Computational insight into the chemical space of plant growth regulators

Phytochemistry. 2016 Feb:122:254-264. doi: 10.1016/j.phytochem.2015.12.006. Epub 2015 Dec 23.

Abstract

An enormous technological progress has resulted in an explosive growth in the amount of biological and chemical data that is typically multivariate and tangled in structure. Therefore, several computational approaches have mainly focused on dimensionality reduction and convenient representation of high-dimensional datasets to elucidate the relationships between the observed activity (or effect) and calculated parameters commonly expressed in terms of molecular descriptors. We have collected the experimental data available in patent and scientific publications as well as specific databases for various agrochemicals. The resulting dataset was then thoroughly analyzed using Kohonen-based self-organizing technique. The overall aim of the presented study is to investigate whether the developed in silico model can be applied to predict the agrochemical activity of small molecule compounds and, at the same time, to offer further insights into the distinctive features of different agrochemical categories. The preliminary external validation with several plant growth regulators demonstrated a relatively high prediction power (67%) of the constructed model. This study is, actually, the first example of a large-scale modeling in the field of agrochemistry.

Keywords: Agrochemicals; Arabidopsis thaliana; Brassicaceae; In silico modeling; In vivo screening; Kohonen; Pesticides; Plant growth regulators; Self-organizing maps.

MeSH terms

  • Agrochemicals / chemistry
  • Arabidopsis / chemistry*
  • Databases, Factual
  • Herbicides / chemistry
  • Molecular Structure
  • Pesticides / chemistry
  • Phytoestrogens / chemistry
  • Plant Growth Regulators*

Substances

  • Agrochemicals
  • Herbicides
  • Pesticides
  • Phytoestrogens
  • Plant Growth Regulators