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通过基于多源的方法确定与尼古丁成瘾相关的基因优先级。

Prioritizing Genes Related to Nicotine Addiction Via a Multi-source-Based Approach.

作者信息

Liu Xinhua, Liu Meng, Li Xia, Zhang Lihua, Fan Rui, Wang Ju

机构信息

School of Biomedical Engineering, Tianjin Medical University, 22 Qixiangtai Road, Tianjin, 300070, China.

出版信息

Mol Neurobiol. 2015 Aug;52(1):442-55. doi: 10.1007/s12035-014-8874-7. Epub 2014 Sep 6.

Abstract

Nicotine has a broad impact on both the central and peripheral nervous systems. Over the past decades, an increasing number of genes potentially involved in nicotine addiction have been identified by different technical approaches. However, the molecular mechanisms underlying nicotine addiction remain largely unknown. Under such situation, prioritizing the candidate genes for further investigation is becoming increasingly important. In this study, we presented a multi-source-based gene prioritization approach for nicotine addiction by utilizing the vast amounts of information generated from for nicotine addiction study during the past years. In this approach, we first collected and curated genes from studies in four categories, i.e., genetic association analysis, genetic linkage analysis, high-throughput gene/protein expression analysis, and literature search of single gene/protein-based studies. Based on these resources, the genes were scored and a weight value was determined for each category. Finally, the genes were ranked by their combined scores, and 220 genes were selected as the prioritized nicotine addiction-related genes. Evaluation suggested the prioritized genes were promising targets for further analysis and replication study.

摘要

尼古丁对中枢神经系统和外周神经系统均有广泛影响。在过去几十年中,通过不同技术方法已鉴定出越来越多可能与尼古丁成瘾有关的基因。然而,尼古丁成瘾背后的分子机制仍 largely 未知。在这种情况下,对候选基因进行优先排序以进行进一步研究变得越来越重要。在本研究中,我们通过利用过去几年尼古丁成瘾研究产生的大量信息,提出了一种基于多源的尼古丁成瘾基因优先排序方法。在这种方法中,我们首先从四类研究中收集和整理基因,即基因关联分析、遗传连锁分析、高通量基因/蛋白质表达分析以及基于单基因/蛋白质研究的文献检索。基于这些资源,对基因进行评分并为每个类别确定一个权重值。最后,根据综合得分对基因进行排名,选择 220 个基因作为优先的尼古丁成瘾相关基因。评估表明,这些优先基因是进一步分析和重复研究的有前景的靶点。

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