Abstract

This article describes a method developed for predicting anticancer/non-anticancer drugs using artificial neural network (ANN). The ANN used in this study is a feed-forward neural network with a standard back-propagation training algorithm. Using 30 'inductive' QSAR descriptors alone, we have been able to achieve 84.28% accuracy for correct separation of compounds with- and without anticancer activity. For the complete set of 30 inductive QSAR descriptors, ANN based method reveals a superior model (accuracy = 84.28%, Q(pred) = 74.28%, sensitivity = 0.9285, specificity = 0.7857, Matthews correlation coefficient (MCC) = 0.6998). The method was trained and tested on a non redundant data set of 380 drugs (122 anticancer and 258 non-anticancer). The elaborated QSAR model based on the Artificial Neural Networks approach has been extensively validated and has confidently assigned anticancer character to a number of trial anticancer drugs from the literature.

Highlights

  • A number of natural and synthetic products have been found to exhibit anticancer activity against tumor cell lines [1, 2]

  • This article describes a method developed for predicting anticancer/non-anticancer drugs using artificial neural network (ANN)

  • Using 30 ‘inductive’ Quantitative structure activity relationship (QSAR) descriptors alone, we have been able to achieve 84.28% accuracy for correct separation of compounds withand without anticancer activity

Read more

Summary

Introduction

A number of natural and synthetic products have been found to exhibit anticancer activity against tumor cell lines [1, 2]. Distinguishing compounds with anticancer activity by ANN using inductive QSAR descriptors Abstract: This article describes a method developed for predicting anticancer/non-anticancer drugs using artificial neural network (ANN).

Objectives
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call