IMDEA Materials Institute, C/Eric Kandel 2, 28906, Getafe, Madrid, Spain.
Department of Materials Science and Engineering, Universidad Carlos III de Madrid, Avda. de la Universidad, 30, 28911, Leganés, Madrid, Spain.
Sci Rep. 2022 Mar 22;12(1):4838. doi: 10.1038/s41598-022-08410-x.
The development of food and feed additives involves the design of materials with specific properties that enable the desired function while minimizing the adverse effects related with their interference with the concurrent complex biochemistry of the living organisms. Often, the development process is heavily dependent on costly and time-consuming in vitro and in vivo experiments. Herein, we present an approach to design clay-based composite materials for mycotoxin removal from animal feed. The approach can accommodate various material compositions and different toxin molecules. With application of machine learning trained on in vitro results of mycotoxin adsorption-desorption in the gastrointestinal tract, we have searched the space of possible composite material compositions to identify formulations with high removal capacity and gaining insights into their mode of action. An in vivo toxicokinetic study, based on the detection of biomarkers for mycotoxin-exposure in broilers, validated our findings by observing a significant reduction in systemic exposure to the challenging to be removed mycotoxin, i.e., deoxynivalenol (DON), when the optimal detoxifier is administrated to the animals. A mean reduction of 32% in the area under the plasma concentration-time curve of DON-sulphate was seen in the DON + detoxifier group compared to the DON group (P = 0.010).
食品和饲料添加剂的开发涉及设计具有特定性能的材料,这些材料能够实现所需的功能,同时最大限度地减少其与生物体共存的复杂生物化学相互作用相关的不良影响。通常,开发过程严重依赖于昂贵且耗时的体外和体内实验。在此,我们提出了一种用于从动物饲料中去除霉菌毒素的基于粘土的复合材料的设计方法。该方法可以适应各种材料成分和不同的毒素分子。通过应用基于霉菌毒素在胃肠道中吸附-解吸的体外实验结果训练的机器学习,我们已经搜索了可能的复合材料成分空间,以确定具有高去除能力的配方,并深入了解其作用模式。基于对肉鸡中霉菌毒素暴露的生物标志物的检测,体内毒代动力学研究通过观察到当向动物施用最佳解毒剂时,挑战性去除的霉菌毒素,即脱氧雪腐镰刀菌烯醇 (DON),全身暴露的显著减少,验证了我们的发现。与 DON 组相比,DON+解毒剂组 DON-硫酸盐的血浆浓度-时间曲线下面积平均降低 32%(P=0.010)。