Mars Incorporated, 6885 Elm St, McLean, VA 22101, USA.
Food Funct. 2021 Apr 26;12(8):3433-3442. doi: 10.1039/d1fo00215e.
Cocoa flavanols (CF) are a group of dietary bioactives that have been studied for their potential health benefits for over two decades. In this time, multiple methods for CF testing have evolved, introducing the potential for differences in reported CF content. The reliable characterization of CF content in food and test materials used in clinical studies is critical to comparisons of research studies over time, as well as critical to enabling the systematic reviews and meta-analyses required to support dietary recommendations of bioactives. In this work, we compared two analytical methods that have been widely applied to characterize materials used in clinical research and a method newly recognized by AOAC as the official method for CF analysis. Differences in accuracy of -36% to +20% were observed when comparing CF contents determined with these methods, supporting the notion that CF values determined across methods are not directly comparable. To address differences, a linear regression model was developed to predict CF values. This approach was cross-validated and directly applied to the conversion of CF values published in key scientific papers on the benefits of CF. This work provides a valid tool to compare CF values reported across these different methods and enables comparisons and interpretation of studies investigating the bioactivity of CF.
可可黄烷醇(CF)是一组膳食生物活性物质,它们的潜在健康益处已经被研究了二十多年。在此期间,CF 的测试方法已经发展了多种,这就引入了报告的 CF 含量存在差异的可能性。在临床研究中使用的食品和测试材料中 CF 含量的可靠特征对于随时间推移的研究比较以及对于支持生物活性的饮食建议所需的系统评价和荟萃分析至关重要。在这项工作中,我们比较了两种广泛应用于临床研究材料特性分析的方法,以及 AOAC 新认可的 CF 分析官方方法。当比较这些方法确定的 CF 含量时,观察到准确性差异在-36%至+20%之间,这支持了这样一种观点,即通过不同方法确定的 CF 值不可直接比较。为了解决这些差异,开发了一个线性回归模型来预测 CF 值。该方法经过交叉验证,并直接应用于对 CF 益处关键科学论文中发表的 CF 值的转换。这项工作提供了一个有效的工具来比较不同方法报告的 CF 值,并能够比较和解释研究 CF 生物活性的研究。