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Gene Expression Data Analysis for Classification of Bipolar Disorders

机译:双极性障碍分类的基因表达数据分析

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In recent years DNA microarray technology has become a widely used tool for gene expression profile analysis. This technology can be useful for the early diagnosis of complex diseases such as bipolar disorder, providing useful information for its genetic background. The ability to classify bipolar disorders may have a major impact on our understanding of disease pathophysiology, as well as it may be essential for guiding the appropriate treatment strategy and determining prognosis for successful targeted therapy. In this preliminary meta-data-study, we propose an analytic framework for bi-omarker identification aiming at prediction of bipolar disorder, by considering peripheral gene expression differences between bipolar patients and healthy controls. The aim of this paper is to extract a significant genomic signature for which biological knowledge may already exists and discover novel genomic information that can motivate further analysis. We study two classification algorithms based on support and relevance vector machines. The observed results indicate that the latter approach performs better in the specific biological environment.
机译:近年来,DNA微阵列技术已成为基因表达谱分析的广泛使用的工具。该技术可用于早期诊断诸如双相障碍等复杂疾病,为其遗传背景提供有用的信息。对双极性疾病进行分类的能力可能对我们对疾病病理生理学的理解产生重大影响,以及引导适当的治疗策略和确定成功靶向治疗的预后至关重要。在该初步的荟萃数据研究中,我们通过考虑双极患者与健康对照之间的外周基因表达差异,提出了一种针对双相障碍预测的双奥巴马鉴定的分析框架。本文的目的是提取重大的基因组签名,其中生物学知识可能已经存在并发现可以激发进一步分析的新型基因组信息。我们基于支持和相关矢量机研究了两个分类算法。观察结果表明后一种方法在特定的生物环境中表现更好。

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