Login / Signup

Q-raKtion: A Semiautomated KNIME Workflow for Bioactivity Data Points Curation.

Deborah PalazzottiMartina FiorelliStefano SabatiniSerena MassariMaria Letizia BarrecaAndrea Astolfi
Published in: Journal of chemical information and modeling (2022)
The recent increase of bioactivity data freely available to the scientific community and stored as activity data points in chemogenomic repositories provides a huge amount of ready-to-use information to support the development of predictive models. However, the benefits provided by the availability of such a vast amount of accessible information are strongly counteracted by the lack of uniformity and consistency of data from multiple sources, requiring a process of integration and harmonization. While different automated pipelines for processing and assessing chemical data have emerged in the last years, the curation of bioactivity data points is a less investigated topic, with useful concepts provided but no tangible tools available. In this context, the present work represents a first step toward the filling of this gap, by providing a tool to meet the needs of end-user in building proprietary high-quality data sets for further studies. Specifically, we herein describe Q-raKtion, a systematic, semiautomated, flexible, and, above all, customizable KNIME workflow that effectively aggregates information on biological activities of compounds retrieved by two of the most comprehensive and widely used repositories, PubChem and ChEMBL.
Keyphrases
  • electronic health record
  • big data
  • healthcare
  • machine learning
  • drinking water
  • high resolution
  • room temperature
  • artificial intelligence
  • high speed