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Feed-forward neural network assisted by discriminant analysis for the spectroscopic discriminantion of cracked spores Ganoderma lucidum: A prospective biotechnology production tool

机译:判别分析辅助的前馈神经网络用于裂隙孢子的光谱判别灵芝:一种潜在的生物技术生产工具

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摘要

A major problem for manufacturers of cracked spores Ganoderma lucidum, a traditional functional food/Chinese medicine (TCM), is to ensure that raw materials are consistent as received from the producer. To address this, a feed-forward artificial neural network (ANN) method assisted by linear discriminant analysis (LDA) and principal component analysis (PCA) was developed for the spectroscopic discrimination of cracked spores of Ganoderma lucidum from uncracked spores. 120 samples comprising cracked spores, uncracked spores and concentrate of Ganoderma lucidum were analyzed. Differences in the absorption spectra located at ν1 (1143 - 1037 cm-1), ν2 (1660 - 1560 cm-1), ν3 (1745 - 1716 cm-1) and ν4 (2845 - 2798 cm-1) were identified by applying fourier transform infra-red (FTIR) spectroscopy and used as variables for discriminant analysis. The utilization of spectra frequencies offered maximum chemical information provided by the absorption spectra. Uncracked spores gave rise to characteristic spectrum that permitted discrimination from its cracked physical state. Parallel application of variables derived from unsupervised LDA/PCA provided useful (feed-forward) information to achieve 100% classification integrity objective in ANN. 100% model validation was obtained by utilizing 30 independent samples. ν1 was used to construct the matrix-matched calibration curve (n = 10) based on 4 levels of concentration (20%, 40%, 60% and 80% uncracked spores in cracked spores). A coefficient of correlation (r) of 0.97 was obtained. Relative standard deviation (RSD) of 11% was achieved using 100% uncracked spores (n = 30). These results demonstrate the feasibility of utilizing a combination of spectroscopy and prospective statistical tools to perform non destructive food quality assessment in a high throughput environment.
机译:传统功能食品/中药(TCM)破壁孢子制造商的主要问题是确保原料与生产者的原料一致。为了解决这个问题,开发了一种前馈人工神经网络(ANN)方法,该方法借助线性判别分析(LDA)和主成分分析(PCA)进行了光谱学鉴别,从未裂解的孢子中鉴定了灵芝的裂解孢子。分析了120个样品,包括裂开的孢子,未裂开的孢子和灵芝浓缩物。位于ν1(1143-1037 cm -1 ),ν2(1660-1560 cm -1 ),ν3(1745--1716 cm )处的吸收光谱的差异-1(sup>)和ν4(2845-2798 cm -1 )通过傅立叶变换红外(FTIR)光谱进行鉴定,并用作判别分析的变量。光谱频率的利用提供了吸收光谱提供的最大化学信息。未破裂的孢子产生了特征光谱,该特征光谱允许区别于破裂的物理状态。从无监督LDA / PCA派生的变量的并行应用提供了有用的(前馈)信息,以实现ANN中100%分类完整性的目标。通过使用30个独立样本获得100%模型验证。基于4个浓度水平(裂解孢子中20%,40%,60%和80%的未裂解孢子),使用ν1来构建与基质匹配的校准曲线(n = 10)。获得的相关系数(r)为0.97。使用100%未破裂的孢子(n = 30)可获得11%的相对标准偏差(RSD)。这些结果证明了在高通量环境中利用光谱学和前瞻性统计工具进行无损食品质量评估的可行性。

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