利用机器学习方法评价和预测细胞微载体中生物活性物质的包封

IF 5.3 2区 农林科学 Q1 FOOD SCIENCE & TECHNOLOGY
Yixing Lu, Christopher Kusnadi, Nitin NITIN
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引用次数: 0

摘要

基于细胞的包封系统可以提高多种生物活性物质的稳定性和递送,但由于各种内在和外在因素的影响,预测包封效率具有挑战性。本研究采用全因子设计,考察酵母细胞的生化特性、生物活性成分的化学性质以及复合溶液中乙醇含量对细胞载体包封效率的影响。在本研究选择的范围内,所有化合物-酵母-乙醇组合的载药量与初始化合物-细胞比呈线性关系,说明无论初始化合物-细胞比如何,包封效率都是恒定的,是一个很好的响应变量。疏水性较强的化合物和较低的乙醇含量可获得较高的总体包封效率。蛋白质含量较高的酵母细胞对大多数化合物-乙醇组合的包封效率较高,但视黄醇与50%乙醇的包封效率较高,其中高脂细胞的包封效率较高。总体而言,与其他两个因素相比,细胞基载体的化学成分对包封效率的影响较小。最有效的封装效率预测建模管道包括酵母细胞的傅立叶变换红外光谱(FTIR)生化分析,校准的偏最小二乘回归(PLSR)模型的特征提取,以及随机森林模型的预测,在测试集中获得均方误差(MSE)为0.0095,R2为0.86。总的来说,结果突出了硅管道和机器学习方法预测基于细胞的载体封装效率的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation and Prediction of Encapsulation of Bioactives in Cell-Based Microcarriers Using Machine Learning Approaches

Cell-based encapsulation systems can improve the stability and delivery of diverse bioactives, but predicting encapsulation efficiency is challenging due to various intrinsic and extrinsic factors. In the current study, a full factorial design was used to evaluate the influence of biochemical properties of yeast cells, chemical nature of bioactives, and ethanol level in the compound solution on the encapsulation efficiency of cell-based carriers. All compound-yeast-ethanol combinations showed linear trends between the loading yield and initial compound-to-cell ratio in the range chosen in the current study, implying that the encapsulation efficiency is constant regardless of initial compound-to-cell ratio, making it a good response variable. Higher overall encapsulation efficiency was achieved with a more hydrophobic compound and a lower ethanol level. Yeast cells with higher protein content achieved higher encapsulation efficiency for most of the compound-ethanol combination, except for retinol with 50% ethanol, where high-lipid cells exhibited higher efficiency. Overall, the chemical composition of the cell-based carriers has less significant effect on encapsulation efficiency compared to the other two factors. The most efficient predictive modeling pipeline for encapsulation efficiency consists of biochemical profiling of yeast cells with Fourier transform infrared spectroscopy (FTIR), feature extraction with a calibrated partial least square regression (PLSR) model, and prediction with a random forest model, obtaining a mean squared error (MSE) of 0.0095 and R2 of 0.86 in the test set. Overall, the results highlight the potential of in silico pipeline and machine learning approaches to predict the encapsulation efficiency of cell-based carriers.

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来源期刊
Food and Bioprocess Technology
Food and Bioprocess Technology 农林科学-食品科技
CiteScore
9.50
自引率
19.60%
发文量
200
审稿时长
2.8 months
期刊介绍: Food and Bioprocess Technology provides an effective and timely platform for cutting-edge high quality original papers in the engineering and science of all types of food processing technologies, from the original food supply source to the consumer’s dinner table. It aims to be a leading international journal for the multidisciplinary agri-food research community. The journal focuses especially on experimental or theoretical research findings that have the potential for helping the agri-food industry to improve process efficiency, enhance product quality and, extend shelf-life of fresh and processed agri-food products. The editors present critical reviews on new perspectives to established processes, innovative and emerging technologies, and trends and future research in food and bioproducts processing. The journal also publishes short communications for rapidly disseminating preliminary results, letters to the Editor on recent developments and controversy, and book reviews.
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