用天然深共晶溶剂萃取露兜树(Pouteria lucuma)种子中的酚类化合物:利用响应面方法和人工神经网络建模

Gustavo Puma-Isuiza, J. García-Chacón, Coralia Osorio, I. Betalleluz‐Pallardel, Jorge Chue, Marianela Inga
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引用次数: 0

摘要

本研究旨在使用天然深共晶溶剂(NADES)从露卡鲁玛(Pouteria lucuma)种子中提取多酚化合物,这是一种绿色、高效、环保的提取方法。该方法采用响应面法(RSM)进行优化,并将其预测能力与人工神经网络(ANN)和卷积神经网络(CNN)进行比较。将乳酸(LA)分别与以下试剂混合制备了四种 NADES:醋酸钠(SA)、尿素(U)、葡萄糖(G)和醋酸铵(AA)。采用博克斯-本肯设计法测定了每种 NADES 从灵芝种子中获得的总酚类化合物(TPC)的产量,并以此作为优化标准。对以下因素进行了评估:时间、温度和灵芝种子粉(LSF):NADES 比率。响应变量为 TPC 和抗氧化活性。选择 LA-AA 提取物是因为它的 TPC 值最高,并采用超高效液相色谱-质谱法(UHPLC-MS)进行了分析。根据 RSM,最佳提取参数为 80 分钟、52°C 和 LSF:NADES 比例为 8:100(w/v),得到的 TPC 值为 3601.51 ± 0.51 mg GAE/100 g LFS。超高效液相色谱-质谱分析表明,表没食子儿茶素没食子酸酯形成了表没食子儿茶素异构体。与 RSM 相比,ANN 的预测能力得到了证实。
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Extraction of phenolic compounds from lucuma (Pouteria lucuma) seeds with natural deep eutectic solvents: modelling using response surface methodology and artificial neural networks
The present study aimed to extract polyphenolic compounds from lucuma (Pouteria lucuma) seeds using natural deep eutectic solvents (NADES) as a green, efficient, and environmentally friendly extraction. This was optimized by using the Response Surface Method (RSM) and comparing its predictive capacity with Artificial Neural Networks (ANN) and Convolutional Neural Networks (CNN). Four NADES were prepared by mixing lactic acid (LA) with each of the following reagents: sodium acetate (SA), urea (U), glucose (G), and ammonium acetate (AA), separately. The yield of total phenolic compounds (TPC) obtained from lucuma seeds with each NADES was measured as an optimization criterion with the Box-Benhken design. The following factors were evaluated: time, temperature, and the lucuma seed flour (LSF): NADES ratio. The response variables were TPC and antioxidant activity. The LA-AA extract was selected because it exhibited the highest TPC value and was analyzed by UHPLC–MS (Ultra-performance Liquid Chromatography-Mass Spectrometry). From the RSM, the optimal extraction parameters were 80 min, 52°C, and LSF: NADES ratio of 8:100 (w/v), obtaining a TPC value of 3601.51 ± 0.51 mg GAE/100 g LFS. UHPLC–MS analysis evidenced the formation of epigallocatechin isomers from epigallocatechin gallate. The predictive ability of ANNs compared to RSM was demonstrated.
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