Machine Learning Applied to Determine the Molecular Descriptors Responsible for the Viscosity Behavior of Concentrated Therapeutic Antibodies

Pin Kuang Lai, Amendra Fernando, Theresa K. Cloutier, Yatin Gokarn, Jifeng Zhang, Walter Schwenger, Ravi Chari, Cesar Calero-Rubio, Bernhardt L. Trout

Research output: Contribution to journalArticlepeer-review

47 Scopus citations

Abstract

Predicting the solution viscosity of monoclonal antibody (mAb) drug products remains as one of the main challenges in antibody drug design, manufacturing, and delivery. In this work, the concentration-dependent solution viscosity of 27 FDA-approved mAbs was measured at pH 6.0 in 10 mM histidine-HCl. Six mAbs exhibited high viscosity (>30 cP) in solutions at 150 mg/mL mAb concentration. Combining molecular modeling and machine learning feature selection, we found that the net charge in the mAbs and the amino acid composition in the Fv region are key features which govern the viscosity behavior. For mAbs whose behavior was not dominated by charge effects, we observed that high viscosity is correlated with more hydrophilic and fewer hydrophobic residues in the Fv region. A predictive model based on the net charges of mAbs and a high viscosity index is presented as a fast screening tool for classifying low- and high-viscosity mAbs.

Original languageEnglish
Pages (from-to)1167-1175
Number of pages9
JournalMolecular Pharmaceutics
Volume18
Issue number3
DOIs
StatePublished - 1 Mar 2021

Keywords

  • intermolecular interactions
  • machine learning
  • molecular modeling
  • therapeutic antibodies
  • viscosity

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