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   from experiments to a fast easy-to-use computational methodology to predict human aldehyde oxidase selectivity and metabolic reactions  
   
نویسنده cruciani g. ,milani n. ,benedetti p. ,lepri s. ,cesarini l. ,baroni m. ,spyrakis f. ,tortorella s. ,mosconi e. ,goracci l.
منبع journal of medicinal chemistry - 2018 - دوره : 61 - شماره : 1 - صفحه:360 -371
چکیده    Aldehyde oxidase (aox) is a molibdo-flavoenzyme that has raised great interest in recent years, since its contribution in xenobiotic metabolism has not always been identified before clinical trials, with consequent negative effects on the fate of new potential drugs. the fundamental role of aox in metabolizing xenobiotics is also due to the attempt of medicinal chemists to stabilize candidates toward cytochrome p450 activity, which increases the risk for new compounds to be susceptible to aox nucleophile attack. therefore, novel strategies to predict the potential liability of new entities toward the aox enzyme are urgently needed to increase effectiveness, reduce costs, and prioritize experimental studies. in the present work, we present the most up-to-date computational method to predict liability toward human aox (haox), for applications in drug design and pharmacokinetic optimization. the method was developed using a large data set of homogeneous experimental data, which is also disclosed as supporting information.
آدرس university of perugia, department of chemistry, biology and biotechnology, italy. consortium for computational molecular and materials sciences (cms), italy, university of perugia, department of chemistry, biology and biotechnology, italy, university of perugia, department of chemistry, biology and biotechnology, italy. consortium for computational molecular and materials sciences (cms), italy, university of perugia, department of chemistry, biology and biotechnology, italy, university of perugia, department of chemistry, biology and biotechnology, italy, university of turin, department of drug science and technology, italy, institute of molecular science and technologies, computational laboratory for hybrid/organic photovoltaics, italy, university of perugia, department of chemistry, italy. consortium for computational molecular and materials sciences (cms), italy
 
     
   
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