Interlaboratory Evaluation of a User-Friendly Benchtop Mass Spectrometer for Multiple-Attribute Monitoring Studies of a Monoclonal Antibody.
Claire I ButréValentina D'AtriHélène DiemerOlivier ColasElsa WagnerAlain BeckSarah CianféraniDavy GuillarmeArnaud DelobelPublished in: Molecules (Basel, Switzerland) (2023)
In the quest to market increasingly safer and more potent biotherapeutic proteins, the concept of the multi-attribute method (MAM) has emerged from biopharmaceutical companies to boost the quality-by-design process development. MAM strategies rely on state-of-the-art analytical workflows based on liquid chromatography coupled to mass spectrometry (LC-MS) to identify and quantify a selected series of critical quality attributes (CQA) in a single assay. Here, we aimed at evaluating the repeatability and robustness of a benchtop LC-MS platform along with bioinformatics data treatment pipelines for peptide mapping-based MAM studies using standardized LC-MS methods, with the objective to benchmark MAM methods across laboratories, taking nivolumab as a case study. Our results evidence strong interlaboratory consistency across LC-MS platforms for all CQAs (i.e., deamidation, oxidation, lysine clipping and glycosylation). In addition, our work uniquely highlights the crucial role of bioinformatics postprocessing in MAM studies, especially for low-abundant species quantification. Altogether, we believe that MAM has fostered the development of routine, robust, easy-to-use LC-MS platforms for high-throughput determination of major CQAs in a regulated environment.
Keyphrases
- high throughput
- liquid chromatography
- mass spectrometry
- monoclonal antibody
- high resolution
- case control
- high resolution mass spectrometry
- tandem mass spectrometry
- hydrogen peroxide
- solid phase extraction
- single cell
- quality improvement
- simultaneous determination
- combination therapy
- big data
- molecularly imprinted
- electronic health record
- high performance liquid chromatography
- capillary electrophoresis
- clinical practice
- deep learning