Title of article :
Constructing plasma protein binding model based on a combination of cluster analysis and 4D-fingerprint molecular similarity analyses Original Research Article
Author/Authors :
Jianzhong Liu، نويسنده , , Liu Yang، نويسنده , , Yi Li، نويسنده , , Dahua Pan، نويسنده , , Anton J. Hopfinger، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
Based on 2D-connectivity molecular similarity and cluster analyses, a dataset for HSA binding is divided into the training set and the test set. 4D-fingerprint similarity measures were applied to this dataset. Four different predictive schemes (SM, SA, SR, and SC) were applied to the test set based on the similarity measures of each compound to the compounds in the training set. The first algorithmic scheme (SM), which only takes the most similar compound in the training set into consideration, predicts the binding affinity of a test compound. This scheme has relatively poor predictivity based on 4D-fingerprint similarity analyses. The other three algorithmic schemes (SM, SR, and SC), which assign a weighting coefficient to each of the top-ten most similar training set compounds, have reasonable predictivity of a test set. The algorithmic scheme which categorizes the most similar compounds into different weighted clusters predicts the test set best. The 4D-fingerprints provide 36 different individual IPE/IPE type molecular similarity measures. Further investigation shows that the NP/HA, HS/HA, and HA/HA IPE/IPE type measures predict the test set well. Moreover, these three IPE/IPE type similarity measures are very similar to one another for the particular training and test sets investigated. The 4D-fingerprints have relatively high predictivity for this particular dataset.
Keywords :
4D-fingerprint similarity , HSA , Molecular similarity , cluster analysis
Journal title :
Bioorganic and Medicinal Chemistry
Journal title :
Bioorganic and Medicinal Chemistry