2023
DOI: 10.3390/antiox12101897
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Effects of Extraction Process Factors on the Composition and Antioxidant Activity of Blackthorn (Prunus spinosa L.) Fruit Extracts

Ana-Maria Drăghici-Popa,
Aurelian Cristian Boscornea,
Ana-Maria Brezoiu
et al.

Abstract: This study aimed at establishing the optimal conditions for the classic extraction of phenolic compounds from Prunus spinosa L. fruits. The effects of different parameters, i.e., ethanol concentration in the extraction solvent (mixture of ethanol and water), operation temperature, and extraction time, on process responses were evaluated. Total phenolic content (TPC), total anthocyanin content (TAC), antioxidant capacity (AC), and contents of protocatechuic acid (PA), caffeic acid (CA), vanillic acid (VA), ruti… Show more

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Cited by 12 publications
(3 citation statements)
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“…Accordingly, statistical models expressed by Equations ( 5) and (6) can be applied to estimate the process performance for factor levels within the ranges considered in the experimental study. Desirability function approach was applied to identify the optimal factor levels to maximize the process responses [29]. Profiles of predicted values of process responses and desirability function (d) at different levels of dimensionless factors, which are shown in Figure 4, highlight the following optimal levels of process factors: x1,opt = 0.5 (RSL,opt = 1.25 g/100 mL), x2,opt = 1 (Aopt = 60%), and x3,opt = 1 (topt = 50 °C).…”
Section: Statistical Modelsmentioning
confidence: 99%
“…Accordingly, statistical models expressed by Equations ( 5) and (6) can be applied to estimate the process performance for factor levels within the ranges considered in the experimental study. Desirability function approach was applied to identify the optimal factor levels to maximize the process responses [29]. Profiles of predicted values of process responses and desirability function (d) at different levels of dimensionless factors, which are shown in Figure 4, highlight the following optimal levels of process factors: x1,opt = 0.5 (RSL,opt = 1.25 g/100 mL), x2,opt = 1 (Aopt = 60%), and x3,opt = 1 (topt = 50 °C).…”
Section: Statistical Modelsmentioning
confidence: 99%
“…The primary extraction objective was to obtain the desired BCs with high extraction yields while reducing the concentration of unwanted compounds, such as proteins and sugars, which could affect the stability and quality of the final extract. The extraction efficiency may be affected by several factors, the most important of which are the solvent, mass-to-solvent ratio, temperature, and pH [27]. The variables regarding the type of solvent and ratio were fixed because one of the main goals of this research study was to develop extracts by applying distinct techniques and evaluating their impact.…”
Section: Extractive Yieldmentioning
confidence: 99%
“…A desirability function approach was used to determine the optimum factor levels to maximize the FAME phase yield (Y pred = Y). A desirability function, d(Y), is defined by Equation (3), where L Y and U Y (Figure 11) are the lower and upper limits of response Y [25,26]. A completely desirable value of response corresponds to d(Y) = 1, whereas d(Y) = 0 represents an undesirable value.…”
Section: Predicted Responses and Process Factor Optimizationmentioning
confidence: 99%