Title: A Multi-Template Multi-Model Combination Approach to Template-Based Modeling
1A Multi-Template Multi-Model Combination Approach
to Template-Based Modeling
- Jianlin Cheng
- Computer Science Department Informatics
Institute - University of Missouri, Columbia, MO, USA
21. Template Ranking
2. Multiple-Template Combination
Combination
Alignments
MAR-TCRK-EGAP-WY Y-R-MH-R-DGM-MWT TAKMTHK-DEGFG-
YW
Query-Template 1
MARTCRKEGAP-WY Y-RMH-RDGM-MWT
Input Query
. . .
MARTCRKE
Query-Template 2
MAR-TCRK-EGAPWY TAKMTHK-DEGFGYW
. . .
. . .
4. Evaluation 5. Combination Refinement (2-3)
3. Model Generation
Models
Generator
Output
CASP8 Server Models
3Traditional Model Selection
- Single-Model Evaluation
- Clustering / Consensus Approach
4Global-Local Model Combination
CASP8 Models
Rank models by GDT-TS scores predicted by
ModelEvaluator
. . .
Put relatively good, but not the best models at
the top
5Global-Local Model Combination
Structure comparison by TM-Score
. . .
. . .
Select top 5 models as seed models
Identify similar models or fragments
Retain top 50 models
6Global-Local Model Combination
- Globally similar models
- Locally similar model fragments
- Combination and iterative modeling by Modeller
- Side chain rebuilt by SCWRL.
7Some High-Quality Predictions
T0390 GDT0.90
T0426 GDT0.97
T0432 GDT0.92
T0458 GDT0.97
Orange structure Green model
H-Bonds are well predicted.
8Conclusions
- Iterative modeling and averaging improve
side-chain placement, geometry, and H-Bonds - Combining multiple good similar models can
produce a model better than the top ranked model - Combined models are at least as good as centroids
and have no steric clashes
9Acknowledgements
- CASP8 organizers and assessors
- CASP8 participants
- MU colleagues Dong Xu, Toni Kazic
- My group
- Zheng Wang
- Allison Tegge
- Xin Deng