| Literature DB >> 33952720 |
Yueyue Zhou1, Weiwei Song1,2, Chunlin Wang1,2, Changkao Mu1,2, Ronghua Li1,2.
Abstract
Sepiella maindroni ink, a flavoring and coloring agent in food, has attracted considerable attention due to its various pharmacological activities. Our previous study showed that the melanin of Sepiella maindroni ink (MSMI) can alleviate oxidative damage and delay aging in D-galactose(D-gal)-induced aging mice. This study aimed to reveal the possible mechanisms of the anti-aging effect of MSMI. In this article, a comprehensive analysis of gas chromatography-mass spectrometry (GC-MS)-based metabolomics and microarray-based transcriptomics revealed that 221 mRNAs were differentially expressed and 46 metabolites were significantly changed in the anti-aging progress of MSMI. Integrated analysis of transcript and metabolic profiles indicated that MSMI mainly altered carbohydrate metabolism, lipid metabolism, and insulin signaling pathway. MSMI achieved anti-aging effects not only by reducing oxidative damage and sorbitol toxicity but also by regulating lipid metabolism, improving insulin sensitivity, and reducing the formation of advanced glycation end products (AGEs). Moreover, our findings firstly demonstrated that MSMI could increase the expression of interferon-induced proteins and might be a potential antiviral compound.Entities:
Keywords: Sepiella maindroni; antiaging; cDNA microarray; melanin; metabolomics
Mesh:
Substances:
Year: 2021 PMID: 33952720 PMCID: PMC8109126 DOI: 10.18632/aging.202890
Source DB: PubMed Journal: Aging (Albany NY) ISSN: 1945-4589 Impact factor: 5.682
Figure 1Whole-genome microarray analysis of MT and DM groups. (A) Volcano plot analysis of mRNA expression variation between MD and MT groups. (B) KEGG pathway analysis was used to identify key pathways and biological functions. (C) Gene Ontology (GO) analysis of differentially expressed genes (DEGs). DEGs are classified into three major domains: biological process (BP), cellular component (CC) and molecular function (MF).
Figure 2Multivariate statistical analysis of liver GC/MS data. (A) PCA score plot among control, DM and MT groups. (B) PLS-DA score plot comparing DM and MT groups. (C) The result of permutation test, R2 (green circle), Q2 (blue square). (D) PLS-DA score plot comparing DM and MT groups.
Figure 3Carbohydrate metabolism alterations. Upregulated and downregulated genes in MT group compared with DM group are depicted as red box and green box espectively. Metabolites up- and downregulated are shown by yellow and blue circles, respectively.
Figure 4Lipid metabolism alterations. Upregulated and downregulated genes in MT group compared with DM group are depicted as red box and green box respectively. Metabolites up- and downregulated are shown by yellow and blue circles, respectively.
Figure 5Changes in the insulin signaling pathway. Ellipses indicate those proteins involved in the insulin signaling pathway (red, upregulated proteins in MT group; green, downregulated proteins in MT group).