| Literature DB >> 16515683 |
Teresa Haynes1, Debra Knisley, Edith Seier, Yue Zou.
Abstract
BACKGROUND: It has become increasingly apparent that a comprehensive database of RNA motifs is essential in order to achieve new goals in genomic and proteomic research. Secondary RNA structures have frequently been represented by various modeling methods as graph-theoretic trees. Using graph theory as a modeling tool allows the vast resources of graphical invariants to be utilized to numerically identify secondary RNA motifs. The domination number of a graph is a graphical invariant that is sensitive to even a slight change in the structure of a tree. The invariants selected in this study are variations of the domination number of a graph. These graphical invariants are partitioned into two classes, and we define two parameters based on each of these classes. These parameters are calculated for all small order trees and a statistical analysis of the resulting data is conducted to determine if the values of these parameters can be utilized to identify which trees of orders seven and eight are RNA-like in structure.Entities:
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Year: 2006 PMID: 16515683 PMCID: PMC1420337 DOI: 10.1186/1471-2105-7-108
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Figure 8
Figure 9
Figure 1Three trees of order 8 has three trees of order 8, Figure 1a, 1b and figure 1c.
Status and prediction for trees with seven and eight vertices
| ID | P(Native) | RAG Status | Domination Predicted status | |||||
| 7 | 1 | 1.57143 | 1.00000 | 8.3867 | 1.00000 | 1.00000 | ||
| 7 | 2 | 1.28571 | 1.28571 | 10.5778 | 0.99898 | 0.99991 | ||
| 7 | 3 | 1.42857 | 1.00000 | 8.8221 | 1.00000 | 1.00000 | ||
| 7 | 4 | 1.14286 | 1.28571 | 10.8753 | 0.00040 | 0.00392 | ||
| 7 | 5 | 1.28571 | 1.28571 | 11.0685 | 0.99951 | 0.99991 | ||
| 7 | 6 | 1.28571 | 1.14286 | 10.2519 | 0.99834 | 0.99908 | ||
| 7 | 7 | 1.28571 | 1.14286 | 10.6740 | 0.99911 | 0.99908 | ||
| 7 | 8 | 1.57143 | 1.00000 | 9.6740 | 1.00000 | 1.00000 | ||
| 7 | 9 | 1.00000 | 1.42857 | 12.7881 | 0.00000 | 0.00000 | ||
| 7 | 10 | 1.00000 | 1.42857 | 13.2613 | 0.00000 | 0.00000 | ||
| 7 | 11 | 1.00000 | 1.71429 | 19.0000 | 0.00002 | 0.00000 | ||
| 8 | 1 | 1.37500 | 1.12500 | 10.2176 | 1.00000 | 1.00000 | ||
| 8 | 2 | 1.37500 | 1.12500 | 10.3336 | 1.00000 | 1.00000 | ||
| 8 | 3 | 1.37500 | 1.12500 | 10.4912 | 1.00000 | 1.00000 | ||
| 8 | 4 | 1.25000 | 1.25000 | 11.4912 | 0.98853 | 0.99359 | ||
| 8 | 5 | 1.50000 | 1.00000 | 9.5848 | 1.00000 | 1.00000 | ||
| 8 | 6 | 1.25000 | 1.25000 | 11.6184 | 0.99049 | 0.99359 | ||
| 8 | 7 | 1.37500 | 1.12500 | 10.7096 | 1.00000 | 1.00000 | ||
| 8 | 8 | 1.25000 | 1.12500 | 10.7944 | 0.96824 | 0.95104 | ||
| 8 | 9 | 1.12500 | 1.37500 | 12.9072 | 0.00124 | 0.00269 | ||
| 8 | 10 | 1.50000 | 1.12500 | 10.9472 | 1.00000 | 1.00000 | ||
| 8 | 11 | 1.50000 | 1.00000 | 10.0072 | 1.00000 | 1.00000 | ||
| 8 | 12 | 1.37500 | 1.12500 | 11.0304 | 1.00000 | 1.00000 | ||
| 8 | 13 | 1.12500 | 1.25000 | 12.1432 | 0.00040 | 0.00034 | ||
| 8 | 14 | 1.12500 | 1.37500 | 13.2192 | 0.00196 | 0.00269 | ||
| 8 | 15 | 1.25000 | 1.25000 | 12.3104 | 0.99659 | 0.99359 | ||
| 8 | 16 | 1.37500 | 1.12500 | 11.4520 | 1.00000 | 1.00000 | ||
| 8 | 17 | 1.12500 | 1.25000 | 12.5496 | 0.00073 | 0.00034 | ||
| 8 | 18 | 1.00000 | 1.50000 | 14.8336 | 0.00000 | 0.00000 | ||
| 8 | 19 | 0.87500 | 1.50000 | 14.9904 | 0.00000 | 0.00000 | ||
| 8 | 20 | 1.50000 | 1.00000 | 11.0560 | 1.00000 | 1.00000 | ||
| 8 | 21 | 1.12500 | 1.25000 | 13.0560 | 0.00154 | 0.00034 | ||
| 8 | 22 | 1.00000 | 1.50000 | 15.6200 | 0.00000 | 0.00000 | ||
| 8 | 23 | 0.87500 | 1.75000 | 22.0000 | 0.00000 | 0.00000 |
Figure 2Dot plot for P1.
Figure 3Dot plot for P2.
Figure 4Dot plot for .
Figure 5Scatter Plot for P1 vs P2.
Figure 6Scatter Plot for P1 vs .
Figure 7Graph of estimated probabilities for P1.