4.5 Article

Enhancing the multi-attribute method through an automated and high-throughput sample preparation

Journal

MABS
Volume 13, Issue 1, Pages -

Publisher

TAYLOR & FRANCIS INC
DOI: 10.1080/19420862.2021.1978131

Keywords

Multi-attribute method (MAM); product quality attributes; sample preparation automation; high throughput

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The multi-attribute method (MAM) is a recent advancement in liquid chromatography-mass spectrometry for simultaneous monitoring of multiple product quality attributes in the pharmaceutical industry. While MAM offers automated data processing and reporting, its sample preparation remains cumbersome and low throughput.
The multi-attribute method (MAM), a recent advance in the application of liquid chromatography-mass spectrometry within the pharmaceutical industry, enables the simultaneous monitoring of multiple product quality attributes in a single analytical method. While MAM is coupled with automated data processing and reporting, the sample preparation, based on proteolytic peptide mapping, remains cumbersome and low throughput. The standard sample preparation for MAM relies on protein denaturation, reduction, and alkylation prior to proteolytic digestion, but often a desalting step is required to maintain enzymatic activity. While most of the sample preparation can be automated on a standard robotic liquid handling system, a streamlined approach for protein desalting and temperature modulation is required for a viable, fully automated digestion. In this work, for the first time, a complete tip-based MAM sample preparation is automated on a single robotic liquid handling system, leveraging a deck layout that integrates both heating and cooling functionalities. The fully automated method documented herein achieves a high-throughput sample preparation for MAM, while maintaining superior method performance.

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