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Importance evaluation of spectral lines in Laser-induced breakdown spectroscopy for classification of pathogenic bacteria

机译:激光诱导击穿光谱中谱线对病原菌分类的重要性评估

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摘要

The correct classification of pathogenic bacteria is significant for clinical diagnosis and treatment. Compared with the use of whole spectral data, using feature lines as the inputs of the classification model can improve the correct classification rate (CCR) and reduce the analyzing time. In order to select feature lines, we need to investigate the contribution to the CCR of each spectral line. In this paper, two algorithms, important weights based on principal component analysis (IW-PCA) and random forests (RF), were proposed to evaluate the importance of spectra lines. The laser-induced plasma spectra (LIBS) of six common clinical pathogenic bacteria species were measured and a support vector machine (SVM) classifier was used to classify the LIBS of bacteria species. In the proposed IW-PCA algorithm, the product of the loading of each line and the variance of the corresponding principal component were calculated. The maximum product of each line calculated from the first three PCs was used to represent the line’s importance weight. In the RF algorithm, the Gini index reduction value of each line was considered as the line’s importance weight. The experimental results demonstrated that the lines with high importance were more suitable for classification and can be chosen as feature lines. The optimal number of feature lines used in the SVM classifier can be determined by comparing the CCRs with a different number of feature lines. Importance weights evaluated by RF are more suitable for extracting feature lines using LIBS combined with an SVM classification mechanism than those evaluated by IW-PCA. Furthermore, the two methods mutually verified the importance of selected lines and the lines evaluated important by both IW-PCA and RF contributed more to the CCR.
机译:病原菌的正确分类对临床诊断和治疗很重要。与使用整个光谱数据相比,使用特征线作为分类模型的输入可以提高正确的分类率(CCR)并减少分析时间。为了选择特征线,我们需要研究每个光谱线对CCR的贡献。本文提出了两种算法,即基于主成分分析的重要权重(IW-PCA)和随机森林(RF)来评估谱线的重要性。测量了六种常见临床病原细菌物种的激光诱导血浆光谱(LIBS),并使用支持向量机(SVM)分类器对细菌物种的LIBS进行了分类。在提出的IW-PCA算法中,计算了每条线的负载与相应主成分的方差的乘积。从前三台PC计算出的每条线的最大乘积代表该线的重要性权重。在RF算法中,每条线的基尼系数降低值被认为是该线的重要权重。实验结果表明,重要度较高的线更适合分类,可以作为特征线。可通过将CCR与不同数量的特征线进行比较来确定SVM分类器中使用的最佳特征线数。与IW-PCA评估的权重相比,RF评估的重要性权重更适合使用LIBS结合SVM分类机制来提取特征线。此外,这两种方法相互验证了所选品系的重要性,并且IW-PCA和RF都将其评价为重要品系对CCR的贡献更大。

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