基于模糊集理论的糖尿病基因发现方法

Yi Lu, Shiyong Lu, L. Liang, D. Kumar
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引用次数: 3

摘要

糖尿病是一种代谢紊乱,在美国已经影响了1820万人。近年来,研究人员已经确定了许多在糖尿病的发病、发展和进展中起重要作用的基因。这些糖尿病基因的鉴定有助于更好地了解其分子机制和发病机制,这对制定预防和治疗方法至关重要。本文提出了一种基于模糊集理论的模糊隶属度检验(FM-test)方法,用于从微阵列基因表达谱中识别糖尿病相关基因。定义了一种新的FM d值概念,用于量化两组值的散度。通过实验研究d值的分布以及d值与p值显著性水平的关系。我们将fm测试应用于胰岛素敏感和胰岛素抵抗人群的基因表达数据集,并鉴定出10个重要基因。十种中有六种已被文献证实与糖尿病有关,另一种已被其他研究人员提出。其余3个基因D85181、M95610和U06452被认为是潜在的糖尿病基因,有待进一步的生物学研究
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FM-test: A Fuzzy Set Theory Based Approach for Discovering Diabetes Genes
Diabetes is a disorder of metabolism that has affected 18.2 million people in the United States. In recent years, researchers have identified many genes that play important roles in the onset, development and progression of diabetes. Identification of these diabetes genes offers better understanding of the molecular mechanisms underlying pathogenesis, which is essential for developing preventative and therapeutic methods. In this paper, we propose an innovative approach, fuzzy membership test (FM-test), based on fuzzy set theory to identify diabetes associated genes from micro array gene expression profiles. A new concept of FM d-value is defined to quantify the divergence of two sets of values. Experiments were conducted to study the distribution of d-values and the relationship between the d-value and the significance level of p-value. We applied FM-test to a gene expression dataset obtained from insulin-sensitive and insulin-resistant people and identified ten significant genes. Six of the ten have been confirmed to be associated with diabetes in the literature and one has been suggested by other researchers. The remaining three genes, D85181, M95610 and U06452, are suggested as potential diabetes genes for further biological investigation
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