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首页> 外文期刊>International journal of data mining and bioinformatics >A novel strategy for molecular signature discovery based on independent component analysis
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A novel strategy for molecular signature discovery based on independent component analysis

机译:基于独立成分分析的分子标记发现新策略

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摘要

Microarray analysis often leads to either too large or too small numbers of gene candidates to allow meaningful identification of functional signatures. We aimed at overcoming this hurdle by combining two algorithms: i Independent Component Analysis to extract statistically-based potential signatures. ii Gene Set Enrichment Analysis to produce a score of enrichment with statistical significance of each potential signature. We have applied this strategy to identify regulatory T cell (Treg) molecular signatures from two experiments in mice, with cross-validation. These signatures can detect the ~1 % Treg in whole spleen. These findings demonstrate the relevance of our approach as a signature discovery tool.
机译:微阵列分析通常会导致候选基因太大或太少而无法有效识别功能签名。我们旨在通过结合两种算法来克服这一障碍:i独立成分分析以提取基于统计的潜在特征。 ii基因集富集分析以产生富集分数,每个潜在签名的统计意义均具有统计学意义。我们已经应用这种策略从小鼠的两次实验中鉴定出调节性T细胞(Treg)分子标记,并进行了交叉验证。这些特征可以检测到整个脾脏中约1%的Treg。这些发现证明了我们的方法作为签名发现工具的重要性。

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