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      RiPPMiner
        A Bioinformatics Resource for Deciphering Chemical Structures of RiPPs

NII



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BENCHMARKING RESULTS FOR RiPP IDENTIFICATION

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Method: Support Vector Machine (SVM)
SensitivitySpecificityPrecisionMCCAUC
0.940.900.900.850.97













BENCHMARKING RESULTS FOR RiPP CLASS PREDICTION

MultiClass SVM
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ClassSensitivitySpecificityMCC
LanthippeptideB 0.890.980.88
LanthippeptideA1.001.001.00
LanthipeptideC0.670.99 0.76
Linaridin0.670.990.77
Cyanobactin 0.93 0.97 0.88
Sactipeptide0.001.000.00
Microcin1.001.00 1.00
Lassopeptide 0.51 1.000.69
Bacterial Head-to-Tail Cyclized Peptide111
Auto Inducing Peptide0.7510.86
ComX1.00 1.001.00
Thiopeptide1.00 0.990.96

Average Sensitivity is 0.78, Specificity is 0.99 and MCC is 0.82

BENCHMARKING RESULTS FOR LANTHIPEPTIDE CLEAVAGE PREDICTION

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TotalPositive SetNegative Set#SensitivitySpecificityPrecisionMCC
23145222620.710.990.690.69

#Note: The 'cost factor' has been used while training the classifier to adjust the diffrences
in counts of positive and negative datasets









BENCHMARKING RESULTS FOR LANTHIPEPTIDE CROSSLINKS PREDICTION

logo Method: Random Forest (RF)

View Comparison of Predicted Crosslinks with Actual Structure for Lanthipeptides

TotalPositive SetNegative Set#SensitivitySpecificityPrecisionMCC
157621813580.720.950.730.68

#Note: The 'cost factor' has been used while training the classifier to adjust the diffrences
in counts of positive and negative datasets









logo Method: Supoort Vector Machine (SVM)
TotalPositive SetNegative Set#SensitivitySpecificityPrecisionMCC
157621813580.570.940.630.54

#Note: The 'cost factor' has been used while training the classifier to adjust the diffrences
in counts of positive and negative datasets










BENCHMARKING RESULTS FOR LASSOPEPTIDE CLEAVAGE & CROSSLINKS PREDICTION

logo Cleavage site Prediction AUC = 0.998
CrossLinks
Total sequencesCorrect prediction in top rankCorrect prediction in top 2 rank
6050(83.33%)55(91.67%)














BENCHMARKING RESULTS FOR CYANOBACTINS CLEAVAGE & CROSSLINKS PREDICTION

1. Core peptide prediction
Two SVM Classifiers were used, one each for RSII and RSIII.
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ModelAUC
RSII Predictor0.96
RSIII0.95

2. Prediction of heterocycle rings
Total Fragments28
Positives (With Heterocycles)21
Positives (Without Heterocycles)7
AUC1



BENCHMARKING RESULTS FOR THIOPEPTIDE CROSSLINK PREDICTION



Total Sequences35
Correct Prediction28
Incorrect Prediction07
Accuracy80%