Abstract
Despite some limited success, computational biology
has not been able to produce reliable results in the field of protein
structure prediction. Although the fragment assembly approach
has shown a lot of potential, it still requires substantial
improvements. Not only are its predictions largely inaccurate
whenever a protein exceeds 150 amino acids in length, but also,
even for short targets, inconsistencies of the energy function
associated with the enormous search space too often lead to the
generation of erroneous conformations. Moreover, as it relies on
the creation of a large number of decoys, it is highly
computational expensive. Based on its secondary structure
content, a protein can generally be classified into one of the
standard structural classes, i.e. all-alpha, all-beta or alpha-beta.
Since structural class prediction has reached a prominent
accuracy, it is proposed to amend the standard pipeline of
fragment-based methods by including some constraints on the
template proteins from which fragments are extracted. Using
Rosetta, a state-of-the-art fragment-based protein structure
prediction package, the suggested customized method was
evaluated on 67 former CASP targets ranging from 47 to 149
amino acids in length. Using SCOP-based structural class
annotations, improvement of structure prediction performance is
highly significant in terms of GDT (53 out of 67 targets show
higher scores of 6.1% on average, p-value < 0.0005).
| Original language | English |
|---|---|
| Publication status | Published - 3 Jul 2019 |
| Event | 2019 Fourth International Conference on Advances in Computational Tools for Engineering Applications (ACTEA) - Beirut, Lebanon Duration: 3 Jul 2019 → 4 Jul 2019 |
Conference
| Conference | 2019 Fourth International Conference on Advances in Computational Tools for Engineering Applications (ACTEA) |
|---|---|
| Period | 3/07/19 → 4/07/19 |
Keywords
- Computer science and informatics
- Rosetta
- SCOP
- fragment assembly protein structure prediction
- strucutural class