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Comparison of Geographical Traceability of Wild and Cultivated Macrohyporia cocos with Different Data Fusion Approaches

机译:不同数据融合方法的野生栽培大型宏观麦克饼科学的地理可追溯性比较

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Poria originated from the dried sclerotium of Macrohyporia cocos is an edible traditional Chinese medicine with high economic value. Due to the significant difference in quality between wild and cultivated M. cocos , this study aimed to trace the origin of the fungus from the perspectives of wild and cultivation. In addition, there were quite limited studies about data fusion, a potential strategy, employed and discussed in the geographical traceability of M. cocos . Therefore, we traced the origin of M. cocos from the perspectives of wild and cultivation using multiple data fusion approaches. Supervised pattern recognition techniques, like partial least squares discriminant analysis (PLS-DA) and random forest, were employed in this study using. Five types of data fusion involving low-, mid-, and high-level data fusion strategies were performed. Two feature extraction approaches including the selecting variables by a random forest-based method—Boruta algorithm and producing principal components by the dimension reduction technique of principal component analysis—were considered in data fusion. The results indicate the following: (1) The difference between wild and cultivated samples did exist in terms of the content analysis of vital chemical components and fingerprint analysis. (2) Wild samples need data fusion to realize the origin traceability, and the accuracy of the validation set was 95.24%. (3) Boruta outperformed principal component analysis (PCA) in feature extraction. (4) The mid-level Boruta PLS-DA model took full advantage of information synergy and showed the best performance. This study proved that both geographical traceability and optimal identification methods of cultivated and wild samples were different, and data fusion was a potential technique in the geographical identification.
机译:茯苓起源于干燥的宏观麦克白葡萄球菌,是一种具有高经济价值的食用中药。由于野生和栽培的M.Cocos之间的质量有显着差异,这项研究旨在从野生和培养的角度追踪真菌的起源。此外,关于数据融合,在M. Cocos的地理可追溯性中采用和讨论的数据融合,潜在策略的研究非常有限。因此,我们通过使用多种数据融合方法追溯了M. Cocos的起源。在本研究中,使用了监督模式识别技术,如局部最小二乘判别分析(PLS-DA)和随机林。执行涉及低,中和高级数据融合策略的五种类型的数据融合。在数据融合中考虑了两个特征提取方法,包括由基于随机林的方法-Boruta算法和通过主要成分分析的尺寸减少技术产生主成分 - 在数据融合中进行了尺寸减少技术。结果表明以下内容:(1)在重要化学成分和指纹分析的含量分析方面存在野生和培养样品之间的差异。 (2)野生样本需要数据融合来实现原始可追溯性,验证集的准确性为95.24%。 (3)Boruta在特征提取中表现优于主要成分分析(PCA)。 (4)中级Boruta PLS-DA模型充分利用了信息协同作用,并显示出最佳性能。本研究证明,栽培和野生样品的地理可追溯性和最佳鉴定方法不同,数据融合是地理识别中的潜在技术。

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