| Literature DB >> 35408632 |
Yuxuan Liang1,2, Yu Wang3, Peng Wen1,2, Yongchun Chen1,2, Dongmei Ouyang1,2, Da Wang1,2, Bin Zhang1,2, Jie Deng1,2, Yanhong Chen3, Yuanming Sun1,2,4, Hong Wang1,2,4.
Abstract
Raffino-oligosaccharide (ROS), the smallest oligosaccharide of the raffinose family, is a novel food ingredient. However, the anti-constipation effects of ROS remain obscure. This study investigates the anti-constipation effects of ROS based on the loperamide-induced mice model and reveals the underlying mechanism using constipation parameters, neurotransmitter level, 16S rRNA sequencing, and the targeted screening strategy. The prevention effects were firstly investigated by the gastro-intestinal transit rate experiment (50 mice) and defecation status experiment (50 mice), which were divided into five groups (n = 10/group): blank, model, and low-, medium- and high-dose ROS. Furthermore, the slow-transit constipation experiment (blank, model, and high-dose ROS, n = 10/group) was conducted to illustrate the underlying mechanism. The results showed that ROS aided in preventing the occurrence of constipation by improving the gastro-intestinal transit rate and the defecation frequency in mice, and ROS significantly reduced the serum levels of vasoactive intestinal peptide (VIP). In addition, ROS regulated the diversity and structure of intestinal flora. Among them, one specific family and six specific genera were significantly regulated in constipated mice. The targeted screening revealed that 29 targets related to the anti-constipation effects of ROS, indicating ROS may play a role by regulating multiple targets. Furthermore, the network pharmacology analysis showed that Akt1, Stat3, Mapk8, Hsp90aa1, Cat, Alb, Icam1, Sod2, and Gsk3b can be regarded as the core anti-constipation targets. In conclusion, ROS could effectively relieve constipation, possibly by inhibiting the level of neurotransmitters and regulating the gut flora in mice. This study also provides a novel network pharmacology-based targeted screening strategy to reveal the anti-constipation effects of ROS.Entities:
Keywords: constipation; gut microbiota; molecular docking; network pharmacology; raffino-oligosaccharide; targeted screening
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Substances:
Year: 2022 PMID: 35408632 PMCID: PMC9000249 DOI: 10.3390/molecules27072235
Source DB: PubMed Journal: Molecules ISSN: 1420-3049 Impact factor: 4.411
Figure 1Gastro-intestinal transit rate (a) and defecation status: the weight (c) and number (b) of defecation events in six hours and the time to the first black stool defecation (d) of mice. Blank: distilled water treated; Model: Loperamide treated; ROS-L: low-dose ROS treated; ROS-M: medium-dose ROS treated; ROS-H: high-dose ROS treated. * p < 0.01 than in the blank group; ** p < 0.01 than in the blank group; # p < 0.05 and ## p < 0.01 than in the model group.
Figure 2Effects of ROS on serum level of acetylcholine (a), vasoactive intestinal peptide (b), substance P (c), and nitric oxide (d) in mice. Blank: distilled water treated; Model: Loperamide treated; ROS-L: low-dose ROS treated; ROS-M: medium-dose ROS treated; ROS-H: high-dose ROS treated. * p < 0.01 than in the blank group; # p < 0.05 and ## p < 0.01 than in the model group.
Figure 3Alpha diversity indices (a–c); blank-distilled water treated; model—Loperamide treated; ROS-H: high-dose ROS treated. Beta diversity index (d); ROS1-6: high-dose ROS treated. ** p < 0.01 than in the blank group; # p < 0.05 and ## p < 0.01 than in the model group.
Figure 4Alteration in the level of family (a) and alteration in the level of genus (b). Blank: distilled water treated; Model: Loperamide treated; ROS: high-dose ROS treated. * p < 0.05 and ** p < 0.01 than in the blank group; # p < 0.05 and ## p < 0.01 than in the model group.
Figure 5(a) Intersection of ROS candidate targets and constipation targets, and (b) PPI network visualization of overlapped targets, and the size of nodes represents the value of the degree.
PPI network topology analysis and corresponding binding energy.
| Targets | Degree | Affinity (kcal/mol) |
|---|---|---|
| Akt1 | 10 | −8.4 |
| Stat3 | 7 | −6.7 |
| Mapk8 | 7 | −7.5 |
| Hsp90aa1 | 6 | −6.4 |
| Cat | 5 | −5.9 |
| Alb | 5 | −6.6 |
| Icam1 | 5 | −5.5 |
| Sod2 | 4 | −5.5 |
| Gsk3b | 2 | −6.6 |
Figure 6GO terms and KEGG pathways enrichment analysis of the overlapped targets. (a) Gene Ontology (GO) terms for biological processes (BP), cellular components (CC), and molecular function (MF), (b) KEGG pathways.
Figure 7ROS-Target-Pathway network. Orange hexagons represent pathways, the green square represents ROS and purple rounds represent targets.
Figure 8Binding pattern of ROS to Akt1 (A), Mapk8 (B), Stat3 (C), Alb (D), Hsp90aa1 (E), Cat (F), Icam1 (G), Sod2 (H), and Gsk3b (I).