4.7 Article

Use of Peptide Microarrays for Fast and Informative Profiling of Therapeutic Antibody Formulation Conditions

期刊

MOLECULAR PHARMACEUTICS
卷 18, 期 11, 页码 4131-4139

出版社

AMER CHEMICAL SOC
DOI: 10.1021/acs.molpharmaceut.1c00543

关键词

biopharmaceutical; formulation; peptide; monoclonal antibody; microarray

资金

  1. BBSRC [BB/L006391/1, BB/M006913/1]
  2. European Union [675074]
  3. BBSRC [BB/L006391/1, BB/M006913/1] Funding Source: UKRI

向作者/读者索取更多资源

The method involves using a synthetic peptide microarray to study the binding behavior of therapeutic proteins under different solution conditions. By analyzing peptide adhesion profiles, quantitative relationships between solution conditions can be established, enabling comparisons of monoclonal antibodies. Machine learning methods, such as neural networks, can be applied to train data on indicators of protein stability and self-association, providing insights into therapeutic protein formulation.
Methods to optimize the solution behavior of therapeutic proteins are frequently time-consuming, provide limited information, and often use milligram quantities of material. Here, we present a simple, versatile method that provides valuable information to guide the identification and comparison of formulation conditions for, in principle, any biopharmaceutical drug. The subject protein is incubated with a designed synthetic peptide microarray; the extent of binding to each peptide is dependent on the solution conditions. The array is washed, and the adhesion of the subject protein is detected using a secondary antibody. We exemplify the method using a well-characterized human single-chain Fv and a selection of human monoclonal antibodies. Correlations of peptide adhesion profiles can be used to establish quantitative relationships between different solution conditions, allowing subgrouping into dendrograms. Multidimensional reduction methods, such as t-distributed stochastic neighbor embedding, can be applied to compare how different monoclonals vary in their adhesion properties under different solution conditions. Finally, we screened peptide binding profiles using a selection of monoclonal antibodies for which a range of biophysical measurements were available under specified buffer conditions. We used a neural network method to train the data against aggregation temperature, kD, percentage recovery after incubation at 25 degrees C, and melting temperature. The results demonstrate that peptide binding profiles can indeed be effectively trained on these indicators of protein stability and self-association in solution. The method opens up multiple possibilities for the application of machine learning methods in therapeutic protein formulation.

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