Evolutionary Analysis of the Protein [PDF]

approaches to protein domain contents at genome-wide scales. The discussion will be highlighted on large scale patterns

0 downloads 5 Views 50KB Size

Recommend Stories


[PDF] Evolutionary Analysis (5th Edition)
Make yourself a priority once in a while. It's not selfish. It's necessary. Anonymous

Measuring the evolutionary rate of protein–protein interaction
Life isn't about getting and having, it's about giving and being. Kevin Kruse

an evolutionary analysis
Sorrow prepares you for joy. It violently sweeps everything out of your house, so that new joy can find

Improving evolutionary models of protein interaction networks
We can't help everyone, but everyone can help someone. Ronald Reagan

Methods of Protein Analysis
Make yourself a priority once in a while. It's not selfish. It's necessary. Anonymous

Protein-protein interaction analysis
When you do things from your soul, you feel a river moving in you, a joy. Rumi

Highly Accurate Prediction of Protein-Protein Interactions via Incorporating Evolutionary
You have to expect things of yourself before you can do them. Michael Jordan

In Vivo Analysis of Protein–Protein Interactions
Nothing in nature is unbeautiful. Alfred, Lord Tennyson

The evolutionary history of eukaryotes
Why complain about yesterday, when you can make a better tomorrow by making the most of today? Anon

protein interaction network across vast evolutionary distance
We may have all come on different ships, but we're in the same boat now. M.L.King

Idea Transcript


Evolutionary Analysis of the Protein Domain Distribution in Eukaryotes Arli Aditya Parikesit Junior Professorship for Computational EvoDevo, Institute of Computer Science, University of Leipzig. Härtelstr. 16-18, 0417 Leipzig, Germany, [email protected] Abstract: Investigations into the origins and evolution of regulatory mechanisms require quantitative estimates of the abundance and co-occurrence of functional protein domains among distantly related genomes. The metabolic and regulatory capabilities of an organism are implicit in its protein content. Currently available methods suffer for strong ascertainment biases, requiring methods for unbiased approaches to protein domain contents at genome-wide scales. The discussion will be highlighted on large scale patterns of similarities and differences of domain contains between phylum-level or even higher level taxonomic groups. This provides insights into large-scale evolutionary trends. Its complement of recognizable functional protein domains and their combinations convey essentially the same information and at the same time are much more readily accessible, although protein domain models trained for one phylogenetic group frequently fail on distantly related sequences. Transcription factors (TF) typically cooperate to activate or repress the expression of genes. They play a critical role in developmental processes. While Chromatin Regulation (CR) facilitates DNA organization and prevent DNA aggregation and tangling which is important for replication, segregation, and gene expression. To compare the set of TFs and CRs between species, the genome annotation of equal quality was employed. To overcome this problem, performing gene prediction followed by the detection of functional domains via HMM-based annotation of SCOP domains were proposed. This methods was demonstrated to lead toward consistent estimates for quantitative comparison. To emphasize the applicability, the protein domain distribution of putative TFs and CRs by quantitative and boolean means were analyzed. In particular, systematic studies of protein domain occurrences and cooccurrences to study avoidance or preferential co-occurrence of certain protein domains within TFs and CRs were utilized.

Pooling related domain models based on their GO-annotation in combination with de novo gene prediction methods provides estimates that seem to be less affected by phylogenetic biases. It was shown for 18 diverse representatives from all eukaryotic kingdoms that a pooled analysis of the tendencies for co-occurrence or avoidance of protein domains is indeed feasible. This type of analysis can reveal general large-scale patterns in the domain co-occurrence and helps to identify lineagespecific variations in the evolution of protein domains. Somewhat surprisingly, Strong ubiquitous patterns governing the evolutionary behavior of specific functional classes were not found. Instead, there are strong variations between the major groups of eukaryotes, pointing at systematic differences in their evolutionary constraints. Species-specific training is required, however, to account for the genomic peculiarities in many lineages. In contrast to earlier studies wide-spread statistically significant avoidance of protein domains associated with distinct functional high-level gene-ontology terms were found.

Smile Life

When life gives you a hundred reasons to cry, show life that you have a thousand reasons to smile

Get in touch

© Copyright 2015 - 2024 PDFFOX.COM - All rights reserved.