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A rapid and novel method for predicting nicotine alkaloids in tobacco through electronic nose and partial least-squares regression analysis

机译:通过电子鼻和偏最小二乘回归分析预测烟草中尼古丁生物碱的快速新颖方法

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Alkaloid levels in tobacco are of great concern owing to nicotine addiction and associated diseases. A rapid method of analyzing tobacco alkaloids is required for legislatures and tobacco companies. This study aims to establish prediction models of tobacco alkaloids via responses of an electronic nose and partial least-squares regression (PLSR) for the rapid analysis of alkaloid levels in tobacco. Eight alkaloids (nicotine and myosmine) were detected by gas chromatography-triple quadrupole mass spectrometry (GC-TriQ-MS). The characterization of alkaloids from different leaf positions (upper (B), middle (C) and lower (X)) was investigated and three signal features of electronic nose sensors were selected for better modeling. The results showed that the total alkaloid content significantly varied in the following order: B C X. The sensors' maximum intensity (INmax) and slope (K) were significantly related to the alkaloid levels. Prediction models for alkaloids were successfully established. The calibrated (R_cal = 0.99 and R_cal2 = 0.98) and validated (R_val = 0.97, R_val2 = 0.94) parameters of the nicotine prediction model were very satisfactory. After checking for validity, the established model for nicotine detection has a predictive capability of 96%. Moreover, the predictive effectiveness of models of other alkaloids (except nicotyrine) was also proved to be accurate. This study provided evidence that an electronic nose could be used as a testing tool to rapidly and quantitatively detect the content of nicotine alkaloids in tobacco. Further study is still needed to improve the precision and robustness of the alkaloid calibration models.
机译:由于尼古丁成瘾和相关疾病,烟草中的生物碱水平受到极大关注。立法机关和烟草公司需要一种快速分析烟草生物碱的方法。本研究旨在通过电子鼻和偏最小二乘回归(PLSR)的响应建立烟草生物碱的预测模型,以快速分析烟草中生物碱的水平。通过气相色谱-三重四极杆质谱(GC-TriQ-MS)检测到八个生物碱(烟碱和肌苷)。研究了不同叶片位置(上(B),中(C)和下(X))的生物碱的特征,并选择了电子鼻传感器的三个信号特征以进行更好的建模。结果表明,总生物碱含量按以下顺序显着变化:B> C>X。传感器的最大强度(INmax)和斜率(K)与生物碱水平显着相关。成功建立了生物碱的预测模型。尼古丁预测模型的校准参数(R_cal = 0.99和R_cal2 = 0.98)和验证参数(R_val = 0.97,R_val2 = 0.94)非常令人满意。检查有效性后,建立的尼古丁检测模型的预测能力为96%。此外,其他生物碱(烟碱除外)模型的预测有效性也被证明是准确的。这项研究提供了证据,表明电子鼻可以用作快速定量地检测烟草中尼古丁生物碱含量的测试工具。仍需要进一步研究以提高生物碱校准模型的精度和鲁棒性。

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