Rate of Absorption Predictor    

The use of in silico prediction of ADME/Tox properties is gaining acceptance as a useful assessment tool for early identification of likely drug candidate failures. However, until now, it has been difficult to locate reliable models for the prediction of human pharmacokinetics in silico.

This Rate of Absorption model predicts the rate at which a drug is absorbed orally from the gut into the plasma. Quickly absorbed drugs will exhibit a very fast time to maximum concentration in the plasma.

In the Rate of Absorption model, developed by Strand Genomics, several machine-learning methods including neural networks, decision trees and support vector machines were employed to identify a small set from 1054 molecular descriptors that correlated with this pharmacokinetic parameter.

The input to the predictors is the 2-D structure of a molecule, which is used to compute the descriptors that are utilized by the models. Structures may be imported as either SMILES, MOL, SYBYL MOL2, or SD files.

 

Model Characteristics: Training and Cross Validation


Rate of Absorption Training, Cross Validation and Testing Statistics:

 
Classification Accuracy
Regression Accuracy
 
N
Low %
High %
% Accurately Predicted
R-squared
Training
193
89
86
97
0.86
Cross Validation
193
78
76
93
0.78
Testing
30
50
90
63
0.67

 
 
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