>
Fa   |   Ar   |   En
   An activity prediction model using shape-based descriptor method  
   
نویسنده hamza h. ,salim n. ,saeed f.
منبع jurnal teknologi - 2016 - دوره : 78 - شماره : 6-12 - صفحه:135 -142
چکیده    Similarity searching,the activity of an unknown compound (target) is predicted through the comparison of an unknown compound with a set of known activities of compounds. the known activities of the most similar compounds are assigned to the unknown compound. different machine learning methods and multilevel neighborhoods of atoms (mna) structure descriptors have been applied for the activities prediction. in this paper,we introduced a new activity prediction model with shape-based descriptor method (sbdm). experimental results show that sbdm-mna provides a useful method of using the prior knowledge of target class information (active and inactive compounds) of predicting the activity of orphan compounds. to validate our method,we have applied the sbdm-mna to different established data sets from literature and compare its performance with the classical mna descriptor for activity prediction. © 2016 penerbit utm press. all rights reserved.
کلیدواژه Activity prediction model; Bioactive molecules; Multilevel neighborhoods of atoms; Shape-based descriptors
آدرس faculty of computing,universiti teknologi malaysia,utm,johor bahru,johor, Malaysia, faculty of computing,universiti teknologi malaysia,utm,johor bahru,johor, Malaysia, faculty of computing,universiti teknologi malaysia,utm,johor bahru,johor, Malaysia
 
     
   
Authors
  
 
 

Copyright 2023
Islamic World Science Citation Center
All Rights Reserved