MS Identification of Blood Plasma Proteins Concentrated on a Photocrosslinker-Modified Surface

Author:

Gordeeva Arina I.1,Valueva Anastasia A.1,Rybakova Elizaveta E.1,Ershova Maria O.1,Shumov Ivan D.1ORCID,Kozlov Andrey F.1,Ziborov Vadim S.1ORCID,Kozlova Anna S.1ORCID,Zgoda Victor G.1ORCID,Ivanov Yuri D.1ORCID,Ilgisonis Ekaterina V.1,Kiseleva Olga I.1ORCID,Ponomarenko Elena A.1,Lisitsa Andrey V.1,Archakov Alexander I.1,Pleshakova Tatyana O.1ORCID

Affiliation:

1. Institute of Biomedical Chemistry (IBMC), 119121 Moscow, Russia

Abstract

This work demonstrates the use of a modified mica to concentrate proteins, which is required for proteomic profiling of blood plasma by mass spectrometry (MS). The surface of mica substrates, which are routinely used in atomic force microscopy (AFM), was modified with a photocrosslinker to allow “irreversible” binding of proteins via covalent bond formation. This modified substrate was called the AFM chip. This study aimed to determine the role of the surface and crosslinker in the efficient concentration of various types of proteins in plasma over a wide concentration range. The substrate surface was modified with a 4-benzoylbenzoic acid N-succinimidyl ester (SuccBB) photocrosslinker, activated by UV irradiation. AFM chips were incubated with plasma samples from a healthy volunteer at various dilution ratios (102X, 104X, and 106X). Control experiments were performed without UV irradiation to evaluate the contribution of physical protein adsorption to the concentration efficiency. AFM imaging confirmed the presence of protein layers on the chip surface after incubation with the samples. MS analysis of different samples indicated that the proteomic profile of the AFM-visualized layers contained common and unique proteins. In the working series of experiments, 228 proteins were identified on the chip surface for all samples, and 21 proteins were not identified in the control series. In the control series, a total of 220 proteins were identified on the chip surface, seven of which were not found in the working series. In plasma samples at various dilution ratios, a total of 146 proteins were identified without the concentration step, while 17 proteins were not detected in the series using AFM chips. The introduction of a concentration step using AFM chips allowed us to identify more proteins than in plasma samples without this step. We found that AFM chips with a modified surface facilitate the efficient concentration of proteins owing to the adsorption factor and the formation of covalent bonds between the proteins and the chip surface. The results of our study can be applied in the development of highly sensitive analytical systems for determining the complete composition of the plasma proteome.

Funder

Ministry of Education and Science of the Russian Federation

Publisher

MDPI AG

Subject

Inorganic Chemistry,Organic Chemistry,Physical and Theoretical Chemistry,Computer Science Applications,Spectroscopy,Molecular Biology,General Medicine,Catalysis

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