Vecura
料金
お問い合わせ
Vecura

プロダクト

  • 料金

会社情報

  • お問い合わせ

リソース

  • ブログ
  • コミュニティ

法務

  • プライバシーポリシー
  • 利用規約
  • トラストセンター

© 2026 NYB AI. All rights reserved.

すべてのシステムが正常に稼働中
Vecura
料金
お問い合わせ
ブログに戻る

Accelerating Protein Stability Analysis with PROPKA 3 on Vecura

This update empowers biochemists and pharmaceutical researchers to perform rapid, structure-based pKa and pH-dependent stability predictions through a streamlined workflow on Vecura, eliminating the need for complex local software installation.

May 12, 2026PROPKA 3
PROPKA 3
PROPKA 3 is now available on Vecura
vecura.com

What is PROPKA 3?

PROPKA 3 is a fast, empirical, and parameter-based computational tool designed to predict pKa values for ionizable side chains in proteins and protein-ligand complexes. By analyzing a 3D PDB structure, it calculates how these groups respond to changes in pH by modeling electrostatic interactions such as hydrogen bonding, desolvation, and charge-charge effects. It is a widely trusted, de-facto standard in structure-based drug design and molecular dynamics preparation workflows.

It helps users understand protonation states and pH-dependent stability without needing computationally expensive quantum mechanical simulations. It is especially useful for biochemists and pharmaceutical scientists determining enzyme mechanisms, protein-protein binding affinities, and the optimal formulation pH for biopharmaceuticals.

What can users do with PROPKA 3 on Vecura?

With PROPKA 3 on Vecura, users can:

  • Predict per-residue pKa values for proteins and protein-ligand complexes directly from PDB files.
  • Calculate the folding free-energy profile over a custom pH range to identify the pH of maximum thermostability.
  • Generate net charge profiles to visualize how protein charge changes across different pH environments.
  • Streamline molecular dynamics preparation by obtaining ready-to-use protonation state data.

What the output means

The output provides a comprehensive report including a pka_table, folding and charge profiles, and key metrics such as the pH of maximum thermostability (pH_optimum) and the corresponding free energy of folding.

This output should be used to support scientific decision making. It does not replace experimental validation.

Why this matters

Understanding the ionization state of amino acid residues is critical for deciphering the function of proteins, as shifts in pH can dramatically alter enzyme activity, protein-ligand binding, and overall structural stability. PROPKA 3 provides an efficient way to bridge the gap between static structural data and dynamic physiological behavior.

By enabling rapid analysis of pH-dependent properties, researchers can more accurately design therapeutics and interpret experimental biochemical data. The integration of this tool into a managed platform like Vecura democratizes access to these critical biophysical insights, allowing scientists to focus on drug discovery and protein engineering rather than managing complex command-line environments.

  • Developed by: The Jensen Research Group
  • Source: Official GitHub Repository
  • Reference: Olsson et al., 2011 (J. Chem. Theory Comput.)

Vecura で PROPKA 3 を試す。

モデルワークスペースを開き、ご自身の入力で評価を始めましょう。

モデルを試す

トピック

pKa predictionprotein structurebiophysicspHdrug designmolecular dynamics preparationCPU-only

On this page

What is PROPKA 3?What can users do with PROPKA 3 on Vecura?What the output meansWhy this matters
Vecura

プロダクト

  • 料金

会社情報

  • お問い合わせ

リソース

  • ブログ
  • コミュニティ

法務

  • プライバシーポリシー
  • 利用規約
  • トラストセンター

© 2026 NYB AI. All rights reserved.

すべてのシステムが正常に稼働中