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Asarum subspecies identification with pattern recognition techniques

机译:模式识别技术鉴定细辛亚种

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摘要

Chinese medicine pharmacologists examine the chemical features of Chinese medicine materials for identification of the subspecies. In this paper, three different types of chemical data, namely main constituent content, inorganic element content and HPLC fingerprint data of 54 asarum samples are tested and analyzed. Some types of data with strong connection with the sample subspecies classification are firstly filtered out with Principle Component Analysis and separability measure. Chemical features of these data types are then ranked with concern of the correlation with the sample subspecies using SVM RFE. At last, the effect of the filtered out chemical features on the sample subspecies classification are verified using leave-one-out strategy.
机译:中药药理学家检查中药材料的化学特征以鉴定亚种。本文对54种细辛样品的主要成分,无机元素含量和HPLC指纹图谱这三种化学数据进行了测试和分析。首先通过主成分分析和可分离性度量滤除与样本亚种分类有密切关系的某些类型的数据。然后,使用SVM RFE对这些数据类型的化学特征进行排序,并考虑与样品亚种的相关性。最后,采用留一法验证了滤出的化学特征对样品亚种分类的影响。

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