Optimized protocol for shotgun label-free proteomic analysis of pancreatic islets

Author:

SanchesTrevizol Juliana1,Dionizio Aline1,Delgado Aislan Quintiliano2,Ventura Talita Mendes Oliveira1,da Silva Ribeiro Caroline Fernanda1,Rabelo Buzalaf Nathalia1,Bosqueiro José Roberto3,Buzalaf Marília Afonso Rabelo1ORCID

Affiliation:

1. Department of Biological Sciences, Bauru School of Dentistry, University of São Paulo , Bauru, Brazil

2. Institute of Biosciences, São Paulo State University , Botucatu, São Paulo, Brazil

3. Department of Physical Education, Faculty of Science, São Paulo State University , Bauru, São Paulo, Brazil

Abstract

Abstract Pancreatic islets are crucial in diabetes research. Consequently, this protocol aims at optimizing both the protein-extraction process and the proteomic analysis via shotgun methods for pancreatic islets. Six protocols were tested, combining three types of chemical extraction with two mechanical extraction methods. Furthermore, two protocols incorporated a surfactant to enhance enzymatic cleavage. The steps involved extraction and concentration of protein, protein quantification, reduction, alkylation, digestion, purification and desalination, sample concentration to ∼1 µl, and proteomic analysis using the mass spectrometer. The most effective protocol involves either a milder chemical extraction paired with a more intensive mechanical process, or a more robust chemical extraction paired with a gentle mechanical process, tailored to the sample’s characteristics. Additionally, it was observed that the use of a surfactant proved ineffective for these types of samples. Protocol 5 was recently used with success to examine metabolic changes in pancreatic islets of non-obese diabetic mice exposed to low doses of fluoride ions (F−) and the primary pathways altered by the treatment.

Funder

São Paulo State Support Foundation

Publisher

Oxford University Press (OUP)

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