S. Ragupathy, Arunachalam Thirugnanasambandam, Thomas Henry, Varathan Vinayagam, Ragupathy Sneha, S. Newmaster
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引用次数: 0
摘要
鲜花作为食品、饮料、化妆品和天然保健品的配料,越来越受到消费者的青睐。供应链上有多种形式的植物药交易,包括新鲜原花,这比干花或加工成粉末或液体提取物的鲜花更容易识别。目前,用于验证多个市场供应链中交易的花卉品种成分的科学方法还存在空白。本文的目的是利用两种正交方法开发花卉品种成分验证方法。更具体地说,本研究的目标是采用 (1) 基于 DNA 的分子诊断方法和 (2) 核磁共振代谢物指纹方法来鉴定 23 种常见的花卉品种成分。核磁共振数据分析揭示了不同花卉品种中代谢物差异的大量信息,包括品种内的颜色变异。本研究全面比较了两种正交方法,用于验证花卉品种成分供应链,以确保最高质量的产品。通过全面分析每种方法的优势和局限性,这项研究为支持质量保证和提高消费者信心提供了宝贵的见解。
Flower Species Ingredient Verification Using Orthogonal Molecular Methods
Flowers are gaining considerable interest among consumers as ingredients in food, beverages, cosmetics, and natural health products. The supply chain trades in multiple forms of botanicals, including fresh whole flowers, which are easier to identify than dried flowers or flowers processed as powdered or liquid extracts. There is a gap in the scientific methods available for the verification of flower species ingredients traded in the supply chains of multiple markets. The objective of this paper is to develop methods for flower species ingredient verification using two orthogonal methods. More specifically, the objectives of this study employed both (1) DNA-based molecular diagnostic methods and (2) NMR metabolite fingerprint methods in the identification of 23 common flower species ingredients. NMR data analysis reveals considerable information on the variation in metabolites present in different flower species, including color variants within species. This study provides a comprehensive comparison of two orthogonal methods for verifying flower species ingredient supply chains to ensure the highest quality products. By thoroughly analyzing the benefits and limitations of each approach, this research offers valuable insights to support quality assurance and improve consumer confidence.