Author:
Jacobitz Alex W.,Rodezno Wilfredo,Agrawal Neeraj J.
Abstract
AbstractThere is considerable pressure in the pharmaceutical industry to advance better molecules faster. One pervasive concern for protein-based therapeutics is the presence of potential chemical liabilities. We have developed a simple methodology for rapidly de-risking specific chemical concerns in antibody-based molecules using prior knowledge of each individual liability at a specific position in the molecule’s sequence. Our methodology hinges on the development of sequence-aligned chemical liability databases of molecules from different stages of commercialization and on sequence-aligned experimental data from prior molecules that have been developed at Amgen. This approach goes beyond the standard practice of simply flagging all instances of each motif that fall in a CDR. Instead, we de-risk motifs that are common at a specific site in commercial mAb-based molecules (and therefore did not previously pose an insurmountable barrier to commercialization) and motifs at specific sites for which we have prior experimental data indicating acceptably low levels of modification. We have used this approach successfully to identify candidates in a discovery phase program with exclusively very low risk potential chemical liabilities. Identifying these candidates in the discovery phase allowed us to bypass protein engineering and accelerate the program’s timeline by 6 months.
Publisher
Springer Science and Business Media LLC
Reference31 articles.
1. Agrawal NJ, Dykstra A, Yang J, Yue H, Nguyen X, Kolvenbach C et al (2018) Prediction of the hydrogen peroxide–induced methionine oxidation propensity in monoclonal antibodies. J Pharm Sci 107(5):1282–1289
2. Agrawal NJ, Helk B, Kumar S, Mody N, Sathish HA, Samra HS et al (2016) Computational tool for the early screening of monoclonal antibodies for their viscosities. MAbs 8(1):43–48 Available from: https://pubmed.ncbi.nlm.nih.gov/26399600/. Cited 2021 Jul 20
3. Al-Lazikani B, Lesk AM, Chothia C (1997) Standard conformations for the canonical structures of immunoglobulins. J Mol Biol 273(4):927–948 Available from: https://pubmed.ncbi.nlm.nih.gov/9367782/. Cited 2021 Jul 22
4. Annemarie H, Andreas P (2001) Yet another numbering scheme for immunoglobulin variable domains: an automatic modeling and analysis tool. J Mol Biol 8:657–670 Available from: https://pubmed.ncbi.nlm.nih.gov/11397087/
5. Bagchi A, Haidar JN, Eastman SW, Vieth M, Topper M, Iacolina MD et al (2018) Molecular basis for necitumumab inhibition of EGFR variants associated with acquired cetuximab resistance. Mol Cancer Ther 17(2):521–531 Available from: https://mct.aacrjournals.org/content/17/2/521. Cited 2021 Sep 2
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