State Key Laboratory of Resource Insects, Institute of Apiculture Research, Chinese Academy of Agricultural Sciences, Beijing 100093, China.
University of Canberra Health Research Institute (UCHRI), University of Canberra, Locked Bag 1, Bruce, Canberra, ACT 2601, Australia.
Food Chem. 2024 Jan 1;430:136915. doi: 10.1016/j.foodchem.2023.136915. Epub 2023 Jul 17.
As a natural sweetener produced by honey bees, honey was recognized as being healthier for consumption than table sugar. Our previous study also indicated thatmetaboliteprofiles in mice fed honey and mixedsugardiets aredifferent. However, it is still noteworthy about the batch-to-batch consistency of the metabolic differences between two diet types. Here, the machine learning (ML) algorithms were applied to complement and calibrate HPLC-QTOF/MS-based untargeted metabolomics data. Data were generated from three batches of mice that had the same treatment, which can further mine the metabolite biomarkers. Random Forest and Extra-Trees models could better discriminate between honey and mixed sugar dietary patterns under five-fold cross-validation. Finally, SHapley Additive exPlanations tool identified phosphatidylethanolamine and phosphatidylcholine as reliable metabolic biomarkers to discriminate the honey diet from the mixed sugar diet. This study provides us new ideas for metabolomic analysis of larger data sets.
作为蜜蜂产生的天然甜味剂,蜂蜜被认为比食糖更有益于食用。我们之前的研究还表明,喂食蜂蜜和混合糖的老鼠的代谢物谱不同。然而,两种饮食类型之间的代谢差异在批次间的一致性仍然值得注意。在这里,机器学习 (ML) 算法被应用于补充和校准基于 HPLC-QTOF/MS 的非靶向代谢组学数据。数据来自三批接受相同处理的老鼠,这可以进一步挖掘代谢物生物标志物。随机森林和 Extra-Trees 模型在五重交叉验证下可以更好地区分蜂蜜和混合糖饮食模式。最后,SHapley Additive exPlanations 工具确定了磷脂酰乙醇胺和磷脂酰胆碱作为可靠的代谢生物标志物,可将蜂蜜饮食与混合糖饮食区分开来。这项研究为我们提供了对更大数据集进行代谢组学分析的新思路。