Sevindik Mustafa, Gürgen Ayşenur, Krupodorova Tetiana, Uysal İmran, Koçer Oguzhan
Department of Biology, Faculty of Engineering and Nature Sciences, University of Osmaniye Korkut Ata, 80000, Osmaniye, Turkey.
Department of Life Sciences, Western Caspian University, Baku, Azerbaijan.
Sci Rep. 2024 Dec 28;14(1):31403. doi: 10.1038/s41598-024-83029-8.
In this work, artificial neural network coupled with multi-objective genetic algorithm (ANN-NSGA-II) has been used to develop a model and optimize the conditions for the extracting of the Mentha longifolia (L.) L. plant. Input parameters were extraction temperature (40-70 °C), extraction time (4-10 h), and extract concentration (0.25-2 mg/mL) while total antioxidant status (TAS) and total oxidant status (TOS) values of extracts were output parameters. The mean absolute percentage error (MAPE) of selected ANN model was determined as 1.434% and 0.464% for TAS and TOS, respectively. The results showed that the optimum extraction conditions were as follows: extraction temperature of 54.260 °C, extraction time of 7.854 h, and extract concentration of 0.810 mg/mL. The biological activities and phenolic contents of the extract obtained under determined optimum extract conditions were determined. TAS and TOS values of extract were determined as 6.094 ± 0.033 mmol/L and 14.050 ± 0.063 µmol/L, respectively. Oxidative stress index (OSI) as 0.231 ± 0.002, total phenolic content (TPC) as 123.05 ± 1.70 mg/g and total flavonoid content (TFC) as 181.84 ± 1.97 mg/g. Anti- acetylcholinesterase value and anti-butyrylcholinesterase value of the extract was determined as 42.97 ± 0.87 and 60.52 ± 0.80 µg/mL, respectively. In addition, 11 phenolic compounds, namely acetohydroxamic acid, gallic acid, catechin hydrate, 4-hydroxybenzoic acid, caffeic acid, vanillic acid, syringic acid, 2-hydoxycinamic acid, quercetin, luteolin and kaempferol, were determined. It was observed that the extract of M. longifolia produced under optimum conditions exhibited strong biological activities. These results indicate that ANN coupled NSGA-II was an effective method for the optimization extraction conditions of M. longifolia.
在本研究中,人工神经网络与多目标遗传算法相结合(ANN-NSGA-II)被用于建立模型并优化长叶薄荷(Mentha longifolia (L.) L.)植物提取物的提取条件。输入参数为提取温度(40-70°C)、提取时间(4-10小时)和提取物浓度(0.25-2毫克/毫升),而提取物的总抗氧化状态(TAS)和总氧化状态(TOS)值为输出参数。所选人工神经网络模型的平均绝对百分比误差(MAPE)对于TAS和TOS分别确定为1.434%和0.464%。结果表明,最佳提取条件如下:提取温度54.260°C、提取时间7.854小时和提取物浓度0.810毫克/毫升。测定了在确定的最佳提取条件下获得的提取物的生物活性和酚类含量。提取物的TAS和TOS值分别确定为6.094±0.033毫摩尔/升和14.050±0.063微摩尔/升。氧化应激指数(OSI)为0.231±0.002,总酚含量(TPC)为123.05±1.70毫克/克,总黄酮含量(TFC)为181.84±1.97毫克/克。提取物的抗乙酰胆碱酯酶值和抗丁酰胆碱酯酶值分别确定为42.97±0.87和60.52±0.80微克/毫升。此外,还测定了11种酚类化合物,即乙酰氧肟酸、没食子酸、儿茶素水合物、4-羟基苯甲酸、咖啡酸、香草酸、丁香酸、2-羟基肉桂酸、槲皮素、木犀草素和山奈酚。观察到在最佳条件下生产的长叶薄荷提取物表现出很强的生物活性。这些结果表明,人工神经网络结合NSGA-II是优化长叶薄荷提取条件的有效方法。