Predicting building Schemas
of protein secondary structure
By applying Genetics
Algorithms
Huang,Hsiang Chi Researcher FIND,ECRC,Institute
for Information Industry |
Abstract.
Assessing
accurate secondary structures of a protein involves in preparation a crystal of
protein, x-ray scanning and computing. These cost a lot. Researchers have
developed methods to predict secondary structures of a protein since 1960s. Recently,
methods predicting protein secondary structure through the use of new
algorithms such as HMM (3), neural networks (2), new evolutionary databases (2)
etc.
These
algorithms do help to predict protein secondary structure. However, some
algorithms are like “Black Boxes”. Researchers don’t the meanings of understand
enormous parameters or how the results of prediction come out but only accept them.
This study intends to predict protein secondary structure schemas by genetics
algorithms.
In this research,
a genetic algorithm has been applied to predict building schemas of protein
secondary structure. The results of this GAPS (Genetics Algorithm for Protein
Secondary Structure) achieved an average Q3 score of 55%~ 65 %. Although the highest
Q3 of this research is not the highest score among researches, some fundamental
and useful building schemas of protein secondary structure information have
been found.
Previous researches (e.g. focused on global
free energy minimum of protein secondary structure) could not give us a
complete understanding of the driving forces behind protein folding. Why?
Previous
researches take every amino acid in the sequence into
consideration. However,
from the results of this study, not all the residues in a schemas effect the
conformation of protein secondary structure. Only few amino acids actually effect
the conformation of protein secondary structure folding.