以多发性骨髓瘤诊断为例的物体分类特征值的校正

Q4 Materials Science
N. Ignatev, E. Zguralskaya, M. V. Markovtseva
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引用次数: 0

摘要

考虑不同类型多发性骨髓瘤指标变化与患者(对象)性别相关的临床特征。数据挖掘的方法检查了关于许多患者的性别在诊断中不显着存在的陈述的真实性。提出了利用异构数据的预处理来统一二进制空间中对象的描述。确定了从噪声集中选择和去除噪声特征的条件。为了降低空间的维数,利用对象的二值广义估计组来计算潜在特征。考虑到患者的性别真实性,提出了将患者划分为最优组数的标准。从这些群体中,形成了一个新的对象分类,按性别区分。通过对象描述的可视化、识别精度和根据新分类选择信息特征集来说明其形成过程。选择过程是根据分层聚类算法的规则来实现的。数量性状测量尺度的不变性是将所得结果应用于一般群体数据样本的重要依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Correction of the Values of the Classification Feature of Objects on the Example of the Diagnosis of Multiple Myeloma
The clinical features of changes in multiple myeloma indicators of different types associated with the gender of patients (objects) are considered. The methods of data mining examine the truth of the statement about the presence of many patients for whom gender is not significant in making a diagnosis. It is proposed to use the preprocessing of heterogeneous data to unify the description of objects in the binary space. The conditions for selecting and removing noise features from the set are determined. In order to reduce the dimensionality of the space, latent features are calculated by groups of binary generalized estimates of objects. A criterion is proposed for dividing patients into the optimal number of groups, taking into account their gender authenticity. From these groups, a new classification of objects is formed, differentiated by gender. The formation process is illustrated through the visualization of object descriptions, recognition accuracy and selection of informative feature sets according to the new classification. The selection procedure is implemented according to the rules of a hierarchical agglomerative algorithm. The property of invariance to the measurement scales of quantitative traits is an important argument for using the obtained results on data samples from the general population.
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来源期刊
Radioelektronika, Nanosistemy, Informacionnye Tehnologii
Radioelektronika, Nanosistemy, Informacionnye Tehnologii Materials Science-Materials Science (miscellaneous)
CiteScore
0.60
自引率
0.00%
发文量
38
期刊介绍: Journal “Radioelectronics. Nanosystems. Information Technologies” (abbr RENSIT) publishes original articles, reviews and brief reports, not previously published, on topical problems in radioelectronics (including biomedical) and fundamentals of information, nano- and biotechnologies and adjacent areas of physics and mathematics. The authors of the journal are academicians, corresponding members and foreign members of the Russian Academy of Natural Sciences (RANS) and their colleagues, as well as other russian and foreign authors on the proposal of the members of RANS, which can be obtained by the author before sending articles to the editor or after its arrival on the recommendation of a member of the editorial board or another member of the RANS, who gave the opinion on the article at the request of the editior. The editors will accept articles in both Russian and English languages. Articles are internally peer reviewed (double-blind peer review) by members of the Editorial Board. Some articles undergo external review, if necessary. Designed for researchers, graduate students, physics students of senior courses and teachers. It turns out 2 times a year (that includes 2 rooms)
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