Issue 2, 2024

Complementarity of two proteomic data analysis tools in the identification of drug-metabolising enzymes and transporters in human liver

Abstract

Several software packages are available for the analysis of proteomic LC-MS/MS data, including commercial (e.g. Mascot/Progenesis LC-MS) and open access software (e.g. MaxQuant). In this study, Progenesis and MaxQuant were used to analyse the same data set from human liver microsomes (n = 23). Comparison focussed on the total number of peptides and proteins identified by the two packages. For the peptides exclusively identified by each software package, distribution of peptide length, hydrophobicity, molecular weight, isoelectric point and score were compared. Using standard cut-off peptide scores, we found an average of only 65% overlap in detected peptides, with surprisingly little consistency in the characteristics of peptides exclusively detected by each package. Generally, MaxQuant detected more peptides than Progenesis, and the additional peptides were longer and had relatively lower scores. Progenesis-specific peptides tended to be more hydrophilic and basic relative to peptides detected only by MaxQuant. At the protein level, we focussed on drug-metabolising enzymes (DMEs) and transporters, by comparing the number of unique peptides detected by the two packages for these specific proteins of interest, and their abundance. The abundance of DMEs and SLC transporters showed good correlation between the two software tools, but ABC showed less consistency. In conclusion, in order to maximise the use of MS datasets, we recommend processing with more than one software package. Together, Progenesis and MaxQuant provided excellent coverage, with a core of common peptides identified in a very robust way.

Graphical abstract: Complementarity of two proteomic data analysis tools in the identification of drug-metabolising enzymes and transporters in human liver

Supplementary files

Article information

Article type
Research Article
Submitted
22 Jul 2023
Accepted
31 Oct 2023
First published
13 Nov 2023
This article is Open Access
Creative Commons BY license

Mol. Omics, 2024,20, 115-127

Complementarity of two proteomic data analysis tools in the identification of drug-metabolising enzymes and transporters in human liver

A. Vasilogianni, S. Alrubia, E. El-Khateeb, Z. M. Al-Majdoub, N. Couto, B. Achour, A. Rostami-Hodjegan and J. Barber, Mol. Omics, 2024, 20, 115 DOI: 10.1039/D3MO00144J

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