Xie Jing, Huang Jianhua, Ren Guangxi, Jin Jian, Chen Lin, Zhong Can, Cai Yuan, Liu Hao, Zhou Rongrong, Qin Yuhui, Zhang Shuihan
Hunan Academy of Chinese Medicine, Hunan University of Chinese Medicine, Changsha 410013, China.
College of Chinese Pharmacy, Beijing University of Chinese Medicine, Beijing 102488, China.
Foods. 2022 Mar 21;11(6):892. doi: 10.3390/foods11060892.
(PC) is an important fungus with high medicinal and nutritional values. However, the quality of PC is heavily dependent on multiple factors in the cultivation regions. Traditional methods are not able to perform quality evaluation for this fungus in a short time, and a new method is needed for rapid quality assessment. Here, we used near-infrared (NIR) spectroscopy combined with chemometric method to identify the cultivation regions and determine PC chemical compositions. In our study, 138 batches of samples were collected and their cultivation regions were distinguished by combining NIR spectroscopy and random forest method (RFM) with an accuracy as high as 92.59%. In the meantime, we used partial least square regression (PLSR) to build quantitative models and measure the content of water-soluble extract (WSE), ethanol-soluble extract (ASE), polysaccharides (PSC) and the sum of five triterpenoids (SFT). The performance of these models were verified with correlation coefficients ( and ) above 0.9 for the four quality parameters and the relative errors (RE) of PSC, WSE, ASE and SFT at 4.055%, 3.821%, 4.344% and 3.744%, respectively. Overall, a new approach was developed and validated which is able to distinguish PC production regions, quantify its chemical contents, and effectively evaluate PC quality.
茯苓是一种具有很高药用和营养价值的重要真菌。然而,茯苓的品质很大程度上取决于种植地区的多种因素。传统方法无法在短时间内对这种真菌进行品质评估,因此需要一种新的方法来进行快速品质评估。在此,我们采用近红外(NIR)光谱结合化学计量学方法来识别茯苓的种植地区并测定其化学成分。在我们的研究中,收集了138批次的样品,并结合近红外光谱和随机森林方法(RFM)来区分其种植地区,准确率高达92.59%。同时,我们使用偏最小二乘回归(PLSR)建立定量模型,测量水溶性提取物(WSE)、醇溶性提取物(ASE)、多糖(PSC)和五种三萜类化合物总和(SFT)的含量。这些模型的性能通过四个品质参数的相关系数( 和 )均高于0.9以及PSC、WSE、ASE和SFT的相对误差(RE)分别为4.055%、3.821%、4.344%和3.744%得到验证。总体而言,开发并验证了一种新方法,该方法能够区分茯苓的产地、定量其化学成分,并有效评估茯苓的品质。