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基于增强学习和投射自适应共振理论的食管癌壁内转移和淋巴结转移的基因表达分类

Classification of intramural metastases and lymph node metastases of esophageal cancer from gene expression based on boosting and projective adaptive resonance theory.

作者信息

Takahashi Hiro, Aoyagi Kazuhiko, Nakanishi Yukihiro, Sasaki Hiroki, Yoshida Teruhiko, Honda Hiroyuki

机构信息

Japan Society for the Promotion of Science, JSPS, 8 Ichibancho, Tokyo 102-8472, Japan.

出版信息

J Biosci Bioeng. 2006 Jul;102(1):46-52. doi: 10.1263/jbb.102.46.

Abstract

Esophageal cancer is a well-known cancer with poorer prognosis than other cancers. An optimal and individualized treatment protocol based on accurate diagnosis is urgently needed to improve the treatment of cancer patients. For this purpose, it is important to develop a sophisticated algorithm that can manage a large amount of data, such as gene expression data from DNA microarrays, for optimal and individualized diagnosis. Marker gene selection is essential in the analysis of gene expression data. We have already developed a combination method of the use of the projective adaptive resonance theory and that of a boosted fuzzy classifier with the SWEEP operator denoted PART-BFCS. This method is superior to other methods, and has four features, namely fast calculation, accurate prediction, reliable prediction, and rule extraction. In this study, we applied this method to analyze microarray data obtained from esophageal cancer patients. A combination method of PART-BFCS and the U-test was also investigated. It was necessary to use a specific type of BFCS, namely, BFCS-1,2, because the esophageal cancer data were very complexity. PART-BFCS and PART-BFCS with the U-test models showed higher performances than two conventional methods, namely, k-nearest neighbor (kNN) and weighted voting (WV). The genes including CDK6 could be found by our methods and excellent IF-THEN rules could be extracted. The genes selected in this study have a high potential as new diagnosis markers for esophageal cancer. These results indicate that the new methods can be used in marker gene selection for the diagnosis of cancer patients.

摘要

食管癌是一种众所周知的癌症,其预后比其他癌症更差。迫切需要一种基于准确诊断的优化且个性化的治疗方案,以改善癌症患者的治疗效果。为此,开发一种能够处理大量数据(如来自DNA微阵列的基因表达数据)的复杂算法对于实现优化和个性化诊断至关重要。标记基因的选择在基因表达数据分析中至关重要。我们已经开发了一种结合投射自适应共振理论和带有SWEEP算子的增强模糊分类器的方法,即PART-BFCS。该方法优于其他方法,具有快速计算、准确预测、可靠预测和规则提取四个特点。在本研究中,我们应用该方法分析从食管癌患者获得的微阵列数据。还研究了PART-BFCS与U检验的组合方法。由于食管癌数据非常复杂,有必要使用特定类型的BFCS,即BFCS-1,2。PART-BFCS和带有U检验模型的PART-BFCS表现出比两种传统方法,即k近邻(kNN)和加权投票(WV)更高的性能。通过我们的方法可以找到包括CDK6在内的基因,并可以提取出优秀的IF-THEN规则。本研究中选择的基因作为食管癌新的诊断标志物具有很大潜力。这些结果表明,新方法可用于癌症患者诊断的标记基因选择。

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