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使用人工智能方法对天然和改性小麦淀粉凝胶在体外胃肠道消化过程中的葡萄糖释放进行建模。

Modeling of glucose release from native and modified wheat starch gels during in vitro gastrointestinal digestion using artificial intelligence methods.

作者信息

Yousefi A R, Razavi Seyed M A

机构信息

Department of Chemical Engineering, University of Bonab, PO Box 55517-61167, Bonab, Iran.

Food Hydrocolloids Research Center, Department of Food Science and Technology, Ferdowsi University of Mashhad (FUM), Mashhad, Iran.

出版信息

Int J Biol Macromol. 2017 Apr;97:752-760. doi: 10.1016/j.ijbiomac.2017.01.082. Epub 2017 Jan 20.

Abstract

Estimation of the amounts of glucose release (AGR) during gastrointestinal digestion can be useful to identify food of potential use in the diet of individuals with diabetes. In this work, adaptive neuro-fuzzy inference system (ANFIS), genetic algorithm-artificial neural network (GA-ANN) and group method of data handling (GMDH) models were applied to estimate the AGR from native (NWS), cross-linked (CLWS) and hydroxypropylated wheat starch (HPWS) gels during digestion under simulated gastrointestinal conditions. The GA-ANN and ANFIS were fed with 3 inputs of digestion time (1-120min), gel volume (7.5 and 15ml) and concentration (8 and 12%, w/w) for prediction of the AGR. The developed ANFIS predictions were close to the experimental data (r=0.977-0.996 and RMSE=0.225-0.619). The optimized GA-ANN, which included 6-7 hidden neurons, predicted the AGR with a good precision (r=0.984-0.993 and RMSE=0.338-0.588). Also, a three layers GMDH model with 3 neurons accurately predicted the AGR (r=0.979-0.986 and RMSE=0.339-0.443). Sensitivity analysis data demonstrated that the gel concentration was the most sensitive factor for prediction of the AGR. The results dedicated that the AGR will be accurately predictable through such soft computing methods providing less computational cost and time.

摘要

估计胃肠道消化过程中葡萄糖释放量(AGR)有助于确定对糖尿病患者饮食可能有用的食物。在这项研究中,应用自适应神经模糊推理系统(ANFIS)、遗传算法-人工神经网络(GA-ANN)和数据处理分组方法(GMDH)模型来估计在模拟胃肠道条件下消化过程中天然(NWS)、交联(CLWS)和羟丙基化小麦淀粉(HPWS)凝胶的AGR。GA-ANN和ANFIS以消化时间(1 - 120分钟)、凝胶体积(7.5和15毫升)和浓度(8%和12%,w/w)这3个输入来预测AGR。所开发的ANFIS预测结果与实验数据接近(r = 0.977 - 0.996,RMSE = 0.225 - 0.619)。优化后的GA-ANN包含6 - 7个隐藏神经元,能高精度地预测AGR(r = 0.984 - 0.993,RMSE = 0.338 - 0.588)。此外,具有3个神经元的三层GMDH模型也能准确预测AGR(r = 0.979 - 0.986,RMSE = 0.339 - 0.443)。敏感性分析数据表明,凝胶浓度是预测AGR最敏感的因素。结果表明,通过这些计算成本和时间较低的软计算方法可以准确预测AGR。

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