normalization
methodologies (Fragments Per Kilobase Million (FPKM), Transcripts Per Million (TPM),
Counts per million (CPM), base-2 log, normalization by the sum of the instance's values and
normalization by the highest attribute value for each instance), and a strategy to observe the
attributes influence, all in a friendly environment. The algorithms performances were
evaluated through five models commonly used to validate clustering methodologies, each one
composed by fifty randomly generated datasets. The algorithms presented accuracies ranging
between 92-100%. Next, we applied our tool to cluster tissues, obtain gene’s evolutionarily
knowledgement and functional insights, based on the Gene Ontology enrichment, and connect
with transcription factors. To select the best number of clusters for k-means and hierarchical
algorithms we used Bayesian information criterion (BIC), followed by the derivative of the
discrete function and Silhouette. In the hierarchical, we adopted the Ward’s method. In total,
we analyzed three databases (Uhlen, Encode and Fantom) and in relation to tissues we can
observe groups related to glands, cardiac tissues, muscular tissues, tissues related to the
reproductive system and in all three groups are observed with a single tissue, such as testis,
brain and bone-narrow. In relation to the genes clusters, we obtained several clusters that have
specificities in their functions: detection of stimulus involved in sensory perception,
reproduction, synaptic signaling, nervous system, immunological system, system
development, and metabolics. We also observed that clusters with more than 80% of noncodings,
more than 40% of their coding genes are recents appearing in mammalian class and
the minority are from eukaryota class. Otherwise, clusters with more than 90% of coding
genes, have more than 40% of them appeared in eukaryota and the minority from mammalian.
These results illustrate the potential of the methods in CORAZON tool, which can help in the
large quantities analysis of genomic data, possibiliting the potential associations analyzes
between non-coding RNAs and the biological processes of clustered together coding genes, as
well as the possibility of evolutionary history study. CORAZON is freely available at
http://biodados.icb.ufmg.br/corazon or http://corazon.integrativebioinformatics.me.