| Literature DB >> 28057002 |
Sudheer Gupta1, Ashok K Sharma1, Vibhuti Shastri1, Midhun K Madhu1, Vineet K Sharma2.
Abstract
BACKGROUND: The current therapy for inflammatory and autoimmune disorders involves the use of nonspecific anti-inflammatory drugs and other immunosuppressant, which are often accompanied with potential side effects. As an alternative therapy, anti-inflammatory peptides are recently being exploited as anti-inflammatory agents for treatment of various inflammatory diseases such as Alzheimer's disease and rheumatoid arthritis. Thus, understanding the correlation between amino acid sequence and its potential anti-inflammatory property is of great importance for the discovery of novel and efficient anti-inflammatory peptide-based therapeutics.Entities:
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Year: 2017 PMID: 28057002 PMCID: PMC5216551 DOI: 10.1186/s12967-016-1103-6
Source DB: PubMed Journal: J Transl Med ISSN: 1479-5876 Impact factor: 5.531
Fig. 1Flowchart showing steps involved in the development of prediction model and web server
Fig. 2Compositional analysis of AIEs and NAIEs
Fig. 3Two sample logo showing positional conservation of five residues at both the terminals (N’- and C’-) in AIEs against NAIEs
Fig. 4Dipeptide composition distribution between AIEs and NAIEs (only significant dipeptides are shown with p value <0.01 in Welch’s t test)
Fig. 5Distribution of HLA alleles among assays reporting AIEs and NAIEs
Annotation and coverage of MERCI motifs extracted from anti-inflammatory epitopes
| S. no. | Motif | Coverage |
|---|---|---|
| 1. | Hydrophobic hydrophobic tiny F charged | 22 |
| 2. | Hydrophobic L hydrophobic hydrophobic small polar hydrophobic polar polar | 20 |
| 3. | Hydrophobic I hydrophobic hydrophobic hydrophobic hydrophobic hydrophobic polar polar | 18 |
| 4. | Polar L aliphatic hydrophobic positive | 17 |
| 5. | Hydrophobic aliphatic hydrophobic aliphatic small polar hydrophobic polar polar | 17 |
| 6. | Hydrophobic hydrophobic small hydrophobic polar hydrophobic polar Q | 17 |
| 7. | L hydrophobic aliphatic small polar hydrophobic polar polar | 16 |
| 8. | Hydrophobic polar hydrophobic L polar hydrophobic hydrophobic polar tiny | 16 |
| 9. | Hydrophobic L polar polar small small hydrophobic hydrophobic | 16 |
| 10. | Hydrophobic aliphatic polar small hydrophobic charged polar polar hydrophobic | 16 |
| 11. | Hydrophobic hydrophobic hydrophobic tiny F charged | 16 |
| 12. | Hydrophobic hydrophobic tiny F charged hydrophobic | 16 |
| 13. | small aliphatic E N | 16 |
For example “hydrophobic hydrophobic tiny F charged” motif is found in 22 unique anti-inflammatory epitopes
Fig. 6ROC plots of prediction models developed using SVMlight as machine learning technique; a 10-fold cross validation, b validation dataset
Performance of SVM models using various sequence based features
| Feature | Thre | Sen | Spe | Acc | MCC | Parameter |
|---|---|---|---|---|---|---|
| AAC | −0.3 | 71.74 | 65.71 | 68.16 | 0.37 | g:0.005:c:1:j:1 |
| DPC | −0.2 | 80.43 | 64.52 | 70.98 | 0.44 | g:0.005:c:1:j:3 |
| TPC | −0.2 | 79.28 | 72.15 | 75.04 | 0.51 | g:0.001:c:4:j:1 |
| AAC_HYB | −0.2 | 81.3 | 64.12 | 71.1 | 0.45 | g:0.005 c:1 j:4 |
| DPC_HYB | −0.3 | 84.78 | 67.2 | 74.34 | 0.51 | g:0.005 c:1 j:1 |
| TPC_HYB | −0.3 | 87.83 | 71.46 | 78.1 | 0.58 | g:0.001 c:2 j:1 |
Thre threshold, Sen sensitivity, Spe specificity, Acc accuracy, MCC Matthews correlation coefficient
Performance of optimized prediction models on validation dataset
| Feature | Thre | Sen | Spe | Acc | MCC |
|---|---|---|---|---|---|
| AAC | −0.3 | 72.83 | 63.89 | 67.53 | 0.36 |
| DPC | −0.2 | 81.5 | 65.08 | 71.76 | 0.46 |
| TPC | −0.2 | 71.1 | 72.22 | 71.76 | 0.43 |
| AAC_HYB | −0.2 | 72.83 | 62.3 | 66.59 | 0.35 |
| DPC_HYB | −0.3 | 80.35 | 61.9 | 69.41 | 0.42 |
| TPC_HYB | −0.3 | 78.61 | 67.46 | 72 | 0.45 |
Thre threshold, Sen sensitivity, Spe specificity, Acc accuracy, MCC Matthews correlation coefficient