Neural network signal analysis in immunology

Fabian J Theis, D. Hartl, S. Krauss‐Etschmann, E. Lang
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引用次数: 2

Abstract

This paper aims to investigate whether both supervised and unsupervised signal analysis contributes to the interpretation of immunological data. For this purpose a data base was set up containing measured data from bronchoalveolarlavage fluid which was obtained from 37 children with pulmonary diseases. The children were dichotomized into two groups: 20 children suffered from chronic bronchitis whereas 17 children had an interstitial lung disease. A self-organizing map (SOM) was utilized to test higher-order correlations between cellular subsets and the patient groups. Furthermore, a supervised approach with a perceptron trained to the patients' diagnosis was applied. The SOM confirmed the results that were expected from previous statistical analyses and shed light on formerly not considered relationships. The supervised perceptron learning after principal component analysis for dimension reduction turned out to be highly successful by linearly separating the patients into two groups with different diagnoses. The simplicity of the perceptron made it easy to extract diagnosis rules, which partly were known already and is now readily be tested on larger data sets.
免疫学中的神经网络信号分析
本文旨在探讨监督和非监督信号分析是否有助于解释免疫学数据。为此,建立了一个数据库,其中包含37例肺部疾病儿童的支气管肺泡灌洗液的测量数据。这些儿童被分为两组:20名儿童患有慢性支气管炎,17名儿童患有间质性肺疾病。使用自组织图(SOM)来测试细胞子集和患者组之间的高阶相关性。此外,应用了一种带有感知器的监督方法来训练患者的诊断。SOM证实了之前统计分析的结果,并揭示了以前没有考虑到的关系。主成分降维分析后的有监督感知器学习将不同诊断的患者线性划分为两组,取得了很高的成功。感知器的简单性使得它很容易提取诊断规则,这些规则部分已经为人所知,现在很容易在更大的数据集上进行测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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