Department of Chemical and Environmental Engineering, Faculty of Science and Engineering, University of Nottingham Malaysia, Jalan Broga, Semenyih, Selangor Darul Ehsan, Malaysia.
ISCO (Nanjing) Biotech-Company, Nanjing, Jiangning, China.
Bioengineered. 2023 Dec;14(1):2244232. doi: 10.1080/21655979.2023.2244232.
Fucoxanthin is a carotenoid that possesses various beneficial medicinal properties for human well-being. However, the current extraction technologies and quantification techniques are still lacking in terms of cost validation, high energy consumption, long extraction time, and low yield production. To date, artificial intelligence (AI) models can assist and improvise the bottleneck of fucoxanthin extraction and quantification process by establishing new technologies and processes which involve big data, digitalization, and automation for efficiency fucoxanthin production. This review highlights the application of AI models such as artificial neural network (ANN) and adaptive neuro fuzzy inference system (ANFIS), capable of learning patterns and relationships from large datasets, capturing non-linearity, and predicting optimal conditions that significantly impact the fucoxanthin extraction yield. On top of that, combining metaheuristic algorithm such as genetic algorithm (GA) can further improve the parameter space and discovery of optimal conditions of ANN and ANFIS models, which results in high R accuracy ranging from 98.28% to 99.60% after optimization. Besides, AI models such as support vector machine (SVM), convolutional neural networks (CNNs), and ANN have been leveraged for the quantification of fucoxanthin, either computer vision based on color space of images or regression analysis based on statistical data. The findings are reliable when modeling for the concentration of pigments with high R accuracy ranging from 66.0% - 99.2%. This review paper has reviewed the feasibility and potential of AI for the extraction and quantification purposes, which can reduce the cost, accelerate the fucoxanthin yields, and development of fucoxanthin-based products.
岩藻黄质是一种类胡萝卜素,对人类健康具有多种有益的药用特性。然而,目前的提取技术和定量技术在成本验证、高能耗、提取时间长和产量低等方面仍然存在不足。迄今为止,人工智能(AI)模型可以通过建立涉及大数据、数字化和自动化的新技术和流程,协助并改进岩藻黄质提取和定量过程的瓶颈,以实现高效的岩藻黄质生产。
本文重点介绍了人工智能模型的应用,如人工神经网络(ANN)和自适应神经模糊推理系统(ANFIS),它们能够从大数据集中学习模式和关系,捕捉非线性,并预测对岩藻黄质提取产量有重大影响的最佳条件。此外,结合遗传算法(GA)等元启发式算法可以进一步改善 ANN 和 ANFIS 模型的参数空间和最佳条件的发现,从而在优化后实现高达 98.28%至 99.60%的高 R 准确性。
此外,支持向量机(SVM)、卷积神经网络(CNN)和人工神经网络等人工智能模型已被用于岩藻黄质的定量,无论是基于图像颜色空间的计算机视觉还是基于统计数据的回归分析。当对高 R 准确性(66.0%至 99.2%)的色素浓度进行建模时,结果是可靠的。
本文综述了人工智能在提取和定量方面的可行性和潜力,这可以降低成本、加速岩藻黄质的产量,并开发基于岩藻黄质的产品。