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Copyright (c) 2023 Wenjuan Li, Dailing Wang, Minhui Jiang, Xiadi Wu, Dashu Chen, Yaling Feng
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
The undersigned hereby assign all rights, included but not limited to copyright, for this manuscript to CMB Association upon its submission for consideration to publication on Cellular and Molecular Biology. The rights assigned include, but are not limited to, the sole and exclusive rights to license, sell, subsequently assign, derive, distribute, display and reproduce this manuscript, in whole or in part, in any format, electronic or otherwise, including those in existence at the time this agreement was signed. The authors hereby warrant that they have not granted or assigned, and shall not grant or assign, the aforementioned rights to any other person, firm, organization, or other entity. All rights are automatically restored to authors if this manuscript is not accepted for publication.Identification and investigation of protein-related molecules in patients with hyperlipidemia using label-free combined with bioinformatics analysis
Corresponding Author(s) : Yaling Feng
Cellular and Molecular Biology,
Vol. 69 No. 13: Issue 13
Abstract
This study aimed to identify proteins associated with high-fat diet patients and investigate their relationship with this dietary pattern. Five hyperlipidemia female patients and five normal individuals were included as the experiment and control groups, respectively. Blood samples were collected from both groups, and bioinformatics tools were employed for gene ontology annotation, KEGG pathway annotation, GO enrichment analysis, pathway enrichment analysis, and protein clustering to pinpoint genes, proteins, and pathways relevant to high-fat diet patients. Mass spectrometry analysis was subsequently used to confirm these proteins. The results indicated that bioinformatics analysis identified several proteins (P09871, P01019, P48740, P02654, P02649) potentially involved in the high-fat diet process by regulating downstream pathways. Label-free analysis revealed 3915 peptides in both groups, with 16 protein expression levels up-regulated in the experiment group, 13 of which showed significant differences. In contrast, 12 protein expression levels were down-regulated in the experiment group, with two showing significant differences. Notably, the proteins highlighted by bioinformatics analysis aligned with those identified through mass spectrometry. In conclusion, label-free analysis combined with bioinformatics can effectively identify proteins linked to high-fat diet patients. This research provides a fresh perspective on addressing high-fat diet-related issues using this approach.
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