| Literature DB >> 33346034 |
Pin-Kuang Lai1, Amendra Fernando1, Theresa K Cloutier1, Jonathan S Kingsbury2, Yatin Gokarn2, Kevin T Halloran2, Cesar Calero-Rubio2, Bernhardt L Trout3.
Abstract
Protein aggregation can hinder the development, safety and efficacy of therapeutic antibody-based drugs. Developing a predictive model that evaluates aggregation behaviors during early stage development is therefore desirable. Machine learning is a widely used tool to train models that predict data with different attributes. However, most machine learning techniques require more data than is typically available in antibody development. In this work, we describe a rational feature selection framework to develop accurate models with a small number of features. We applied this framework to predict aggregation behaviors of 21 approved monospecific monoclonal antibodies at high concentration (150 mg/mL), yielding a correlation coefficient of 0.71 on validation tests with only two features using a linear model. The nearest neighbors and support vector regression models further improved the performance, which have correlation coefficients of 0.86 and 0.80, respectively. This framework can be extended to train other models that predict different physical properties.Keywords: Antibody aggregations; Feature selections; Machine learning; Molecular dynamics simulations
Year: 2020 PMID: 33346034 DOI: 10.1016/j.xphs.2020.12.014
Source DB: PubMed Journal: J Pharm Sci ISSN: 0022-3549 Impact factor: 3.534