Objective evaluation of two markers of HIV-1 infection (p24 antigen concentration and CD4+ cell counts) by a self organizing neural network.

M Giacomini, C Ruggiero, M Maillard, F B Lillo, O E Varnier
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引用次数: 6

Abstract

The aim of the present work is to obtain groups of patients with similar profiles of p24 antigen concentration and of CD4+ cell counts. These two markers were chosen because their evaluation represents a significant step in the clinical follow up of HIV-1 infected subjects. The detection methods for p24 antigen concentration and for CD4+ cell counts are well assessed and guarantee easy reproducibility of data obtained in different laboratories. A set of observations with the same time intervals were derived from a continuous function obtained for each patient by a back-propagation neural net trained on the raw data from the patient. The classifications were obtained by a Kohonen neural net trained in three ways: with p24 antigen profiles only, with CD4+ cell count profiles only and with both sets of profiles. The results show that the clustering fashion of the two parameters closely resembles the clustering fashion of CD4+ only, rather than that of p24Ag, both with reference to cluster formation and with reference to distances between clusters.

目的利用自组织神经网络评价HIV-1感染的两种标志物(p24抗原浓度和CD4+细胞计数)。
本研究的目的是获得p24抗原浓度和CD4+细胞计数相似的患者组。之所以选择这两个标记,是因为它们的评估代表了HIV-1感染受试者临床随访的重要一步。对p24抗原浓度和CD4+细胞计数的检测方法进行了很好的评估,并保证了在不同实验室获得的数据的易于重复性。通过对患者原始数据进行反向传播神经网络训练,从每个患者获得的连续函数中获得具有相同时间间隔的一组观察结果。分类是通过三种方式训练的Kohonen神经网络获得的:仅使用p24抗原谱,仅使用CD4+细胞计数谱和两组谱。结果表明,这两个参数的聚类方式非常类似于CD4+的聚类方式,而不是p24Ag的聚类方式,无论是参考簇的形成还是参考簇之间的距离。
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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