DSpace Repository

Protein secondary structure prediction using conditional random fields and profiles

Show simple item record

dc.contributor Dietterich, Thomas G.
dc.contributor Tadepalli, Prasad
dc.contributor Fern, Alan
dc.contributor Bolte, John
dc.date 2006-06-01T19:35:24Z
dc.date 2006-06-01T19:35:24Z
dc.date 2006-03-09
dc.date 2006-06-01T19:35:24Z
dc.date.accessioned 2013-10-16T07:36:48Z
dc.date.available 2013-10-16T07:36:48Z
dc.date.issued 2013-10-16
dc.identifier http://hdl.handle.net/1957/2055
dc.identifier.uri http://koha.mediu.edu.my:8181/xmlui/handle/1957/2055
dc.description Graduation date: 2006
dc.description Protein secondary structure prediction plays a pivotal role in predicting protein folding in three-dimensions. Its task is to assign each residue one of the three secondary structure classes helix, strand, or random coil. This is an instance of the problem of sequential supervised learning in machine learning. This thesis describes a new model, TreeCRFpsi, for addressing this problem. TreeCRFpsi combines recent advances in machine learning with new sequence representations developed in molecular biology. The machine learning method, TreeCRF, constructs a conditional random field (CRF) by fitting a set of regression trees via an algorithm known as gradient tree boosting. The new sequence representation is the PSI-BLAST profile introduced by D. Jones, which is based on matching sequences of known protein structure against a much larger set of sequences drawn from the NCBI non-redundant protein sequence database. A new methodology of cross validation was developed and applied to choose the best parameter values for the model. The chosen parameters were the following: tree size of 10 leaves, sliding window size of 15 residues, and 3 rounds of PSI-BLAST searching. The mean three-state prediction accuracy reached 77.6% on both our new SD482 and the popular CB513 datasets. This result is the best among all published results. TreeCRFpsi improved especially on helix and strand predictions by 1-2.3 percentage points over the previous best methods. SOV99 scores were 74.6% and 73.9% for SD482 and CB513, respectively. In addition, there was no apparent overfitting problem observed in our model. Besides achieving higher accuracy, TreeCRFpsi is the first secondary structure prediction method based on a well-defined probabilistic model, which makes it easier to use the output predictions as inputs to subsequent analysis steps.
dc.language en_US
dc.subject Conditional random fields
dc.subject Protein secondary structure
dc.subject Protein structure prediction
dc.subject PSI-BLAST
dc.subject CRF
dc.subject sequential supervised learning
dc.subject position-specific scoring matrices
dc.subject PSSM
dc.subject maching learning
dc.title Protein secondary structure prediction using conditional random fields and profiles
dc.type Thesis


Files in this item

Files Size Format View

There are no files associated with this item.

This item appears in the following Collection(s)

Show simple item record

Search DSpace


Advanced Search

Browse

My Account