Literature DB >> 22101402

DemQSAR: predicting human volume of distribution and clearance of drugs.

Ozgur Demir-Kavuk1, Jörg Bentzien, Ingo Muegge, Ernst-Walter Knapp.   

Abstract

In silico methods characterizing molecular compounds with respect to pharmacologically relevant properties can accelerate the identification of new drugs and reduce their development costs. Quantitative structure-activity/-property relationship (QSAR/QSPR) correlate structure and physico-chemical properties of molecular compounds with a specific functional activity/property under study. Typically a large number of molecular features are generated for the compounds. In many cases the number of generated features exceeds the number of molecular compounds with known property values that are available for learning. Machine learning methods tend to overfit the training data in such situations, i.e. the method adjusts to very specific features of the training data, which are not characteristic for the considered property. This problem can be alleviated by diminishing the influence of unimportant, redundant or even misleading features. A better strategy is to eliminate such features completely. Ideally, a molecular property can be described by a small number of features that are chemically interpretable. The purpose of the present contribution is to provide a predictive modeling approach, which combines feature generation, feature selection, model building and control of overtraining into a single application called DemQSAR. DemQSAR is used to predict human volume of distribution (VD(ss)) and human clearance (CL). To control overtraining, quadratic and linear regularization terms were employed. A recursive feature selection approach is used to reduce the number of descriptors. The prediction performance is as good as the best predictions reported in the recent literature. The example presented here demonstrates that DemQSAR can generate a model that uses very few features while maintaining high predictive power. A standalone DemQSAR Java application for model building of any user defined property as well as a web interface for the prediction of human VD(ss) and CL is available on the webpage of DemPRED: http://agknapp.chemie.fu-berlin.de/dempred/ .

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Year:  2011        PMID: 22101402     DOI: 10.1007/s10822-011-9496-z

Source DB:  PubMed          Journal:  J Comput Aided Mol Des        ISSN: 0920-654X            Impact factor:   3.686


  30 in total

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3.  TMACC: interpretable correlation descriptors for quantitative structure-activity relationships.

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Review 5.  In silico prediction of drug properties.

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Review 6.  How not to develop a quantitative structure-activity or structure-property relationship (QSAR/QSPR).

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7.  In silico prediction of volume of distribution in human using linear and nonlinear models on a 669 compound data set.

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Journal:  J Med Chem       Date:  2009-07-23       Impact factor: 7.446

Review 8.  Best Practices for QSAR Model Development, Validation, and Exploitation.

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9.  Predicting total clearance in humans from chemical structure.

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Journal:  J Chem Inf Model       Date:  2010-07-26       Impact factor: 4.956

10.  Classification of gene microarrays by penalized logistic regression.

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6.  How to Choose In Vitro Systems to Predict In Vivo Drug Clearance: A System Pharmacology Perspective.

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Review 7.  Therapeutic value of steroidal alkaloids in cancer: Current trends and future perspectives.

Authors:  Prasanta Dey; Amit Kundu; Hirak Jyoti Chakraborty; Babli Kar; Wahn Soo Choi; Byung Mu Lee; Tejendra Bhakta; Atanas G Atanasov; Hyung Sik Kim
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