Alliaceae Versus Brassicaceae for Dyslipidemia: State of the Art and Future Perspectives. Systematic Review and Meta-Analysis of Clinical Studies.
Phytotherapy research PTR(2024)
摘要
Dyslipidemia is a risk factor for cardiovascular diseases. Preclinical studies have shown that organosulfur compounds from the Alliaceae and Brassicaceae plants, such as garlic (Allium sativum L.) and broccoli (Brassica oleracea L.), have potential lipid-lowering effects. However, their clinical efficacy is controversial, especially in "drug-free" patients. The aim of this work was to summarize evidence on the lipid-lowering properties of extracts containing organosulfur compounds in patients with dyslipidemia. Studies were searched in four databases (Medline, Scopus, Embase, and CENTRAL), from inception to October 11, 2023.Controlled clinical studies on patients with dyslipidemia receiving Alliaceae or Brassicaceae were included. The outcome was the change in lipid parameters from baseline. Random-effect meta-analysis of the extracted data was performed using R software. The effect size was expressed as mean difference (MD) and 95% confidence interval (CI). The certainty of evidence was assessed with the GRADE approach. Out of 28 studies that were reviewed, 22 were included in the meta-analysis (publication period: 1981-2022). Results showed that Alliaceae extracts significantly reduce total cholesterol [MD: -15.2 mg/dL; 95% CI: -21.3; -9.1] and low-density lipoprotein cholesterol levels [MD: -12.0 mg/dL; 95% CI: -18.1; -5.7], although with low certainty of evidence. Conversely, the lipid-lowering properties of Brassicaceae extracts are still unexplored. Our results support the use of Alliaceae extracts in patients with hypercholesterolemia, but future high-quality studies are needed. Our work suggests further exploration of the efficacy of Brassicaceae extracts, which may have high nutraceutical/phytotherapeutic potential, opening new perspectives in the management of dyslipidemia.
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