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对40种海洋浮游植物的流式细胞仪数据进行神经网络分析。

Neural network analysis of flow cytometric data for 40 marine phytoplankton species.

作者信息

Boddy L, Morris C W, Wilkins M F, Tarran G A, Burkill P H

机构信息

School of Pure and Applied Biology, University of Wales College of Cardiff, U.K.

出版信息

Cytometry. 1994 Apr 1;15(4):283-93. doi: 10.1002/cyto.990150403.

Abstract

Flow cytometry data (time of flight, horizontal and vertical forward light scatter, 90 degrees light scatter, and "red" and "orange" integral fluorescence) were collected for laboratory cultures of 40 species of marine phytoplankton, from the following taxonomic classes, the Dinophyceae, Bacillariophyceae, Prymnesiophyceae, Cryptophyceae, and other flagellates. Single-hidden-layer "back-propagation" neural networks were trained to discriminate between species by recognising patterns in their flow cytometric signatures, and network performance was assessed using an independent test data set. Two approaches were adopted employing: (1) a hierarchy of small networks, the first identifying to which major taxonomic group a cell belonged, and then a network for that taxonomic group identified to species, and (2) a single large network. Discriminating some of the major taxonomic groups was successful but others less so. With networks for specific groups, cryptophyte species were all identified reliably (probability of correct classification always being > 0.75); in the other groups half of the species were identified reliably. With the large network, dinoflagellates, cryptomonads, and flagellates were identified almost as well as by networks specific for these groups. The application of neural computing techniques to identification of such a large number of species represents a significant advance from earlier studies, although further development is required.

摘要

收集了40种海洋浮游植物实验室培养物的流式细胞术数据(飞行时间、水平和垂直前向光散射、90度光散射以及“红色”和“橙色”积分荧光),这些浮游植物来自以下分类类别:甲藻纲、硅藻纲、定鞭藻纲、隐藻纲和其他鞭毛虫。通过识别流式细胞术特征中的模式,训练单隐藏层“反向传播”神经网络来区分物种,并使用独立测试数据集评估网络性能。采用了两种方法:(1)小型网络层次结构,第一个网络识别细胞所属的主要分类组,然后针对该分类组的网络识别到物种;(2)单个大型网络。区分一些主要分类组是成功的,但其他分类组则不太成功。对于特定组的网络,隐藻物种都能可靠识别(正确分类的概率始终>0.75);在其他组中,一半的物种能可靠识别。对于大型网络,甲藻、隐藻和鞭毛虫的识别效果几乎与针对这些组的特定网络一样好。将神经计算技术应用于如此大量物种的识别,相对于早期研究而言是一项重大进展,不过仍需要进一步发展。

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