利用元胞自动机分析癌症通路网络

K. Mahata, Anasua Sarkar
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引用次数: 2

摘要

识别癌症通路是癌症基因表达数据分析的中心目标。数据挖掘是指对海量数据进行分析以发现有用模式的过程。数据分类是在一组对象中识别共同属性并将它们分组到不同类中的过程。元胞自动机是一个离散的动态系统,具有简单的均匀互连的细胞。元胞自动机用于数据挖掘的原因是,所有决策都是局部做出的,取决于单元的状态和邻近单元的状态。实现了一种高速、低成本的模式分类器,该分类器围绕稀疏网络构建,称为元胞自动机(ca)。使用细胞自动机模拟liff刺激的乳腺癌基因调控网络,以获得生物标志物基因。我们的模型在具有最高优先级的输入中输出所需的基因,这些基因在相关的肿瘤功能富集分析中被分析其功能参与。这种方法是在细胞空间中发现癌症生物标志物的一种新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cancer Pathway Network Analysis Using Cellular Automata
Identification of cancer pathways is the central goal in the cancer gene expression data analysis. Data mining refers to the process analyzing huge data in order to find useful pattern. Data classification is the process of identifying common properties among a set of objects and grouping them into different classes. A cellular automaton is a discrete, dynamical system with simple uniformly interconnected cells. Cellular automata are used in data mining for reasons such as all decisions are made locally depend on the state of the cell and the states of neighboring cells. A high-speed, low-cost pattern-classifier, built around a sparse network referred to as cellular automata (ca) is implemented. Lif-stimulated gene regulatory network involved in breast cancer has been simulated using cellular automata to obtain biomarker genes. Our model outputs the desired genes among inputs with highest priority, which are analysed for their functional involvement in relevant oncological functional enrichment analysis. This approach is a novel one to discover cancer biomarkers in cellular spaces.
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