Using a neural network with flow cytometry histograms to recognize cell surface protein binding patterns.

Proceedings. AMIA Symposium Pub Date : 2002-01-01
Eun-Young Kim, Qing Zeng, James Rawn, Matthew Wand, Alan J Young, Edgar Milford, Steven J Mentzer, Robert A Greenes
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引用次数: 0

Abstract

Flow cytometric systems are being used increasingly in all branches of biological science including medicine. To develop analytic tools for identifying unknown molecules such as the antibodies that recognize different structure in the identical antigens, we explored use of a neural network in flow cytometry data comparison. Peak locations were extracted from flow cytometry histograms and we used the Marquardt backpropagation neural networks to recognize identical or similar binding patterns between antibodies and antigens based on the peak locations. The neural network showed 93.8% to 99.6% correct classification rates for identical or similar molecules. This suggests that the neural network technique can be useful in flow cytometry histogram data analysis.

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利用流式细胞术直方图神经网络识别细胞表面蛋白结合模式。
流式细胞术系统越来越多地应用于包括医学在内的生物科学的各个分支。为了开发用于识别未知分子的分析工具,例如识别相同抗原中不同结构的抗体,我们探索了在流式细胞术数据比较中使用神经网络。从流式细胞术直方图中提取峰位置,并使用Marquardt反向传播神经网络基于峰位置识别抗体和抗原之间相同或相似的结合模式。神经网络对相同或相似分子的分类正确率为93.8% ~ 99.6%。这表明神经网络技术可用于流式细胞术直方图数据分析。
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