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Sarchitect

Modeling and predicting drug-relevant properties of molecules is a critical issue for scientists working in drug discovery research.  Strand’s new generation tool, Sarchitect, is meant for Quantitative Structure Activity  Relationship (QSAR)  studies and modeling of ADME / Tox properties. Sarchitect allows model builders to build best possible models of their data and equally importantly, monitor and improve the models over a period of usage. It allows users of the models to optimize complex multi-dimensional ADME/Tox properties of molecules while retaining their biological activity.

 

The Sarchitect platform empowers computational and medicinal chemists, modelers, DMPK scientists and other users with:

  • QSAR modeling and deployment platform.

  • Powerful algorithms, interactive views, single click model building, intuitive workflows for chemists and customized scripting.

  • Ready to use predictive QSAR models for ADMET end points.

  • Successful drugs, virtually now!

 

 


Sarchitect Benefits and features include
Quick and cost-effective way to prioritize candidates in pipeline
Readily available models
  • ADME
    • Bioavailability

    • Plasma Protein Binding

    • Volume of Distribution

    • Aqueous Solubility

    • Absorption

    • Elimination Half Life

    • Toxicity

  • Toxicity
    • hERG channel binding

    • Mutagenicity

    • Carcinogenicity

Superior model-building capabilities

  • Single click automated model building feature

  • Building of ‘best possible models' by capturing ‘best available' practices

  • Built in robust validation methods for models including Y-scrambling and descriptor sensitivity; single click external test validation

  • Model building algorithms include Decision Trees, Naïve Bayes, Decision Forests, Multilinear Regression PLS, Neural Networks and Support Vector Machines.

  • Easy interface to combine models to create ensembles and nested models.

 

Compound profiling based on multiple properties
Easy evaluation of applicability domains of models
Highly user-friendly and publication-friendly
  • Publication quality images.

  • Extremely  ‘easy-to-use’ features and workflows.

  • Variety of data exploration methods.

  • A comprehensive descriptor list including 2D, 3D and surface area

  • Computation and visualization of similarity, on structural and descriptor spaces

  • Feature selection methods include Genetic algorithm and wrappers based on forward selection and backward elimination

Cross validation in-built into building workflow