Chun J, Atalan E, Ward A C, Goodfellow M
Department of Microbiology, Medical School, University of Newcastle upon Tyne, United Kingdom.
FEMS Microbiol Lett. 1993 Mar 1;107(2-3):321-6. doi: 10.1111/j.1574-6968.1993.tb06051.x.
Sixteen representatives of three morphologically distinct groups of streptomycetes were recovered from soil using selective isolation procedures. Duplicated batches of the test strains were examined by Curie-point pyrolysis mass spectrometry and the first data set used for conventional multivariate statistical analyses and as a training set for an artificial neural network. The second set of data was used for 'operational fingerprinting' and for testing the artificial neural network. All of the test strains were correctly identified using the artificial neural network whereas only fifteen of the sixteen strains were assigned to the correct group using the conventional operational fingerprinting procedure. Artificial neural network analysis of pyrolysis mass spectrometric data provides a rapid, cost-effective and reproducible way of identifying and typing large numbers of microorganisms.
采用选择性分离程序从土壤中分离出16株代表3个形态不同的链霉菌菌群的菌株。对测试菌株的重复批次进行居里点热解质谱分析,第一组数据集用于常规多变量统计分析,并作为人工神经网络的训练集。第二组数据用于“操作指纹识别”和测试人工神经网络。使用人工神经网络可以正确识别所有测试菌株,而使用传统的操作指纹识别程序,16株菌株中只有15株被归为正确的菌群。对热解质谱数据进行人工神经网络分析,为大量微生物的鉴定和分型提供了一种快速、经济高效且可重复的方法。