Learning from multiple classifier systems: Perspectives for improving decision making of QSAR models in medicinal chemistry
Abstract:
Quantitative Structure - Activity Relationship (QSAR) modeling has been widely used in medicinal chemistry and computational toxicology for many years. Today, as the amount of chemicals is increasing dramatically, QSAR methods have become pivotal for the purpose of handling the data, identifying a decision, and gathering useful information from data processing. The advances in this field have paved a way for numerous alternative approaches that require deep mathematics in order to enhance the learning capability of QSAR models. One of these directions is the use of Multiple Classifier Systems (MCSs) that potentially provide a means to exploit the advantages of manifold learning through decomposition frameworks, while improving generalization and pbkp_redictive performance. In this paper, we presented MCS as a next generation of QSAR modeling techniques and discuss the chance to mining the vast number of models already published in the literature. We systematically revisited the theoretical frameworks of MCS as well as current advances in MCS application for QSAR practice. Furthermore, we illustrated our idea by describing ensemble approaches on modeling histone deacetylase (HDACs) inhibitors. We expect that our analysis would contribute to a better understanding about MCS application and its future perspectives for improving the decision making of QSAR models.
Año de publicación:
2017
Keywords:
- Multiple classifier system
- Histone deacetylase (HDAC) inhibitors
- Ensemble design
- Histone deacetylase
- Quantitative structure –activity relationships (QSAR)
- Artificial Neural Network
Fuente:
Tipo de documento:
Review
Estado:
Acceso restringido
Áreas de conocimiento:
- Relación cuantitativa estructura-actividad
- Ciencias de la computación
- Farmacología
Áreas temáticas:
- Programación informática, programas, datos, seguridad