Acyclic Subgraph Based Descriptor Spaces for Chemical Compound Retrieval and Classification

Abstract

In recent years the development of computational techniques that build models to correctly assign chemical compounds to various classes or to retrieve potential drug-like compounds has been an active area of research. These techniques are used extensively at various phases during the drug development process. Many of the best-performing techniques for these tasks utilize a descriptor-based representation of the compound that captures various aspects of the underlying molecular graph's topology. In this paper we introduce and describe algorithms for efficiently generating a new set of descriptors that are derived from all connected acrylic fragments present in the molecular graphs. In addition, we introduce an extension to existing vector-based kernel functions to take into account the length of the fragments present in the descriptors. We experimentally evaluate the performance of the new descriptors in the context of SVM-based classification and ranked-retrieval on 28 classification and retrieval problems derived from 17 datasets. Our experiments show that for both the classification and retrieval tasks, these new descriptors consistently and statistically outperform previously developed schemes based on the widely used fingerprint- and Maccs keys-based descriptors, as well as recently introduced descriptors obtained by mining and analyzing the structure of the molecular graphs.

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Document Details

Document Type
Technical Report
Publication Date
Mar 20, 2006
Accession Number
ADA444816

Entities

People

  • George Karypis
  • Nikil Wale

Organizations

  • University of Minnesota

Tags

DTIC Thesaurus Topics

  • Algorithms
  • Cancer
  • Cell Line
  • Cells
  • Central Nervous System
  • Chemical Compounds
  • Classification
  • Computer Science
  • Computers
  • Databases
  • Fingerprints
  • Information Science
  • Kernel Functions
  • Neoplasms
  • Statistical Tests
  • Supervised Machine Learning
  • Test Sets

Fields of Study

  • Computer science

Readers

  • Computational Linguistics
  • Molecular and Cellular Biochemistry
  • Neural Network Machine Learning.

Technology Areas

  • Space