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Fabrication of curcumin-loaded gum tragacanth/poLy(vinyl alcohol) nanofibers with optimized electrospinning parameters

机译:具有最佳静电纺丝参数的姜黄素胶黄芪胶/聚(乙烯醇)纳米纤维的制备

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This paper focuses on using response surface methodology (RSM) and artificial neural network (ANN) to optimize the diameter of Gum tragacanth (GT)/poly(vinyl alcohol) (PVA) nanofibers. However, producing curcumin-loaded GT/PVA nanofibers with using these optimized conditions is another aim. RSM methodology based on four variables (voltage, feed rate, distance between nozzle and collector, and solution concentration) with three levels and ANN technique were compared for modeling the average diameter of nanofibers. In the RSM method, the individual and interaction effects between the parameters on the average diameter of nanofibers were determined using Box-Behnken design (BBD). Data sets of input-output patterns were used for training the multilayer perceptron (MP) neural networks trained with back-propagation algorithm for modeling purpose. Experimental results for both ANN and RSM techniques showed agreement with the predicted fiber diameter. High-regression coefficient between the variables and the response displayed that the performance of RSM for minimizing diameter of nanofibers was better than ANN. Based on response surface model, optimum conditions (polymer concentration of 4.2% (w/v), distance between the capillary and collector 20 cm, applied voltage of 20 kV and flow rate of 0.5 mL/h) were obtained for producing GT/PVA nanofibers with minimized diameter. Then curcumin-loaded GT/PVA nanofibers were produced with acquired optimum condition and the effect of curcumin concentration (3 and 5% (w/v)) on the morphology, diameter and biological properties of nanofibers was investigated.
机译:本文着重于使用响应表面方法(RSM)和人工神经网络(ANN)优化黄can胶(GT)/聚乙烯醇(PVA)纳米纤维的直径。然而,使用这些优化条件生产姜黄素负载的GT / PVA纳米纤维是另一个目标。比较了基于三个变量的四个变量(电压,进料速率,喷嘴与收集器之间的距离以及溶液浓度)的RSM方法和ANN技术对纳米纤维的平均直径进行建模。在RSM方法中,使用Box-Behnken设计(BBD)确定参数对纳米纤维平均直径的个体和相互作用的影响。输入-输出模式的数据集用于训练使用反向传播算法训练的多层感知器(MP)神经网络,以进行建模。 ANN和RSM技术的实验结果均与预测的纤维直径一致。变量与响应之间的高回归系数表明,RSM在最小化纳米纤维直径方面的性能优于ANN。根据响应表面模型,获得了用于生产GT / PVA的最佳条件(聚合物浓度为4.2%(w / v),毛细管与收集器之间的距离为20 cm,施加的电压为20 kV和流速为0.5 mL / h)。直径最小的纳米纤维。然后在获得的最佳条件下制备了姜黄素负载的GT / PVA纳米纤维,研究了姜黄素浓度(3和5%(w / v))对纳米纤维的形态,直径和生物学特性的影响。

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