挖掘与肥胖相关的营养遗传学模式:使用平行多因素降维

K. Karayianni, K. Grimaldi, K. Nikita, I. Valavanis
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引用次数: 0

摘要

本文旨在通过分析来自一项大型营养遗传学研究的数据来揭示肥胖背后的复杂病因,该研究记录了大约2000人与肥胖相关的营养和遗传因素。在我们之前的工作中,这些数据已经使用人工神经网络方法进行了分析,该方法确定了预测一个人肥胖状况的优化因素子集。虽然这些方法并没有揭示所选择的因素如何在获得的预测模型中相互作用。为此,本文采用并行多因子降维法(pMDR)进一步分析了预先选择的营养因子子集。在pMDR中,构建了使用多达8个因素的预测模型,进一步降低了输入维度,同时导出了描述所选因素相互作用的规则。通过这种方式,有可能确定特定的遗传变异及其与特定营养因素的相互作用,目前正在进一步研究中。
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Mining nutrigenetics patterns related to obesity: use of parallel multifactor dimensionality reduction
This paper aims to enlighten the complex etiology beneath obesity by analysing data from a large nutrigenetics study, in which nutritional and genetic factors associated with obesity were recorded for around two thousand individuals. In our previous work, these data have been analysed using artificial neural network methods, which identified optimised subsets of factors to predict one's obesity status. These methods did not reveal though how the selected factors interact with each other in the obtained predictive models. For that reason, parallel Multifactor Dimensionality Reduction (pMDR) was used here to further analyse the pre-selected subsets of nutrigenetic factors. Within pMDR, predictive models using up to eight factors were constructed, further reducing the input dimensionality, while rules describing the interactive effects of the selected factors were derived. In this way, it was possible to identify specific genetic variations and their interactive effects with particular nutritional factors, which are now under further study.
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来源期刊
International Journal of Bioinformatics Research and Applications
International Journal of Bioinformatics Research and Applications Health Professions-Health Information Management
CiteScore
0.60
自引率
0.00%
发文量
26
期刊介绍: Bioinformatics is an interdisciplinary research field that combines biology, computer science, mathematics and statistics into a broad-based field that will have profound impacts on all fields of biology. The emphasis of IJBRA is on basic bioinformatics research methods, tool development, performance evaluation and their applications in biology. IJBRA addresses the most innovative developments, research issues and solutions in bioinformatics and computational biology and their applications. Topics covered include Databases, bio-grid, system biology Biomedical image processing, modelling and simulation Bio-ontology and data mining, DNA assembly, clustering, mapping Computational genomics/proteomics Silico technology: computational intelligence, high performance computing E-health, telemedicine Gene expression, microarrays, identification, annotation Genetic algorithms, fuzzy logic, neural networks, data visualisation Hidden Markov models, machine learning, support vector machines Molecular evolution, phylogeny, modelling, simulation, sequence analysis Parallel algorithms/architectures, computational structural biology Phylogeny reconstruction algorithms, physiome, protein structure prediction Sequence assembly, search, alignment Signalling/computational biomedical data engineering Simulated annealing, statistical analysis, stochastic grammars.
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